From 79b9accc74dc2014c40e72dbf518012a68601f34 Mon Sep 17 00:00:00 2001 From: fjosw Date: Wed, 15 Jun 2022 13:07:17 +0000 Subject: [PATCH] Documentation updated --- docs/pyerrors/correlators.html | 1488 ++++++++++++++++---------------- docs/pyerrors/input/dobs.html | 764 ++++++++-------- docs/search.js | 2 +- 3 files changed, 1131 insertions(+), 1123 deletions(-) diff --git a/docs/pyerrors/correlators.html b/docs/pyerrors/correlators.html index 1e673cf6..279c90fe 100644 --- a/docs/pyerrors/correlators.html +++ b/docs/pyerrors/correlators.html @@ -1111,357 +1111,359 @@ 897 else: 898 raise Exception("Unknown datatype " + str(datatype)) 899 - 900 def print(self, range=[0, None]): - 901 print(self.__repr__(range)) + 900 def print(self, print_range=None): + 901 print(self.__repr__(print_range)) 902 - 903 def __repr__(self, range=[0, None]): - 904 content_string = "" - 905 - 906 content_string += "Corr T=" + str(self.T) + " N=" + str(self.N) + "\n" # +" filled with"+ str(type(self.content[0][0])) there should be a good solution here - 907 - 908 if self.tag is not None: - 909 content_string += "Description: " + self.tag + "\n" - 910 if self.N != 1: - 911 return content_string - 912 - 913 if range[1]: - 914 range[1] += 1 - 915 content_string += 'x0/a\tCorr(x0/a)\n------------------\n' - 916 for i, sub_corr in enumerate(self.content[range[0]:range[1]]): - 917 if sub_corr is None: - 918 content_string += str(i + range[0]) + '\n' - 919 else: - 920 content_string += str(i + range[0]) - 921 for element in sub_corr: - 922 content_string += '\t' + ' ' * int(element >= 0) + str(element) - 923 content_string += '\n' - 924 return content_string - 925 - 926 def __str__(self): - 927 return self.__repr__() - 928 - 929 # We define the basic operations, that can be performed with correlators. - 930 # While */+- get defined here, they only work for Corr*Obs and not Obs*Corr. - 931 # This is because Obs*Corr checks Obs.__mul__ first and does not catch an exception. - 932 # One could try and tell Obs to check if the y in __mul__ is a Corr and - 933 - 934 def __add__(self, y): - 935 if isinstance(y, Corr): - 936 if ((self.N != y.N) or (self.T != y.T)): - 937 raise Exception("Addition of Corrs with different shape") - 938 newcontent = [] - 939 for t in range(self.T): - 940 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 941 newcontent.append(None) - 942 else: - 943 newcontent.append(self.content[t] + y.content[t]) - 944 return Corr(newcontent) - 945 - 946 elif isinstance(y, (Obs, int, float, CObs)): - 947 newcontent = [] - 948 for t in range(self.T): - 949 if _check_for_none(self, self.content[t]): - 950 newcontent.append(None) - 951 else: - 952 newcontent.append(self.content[t] + y) - 953 return Corr(newcontent, prange=self.prange) - 954 elif isinstance(y, np.ndarray): - 955 if y.shape == (self.T,): - 956 return Corr(list((np.array(self.content).T + y).T)) - 957 else: - 958 raise ValueError("operands could not be broadcast together") - 959 else: - 960 raise TypeError("Corr + wrong type") - 961 - 962 def __mul__(self, y): - 963 if isinstance(y, Corr): - 964 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): - 965 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") - 966 newcontent = [] - 967 for t in range(self.T): - 968 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 969 newcontent.append(None) - 970 else: - 971 newcontent.append(self.content[t] * y.content[t]) - 972 return Corr(newcontent) - 973 - 974 elif isinstance(y, (Obs, int, float, CObs)): - 975 newcontent = [] - 976 for t in range(self.T): - 977 if _check_for_none(self, self.content[t]): - 978 newcontent.append(None) - 979 else: - 980 newcontent.append(self.content[t] * y) - 981 return Corr(newcontent, prange=self.prange) - 982 elif isinstance(y, np.ndarray): - 983 if y.shape == (self.T,): - 984 return Corr(list((np.array(self.content).T * y).T)) - 985 else: - 986 raise ValueError("operands could not be broadcast together") - 987 else: - 988 raise TypeError("Corr * wrong type") - 989 - 990 def __truediv__(self, y): - 991 if isinstance(y, Corr): - 992 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): - 993 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") - 994 newcontent = [] - 995 for t in range(self.T): - 996 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 997 newcontent.append(None) - 998 else: - 999 newcontent.append(self.content[t] / y.content[t]) -1000 for t in range(self.T): -1001 if _check_for_none(self, newcontent[t]): -1002 continue -1003 if np.isnan(np.sum(newcontent[t]).value): -1004 newcontent[t] = None -1005 -1006 if all([item is None for item in newcontent]): -1007 raise Exception("Division returns completely undefined correlator") -1008 return Corr(newcontent) -1009 -1010 elif isinstance(y, (Obs, CObs)): -1011 if isinstance(y, Obs): -1012 if y.value == 0: -1013 raise Exception('Division by zero will return undefined correlator') -1014 if isinstance(y, CObs): -1015 if y.is_zero(): -1016 raise Exception('Division by zero will return undefined correlator') -1017 -1018 newcontent = [] -1019 for t in range(self.T): -1020 if _check_for_none(self, self.content[t]): -1021 newcontent.append(None) -1022 else: -1023 newcontent.append(self.content[t] / y) -1024 return Corr(newcontent, prange=self.prange) -1025 -1026 elif isinstance(y, (int, float)): -1027 if y == 0: -1028 raise Exception('Division by zero will return undefined correlator') -1029 newcontent = [] -1030 for t in range(self.T): -1031 if _check_for_none(self, self.content[t]): -1032 newcontent.append(None) -1033 else: -1034 newcontent.append(self.content[t] / y) -1035 return Corr(newcontent, prange=self.prange) -1036 elif isinstance(y, np.ndarray): -1037 if y.shape == (self.T,): -1038 return Corr(list((np.array(self.content).T / y).T)) -1039 else: -1040 raise ValueError("operands could not be broadcast together") -1041 else: -1042 raise TypeError('Corr / wrong type') -1043 -1044 def __neg__(self): -1045 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] -1046 return Corr(newcontent, prange=self.prange) -1047 -1048 def __sub__(self, y): -1049 return self + (-y) -1050 -1051 def __pow__(self, y): -1052 if isinstance(y, (Obs, int, float, CObs)): -1053 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] -1054 return Corr(newcontent, prange=self.prange) -1055 else: -1056 raise TypeError('Type of exponent not supported') -1057 -1058 def __abs__(self): -1059 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] -1060 return Corr(newcontent, prange=self.prange) -1061 -1062 # The numpy functions: -1063 def sqrt(self): -1064 return self ** 0.5 -1065 -1066 def log(self): -1067 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] -1068 return Corr(newcontent, prange=self.prange) -1069 -1070 def exp(self): -1071 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] -1072 return Corr(newcontent, prange=self.prange) -1073 -1074 def _apply_func_to_corr(self, func): -1075 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] -1076 for t in range(self.T): -1077 if _check_for_none(self, newcontent[t]): -1078 continue -1079 if np.isnan(np.sum(newcontent[t]).value): -1080 newcontent[t] = None -1081 if all([item is None for item in newcontent]): -1082 raise Exception('Operation returns undefined correlator') -1083 return Corr(newcontent) -1084 -1085 def sin(self): -1086 return self._apply_func_to_corr(np.sin) -1087 -1088 def cos(self): -1089 return self._apply_func_to_corr(np.cos) -1090 -1091 def tan(self): -1092 return self._apply_func_to_corr(np.tan) -1093 -1094 def sinh(self): -1095 return self._apply_func_to_corr(np.sinh) -1096 -1097 def cosh(self): -1098 return self._apply_func_to_corr(np.cosh) -1099 -1100 def tanh(self): -1101 return self._apply_func_to_corr(np.tanh) -1102 -1103 def arcsin(self): -1104 return self._apply_func_to_corr(np.arcsin) -1105 -1106 def arccos(self): -1107 return self._apply_func_to_corr(np.arccos) -1108 -1109 def arctan(self): -1110 return self._apply_func_to_corr(np.arctan) -1111 -1112 def arcsinh(self): -1113 return self._apply_func_to_corr(np.arcsinh) -1114 -1115 def arccosh(self): -1116 return self._apply_func_to_corr(np.arccosh) -1117 -1118 def arctanh(self): -1119 return self._apply_func_to_corr(np.arctanh) -1120 -1121 # Right hand side operations (require tweak in main module to work) -1122 def __radd__(self, y): -1123 return self + y -1124 -1125 def __rsub__(self, y): -1126 return -self + y -1127 -1128 def __rmul__(self, y): -1129 return self * y -1130 -1131 def __rtruediv__(self, y): -1132 return (self / y) ** (-1) -1133 -1134 @property -1135 def real(self): -1136 def return_real(obs_OR_cobs): -1137 if isinstance(obs_OR_cobs, CObs): -1138 return obs_OR_cobs.real -1139 else: -1140 return obs_OR_cobs -1141 -1142 return self._apply_func_to_corr(return_real) + 903 def __repr__(self, print_range=None): + 904 if print_range is None: + 905 print_range = [0, None] + 906 + 907 content_string = "" + 908 content_string += "Corr T=" + str(self.T) + " N=" + str(self.N) + "\n" # +" filled with"+ str(type(self.content[0][0])) there should be a good solution here + 909 + 910 if self.tag is not None: + 911 content_string += "Description: " + self.tag + "\n" + 912 if self.N != 1: + 913 return content_string + 914 + 915 if print_range[1]: + 916 print_range[1] += 1 + 917 content_string += 'x0/a\tCorr(x0/a)\n------------------\n' + 918 for i, sub_corr in enumerate(self.content[print_range[0]:print_range[1]]): + 919 if sub_corr is None: + 920 content_string += str(i + print_range[0]) + '\n' + 921 else: + 922 content_string += str(i + print_range[0]) + 923 for element in sub_corr: + 924 content_string += '\t' + ' ' * int(element >= 0) + str(element) + 925 content_string += '\n' + 926 return content_string + 927 + 928 def __str__(self): + 929 return self.__repr__() + 930 + 931 # We define the basic operations, that can be performed with correlators. + 932 # While */+- get defined here, they only work for Corr*Obs and not Obs*Corr. + 933 # This is because Obs*Corr checks Obs.__mul__ first and does not catch an exception. + 934 # One could try and tell Obs to check if the y in __mul__ is a Corr and + 935 + 936 def __add__(self, y): + 937 if isinstance(y, Corr): + 938 if ((self.N != y.N) or (self.T != y.T)): + 939 raise Exception("Addition of Corrs with different shape") + 940 newcontent = [] + 941 for t in range(self.T): + 942 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): + 943 newcontent.append(None) + 944 else: + 945 newcontent.append(self.content[t] + y.content[t]) + 946 return Corr(newcontent) + 947 + 948 elif isinstance(y, (Obs, int, float, CObs)): + 949 newcontent = [] + 950 for t in range(self.T): + 951 if _check_for_none(self, self.content[t]): + 952 newcontent.append(None) + 953 else: + 954 newcontent.append(self.content[t] + y) + 955 return Corr(newcontent, prange=self.prange) + 956 elif isinstance(y, np.ndarray): + 957 if y.shape == (self.T,): + 958 return Corr(list((np.array(self.content).T + y).T)) + 959 else: + 960 raise ValueError("operands could not be broadcast together") + 961 else: + 962 raise TypeError("Corr + wrong type") + 963 + 964 def __mul__(self, y): + 965 if isinstance(y, Corr): + 966 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): + 967 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") + 968 newcontent = [] + 969 for t in range(self.T): + 970 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): + 971 newcontent.append(None) + 972 else: + 973 newcontent.append(self.content[t] * y.content[t]) + 974 return Corr(newcontent) + 975 + 976 elif isinstance(y, (Obs, int, float, CObs)): + 977 newcontent = [] + 978 for t in range(self.T): + 979 if _check_for_none(self, self.content[t]): + 980 newcontent.append(None) + 981 else: + 982 newcontent.append(self.content[t] * y) + 983 return Corr(newcontent, prange=self.prange) + 984 elif isinstance(y, np.ndarray): + 985 if y.shape == (self.T,): + 986 return Corr(list((np.array(self.content).T * y).T)) + 987 else: + 988 raise ValueError("operands could not be broadcast together") + 989 else: + 990 raise TypeError("Corr * wrong type") + 991 + 992 def __truediv__(self, y): + 993 if isinstance(y, Corr): + 994 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): + 995 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") + 996 newcontent = [] + 997 for t in range(self.T): + 998 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): + 999 newcontent.append(None) +1000 else: +1001 newcontent.append(self.content[t] / y.content[t]) +1002 for t in range(self.T): +1003 if _check_for_none(self, newcontent[t]): +1004 continue +1005 if np.isnan(np.sum(newcontent[t]).value): +1006 newcontent[t] = None +1007 +1008 if all([item is None for item in newcontent]): +1009 raise Exception("Division returns completely undefined correlator") +1010 return Corr(newcontent) +1011 +1012 elif isinstance(y, (Obs, CObs)): +1013 if isinstance(y, Obs): +1014 if y.value == 0: +1015 raise Exception('Division by zero will return undefined correlator') +1016 if isinstance(y, CObs): +1017 if y.is_zero(): +1018 raise Exception('Division by zero will return undefined correlator') +1019 +1020 newcontent = [] +1021 for t in range(self.T): +1022 if _check_for_none(self, self.content[t]): +1023 newcontent.append(None) +1024 else: +1025 newcontent.append(self.content[t] / y) +1026 return Corr(newcontent, prange=self.prange) +1027 +1028 elif isinstance(y, (int, float)): +1029 if y == 0: +1030 raise Exception('Division by zero will return undefined correlator') +1031 newcontent = [] +1032 for t in range(self.T): +1033 if _check_for_none(self, self.content[t]): +1034 newcontent.append(None) +1035 else: +1036 newcontent.append(self.content[t] / y) +1037 return Corr(newcontent, prange=self.prange) +1038 elif isinstance(y, np.ndarray): +1039 if y.shape == (self.T,): +1040 return Corr(list((np.array(self.content).T / y).T)) +1041 else: +1042 raise ValueError("operands could not be broadcast together") +1043 else: +1044 raise TypeError('Corr / wrong type') +1045 +1046 def __neg__(self): +1047 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] +1048 return Corr(newcontent, prange=self.prange) +1049 +1050 def __sub__(self, y): +1051 return self + (-y) +1052 +1053 def __pow__(self, y): +1054 if isinstance(y, (Obs, int, float, CObs)): +1055 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] +1056 return Corr(newcontent, prange=self.prange) +1057 else: +1058 raise TypeError('Type of exponent not supported') +1059 +1060 def __abs__(self): +1061 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] +1062 return Corr(newcontent, prange=self.prange) +1063 +1064 # The numpy functions: +1065 def sqrt(self): +1066 return self ** 0.5 +1067 +1068 def log(self): +1069 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] +1070 return Corr(newcontent, prange=self.prange) +1071 +1072 def exp(self): +1073 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] +1074 return Corr(newcontent, prange=self.prange) +1075 +1076 def _apply_func_to_corr(self, func): +1077 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] +1078 for t in range(self.T): +1079 if _check_for_none(self, newcontent[t]): +1080 continue +1081 if np.isnan(np.sum(newcontent[t]).value): +1082 newcontent[t] = None +1083 if all([item is None for item in newcontent]): +1084 raise Exception('Operation returns undefined correlator') +1085 return Corr(newcontent) +1086 +1087 def sin(self): +1088 return self._apply_func_to_corr(np.sin) +1089 +1090 def cos(self): +1091 return self._apply_func_to_corr(np.cos) +1092 +1093 def tan(self): +1094 return self._apply_func_to_corr(np.tan) +1095 +1096 def sinh(self): +1097 return self._apply_func_to_corr(np.sinh) +1098 +1099 def cosh(self): +1100 return self._apply_func_to_corr(np.cosh) +1101 +1102 def tanh(self): +1103 return self._apply_func_to_corr(np.tanh) +1104 +1105 def arcsin(self): +1106 return self._apply_func_to_corr(np.arcsin) +1107 +1108 def arccos(self): +1109 return self._apply_func_to_corr(np.arccos) +1110 +1111 def arctan(self): +1112 return self._apply_func_to_corr(np.arctan) +1113 +1114 def arcsinh(self): +1115 return self._apply_func_to_corr(np.arcsinh) +1116 +1117 def arccosh(self): +1118 return self._apply_func_to_corr(np.arccosh) +1119 +1120 def arctanh(self): +1121 return self._apply_func_to_corr(np.arctanh) +1122 +1123 # Right hand side operations (require tweak in main module to work) +1124 def __radd__(self, y): +1125 return self + y +1126 +1127 def __rsub__(self, y): +1128 return -self + y +1129 +1130 def __rmul__(self, y): +1131 return self * y +1132 +1133 def __rtruediv__(self, y): +1134 return (self / y) ** (-1) +1135 +1136 @property +1137 def real(self): +1138 def return_real(obs_OR_cobs): +1139 if isinstance(obs_OR_cobs, CObs): +1140 return obs_OR_cobs.real +1141 else: +1142 return obs_OR_cobs 1143 -1144 @property -1145 def imag(self): -1146 def return_imag(obs_OR_cobs): -1147 if isinstance(obs_OR_cobs, CObs): -1148 return obs_OR_cobs.imag -1149 else: -1150 return obs_OR_cobs * 0 # So it stays the right type -1151 -1152 return self._apply_func_to_corr(return_imag) +1144 return self._apply_func_to_corr(return_real) +1145 +1146 @property +1147 def imag(self): +1148 def return_imag(obs_OR_cobs): +1149 if isinstance(obs_OR_cobs, CObs): +1150 return obs_OR_cobs.imag +1151 else: +1152 return obs_OR_cobs * 0 # So it stays the right type 1153 -1154 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): -1155 r''' Project large correlation matrix to lowest states -1156 -1157 This method can be used to reduce the size of an (N x N) correlation matrix -1158 to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise -1159 is still small. -1160 -1161 Parameters -1162 ---------- -1163 Ntrunc: int -1164 Rank of the target matrix. -1165 tproj: int -1166 Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method. -1167 The default value is 3. -1168 t0proj: int -1169 Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly -1170 discouraged for O(a) improved theories, since the correctness of the procedure -1171 cannot be granted in this case. The default value is 2. -1172 basematrix : Corr -1173 Correlation matrix that is used to determine the eigenvectors of the -1174 lowest states based on a GEVP. basematrix is taken to be the Corr itself if -1175 is is not specified. -1176 -1177 Notes -1178 ----- -1179 We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving -1180 the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$ -1181 and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the -1182 resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via -1183 $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large -1184 correlation matrix and to remove some noise that is added by irrelevant operators. -1185 This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated -1186 bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$. -1187 ''' -1188 -1189 if self.N == 1: -1190 raise Exception('Method cannot be applied to one-dimensional correlators.') -1191 if basematrix is None: -1192 basematrix = self -1193 if Ntrunc >= basematrix.N: -1194 raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N)) -1195 if basematrix.N != self.N: -1196 raise Exception('basematrix and targetmatrix have to be of the same size.') -1197 -1198 evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc] +1154 return self._apply_func_to_corr(return_imag) +1155 +1156 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): +1157 r''' Project large correlation matrix to lowest states +1158 +1159 This method can be used to reduce the size of an (N x N) correlation matrix +1160 to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise +1161 is still small. +1162 +1163 Parameters +1164 ---------- +1165 Ntrunc: int +1166 Rank of the target matrix. +1167 tproj: int +1168 Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method. +1169 The default value is 3. +1170 t0proj: int +1171 Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly +1172 discouraged for O(a) improved theories, since the correctness of the procedure +1173 cannot be granted in this case. The default value is 2. +1174 basematrix : Corr +1175 Correlation matrix that is used to determine the eigenvectors of the +1176 lowest states based on a GEVP. basematrix is taken to be the Corr itself if +1177 is is not specified. +1178 +1179 Notes +1180 ----- +1181 We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving +1182 the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$ +1183 and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the +1184 resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via +1185 $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large +1186 correlation matrix and to remove some noise that is added by irrelevant operators. +1187 This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated +1188 bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$. +1189 ''' +1190 +1191 if self.N == 1: +1192 raise Exception('Method cannot be applied to one-dimensional correlators.') +1193 if basematrix is None: +1194 basematrix = self +1195 if Ntrunc >= basematrix.N: +1196 raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N)) +1197 if basematrix.N != self.N: +1198 raise Exception('basematrix and targetmatrix have to be of the same size.') 1199 -1200 tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object) -1201 rmat = [] -1202 for t in range(basematrix.T): -1203 for i in range(Ntrunc): -1204 for j in range(Ntrunc): -1205 tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j] -1206 rmat.append(np.copy(tmpmat)) -1207 -1208 newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)] -1209 return Corr(newcontent) -1210 -1211 -1212def _sort_vectors(vec_set, ts): -1213 """Helper function used to find a set of Eigenvectors consistent over all timeslices""" -1214 reference_sorting = np.array(vec_set[ts]) -1215 N = reference_sorting.shape[0] -1216 sorted_vec_set = [] -1217 for t in range(len(vec_set)): -1218 if vec_set[t] is None: -1219 sorted_vec_set.append(None) -1220 elif not t == ts: -1221 perms = [list(o) for o in permutations([i for i in range(N)], N)] -1222 best_score = 0 -1223 for perm in perms: -1224 current_score = 1 -1225 for k in range(N): -1226 new_sorting = reference_sorting.copy() -1227 new_sorting[perm[k], :] = vec_set[t][k] -1228 current_score *= abs(np.linalg.det(new_sorting)) -1229 if current_score > best_score: -1230 best_score = current_score -1231 best_perm = perm -1232 sorted_vec_set.append([vec_set[t][k] for k in best_perm]) -1233 else: -1234 sorted_vec_set.append(vec_set[t]) -1235 -1236 return sorted_vec_set +1200 evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc] +1201 +1202 tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object) +1203 rmat = [] +1204 for t in range(basematrix.T): +1205 for i in range(Ntrunc): +1206 for j in range(Ntrunc): +1207 tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j] +1208 rmat.append(np.copy(tmpmat)) +1209 +1210 newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)] +1211 return Corr(newcontent) +1212 +1213 +1214def _sort_vectors(vec_set, ts): +1215 """Helper function used to find a set of Eigenvectors consistent over all timeslices""" +1216 reference_sorting = np.array(vec_set[ts]) +1217 N = reference_sorting.shape[0] +1218 sorted_vec_set = [] +1219 for t in range(len(vec_set)): +1220 if vec_set[t] is None: +1221 sorted_vec_set.append(None) +1222 elif not t == ts: +1223 perms = [list(o) for o in permutations([i for i in range(N)], N)] +1224 best_score = 0 +1225 for perm in perms: +1226 current_score = 1 +1227 for k in range(N): +1228 new_sorting = reference_sorting.copy() +1229 new_sorting[perm[k], :] = vec_set[t][k] +1230 current_score *= abs(np.linalg.det(new_sorting)) +1231 if current_score > best_score: +1232 best_score = current_score +1233 best_perm = perm +1234 sorted_vec_set.append([vec_set[t][k] for k in best_perm]) +1235 else: +1236 sorted_vec_set.append(vec_set[t]) 1237 -1238 -1239def _check_for_none(corr, entry): -1240 """Checks if entry for correlator corr is None""" -1241 return len(list(filter(None, np.asarray(entry).flatten()))) < corr.N ** 2 -1242 -1243 -1244def _GEVP_solver(Gt, G0): -1245 """Helper function for solving the GEVP and sorting the eigenvectors. -1246 -1247 The helper function assumes that both provided matrices are symmetric and -1248 only processes the lower triangular part of both matrices. In case the matrices -1249 are not symmetric the upper triangular parts are effectively discarded.""" -1250 return scipy.linalg.eigh(Gt, G0, lower=True)[1].T[::-1] +1238 return sorted_vec_set +1239 +1240 +1241def _check_for_none(corr, entry): +1242 """Checks if entry for correlator corr is None""" +1243 return len(list(filter(None, np.asarray(entry).flatten()))) < corr.N ** 2 +1244 +1245 +1246def _GEVP_solver(Gt, G0): +1247 """Helper function for solving the GEVP and sorting the eigenvectors. +1248 +1249 The helper function assumes that both provided matrices are symmetric and +1250 only processes the lower triangular part of both matrices. In case the matrices +1251 are not symmetric the upper triangular parts are effectively discarded.""" +1252 return scipy.linalg.eigh(Gt, G0, lower=True)[1].T[::-1] @@ -2364,316 +2366,318 @@ 898 else: 899 raise Exception("Unknown datatype " + str(datatype)) 900 - 901 def print(self, range=[0, None]): - 902 print(self.__repr__(range)) + 901 def print(self, print_range=None): + 902 print(self.__repr__(print_range)) 903 - 904 def __repr__(self, range=[0, None]): - 905 content_string = "" - 906 - 907 content_string += "Corr T=" + str(self.T) + " N=" + str(self.N) + "\n" # +" filled with"+ str(type(self.content[0][0])) there should be a good solution here - 908 - 909 if self.tag is not None: - 910 content_string += "Description: " + self.tag + "\n" - 911 if self.N != 1: - 912 return content_string - 913 - 914 if range[1]: - 915 range[1] += 1 - 916 content_string += 'x0/a\tCorr(x0/a)\n------------------\n' - 917 for i, sub_corr in enumerate(self.content[range[0]:range[1]]): - 918 if sub_corr is None: - 919 content_string += str(i + range[0]) + '\n' - 920 else: - 921 content_string += str(i + range[0]) - 922 for element in sub_corr: - 923 content_string += '\t' + ' ' * int(element >= 0) + str(element) - 924 content_string += '\n' - 925 return content_string - 926 - 927 def __str__(self): - 928 return self.__repr__() - 929 - 930 # We define the basic operations, that can be performed with correlators. - 931 # While */+- get defined here, they only work for Corr*Obs and not Obs*Corr. - 932 # This is because Obs*Corr checks Obs.__mul__ first and does not catch an exception. - 933 # One could try and tell Obs to check if the y in __mul__ is a Corr and - 934 - 935 def __add__(self, y): - 936 if isinstance(y, Corr): - 937 if ((self.N != y.N) or (self.T != y.T)): - 938 raise Exception("Addition of Corrs with different shape") - 939 newcontent = [] - 940 for t in range(self.T): - 941 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 942 newcontent.append(None) - 943 else: - 944 newcontent.append(self.content[t] + y.content[t]) - 945 return Corr(newcontent) - 946 - 947 elif isinstance(y, (Obs, int, float, CObs)): - 948 newcontent = [] - 949 for t in range(self.T): - 950 if _check_for_none(self, self.content[t]): - 951 newcontent.append(None) - 952 else: - 953 newcontent.append(self.content[t] + y) - 954 return Corr(newcontent, prange=self.prange) - 955 elif isinstance(y, np.ndarray): - 956 if y.shape == (self.T,): - 957 return Corr(list((np.array(self.content).T + y).T)) - 958 else: - 959 raise ValueError("operands could not be broadcast together") - 960 else: - 961 raise TypeError("Corr + wrong type") - 962 - 963 def __mul__(self, y): - 964 if isinstance(y, Corr): - 965 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): - 966 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") - 967 newcontent = [] - 968 for t in range(self.T): - 969 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 970 newcontent.append(None) - 971 else: - 972 newcontent.append(self.content[t] * y.content[t]) - 973 return Corr(newcontent) - 974 - 975 elif isinstance(y, (Obs, int, float, CObs)): - 976 newcontent = [] - 977 for t in range(self.T): - 978 if _check_for_none(self, self.content[t]): - 979 newcontent.append(None) - 980 else: - 981 newcontent.append(self.content[t] * y) - 982 return Corr(newcontent, prange=self.prange) - 983 elif isinstance(y, np.ndarray): - 984 if y.shape == (self.T,): - 985 return Corr(list((np.array(self.content).T * y).T)) - 986 else: - 987 raise ValueError("operands could not be broadcast together") - 988 else: - 989 raise TypeError("Corr * wrong type") - 990 - 991 def __truediv__(self, y): - 992 if isinstance(y, Corr): - 993 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): - 994 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") - 995 newcontent = [] - 996 for t in range(self.T): - 997 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): - 998 newcontent.append(None) - 999 else: -1000 newcontent.append(self.content[t] / y.content[t]) -1001 for t in range(self.T): -1002 if _check_for_none(self, newcontent[t]): -1003 continue -1004 if np.isnan(np.sum(newcontent[t]).value): -1005 newcontent[t] = None -1006 -1007 if all([item is None for item in newcontent]): -1008 raise Exception("Division returns completely undefined correlator") -1009 return Corr(newcontent) -1010 -1011 elif isinstance(y, (Obs, CObs)): -1012 if isinstance(y, Obs): -1013 if y.value == 0: -1014 raise Exception('Division by zero will return undefined correlator') -1015 if isinstance(y, CObs): -1016 if y.is_zero(): -1017 raise Exception('Division by zero will return undefined correlator') -1018 -1019 newcontent = [] -1020 for t in range(self.T): -1021 if _check_for_none(self, self.content[t]): -1022 newcontent.append(None) -1023 else: -1024 newcontent.append(self.content[t] / y) -1025 return Corr(newcontent, prange=self.prange) -1026 -1027 elif isinstance(y, (int, float)): -1028 if y == 0: -1029 raise Exception('Division by zero will return undefined correlator') -1030 newcontent = [] -1031 for t in range(self.T): -1032 if _check_for_none(self, self.content[t]): -1033 newcontent.append(None) -1034 else: -1035 newcontent.append(self.content[t] / y) -1036 return Corr(newcontent, prange=self.prange) -1037 elif isinstance(y, np.ndarray): -1038 if y.shape == (self.T,): -1039 return Corr(list((np.array(self.content).T / y).T)) -1040 else: -1041 raise ValueError("operands could not be broadcast together") -1042 else: -1043 raise TypeError('Corr / wrong type') -1044 -1045 def __neg__(self): -1046 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] -1047 return Corr(newcontent, prange=self.prange) -1048 -1049 def __sub__(self, y): -1050 return self + (-y) -1051 -1052 def __pow__(self, y): -1053 if isinstance(y, (Obs, int, float, CObs)): -1054 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] -1055 return Corr(newcontent, prange=self.prange) -1056 else: -1057 raise TypeError('Type of exponent not supported') -1058 -1059 def __abs__(self): -1060 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] -1061 return Corr(newcontent, prange=self.prange) -1062 -1063 # The numpy functions: -1064 def sqrt(self): -1065 return self ** 0.5 -1066 -1067 def log(self): -1068 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] -1069 return Corr(newcontent, prange=self.prange) -1070 -1071 def exp(self): -1072 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] -1073 return Corr(newcontent, prange=self.prange) -1074 -1075 def _apply_func_to_corr(self, func): -1076 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] -1077 for t in range(self.T): -1078 if _check_for_none(self, newcontent[t]): -1079 continue -1080 if np.isnan(np.sum(newcontent[t]).value): -1081 newcontent[t] = None -1082 if all([item is None for item in newcontent]): -1083 raise Exception('Operation returns undefined correlator') -1084 return Corr(newcontent) -1085 -1086 def sin(self): -1087 return self._apply_func_to_corr(np.sin) -1088 -1089 def cos(self): -1090 return self._apply_func_to_corr(np.cos) -1091 -1092 def tan(self): -1093 return self._apply_func_to_corr(np.tan) -1094 -1095 def sinh(self): -1096 return self._apply_func_to_corr(np.sinh) -1097 -1098 def cosh(self): -1099 return self._apply_func_to_corr(np.cosh) -1100 -1101 def tanh(self): -1102 return self._apply_func_to_corr(np.tanh) -1103 -1104 def arcsin(self): -1105 return self._apply_func_to_corr(np.arcsin) -1106 -1107 def arccos(self): -1108 return self._apply_func_to_corr(np.arccos) -1109 -1110 def arctan(self): -1111 return self._apply_func_to_corr(np.arctan) -1112 -1113 def arcsinh(self): -1114 return self._apply_func_to_corr(np.arcsinh) -1115 -1116 def arccosh(self): -1117 return self._apply_func_to_corr(np.arccosh) -1118 -1119 def arctanh(self): -1120 return self._apply_func_to_corr(np.arctanh) -1121 -1122 # Right hand side operations (require tweak in main module to work) -1123 def __radd__(self, y): -1124 return self + y -1125 -1126 def __rsub__(self, y): -1127 return -self + y -1128 -1129 def __rmul__(self, y): -1130 return self * y -1131 -1132 def __rtruediv__(self, y): -1133 return (self / y) ** (-1) -1134 -1135 @property -1136 def real(self): -1137 def return_real(obs_OR_cobs): -1138 if isinstance(obs_OR_cobs, CObs): -1139 return obs_OR_cobs.real -1140 else: -1141 return obs_OR_cobs -1142 -1143 return self._apply_func_to_corr(return_real) + 904 def __repr__(self, print_range=None): + 905 if print_range is None: + 906 print_range = [0, None] + 907 + 908 content_string = "" + 909 content_string += "Corr T=" + str(self.T) + " N=" + str(self.N) + "\n" # +" filled with"+ str(type(self.content[0][0])) there should be a good solution here + 910 + 911 if self.tag is not None: + 912 content_string += "Description: " + self.tag + "\n" + 913 if self.N != 1: + 914 return content_string + 915 + 916 if print_range[1]: + 917 print_range[1] += 1 + 918 content_string += 'x0/a\tCorr(x0/a)\n------------------\n' + 919 for i, sub_corr in enumerate(self.content[print_range[0]:print_range[1]]): + 920 if sub_corr is None: + 921 content_string += str(i + print_range[0]) + '\n' + 922 else: + 923 content_string += str(i + print_range[0]) + 924 for element in sub_corr: + 925 content_string += '\t' + ' ' * int(element >= 0) + str(element) + 926 content_string += '\n' + 927 return content_string + 928 + 929 def __str__(self): + 930 return self.__repr__() + 931 + 932 # We define the basic operations, that can be performed with correlators. + 933 # While */+- get defined here, they only work for Corr*Obs and not Obs*Corr. + 934 # This is because Obs*Corr checks Obs.__mul__ first and does not catch an exception. + 935 # One could try and tell Obs to check if the y in __mul__ is a Corr and + 936 + 937 def __add__(self, y): + 938 if isinstance(y, Corr): + 939 if ((self.N != y.N) or (self.T != y.T)): + 940 raise Exception("Addition of Corrs with different shape") + 941 newcontent = [] + 942 for t in range(self.T): + 943 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): + 944 newcontent.append(None) + 945 else: + 946 newcontent.append(self.content[t] + y.content[t]) + 947 return Corr(newcontent) + 948 + 949 elif isinstance(y, (Obs, int, float, CObs)): + 950 newcontent = [] + 951 for t in range(self.T): + 952 if _check_for_none(self, self.content[t]): + 953 newcontent.append(None) + 954 else: + 955 newcontent.append(self.content[t] + y) + 956 return Corr(newcontent, prange=self.prange) + 957 elif isinstance(y, np.ndarray): + 958 if y.shape == (self.T,): + 959 return Corr(list((np.array(self.content).T + y).T)) + 960 else: + 961 raise ValueError("operands could not be broadcast together") + 962 else: + 963 raise TypeError("Corr + wrong type") + 964 + 965 def __mul__(self, y): + 966 if isinstance(y, Corr): + 967 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): + 968 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") + 969 newcontent = [] + 970 for t in range(self.T): + 971 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): + 972 newcontent.append(None) + 973 else: + 974 newcontent.append(self.content[t] * y.content[t]) + 975 return Corr(newcontent) + 976 + 977 elif isinstance(y, (Obs, int, float, CObs)): + 978 newcontent = [] + 979 for t in range(self.T): + 980 if _check_for_none(self, self.content[t]): + 981 newcontent.append(None) + 982 else: + 983 newcontent.append(self.content[t] * y) + 984 return Corr(newcontent, prange=self.prange) + 985 elif isinstance(y, np.ndarray): + 986 if y.shape == (self.T,): + 987 return Corr(list((np.array(self.content).T * y).T)) + 988 else: + 989 raise ValueError("operands could not be broadcast together") + 990 else: + 991 raise TypeError("Corr * wrong type") + 992 + 993 def __truediv__(self, y): + 994 if isinstance(y, Corr): + 995 if not((self.N == 1 or y.N == 1 or self.N == y.N) and self.T == y.T): + 996 raise Exception("Multiplication of Corr object requires N=N or N=1 and T=T") + 997 newcontent = [] + 998 for t in range(self.T): + 999 if _check_for_none(self, self.content[t]) or _check_for_none(y, y.content[t]): +1000 newcontent.append(None) +1001 else: +1002 newcontent.append(self.content[t] / y.content[t]) +1003 for t in range(self.T): +1004 if _check_for_none(self, newcontent[t]): +1005 continue +1006 if np.isnan(np.sum(newcontent[t]).value): +1007 newcontent[t] = None +1008 +1009 if all([item is None for item in newcontent]): +1010 raise Exception("Division returns completely undefined correlator") +1011 return Corr(newcontent) +1012 +1013 elif isinstance(y, (Obs, CObs)): +1014 if isinstance(y, Obs): +1015 if y.value == 0: +1016 raise Exception('Division by zero will return undefined correlator') +1017 if isinstance(y, CObs): +1018 if y.is_zero(): +1019 raise Exception('Division by zero will return undefined correlator') +1020 +1021 newcontent = [] +1022 for t in range(self.T): +1023 if _check_for_none(self, self.content[t]): +1024 newcontent.append(None) +1025 else: +1026 newcontent.append(self.content[t] / y) +1027 return Corr(newcontent, prange=self.prange) +1028 +1029 elif isinstance(y, (int, float)): +1030 if y == 0: +1031 raise Exception('Division by zero will return undefined correlator') +1032 newcontent = [] +1033 for t in range(self.T): +1034 if _check_for_none(self, self.content[t]): +1035 newcontent.append(None) +1036 else: +1037 newcontent.append(self.content[t] / y) +1038 return Corr(newcontent, prange=self.prange) +1039 elif isinstance(y, np.ndarray): +1040 if y.shape == (self.T,): +1041 return Corr(list((np.array(self.content).T / y).T)) +1042 else: +1043 raise ValueError("operands could not be broadcast together") +1044 else: +1045 raise TypeError('Corr / wrong type') +1046 +1047 def __neg__(self): +1048 newcontent = [None if _check_for_none(self, item) else -1. * item for item in self.content] +1049 return Corr(newcontent, prange=self.prange) +1050 +1051 def __sub__(self, y): +1052 return self + (-y) +1053 +1054 def __pow__(self, y): +1055 if isinstance(y, (Obs, int, float, CObs)): +1056 newcontent = [None if _check_for_none(self, item) else item**y for item in self.content] +1057 return Corr(newcontent, prange=self.prange) +1058 else: +1059 raise TypeError('Type of exponent not supported') +1060 +1061 def __abs__(self): +1062 newcontent = [None if _check_for_none(self, item) else np.abs(item) for item in self.content] +1063 return Corr(newcontent, prange=self.prange) +1064 +1065 # The numpy functions: +1066 def sqrt(self): +1067 return self ** 0.5 +1068 +1069 def log(self): +1070 newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content] +1071 return Corr(newcontent, prange=self.prange) +1072 +1073 def exp(self): +1074 newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content] +1075 return Corr(newcontent, prange=self.prange) +1076 +1077 def _apply_func_to_corr(self, func): +1078 newcontent = [None if _check_for_none(self, item) else func(item) for item in self.content] +1079 for t in range(self.T): +1080 if _check_for_none(self, newcontent[t]): +1081 continue +1082 if np.isnan(np.sum(newcontent[t]).value): +1083 newcontent[t] = None +1084 if all([item is None for item in newcontent]): +1085 raise Exception('Operation returns undefined correlator') +1086 return Corr(newcontent) +1087 +1088 def sin(self): +1089 return self._apply_func_to_corr(np.sin) +1090 +1091 def cos(self): +1092 return self._apply_func_to_corr(np.cos) +1093 +1094 def tan(self): +1095 return self._apply_func_to_corr(np.tan) +1096 +1097 def sinh(self): +1098 return self._apply_func_to_corr(np.sinh) +1099 +1100 def cosh(self): +1101 return self._apply_func_to_corr(np.cosh) +1102 +1103 def tanh(self): +1104 return self._apply_func_to_corr(np.tanh) +1105 +1106 def arcsin(self): +1107 return self._apply_func_to_corr(np.arcsin) +1108 +1109 def arccos(self): +1110 return self._apply_func_to_corr(np.arccos) +1111 +1112 def arctan(self): +1113 return self._apply_func_to_corr(np.arctan) +1114 +1115 def arcsinh(self): +1116 return self._apply_func_to_corr(np.arcsinh) +1117 +1118 def arccosh(self): +1119 return self._apply_func_to_corr(np.arccosh) +1120 +1121 def arctanh(self): +1122 return self._apply_func_to_corr(np.arctanh) +1123 +1124 # Right hand side operations (require tweak in main module to work) +1125 def __radd__(self, y): +1126 return self + y +1127 +1128 def __rsub__(self, y): +1129 return -self + y +1130 +1131 def __rmul__(self, y): +1132 return self * y +1133 +1134 def __rtruediv__(self, y): +1135 return (self / y) ** (-1) +1136 +1137 @property +1138 def real(self): +1139 def return_real(obs_OR_cobs): +1140 if isinstance(obs_OR_cobs, CObs): +1141 return obs_OR_cobs.real +1142 else: +1143 return obs_OR_cobs 1144 -1145 @property -1146 def imag(self): -1147 def return_imag(obs_OR_cobs): -1148 if isinstance(obs_OR_cobs, CObs): -1149 return obs_OR_cobs.imag -1150 else: -1151 return obs_OR_cobs * 0 # So it stays the right type -1152 -1153 return self._apply_func_to_corr(return_imag) +1145 return self._apply_func_to_corr(return_real) +1146 +1147 @property +1148 def imag(self): +1149 def return_imag(obs_OR_cobs): +1150 if isinstance(obs_OR_cobs, CObs): +1151 return obs_OR_cobs.imag +1152 else: +1153 return obs_OR_cobs * 0 # So it stays the right type 1154 -1155 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): -1156 r''' Project large correlation matrix to lowest states -1157 -1158 This method can be used to reduce the size of an (N x N) correlation matrix -1159 to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise -1160 is still small. -1161 -1162 Parameters -1163 ---------- -1164 Ntrunc: int -1165 Rank of the target matrix. -1166 tproj: int -1167 Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method. -1168 The default value is 3. -1169 t0proj: int -1170 Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly -1171 discouraged for O(a) improved theories, since the correctness of the procedure -1172 cannot be granted in this case. The default value is 2. -1173 basematrix : Corr -1174 Correlation matrix that is used to determine the eigenvectors of the -1175 lowest states based on a GEVP. basematrix is taken to be the Corr itself if -1176 is is not specified. -1177 -1178 Notes -1179 ----- -1180 We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving -1181 the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$ -1182 and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the -1183 resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via -1184 $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large -1185 correlation matrix and to remove some noise that is added by irrelevant operators. -1186 This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated -1187 bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$. -1188 ''' -1189 -1190 if self.N == 1: -1191 raise Exception('Method cannot be applied to one-dimensional correlators.') -1192 if basematrix is None: -1193 basematrix = self -1194 if Ntrunc >= basematrix.N: -1195 raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N)) -1196 if basematrix.N != self.N: -1197 raise Exception('basematrix and targetmatrix have to be of the same size.') -1198 -1199 evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc] +1155 return self._apply_func_to_corr(return_imag) +1156 +1157 def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None): +1158 r''' Project large correlation matrix to lowest states +1159 +1160 This method can be used to reduce the size of an (N x N) correlation matrix +1161 to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise +1162 is still small. +1163 +1164 Parameters +1165 ---------- +1166 Ntrunc: int +1167 Rank of the target matrix. +1168 tproj: int +1169 Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method. +1170 The default value is 3. +1171 t0proj: int +1172 Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly +1173 discouraged for O(a) improved theories, since the correctness of the procedure +1174 cannot be granted in this case. The default value is 2. +1175 basematrix : Corr +1176 Correlation matrix that is used to determine the eigenvectors of the +1177 lowest states based on a GEVP. basematrix is taken to be the Corr itself if +1178 is is not specified. +1179 +1180 Notes +1181 ----- +1182 We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving +1183 the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$ +1184 and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the +1185 resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via +1186 $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large +1187 correlation matrix and to remove some noise that is added by irrelevant operators. +1188 This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated +1189 bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$. +1190 ''' +1191 +1192 if self.N == 1: +1193 raise Exception('Method cannot be applied to one-dimensional correlators.') +1194 if basematrix is None: +1195 basematrix = self +1196 if Ntrunc >= basematrix.N: +1197 raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N)) +1198 if basematrix.N != self.N: +1199 raise Exception('basematrix and targetmatrix have to be of the same size.') 1200 -1201 tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object) -1202 rmat = [] -1203 for t in range(basematrix.T): -1204 for i in range(Ntrunc): -1205 for j in range(Ntrunc): -1206 tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j] -1207 rmat.append(np.copy(tmpmat)) -1208 -1209 newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)] -1210 return Corr(newcontent) +1201 evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc] +1202 +1203 tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object) +1204 rmat = [] +1205 for t in range(basematrix.T): +1206 for i in range(Ntrunc): +1207 for j in range(Ntrunc): +1208 tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j] +1209 rmat.append(np.copy(tmpmat)) +1210 +1211 newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)] +1212 return Corr(newcontent) @@ -4258,14 +4262,14 @@ specifies a custom path for the file (default '.')
def - print(self, range=[0, None]) + print(self, print_range=None)
-
901    def print(self, range=[0, None]):
-902        print(self.__repr__(range))
+            
901    def print(self, print_range=None):
+902        print(self.__repr__(print_range))
 
@@ -4283,8 +4287,8 @@ specifies a custom path for the file (default '.')
-
1064    def sqrt(self):
-1065        return self ** 0.5
+            
1066    def sqrt(self):
+1067        return self ** 0.5
 
@@ -4302,9 +4306,9 @@ specifies a custom path for the file (default '.')
-
1067    def log(self):
-1068        newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content]
-1069        return Corr(newcontent, prange=self.prange)
+            
1069    def log(self):
+1070        newcontent = [None if _check_for_none(self, item) else np.log(item) for item in self.content]
+1071        return Corr(newcontent, prange=self.prange)
 
@@ -4322,9 +4326,9 @@ specifies a custom path for the file (default '.')
-
1071    def exp(self):
-1072        newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content]
-1073        return Corr(newcontent, prange=self.prange)
+            
1073    def exp(self):
+1074        newcontent = [None if _check_for_none(self, item) else np.exp(item) for item in self.content]
+1075        return Corr(newcontent, prange=self.prange)
 
@@ -4342,8 +4346,8 @@ specifies a custom path for the file (default '.')
-
1086    def sin(self):
-1087        return self._apply_func_to_corr(np.sin)
+            
1088    def sin(self):
+1089        return self._apply_func_to_corr(np.sin)
 
@@ -4361,8 +4365,8 @@ specifies a custom path for the file (default '.')
-
1089    def cos(self):
-1090        return self._apply_func_to_corr(np.cos)
+            
1091    def cos(self):
+1092        return self._apply_func_to_corr(np.cos)
 
@@ -4380,8 +4384,8 @@ specifies a custom path for the file (default '.')
-
1092    def tan(self):
-1093        return self._apply_func_to_corr(np.tan)
+            
1094    def tan(self):
+1095        return self._apply_func_to_corr(np.tan)
 
@@ -4399,8 +4403,8 @@ specifies a custom path for the file (default '.')
-
1095    def sinh(self):
-1096        return self._apply_func_to_corr(np.sinh)
+            
1097    def sinh(self):
+1098        return self._apply_func_to_corr(np.sinh)
 
@@ -4418,8 +4422,8 @@ specifies a custom path for the file (default '.')
-
1098    def cosh(self):
-1099        return self._apply_func_to_corr(np.cosh)
+            
1100    def cosh(self):
+1101        return self._apply_func_to_corr(np.cosh)
 
@@ -4437,8 +4441,8 @@ specifies a custom path for the file (default '.')
-
1101    def tanh(self):
-1102        return self._apply_func_to_corr(np.tanh)
+            
1103    def tanh(self):
+1104        return self._apply_func_to_corr(np.tanh)
 
@@ -4456,8 +4460,8 @@ specifies a custom path for the file (default '.')
-
1104    def arcsin(self):
-1105        return self._apply_func_to_corr(np.arcsin)
+            
1106    def arcsin(self):
+1107        return self._apply_func_to_corr(np.arcsin)
 
@@ -4475,8 +4479,8 @@ specifies a custom path for the file (default '.')
-
1107    def arccos(self):
-1108        return self._apply_func_to_corr(np.arccos)
+            
1109    def arccos(self):
+1110        return self._apply_func_to_corr(np.arccos)
 
@@ -4494,8 +4498,8 @@ specifies a custom path for the file (default '.')
-
1110    def arctan(self):
-1111        return self._apply_func_to_corr(np.arctan)
+            
1112    def arctan(self):
+1113        return self._apply_func_to_corr(np.arctan)
 
@@ -4513,8 +4517,8 @@ specifies a custom path for the file (default '.')
-
1113    def arcsinh(self):
-1114        return self._apply_func_to_corr(np.arcsinh)
+            
1115    def arcsinh(self):
+1116        return self._apply_func_to_corr(np.arcsinh)
 
@@ -4532,8 +4536,8 @@ specifies a custom path for the file (default '.')
-
1116    def arccosh(self):
-1117        return self._apply_func_to_corr(np.arccosh)
+            
1118    def arccosh(self):
+1119        return self._apply_func_to_corr(np.arccosh)
 
@@ -4551,8 +4555,8 @@ specifies a custom path for the file (default '.')
-
1119    def arctanh(self):
-1120        return self._apply_func_to_corr(np.arctanh)
+            
1121    def arctanh(self):
+1122        return self._apply_func_to_corr(np.arctanh)
 
@@ -4592,62 +4596,62 @@ specifies a custom path for the file (default '.')
-
1155    def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):
-1156        r''' Project large correlation matrix to lowest states
-1157
-1158        This method can be used to reduce the size of an (N x N) correlation matrix
-1159        to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise
-1160        is still small.
-1161
-1162        Parameters
-1163        ----------
-1164        Ntrunc: int
-1165            Rank of the target matrix.
-1166        tproj: int
-1167            Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method.
-1168            The default value is 3.
-1169        t0proj: int
-1170            Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly
-1171            discouraged for O(a) improved theories, since the correctness of the procedure
-1172            cannot be granted in this case. The default value is 2.
-1173        basematrix : Corr
-1174            Correlation matrix that is used to determine the eigenvectors of the
-1175            lowest states based on a GEVP. basematrix is taken to be the Corr itself if
-1176            is is not specified.
-1177
-1178        Notes
-1179        -----
-1180        We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving
-1181        the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$
-1182        and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the
-1183        resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via
-1184        $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large
-1185        correlation matrix and to remove some noise that is added by irrelevant operators.
-1186        This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated
-1187        bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.
-1188        '''
-1189
-1190        if self.N == 1:
-1191            raise Exception('Method cannot be applied to one-dimensional correlators.')
-1192        if basematrix is None:
-1193            basematrix = self
-1194        if Ntrunc >= basematrix.N:
-1195            raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N))
-1196        if basematrix.N != self.N:
-1197            raise Exception('basematrix and targetmatrix have to be of the same size.')
-1198
-1199        evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc]
+            
1157    def prune(self, Ntrunc, tproj=3, t0proj=2, basematrix=None):
+1158        r''' Project large correlation matrix to lowest states
+1159
+1160        This method can be used to reduce the size of an (N x N) correlation matrix
+1161        to (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise
+1162        is still small.
+1163
+1164        Parameters
+1165        ----------
+1166        Ntrunc: int
+1167            Rank of the target matrix.
+1168        tproj: int
+1169            Time where the eigenvectors are evaluated, corresponds to ts in the GEVP method.
+1170            The default value is 3.
+1171        t0proj: int
+1172            Time where the correlation matrix is inverted. Choosing t0proj=1 is strongly
+1173            discouraged for O(a) improved theories, since the correctness of the procedure
+1174            cannot be granted in this case. The default value is 2.
+1175        basematrix : Corr
+1176            Correlation matrix that is used to determine the eigenvectors of the
+1177            lowest states based on a GEVP. basematrix is taken to be the Corr itself if
+1178            is is not specified.
+1179
+1180        Notes
+1181        -----
+1182        We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving
+1183        the GEVP $$C(t) v_n(t, t_0) = \lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \equiv t_\mathrm{proj}$
+1184        and $t_0 \equiv t_{0, \mathrm{proj}}$. The target matrix is projected onto the subspace of the
+1185        resulting eigenvectors $v_n, n=1,\dots,N_\mathrm{trunc}$ via
+1186        $$G^\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large
+1187        correlation matrix and to remove some noise that is added by irrelevant operators.
+1188        This may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated
+1189        bound $t_0 \leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.
+1190        '''
+1191
+1192        if self.N == 1:
+1193            raise Exception('Method cannot be applied to one-dimensional correlators.')
+1194        if basematrix is None:
+1195            basematrix = self
+1196        if Ntrunc >= basematrix.N:
+1197            raise Exception('Cannot truncate using Ntrunc <= %d' % (basematrix.N))
+1198        if basematrix.N != self.N:
+1199            raise Exception('basematrix and targetmatrix have to be of the same size.')
 1200
-1201        tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object)
-1202        rmat = []
-1203        for t in range(basematrix.T):
-1204            for i in range(Ntrunc):
-1205                for j in range(Ntrunc):
-1206                    tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j]
-1207            rmat.append(np.copy(tmpmat))
-1208
-1209        newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)]
-1210        return Corr(newcontent)
+1201        evecs = basematrix.GEVP(t0proj, tproj, sort=None)[:Ntrunc]
+1202
+1203        tmpmat = np.empty((Ntrunc, Ntrunc), dtype=object)
+1204        rmat = []
+1205        for t in range(basematrix.T):
+1206            for i in range(Ntrunc):
+1207                for j in range(Ntrunc):
+1208                    tmpmat[i][j] = evecs[i].T @ self[t] @ evecs[j]
+1209            rmat.append(np.copy(tmpmat))
+1210
+1211        newcontent = [None if (self.content[t] is None) else rmat[t] for t in range(self.T)]
+1212        return Corr(newcontent)
 
diff --git a/docs/pyerrors/input/dobs.html b/docs/pyerrors/input/dobs.html index d4665081..cbcae23b 100644 --- a/docs/pyerrors/input/dobs.html +++ b/docs/pyerrors/input/dobs.html @@ -743,7 +743,7 @@
652 return o 653 654 -655def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}): +655def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None): 656 """Generate the string for the export of a list of Obs or structures containing Obs 657 to a .xml.gz file according to the Zeuthen dobs format. 658 @@ -769,199 +769,201 @@ 678 Provide alternative enstag for ensembles in the form enstags = {ename: enstag} 679 Otherwise, the ensemble name is used. 680 """ -681 od = {} -682 r_names = [] -683 for o in obsl: -684 r_names += [name for name in o.names if name.split('|')[0] in o.mc_names] -685 r_names = sorted(set(r_names)) -686 mc_names = sorted(set([n.split('|')[0] for n in r_names])) -687 for tmpname in mc_names: -688 if tmpname not in enstags: -689 enstags[tmpname] = tmpname -690 ne = len(set(mc_names)) -691 cov_names = [] -692 for o in obsl: -693 cov_names += list(o.cov_names) -694 cov_names = sorted(set(cov_names)) -695 nc = len(set(cov_names)) -696 od['OBSERVABLES'] = {} -697 od['OBSERVABLES']['SCHEMA'] = {'NAME': 'lattobs', 'VERSION': '1.0'} -698 if who is None: -699 who = getpass.getuser() -700 od['OBSERVABLES']['origin'] = { -701 'who': who, -702 'date': str(datetime.datetime.now())[:-7], -703 'host': socket.gethostname(), -704 'tool': {'name': 'pyerrors', 'version': pyerrorsversion.__version__}} -705 od['OBSERVABLES']['dobs'] = {} -706 pd = od['OBSERVABLES']['dobs'] -707 pd['spec'] = spec -708 pd['origin'] = origin -709 pd['name'] = name -710 pd['array'] = {} -711 pd['array']['id'] = 'val' -712 pd['array']['layout'] = '1 f%d' % (len(obsl)) -713 osymbol = '' -714 if symbol: -715 if not isinstance(symbol, list): -716 raise Exception('Symbol has to be a list!') -717 if not (len(symbol) == 0 or len(symbol) == len(obsl)): -718 raise Exception('Symbol has to be a list of lenght 0 or %d!' % (len(obsl))) -719 osymbol = symbol[0] -720 for s in symbol[1:]: -721 osymbol += ' %s' % s -722 pd['array']['symbol'] = osymbol -723 -724 pd['array']['#values'] = [' '.join(['%1.16e' % o.value for o in obsl])] -725 pd['ne'] = '%d' % (ne) -726 pd['nc'] = '%d' % (nc) -727 pd['edata'] = [] -728 for name in mc_names: -729 ed = {} -730 ed['enstag'] = enstags[name] -731 onames = sorted([n for n in r_names if (n.startswith(name + '|') or n == name)]) -732 nr = len(onames) -733 ed['nr'] = nr -734 ed[''] = [] -735 -736 for r in range(nr): -737 ad = {} -738 repname = onames[r] -739 ad['id'] = repname.replace('|', '') -740 idx = _merge_idx([o.idl.get(repname, []) for o in obsl]) -741 Nconf = len(idx) -742 layout = '%d i f%d' % (Nconf, len(obsl)) -743 ad['layout'] = layout -744 data = '' -745 counters = [0 for o in obsl] -746 for ci in idx: -747 data += '%d ' % ci -748 for oi in range(len(obsl)): -749 o = obsl[oi] -750 if repname in o.idl: -751 if counters[oi] < 0: -752 data += '0 ' -753 continue -754 if o.idl[repname][counters[oi]] == ci: -755 num = o.deltas[repname][counters[oi]] -756 if num == 0: -757 data += '0 ' -758 else: -759 data += '%1.16e ' % (num) -760 counters[oi] += 1 -761 if counters[oi] >= len(o.idl[repname]): -762 counters[oi] = -1 -763 else: -764 data += '0 ' -765 else: -766 data += '0 ' -767 data += '\n' -768 ad['#data'] = data -769 ed[''].append(ad) -770 pd['edata'].append(ed) -771 -772 allcov = {} -773 for o in obsl: -774 for name in o.cov_names: -775 if name in allcov: -776 if not np.array_equal(allcov[name], o.covobs[name].cov): -777 raise Exception('Inconsistent covariance matrices for %s!' % (name)) -778 else: -779 allcov[name] = o.covobs[name].cov -780 pd['cdata'] = [] -781 for name in cov_names: -782 cd = {} -783 cd['id'] = name -784 -785 covd = {'id': 'cov'} -786 if allcov[name].shape == (): -787 ncov = 1 -788 covd['layout'] = '1 1 f' -789 covd['#data'] = '%1.14e' % (allcov[name]) -790 else: -791 shape = allcov[name].shape -792 assert (shape[0] == shape[1]) -793 ncov = shape[0] -794 covd['layout'] = '%d %d f' % (ncov, ncov) -795 ds = '' -796 for i in range(ncov): -797 for j in range(ncov): -798 val = allcov[name][i][j] -799 if val == 0: -800 ds += '0 ' -801 else: -802 ds += '%1.14e ' % (val) -803 ds += '\n' -804 covd['#data'] = ds -805 -806 gradd = {'id': 'grad'} -807 gradd['layout'] = '%d f%d' % (ncov, len(obsl)) -808 ds = '' -809 for i in range(ncov): -810 for o in obsl: -811 if name in o.covobs: -812 val = o.covobs[name].grad[i] -813 if val != 0: -814 ds += '%1.14e ' % (val) -815 else: -816 ds += '0 ' -817 else: -818 ds += '0 ' -819 gradd['#data'] = ds -820 cd['array'] = [covd, gradd] -821 pd['cdata'].append(cd) -822 -823 rs = '<?xml version="1.0" encoding="utf-8"?>\n' + _dobsdict_to_xmlstring_spaces(od) +681 if enstags is None: +682 enstags = {} +683 od = {} +684 r_names = [] +685 for o in obsl: +686 r_names += [name for name in o.names if name.split('|')[0] in o.mc_names] +687 r_names = sorted(set(r_names)) +688 mc_names = sorted(set([n.split('|')[0] for n in r_names])) +689 for tmpname in mc_names: +690 if tmpname not in enstags: +691 enstags[tmpname] = tmpname +692 ne = len(set(mc_names)) +693 cov_names = [] +694 for o in obsl: +695 cov_names += list(o.cov_names) +696 cov_names = sorted(set(cov_names)) +697 nc = len(set(cov_names)) +698 od['OBSERVABLES'] = {} +699 od['OBSERVABLES']['SCHEMA'] = {'NAME': 'lattobs', 'VERSION': '1.0'} +700 if who is None: +701 who = getpass.getuser() +702 od['OBSERVABLES']['origin'] = { +703 'who': who, +704 'date': str(datetime.datetime.now())[:-7], +705 'host': socket.gethostname(), +706 'tool': {'name': 'pyerrors', 'version': pyerrorsversion.__version__}} +707 od['OBSERVABLES']['dobs'] = {} +708 pd = od['OBSERVABLES']['dobs'] +709 pd['spec'] = spec +710 pd['origin'] = origin +711 pd['name'] = name +712 pd['array'] = {} +713 pd['array']['id'] = 'val' +714 pd['array']['layout'] = '1 f%d' % (len(obsl)) +715 osymbol = '' +716 if symbol: +717 if not isinstance(symbol, list): +718 raise Exception('Symbol has to be a list!') +719 if not (len(symbol) == 0 or len(symbol) == len(obsl)): +720 raise Exception('Symbol has to be a list of lenght 0 or %d!' % (len(obsl))) +721 osymbol = symbol[0] +722 for s in symbol[1:]: +723 osymbol += ' %s' % s +724 pd['array']['symbol'] = osymbol +725 +726 pd['array']['#values'] = [' '.join(['%1.16e' % o.value for o in obsl])] +727 pd['ne'] = '%d' % (ne) +728 pd['nc'] = '%d' % (nc) +729 pd['edata'] = [] +730 for name in mc_names: +731 ed = {} +732 ed['enstag'] = enstags[name] +733 onames = sorted([n for n in r_names if (n.startswith(name + '|') or n == name)]) +734 nr = len(onames) +735 ed['nr'] = nr +736 ed[''] = [] +737 +738 for r in range(nr): +739 ad = {} +740 repname = onames[r] +741 ad['id'] = repname.replace('|', '') +742 idx = _merge_idx([o.idl.get(repname, []) for o in obsl]) +743 Nconf = len(idx) +744 layout = '%d i f%d' % (Nconf, len(obsl)) +745 ad['layout'] = layout +746 data = '' +747 counters = [0 for o in obsl] +748 for ci in idx: +749 data += '%d ' % ci +750 for oi in range(len(obsl)): +751 o = obsl[oi] +752 if repname in o.idl: +753 if counters[oi] < 0: +754 data += '0 ' +755 continue +756 if o.idl[repname][counters[oi]] == ci: +757 num = o.deltas[repname][counters[oi]] +758 if num == 0: +759 data += '0 ' +760 else: +761 data += '%1.16e ' % (num) +762 counters[oi] += 1 +763 if counters[oi] >= len(o.idl[repname]): +764 counters[oi] = -1 +765 else: +766 data += '0 ' +767 else: +768 data += '0 ' +769 data += '\n' +770 ad['#data'] = data +771 ed[''].append(ad) +772 pd['edata'].append(ed) +773 +774 allcov = {} +775 for o in obsl: +776 for name in o.cov_names: +777 if name in allcov: +778 if not np.array_equal(allcov[name], o.covobs[name].cov): +779 raise Exception('Inconsistent covariance matrices for %s!' % (name)) +780 else: +781 allcov[name] = o.covobs[name].cov +782 pd['cdata'] = [] +783 for name in cov_names: +784 cd = {} +785 cd['id'] = name +786 +787 covd = {'id': 'cov'} +788 if allcov[name].shape == (): +789 ncov = 1 +790 covd['layout'] = '1 1 f' +791 covd['#data'] = '%1.14e' % (allcov[name]) +792 else: +793 shape = allcov[name].shape +794 assert (shape[0] == shape[1]) +795 ncov = shape[0] +796 covd['layout'] = '%d %d f' % (ncov, ncov) +797 ds = '' +798 for i in range(ncov): +799 for j in range(ncov): +800 val = allcov[name][i][j] +801 if val == 0: +802 ds += '0 ' +803 else: +804 ds += '%1.14e ' % (val) +805 ds += '\n' +806 covd['#data'] = ds +807 +808 gradd = {'id': 'grad'} +809 gradd['layout'] = '%d f%d' % (ncov, len(obsl)) +810 ds = '' +811 for i in range(ncov): +812 for o in obsl: +813 if name in o.covobs: +814 val = o.covobs[name].grad[i] +815 if val != 0: +816 ds += '%1.14e ' % (val) +817 else: +818 ds += '0 ' +819 else: +820 ds += '0 ' +821 gradd['#data'] = ds +822 cd['array'] = [covd, gradd] +823 pd['cdata'].append(cd) 824 -825 return rs +825 rs = '<?xml version="1.0" encoding="utf-8"?>\n' + _dobsdict_to_xmlstring_spaces(od) 826 -827 -828def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}, gz=True): -829 """Export a list of Obs or structures containing Obs to a .xml.gz file -830 according to the Zeuthen dobs format. -831 -832 Tags are not written or recovered automatically. The separator | is removed from the replica names. +827 return rs +828 +829 +830def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}, gz=True): +831 """Export a list of Obs or structures containing Obs to a .xml.gz file +832 according to the Zeuthen dobs format. 833 -834 Parameters -835 ---------- -836 obsl : list -837 List of Obs that will be exported. -838 The Obs inside a structure do not have to be defined on the same set of configurations, -839 but the storage requirement is increased, if this is not the case. -840 fname : str -841 Filename of the output file. -842 name : str -843 The name of the observable. -844 spec : str -845 Optional string that describes the contents of the file. -846 origin : str -847 Specify where the data has its origin. -848 symbol : list -849 A list of symbols that describe the observables to be written. May be empty. -850 who : str -851 Provide the name of the person that exports the data. -852 enstags : dict -853 Provide alternative enstag for ensembles in the form enstags = {ename: enstag} -854 Otherwise, the ensemble name is used. -855 gz : bool -856 If True, the output is a gzipped XML. If False, the output is a XML file. -857 """ -858 -859 dobsstring = create_dobs_string(obsl, name, spec, origin, symbol, who, enstags=enstags) +834 Tags are not written or recovered automatically. The separator | is removed from the replica names. +835 +836 Parameters +837 ---------- +838 obsl : list +839 List of Obs that will be exported. +840 The Obs inside a structure do not have to be defined on the same set of configurations, +841 but the storage requirement is increased, if this is not the case. +842 fname : str +843 Filename of the output file. +844 name : str +845 The name of the observable. +846 spec : str +847 Optional string that describes the contents of the file. +848 origin : str +849 Specify where the data has its origin. +850 symbol : list +851 A list of symbols that describe the observables to be written. May be empty. +852 who : str +853 Provide the name of the person that exports the data. +854 enstags : dict +855 Provide alternative enstag for ensembles in the form enstags = {ename: enstag} +856 Otherwise, the ensemble name is used. +857 gz : bool +858 If True, the output is a gzipped XML. If False, the output is a XML file. +859 """ 860 -861 if not fname.endswith('.xml') and not fname.endswith('.gz'): -862 fname += '.xml' -863 -864 if gz: -865 if not fname.endswith('.gz'): -866 fname += '.gz' -867 -868 fp = gzip.open(fname, 'wb') -869 fp.write(dobsstring.encode('utf-8')) -870 else: -871 fp = open(fname, 'w', encoding='utf-8') -872 fp.write(dobsstring) -873 fp.close() +861 dobsstring = create_dobs_string(obsl, name, spec, origin, symbol, who, enstags=enstags) +862 +863 if not fname.endswith('.xml') and not fname.endswith('.gz'): +864 fname += '.xml' +865 +866 if gz: +867 if not fname.endswith('.gz'): +868 fname += '.gz' +869 +870 fp = gzip.open(fname, 'wb') +871 fp.write(dobsstring.encode('utf-8')) +872 else: +873 fp = open(fname, 'w', encoding='utf-8') +874 fp.write(dobsstring) +875 fp.close()
@@ -1594,13 +1596,13 @@ None or False: No separator is inserted.
def - create_dobs_string( obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}) + create_dobs_string( obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None)
-
656def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}):
+            
656def create_dobs_string(obsl, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags=None):
 657    """Generate the string for the export of a list of Obs or structures containing Obs
 658    to a .xml.gz file according to the Zeuthen dobs format.
 659
@@ -1626,151 +1628,153 @@ None or False: No separator is inserted.
 679        Provide alternative enstag for ensembles in the form enstags = {ename: enstag}
 680        Otherwise, the ensemble name is used.
 681    """
-682    od = {}
-683    r_names = []
-684    for o in obsl:
-685        r_names += [name for name in o.names if name.split('|')[0] in o.mc_names]
-686    r_names = sorted(set(r_names))
-687    mc_names = sorted(set([n.split('|')[0] for n in r_names]))
-688    for tmpname in mc_names:
-689        if tmpname not in enstags:
-690            enstags[tmpname] = tmpname
-691    ne = len(set(mc_names))
-692    cov_names = []
-693    for o in obsl:
-694        cov_names += list(o.cov_names)
-695    cov_names = sorted(set(cov_names))
-696    nc = len(set(cov_names))
-697    od['OBSERVABLES'] = {}
-698    od['OBSERVABLES']['SCHEMA'] = {'NAME': 'lattobs', 'VERSION': '1.0'}
-699    if who is None:
-700        who = getpass.getuser()
-701    od['OBSERVABLES']['origin'] = {
-702        'who': who,
-703        'date': str(datetime.datetime.now())[:-7],
-704        'host': socket.gethostname(),
-705        'tool': {'name': 'pyerrors', 'version': pyerrorsversion.__version__}}
-706    od['OBSERVABLES']['dobs'] = {}
-707    pd = od['OBSERVABLES']['dobs']
-708    pd['spec'] = spec
-709    pd['origin'] = origin
-710    pd['name'] = name
-711    pd['array'] = {}
-712    pd['array']['id'] = 'val'
-713    pd['array']['layout'] = '1 f%d' % (len(obsl))
-714    osymbol = ''
-715    if symbol:
-716        if not isinstance(symbol, list):
-717            raise Exception('Symbol has to be a list!')
-718        if not (len(symbol) == 0 or len(symbol) == len(obsl)):
-719            raise Exception('Symbol has to be a list of lenght 0 or %d!' % (len(obsl)))
-720        osymbol = symbol[0]
-721        for s in symbol[1:]:
-722            osymbol += ' %s' % s
-723        pd['array']['symbol'] = osymbol
-724
-725    pd['array']['#values'] = ['  '.join(['%1.16e' % o.value for o in obsl])]
-726    pd['ne'] = '%d' % (ne)
-727    pd['nc'] = '%d' % (nc)
-728    pd['edata'] = []
-729    for name in mc_names:
-730        ed = {}
-731        ed['enstag'] = enstags[name]
-732        onames = sorted([n for n in r_names if (n.startswith(name + '|') or n == name)])
-733        nr = len(onames)
-734        ed['nr'] = nr
-735        ed[''] = []
-736
-737        for r in range(nr):
-738            ad = {}
-739            repname = onames[r]
-740            ad['id'] = repname.replace('|', '')
-741            idx = _merge_idx([o.idl.get(repname, []) for o in obsl])
-742            Nconf = len(idx)
-743            layout = '%d i f%d' % (Nconf, len(obsl))
-744            ad['layout'] = layout
-745            data = ''
-746            counters = [0 for o in obsl]
-747            for ci in idx:
-748                data += '%d ' % ci
-749                for oi in range(len(obsl)):
-750                    o = obsl[oi]
-751                    if repname in o.idl:
-752                        if counters[oi] < 0:
-753                            data += '0 '
-754                            continue
-755                        if o.idl[repname][counters[oi]] == ci:
-756                            num = o.deltas[repname][counters[oi]]
-757                            if num == 0:
-758                                data += '0 '
-759                            else:
-760                                data += '%1.16e ' % (num)
-761                            counters[oi] += 1
-762                            if counters[oi] >= len(o.idl[repname]):
-763                                counters[oi] = -1
-764                        else:
-765                            data += '0 '
-766                    else:
-767                        data += '0 '
-768                data += '\n'
-769            ad['#data'] = data
-770            ed[''].append(ad)
-771        pd['edata'].append(ed)
-772
-773        allcov = {}
-774        for o in obsl:
-775            for name in o.cov_names:
-776                if name in allcov:
-777                    if not np.array_equal(allcov[name], o.covobs[name].cov):
-778                        raise Exception('Inconsistent covariance matrices for %s!' % (name))
-779                else:
-780                    allcov[name] = o.covobs[name].cov
-781        pd['cdata'] = []
-782        for name in cov_names:
-783            cd = {}
-784            cd['id'] = name
-785
-786            covd = {'id': 'cov'}
-787            if allcov[name].shape == ():
-788                ncov = 1
-789                covd['layout'] = '1 1 f'
-790                covd['#data'] = '%1.14e' % (allcov[name])
-791            else:
-792                shape = allcov[name].shape
-793                assert (shape[0] == shape[1])
-794                ncov = shape[0]
-795                covd['layout'] = '%d %d f' % (ncov, ncov)
-796                ds = ''
-797                for i in range(ncov):
-798                    for j in range(ncov):
-799                        val = allcov[name][i][j]
-800                        if val == 0:
-801                            ds += '0 '
-802                        else:
-803                            ds += '%1.14e ' % (val)
-804                    ds += '\n'
-805                covd['#data'] = ds
-806
-807            gradd = {'id': 'grad'}
-808            gradd['layout'] = '%d f%d' % (ncov, len(obsl))
-809            ds = ''
-810            for i in range(ncov):
-811                for o in obsl:
-812                    if name in o.covobs:
-813                        val = o.covobs[name].grad[i]
-814                        if val != 0:
-815                            ds += '%1.14e ' % (val)
-816                        else:
-817                            ds += '0 '
-818                    else:
-819                        ds += '0 '
-820            gradd['#data'] = ds
-821            cd['array'] = [covd, gradd]
-822            pd['cdata'].append(cd)
-823
-824    rs = '<?xml version="1.0" encoding="utf-8"?>\n' + _dobsdict_to_xmlstring_spaces(od)
+682    if enstags is None:
+683        enstags = {}
+684    od = {}
+685    r_names = []
+686    for o in obsl:
+687        r_names += [name for name in o.names if name.split('|')[0] in o.mc_names]
+688    r_names = sorted(set(r_names))
+689    mc_names = sorted(set([n.split('|')[0] for n in r_names]))
+690    for tmpname in mc_names:
+691        if tmpname not in enstags:
+692            enstags[tmpname] = tmpname
+693    ne = len(set(mc_names))
+694    cov_names = []
+695    for o in obsl:
+696        cov_names += list(o.cov_names)
+697    cov_names = sorted(set(cov_names))
+698    nc = len(set(cov_names))
+699    od['OBSERVABLES'] = {}
+700    od['OBSERVABLES']['SCHEMA'] = {'NAME': 'lattobs', 'VERSION': '1.0'}
+701    if who is None:
+702        who = getpass.getuser()
+703    od['OBSERVABLES']['origin'] = {
+704        'who': who,
+705        'date': str(datetime.datetime.now())[:-7],
+706        'host': socket.gethostname(),
+707        'tool': {'name': 'pyerrors', 'version': pyerrorsversion.__version__}}
+708    od['OBSERVABLES']['dobs'] = {}
+709    pd = od['OBSERVABLES']['dobs']
+710    pd['spec'] = spec
+711    pd['origin'] = origin
+712    pd['name'] = name
+713    pd['array'] = {}
+714    pd['array']['id'] = 'val'
+715    pd['array']['layout'] = '1 f%d' % (len(obsl))
+716    osymbol = ''
+717    if symbol:
+718        if not isinstance(symbol, list):
+719            raise Exception('Symbol has to be a list!')
+720        if not (len(symbol) == 0 or len(symbol) == len(obsl)):
+721            raise Exception('Symbol has to be a list of lenght 0 or %d!' % (len(obsl)))
+722        osymbol = symbol[0]
+723        for s in symbol[1:]:
+724            osymbol += ' %s' % s
+725        pd['array']['symbol'] = osymbol
+726
+727    pd['array']['#values'] = ['  '.join(['%1.16e' % o.value for o in obsl])]
+728    pd['ne'] = '%d' % (ne)
+729    pd['nc'] = '%d' % (nc)
+730    pd['edata'] = []
+731    for name in mc_names:
+732        ed = {}
+733        ed['enstag'] = enstags[name]
+734        onames = sorted([n for n in r_names if (n.startswith(name + '|') or n == name)])
+735        nr = len(onames)
+736        ed['nr'] = nr
+737        ed[''] = []
+738
+739        for r in range(nr):
+740            ad = {}
+741            repname = onames[r]
+742            ad['id'] = repname.replace('|', '')
+743            idx = _merge_idx([o.idl.get(repname, []) for o in obsl])
+744            Nconf = len(idx)
+745            layout = '%d i f%d' % (Nconf, len(obsl))
+746            ad['layout'] = layout
+747            data = ''
+748            counters = [0 for o in obsl]
+749            for ci in idx:
+750                data += '%d ' % ci
+751                for oi in range(len(obsl)):
+752                    o = obsl[oi]
+753                    if repname in o.idl:
+754                        if counters[oi] < 0:
+755                            data += '0 '
+756                            continue
+757                        if o.idl[repname][counters[oi]] == ci:
+758                            num = o.deltas[repname][counters[oi]]
+759                            if num == 0:
+760                                data += '0 '
+761                            else:
+762                                data += '%1.16e ' % (num)
+763                            counters[oi] += 1
+764                            if counters[oi] >= len(o.idl[repname]):
+765                                counters[oi] = -1
+766                        else:
+767                            data += '0 '
+768                    else:
+769                        data += '0 '
+770                data += '\n'
+771            ad['#data'] = data
+772            ed[''].append(ad)
+773        pd['edata'].append(ed)
+774
+775        allcov = {}
+776        for o in obsl:
+777            for name in o.cov_names:
+778                if name in allcov:
+779                    if not np.array_equal(allcov[name], o.covobs[name].cov):
+780                        raise Exception('Inconsistent covariance matrices for %s!' % (name))
+781                else:
+782                    allcov[name] = o.covobs[name].cov
+783        pd['cdata'] = []
+784        for name in cov_names:
+785            cd = {}
+786            cd['id'] = name
+787
+788            covd = {'id': 'cov'}
+789            if allcov[name].shape == ():
+790                ncov = 1
+791                covd['layout'] = '1 1 f'
+792                covd['#data'] = '%1.14e' % (allcov[name])
+793            else:
+794                shape = allcov[name].shape
+795                assert (shape[0] == shape[1])
+796                ncov = shape[0]
+797                covd['layout'] = '%d %d f' % (ncov, ncov)
+798                ds = ''
+799                for i in range(ncov):
+800                    for j in range(ncov):
+801                        val = allcov[name][i][j]
+802                        if val == 0:
+803                            ds += '0 '
+804                        else:
+805                            ds += '%1.14e ' % (val)
+806                    ds += '\n'
+807                covd['#data'] = ds
+808
+809            gradd = {'id': 'grad'}
+810            gradd['layout'] = '%d f%d' % (ncov, len(obsl))
+811            ds = ''
+812            for i in range(ncov):
+813                for o in obsl:
+814                    if name in o.covobs:
+815                        val = o.covobs[name].grad[i]
+816                        if val != 0:
+817                            ds += '%1.14e ' % (val)
+818                        else:
+819                            ds += '0 '
+820                    else:
+821                        ds += '0 '
+822            gradd['#data'] = ds
+823            cd['array'] = [covd, gradd]
+824            pd['cdata'].append(cd)
 825
-826    return rs
+826    rs = '<?xml version="1.0" encoding="utf-8"?>\n' + _dobsdict_to_xmlstring_spaces(od)
+827
+828    return rs
 
@@ -1815,52 +1819,52 @@ Otherwise, the ensemble name is used.
-
829def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}, gz=True):
-830    """Export a list of Obs or structures containing Obs to a .xml.gz file
-831    according to the Zeuthen dobs format.
-832
-833    Tags are not written or recovered automatically. The separator | is removed from the replica names.
+            
831def write_dobs(obsl, fname, name, spec='dobs v1.0', origin='', symbol=[], who=None, enstags={}, gz=True):
+832    """Export a list of Obs or structures containing Obs to a .xml.gz file
+833    according to the Zeuthen dobs format.
 834
-835    Parameters
-836    ----------
-837    obsl : list
-838        List of Obs that will be exported.
-839        The Obs inside a structure do not have to be defined on the same set of configurations,
-840        but the storage requirement is increased, if this is not the case.
-841    fname : str
-842        Filename of the output file.
-843    name : str
-844        The name of the observable.
-845    spec : str
-846        Optional string that describes the contents of the file.
-847    origin : str
-848        Specify where the data has its origin.
-849    symbol : list
-850        A list of symbols that describe the observables to be written. May be empty.
-851    who : str
-852        Provide the name of the person that exports the data.
-853    enstags : dict
-854        Provide alternative enstag for ensembles in the form enstags = {ename: enstag}
-855        Otherwise, the ensemble name is used.
-856    gz : bool
-857        If True, the output is a gzipped XML. If False, the output is a XML file.
-858    """
-859
-860    dobsstring = create_dobs_string(obsl, name, spec, origin, symbol, who, enstags=enstags)
+835    Tags are not written or recovered automatically. The separator | is removed from the replica names.
+836
+837    Parameters
+838    ----------
+839    obsl : list
+840        List of Obs that will be exported.
+841        The Obs inside a structure do not have to be defined on the same set of configurations,
+842        but the storage requirement is increased, if this is not the case.
+843    fname : str
+844        Filename of the output file.
+845    name : str
+846        The name of the observable.
+847    spec : str
+848        Optional string that describes the contents of the file.
+849    origin : str
+850        Specify where the data has its origin.
+851    symbol : list
+852        A list of symbols that describe the observables to be written. May be empty.
+853    who : str
+854        Provide the name of the person that exports the data.
+855    enstags : dict
+856        Provide alternative enstag for ensembles in the form enstags = {ename: enstag}
+857        Otherwise, the ensemble name is used.
+858    gz : bool
+859        If True, the output is a gzipped XML. If False, the output is a XML file.
+860    """
 861
-862    if not fname.endswith('.xml') and not fname.endswith('.gz'):
-863        fname += '.xml'
-864
-865    if gz:
-866        if not fname.endswith('.gz'):
-867            fname += '.gz'
-868
-869        fp = gzip.open(fname, 'wb')
-870        fp.write(dobsstring.encode('utf-8'))
-871    else:
-872        fp = open(fname, 'w', encoding='utf-8')
-873        fp.write(dobsstring)
-874    fp.close()
+862    dobsstring = create_dobs_string(obsl, name, spec, origin, symbol, who, enstags=enstags)
+863
+864    if not fname.endswith('.xml') and not fname.endswith('.gz'):
+865        fname += '.xml'
+866
+867    if gz:
+868        if not fname.endswith('.gz'):
+869            fname += '.gz'
+870
+871        fp = gzip.open(fname, 'wb')
+872        fp.write(dobsstring.encode('utf-8'))
+873    else:
+874        fp = open(fname, 'w', encoding='utf-8')
+875        fp.write(dobsstring)
+876    fp.close()
 
diff --git a/docs/search.js b/docs/search.js index 20081bf1..8573cbe9 100644 --- a/docs/search.js +++ b/docs/search.js @@ -1,6 +1,6 @@ window.pdocSearch = (function(){ /** elasticlunr - http://weixsong.github.io * Copyright (C) 2017 Oliver Nightingale * Copyright (C) 2017 Wei Song * MIT Licensed */!function(){function e(e){if(null===e||"object"!=typeof e)return e;var t=e.constructor();for(var n in e)e.hasOwnProperty(n)&&(t[n]=e[n]);return t}var t=function(e){var n=new t.Index;return n.pipeline.add(t.trimmer,t.stopWordFilter,t.stemmer),e&&e.call(n,n),n};t.version="0.9.5",lunr=t,t.utils={},t.utils.warn=function(e){return function(t){e.console&&console.warn&&console.warn(t)}}(this),t.utils.toString=function(e){return void 0===e||null===e?"":e.toString()},t.EventEmitter=function(){this.events={}},t.EventEmitter.prototype.addListener=function(){var e=Array.prototype.slice.call(arguments),t=e.pop(),n=e;if("function"!=typeof t)throw new TypeError("last argument must be a function");n.forEach(function(e){this.hasHandler(e)||(this.events[e]=[]),this.events[e].push(t)},this)},t.EventEmitter.prototype.removeListener=function(e,t){if(this.hasHandler(e)){var n=this.events[e].indexOf(t);-1!==n&&(this.events[e].splice(n,1),0==this.events[e].length&&delete this.events[e])}},t.EventEmitter.prototype.emit=function(e){if(this.hasHandler(e)){var t=Array.prototype.slice.call(arguments,1);this.events[e].forEach(function(e){e.apply(void 0,t)},this)}},t.EventEmitter.prototype.hasHandler=function(e){return e in this.events},t.tokenizer=function(e){if(!arguments.length||null===e||void 0===e)return[];if(Array.isArray(e)){var n=e.filter(function(e){return null===e||void 0===e?!1:!0});n=n.map(function(e){return t.utils.toString(e).toLowerCase()});var i=[];return n.forEach(function(e){var n=e.split(t.tokenizer.seperator);i=i.concat(n)},this),i}return e.toString().trim().toLowerCase().split(t.tokenizer.seperator)},t.tokenizer.defaultSeperator=/[\s\-]+/,t.tokenizer.seperator=t.tokenizer.defaultSeperator,t.tokenizer.setSeperator=function(e){null!==e&&void 0!==e&&"object"==typeof e&&(t.tokenizer.seperator=e)},t.tokenizer.resetSeperator=function(){t.tokenizer.seperator=t.tokenizer.defaultSeperator},t.tokenizer.getSeperator=function(){return t.tokenizer.seperator},t.Pipeline=function(){this._queue=[]},t.Pipeline.registeredFunctions={},t.Pipeline.registerFunction=function(e,n){n in t.Pipeline.registeredFunctions&&t.utils.warn("Overwriting existing registered function: "+n),e.label=n,t.Pipeline.registeredFunctions[n]=e},t.Pipeline.getRegisteredFunction=function(e){return e in t.Pipeline.registeredFunctions!=!0?null:t.Pipeline.registeredFunctions[e]},t.Pipeline.warnIfFunctionNotRegistered=function(e){var n=e.label&&e.label in this.registeredFunctions;n||t.utils.warn("Function is not registered with pipeline. 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configuration"),this.buildDefaultConfig(n)}},t.Configuration.prototype.buildDefaultConfig=function(e){this.reset(),e.forEach(function(e){this.config[e]={boost:1,bool:"OR",expand:!1}},this)},t.Configuration.prototype.buildUserConfig=function(e,n){var i="OR",o=!1;if(this.reset(),"bool"in e&&(i=e.bool||i),"expand"in e&&(o=e.expand||o),"fields"in e)for(var r in e.fields)if(n.indexOf(r)>-1){var s=e.fields[r],u=o;void 0!=s.expand&&(u=s.expand),this.config[r]={boost:s.boost||0===s.boost?s.boost:1,bool:s.bool||i,expand:u}}else t.utils.warn("field name in user configuration not found in index instance fields");else this.addAllFields2UserConfig(i,o,n)},t.Configuration.prototype.addAllFields2UserConfig=function(e,t,n){n.forEach(function(n){this.config[n]={boost:1,bool:e,expand:t}},this)},t.Configuration.prototype.get=function(){return this.config},t.Configuration.prototype.reset=function(){this.config={}},lunr.SortedSet=function(){this.length=0,this.elements=[]},lunr.SortedSet.load=function(e){var t=new this;return t.elements=e,t.length=e.length,t},lunr.SortedSet.prototype.add=function(){var e,t;for(e=0;e1;){if(r===e)return o;e>r&&(t=o),r>e&&(n=o),i=n-t,o=t+Math.floor(i/2),r=this.elements[o]}return r===e?o:-1},lunr.SortedSet.prototype.locationFor=function(e){for(var t=0,n=this.elements.length,i=n-t,o=t+Math.floor(i/2),r=this.elements[o];i>1;)e>r&&(t=o),r>e&&(n=o),i=n-t,o=t+Math.floor(i/2),r=this.elements[o];return r>e?o:e>r?o+1:void 0},lunr.SortedSet.prototype.intersect=function(e){for(var t=new lunr.SortedSet,n=0,i=0,o=this.length,r=e.length,s=this.elements,u=e.elements;;){if(n>o-1||i>r-1)break;s[n]!==u[i]?s[n]u[i]&&i++:(t.add(s[n]),n++,i++)}return t},lunr.SortedSet.prototype.clone=function(){var e=new lunr.SortedSet;return e.elements=this.toArray(),e.length=e.elements.length,e},lunr.SortedSet.prototype.union=function(e){var t,n,i;this.length>=e.length?(t=this,n=e):(t=e,n=this),i=t.clone();for(var o=0,r=n.toArray();oWhat is pyerrors?\n\n

pyerrors is a python package for error computation and propagation of Markov chain Monte Carlo data.\nIt is based on the gamma method arXiv:hep-lat/0306017. Some of its features are:

\n\n
    \n
  • automatic differentiation for exact liner error propagation as suggested in arXiv:1809.01289 (partly based on the autograd package).
  • \n
  • treatment of slow modes in the simulation as suggested in arXiv:1009.5228.
  • \n
  • coherent error propagation for data from different Markov chains.
  • \n
  • non-linear fits with x- and y-errors and exact linear error propagation based on automatic differentiation as introduced in arXiv:1809.01289.
  • \n
  • real and complex matrix operations and their error propagation based on automatic differentiation (Matrix inverse, Cholesky decomposition, calculation of eigenvalues and eigenvectors, singular value decomposition...).
  • \n
\n\n

More detailed examples can found in the GitHub repository \"badge\".

\n\n

There exist similar publicly available implementations of gamma method error analysis suites in Fortran, Julia and Python.

\n\n

Basic example

\n\n
import numpy as np\nimport pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name']) # Initialize an Obs object\nmy_new_obs = 2 * np.log(my_obs) / my_obs ** 2 # Construct derived Obs object\nmy_new_obs.gamma_method()                     # Estimate the statistical error\nprint(my_new_obs)                             # Print the result to stdout\n> 0.31498(72)\n
\n\n

The Obs class

\n\n

pyerrors introduces a new datatype, Obs, which simplifies error propagation and estimation for auto- and cross-correlated data.\nAn Obs object can be initialized with two arguments, the first is a list containing the samples for an observable from a Monte Carlo chain.\nThe samples can either be provided as python list or as numpy array.\nThe second argument is a list containing the names of the respective Monte Carlo chains as strings. These strings uniquely identify a Monte Carlo chain/ensemble.

\n\n
import pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name'])\n
\n\n

Error propagation

\n\n

When performing mathematical operations on Obs objects the correct error propagation is intrinsically taken care of using a first order Taylor expansion\n$$\\delta_f^i=\\sum_\\alpha \\bar{f}_\\alpha \\delta_\\alpha^i\\,,\\quad \\delta_\\alpha^i=a_\\alpha^i-\\bar{a}_\\alpha\\,,$$\nas introduced in arXiv:hep-lat/0306017.\nThe required derivatives $\\bar{f}_\\alpha$ are evaluated up to machine precision via automatic differentiation as suggested in arXiv:1809.01289.

\n\n

The Obs class is designed such that mathematical numpy functions can be used on Obs just as for regular floats.

\n\n
import numpy as np\nimport pyerrors as pe\n\nmy_obs1 = pe.Obs([samples1], ['ensemble_name'])\nmy_obs2 = pe.Obs([samples2], ['ensemble_name'])\n\nmy_sum = my_obs1 + my_obs2\n\nmy_m_eff = np.log(my_obs1 / my_obs2)\n\niamzero = my_m_eff - my_m_eff\n# Check that value and fluctuations are zero within machine precision\nprint(iamzero == 0.0)\n> True\n
\n\n

Error estimation

\n\n

The error estimation within pyerrors is based on the gamma method introduced in arXiv:hep-lat/0306017.\nAfter having arrived at the derived quantity of interest the gamma_method can be called as detailed in the following example.

\n\n
my_sum.gamma_method()\nprint(my_sum)\n> 1.70(57)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 5.72046658e-01 +/- 7.56746598e-02 (33.650%)\n>  t_int         2.71422900e+00 +/- 6.40320983e-01 S = 2.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

We use the following definition of the integrated autocorrelation time established in Madras & Sokal 1988\n$$\\tau_\\mathrm{int}=\\frac{1}{2}+\\sum_{t=1}^{W}\\rho(t)\\geq \\frac{1}{2}\\,.$$\nThe window $W$ is determined via the automatic windowing procedure described in arXiv:hep-lat/0306017.\nThe standard value for the parameter $S$ of this automatic windowing procedure is $S=2$. Other values for $S$ can be passed to the gamma_method as parameter.

\n\n
my_sum.gamma_method(S=3.0)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.30675201e-01 +/- 1.04585650e-01 (37.099%)\n>  t_int         3.29909703e+00 +/- 9.77310102e-01 S = 3.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

The integrated autocorrelation time $\\tau_\\mathrm{int}$ and the autocorrelation function $\\rho(W)$ can be monitored via the methods pyerrors.obs.Obs.plot_tauint and pyerrors.obs.Obs.plot_tauint.

\n\n

If the parameter $S$ is set to zero it is assumed that the dataset does not exhibit any autocorrelation and the windowsize is chosen to be zero.\nIn this case the error estimate is identical to the sample standard error.

\n\n

Exponential tails

\n\n

Slow modes in the Monte Carlo history can be accounted for by attaching an exponential tail to the autocorrelation function $\\rho$ as suggested in arXiv:1009.5228. The longest autocorrelation time in the history, $\\tau_\\mathrm{exp}$, can be passed to the gamma_method as parameter. In this case the automatic windowing procedure is vacated and the parameter $S$ does not affect the error estimate.

\n\n
my_sum.gamma_method(tau_exp=7.2)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.28097762e-01 +/- 5.79077524e-02 (36.947%)\n>  t_int         3.27218667e+00 +/- 7.99583654e-01 tau_exp = 7.20,  N_sigma = 1\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

For the full API see pyerrors.obs.Obs.gamma_method.

\n\n

Multiple ensembles/replica

\n\n

Error propagation for multiple ensembles (Markov chains with different simulation parameters) is handled automatically. Ensembles are uniquely identified by their name.

\n\n
obs1 = pe.Obs([samples1], ['ensemble1'])\nobs2 = pe.Obs([samples2], ['ensemble2'])\n\nmy_sum = obs1 + obs2\nmy_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 2 ensembles:\n>   \u00b7 Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000)\n>   \u00b7 Ensemble 'ensemble2' : 500 configurations (from 1 to 500)\n
\n\n

pyerrors identifies multiple replica (independent Markov chains with identical simulation parameters) by the vertical bar | in the name of the data set.

\n\n
obs1 = pe.Obs([samples1], ['ensemble1|r01'])\nobs2 = pe.Obs([samples2], ['ensemble1|r02'])\n\n> my_sum = obs1 + obs2\n> my_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1'\n>     \u00b7 Replicum 'r01' : 1000 configurations (from 1 to 1000)\n>     \u00b7 Replicum 'r02' : 500 configurations (from 1 to 500)\n
\n\n

Error estimation for multiple ensembles

\n\n

In order to keep track of different error analysis parameters for different ensembles one can make use of global dictionaries as detailed in the following example.

\n\n
pe.Obs.S_dict['ensemble1'] = 2.5\npe.Obs.tau_exp_dict['ensemble2'] = 8.0\npe.Obs.tau_exp_dict['ensemble3'] = 2.0\n
\n\n

In case the gamma_method is called without any parameters it will use the values specified in the dictionaries for the respective ensembles.\nPassing arguments to the gamma_method still dominates over the dictionaries.

\n\n

Irregular Monte Carlo chains

\n\n

Obs objects defined on irregular Monte Carlo chains can be initialized with the parameter idl.

\n\n
# Observable defined on configurations 20 to 519\nobs1 = pe.Obs([samples1], ['ensemble1'], idl=[range(20, 520)])\nobs1.details()\n> Result         9.98319881e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 20 to 519)\n\n# Observable defined on every second configuration between 5 and 1003\nobs2 = pe.Obs([samples2], ['ensemble1'], idl=[range(5, 1005, 2)])\nobs2.details()\n> Result         9.99100712e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2)\n\n# Observable defined on configurations 2, 9, 28, 29 and 501\nobs3 = pe.Obs([samples3], ['ensemble1'], idl=[[2, 9, 28, 29, 501]])\nobs3.details()\n> Result         1.01718064e+00\n> 5 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 5 configurations (irregular range)\n
\n\n

Obs objects defined on regular and irregular histories of the same ensemble can be combined with each other and the correct error propagation and estimation is automatically taken care of.

\n\n

Warning: Irregular Monte Carlo chains can result in odd patterns in the autocorrelation functions.\nMake sure to check the autocorrelation time with e.g. pyerrors.obs.Obs.plot_rho or pyerrors.obs.Obs.plot_tauint.

\n\n

For the full API see pyerrors.obs.Obs.

\n\n

Correlators

\n\n

When one is not interested in single observables but correlation functions, pyerrors offers the Corr class which simplifies the corresponding error propagation and provides the user with a set of standard methods. In order to initialize a Corr objects one needs to arrange the data as a list of Obs

\n\n
my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0      0.7957(80)\n> 1      0.5156(51)\n> 2      0.3227(33)\n> 3      0.2041(21)\n
\n\n

In case the correlation functions are not defined on the outermost timeslices, for example because of fixed boundary conditions, a padding can be introduced.

\n\n
my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3], padding=[1, 1])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0\n> 1      0.7957(80)\n> 2      0.5156(51)\n> 3      0.3227(33)\n> 4      0.2041(21)\n> 5\n
\n\n

The individual entries of a correlator can be accessed via slicing

\n\n
print(my_corr[3])\n> 0.3227(33)\n
\n\n

Error propagation with the Corr class works very similar to Obs objects. Mathematical operations are overloaded and Corr objects can be computed together with other Corr objects, Obs objects or real numbers and integers.

\n\n
my_new_corr = 0.3 * my_corr[2] * my_corr * my_corr + 12 / my_corr\n
\n\n

pyerrors provides the user with a set of regularly used methods for the manipulation of correlator objects:

\n\n
    \n
  • Corr.gamma_method applies the gamma method to all entries of the correlator.
  • \n
  • Corr.m_eff to construct effective masses. Various variants for periodic and fixed temporal boundary conditions are available.
  • \n
  • Corr.deriv returns the first derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
  • \n
  • Corr.second_deriv returns the second derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
  • \n
  • Corr.symmetric symmetrizes parity even correlations functions, assuming periodic boundary conditions.
  • \n
  • Corr.anti_symmetric anti-symmetrizes parity odd correlations functions, assuming periodic boundary conditions.
  • \n
  • Corr.T_symmetry averages a correlator with its time symmetry partner, assuming fixed boundary conditions.
  • \n
  • Corr.plateau extracts a plateau value from the correlator in a given range.
  • \n
  • Corr.roll periodically shifts the correlator.
  • \n
  • Corr.reverse reverses the time ordering of the correlator.
  • \n
  • Corr.correlate constructs a disconnected correlation function from the correlator and another Corr or Obs object.
  • \n
  • Corr.reweight reweights the correlator.
  • \n
\n\n

pyerrors can also handle matrices of correlation functions and extract energy states from these matrices via a generalized eigenvalue problem (see pyerrors.correlators.Corr.GEVP).

\n\n

For the full API see pyerrors.correlators.Corr.

\n\n

Complex valued observables

\n\n

pyerrors can handle complex valued observables via the class pyerrors.obs.CObs.\nCObs are initialized with a real and an imaginary part which both can be Obs valued.

\n\n
my_real_part = pe.Obs([samples1], ['ensemble1'])\nmy_imag_part = pe.Obs([samples2], ['ensemble1'])\n\nmy_cobs = pe.CObs(my_real_part, my_imag_part)\nmy_cobs.gamma_method()\nprint(my_cobs)\n> (0.9959(91)+0.659(28)j)\n
\n\n

Elementary mathematical operations are overloaded and samples are properly propagated as for the Obs class.

\n\n
my_derived_cobs = (my_cobs + my_cobs.conjugate()) / np.abs(my_cobs)\nmy_derived_cobs.gamma_method()\nprint(my_derived_cobs)\n> (1.668(23)+0.0j)\n
\n\n

The Covobs class

\n\n

In many projects, auxiliary data that is not based on Monte Carlo chains enters. Examples are experimentally determined mesons masses which are used to set the scale or renormalization constants. These numbers come with an error that has to be propagated through the analysis. The Covobs class allows to define such quantities in pyerrors. Furthermore, external input might consist of correlated quantities. An example are the parameters of an interpolation formula, which are defined via mean values and a covariance matrix between all parameters. The contribution of the interpolation formula to the error of a derived quantity therefore might depend on the complete covariance matrix.

\n\n

This concept is built into the definition of Covobs. In pyerrors, external input is defined by $M$ mean values, a $M\\times M$ covariance matrix, where $M=1$ is permissible, and a name that uniquely identifies the covariance matrix. Below, we define the pion mass, based on its mean value and error, 134.9768(5). Note, that the square of the error enters cov_Obs, since the second argument of this function is the covariance matrix of the Covobs.

\n\n
import pyerrors.obs as pe\n\nmpi = pe.cov_Obs(134.9768, 0.0005**2, 'pi^0 mass')\nmpi.gamma_method()\nmpi.details()\n> Result         1.34976800e+02 +/- 5.00000000e-04 +/- 0.00000000e+00 (0.000%)\n>  pi^0 mass     5.00000000e-04\n> 0 samples in 1 ensemble:\n>   \u00b7 Covobs   'pi^0 mass'\n
\n\n

The resulting object mpi is an Obs that contains a Covobs. In the following, it may be handled as any other Obs. The contribution of the covariance matrix to the error of an Obs is determined from the $M \\times M$ covariance matrix $\\Sigma$ and the gradient of the Obs with respect to the external quantities, which is the $1\\times M$ Jacobian matrix $J$, via\n$$s = \\sqrt{J^T \\Sigma J}\\,,$$\nwhere the Jacobian is computed for each derived quantity via automatic differentiation.

\n\n

Correlated auxiliary data is defined similarly to above, e.g., via

\n\n
RAP = pe.cov_Obs([16.7457, -19.0475], [[3.49591, -6.07560], [-6.07560, 10.5834]], 'R_AP, 1906.03445, (5.3a)')\nprint(RAP)\n> [Obs[16.7(1.9)], Obs[-19.0(3.3)]]\n
\n\n

where RAP now is a list of two Obs that contains the two correlated parameters.

\n\n

Since the gradient of a derived observable with respect to an external covariance matrix is propagated through the entire analysis, the Covobs class allows to quote the derivative of a result with respect to the external quantities. If these derivatives are published together with the result, small shifts in the definition of external quantities, e.g., the definition of the physical point, can be performed a posteriori based on the published information. This may help to compare results of different groups. The gradient of an Obs o with respect to a covariance matrix with the identifying string k may be accessed via

\n\n
o.covobs[k].grad\n
\n\n

Error propagation in iterative algorithms

\n\n

pyerrors supports exact linear error propagation for iterative algorithms like various variants of non-linear least sqaures fits or root finding. The derivatives required for the error propagation are calculated as described in arXiv:1809.01289.

\n\n

Least squares fits

\n\n

Standard non-linear least square fits with errors on the dependent but not the independent variables can be performed with pyerrors.fits.least_squares. As default solver the Levenberg-Marquardt algorithm implemented in scipy is used.

\n\n

Fit functions have to be of the following form

\n\n
import autograd.numpy as anp\n\ndef func(a, x):\n    return a[1] * anp.exp(-a[0] * x)\n
\n\n

It is important that numerical functions refer to autograd.numpy instead of numpy for the automatic differentiation in iterative algorithms to work properly.

\n\n

Fits can then be performed via

\n\n
fit_result = pe.fits.least_squares(x, y, func)\nprint("\\n", fit_result)\n> Fit with 2 parameters\n> Method: Levenberg-Marquardt\n> `ftol` termination condition is satisfied.\n> chisquare/d.o.f.: 0.9593035785160936\n\n>  Goodness of fit:\n> \u03c7\u00b2/d.o.f. = 0.959304\n> p-value   = 0.5673\n> Fit parameters:\n> 0      0.0548(28)\n> 1      1.933(64)\n
\n\n

where x is a list or numpy.array of floats and y is a list or numpy.array of Obs.

\n\n

Data stored in Corr objects can be fitted directly using the Corr.fit method.

\n\n
my_corr = pe.Corr(y)\nfit_result = my_corr.fit(func, fitrange=[12, 25])\n
\n\n

this can simplify working with absolute fit ranges and takes care of gaps in the data automatically.

\n\n

For fit functions with multiple independent variables the fit function can be of the form

\n\n
def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
\n\n

pyerrors also supports correlated fits which can be triggered via the parameter correlated_fit=True.\nDetails about how the required covariance matrix is estimated can be found in pyerrors.obs.covariance.

\n\n

Direct visualizations of the performed fits can be triggered via resplot=True or qqplot=True. For all available options see pyerrors.fits.least_squares.

\n\n

Total least squares fits

\n\n

pyerrors can also fit data with errors on both the dependent and independent variables using the total least squares method also referred to orthogonal distance regression as implemented in scipy, see pyerrors.fits.least_squares. The syntax is identical to the standard least squares case, the only diffrence being that x also has to be a list or numpy.array of Obs.

\n\n

For the full API see pyerrors.fits for fits and pyerrors.roots for finding roots of functions.

\n\n

Matrix operations

\n\n

pyerrors provides wrappers for Obs- and CObs-valued matrix operations based on numpy.linalg. The supported functions include:

\n\n
    \n
  • inv for the matrix inverse.
  • \n
  • cholseky for the Cholesky decomposition.
  • \n
  • det for the matrix determinant.
  • \n
  • eigh for eigenvalues and eigenvectors of hermitean matrices.
  • \n
  • eig for eigenvalues of general matrices.
  • \n
  • pinv for the Moore-Penrose pseudoinverse.
  • \n
  • svd for the singular-value-decomposition.
  • \n
\n\n

For the full API see pyerrors.linalg.

\n\n

Export data

\n\n

The preferred exported file format within pyerrors is json.gz. Files written to this format are valid JSON files that have been compressed using gzip. The structure of the content is inspired by the dobs format of the ALPHA collaboration. The aim of the format is to facilitate the storage of data in a self-contained way such that, even years after the creation of the file, it is possible to extract all necessary information:

\n\n
    \n
  • What observables are stored? Possibly: How exactly are they defined.
  • \n
  • How does each single ensemble or external quantity contribute to the error of the observable?
  • \n
  • Who did write the file when and on which machine?
  • \n
\n\n

This can be achieved by storing all information in one single file. The export routines of pyerrors are written such that as much information as possible is written automatically as described in the following example

\n\n
my_obs = pe.Obs([samples], ["test_ensemble"])\nmy_obs.tag = "My observable"\n\npe.input.json.dump_to_json(my_obs, "test_output_file", description="This file contains a test observable")\n# For a single observable one can equivalently use the class method dump\nmy_obs.dump("test_output_file", description="This file contains a test observable")\n\ncheck = pe.input.json.load_json("test_output_file")\n\nprint(my_obs == check)\n> True\n
\n\n

The format also allows to directly write out the content of Corr objects or lists and arrays of Obs objects by passing the desired data to pyerrors.input.json.dump_to_json.

\n\n

json.gz format specification

\n\n

The first entries of the file provide optional auxiliary information:

\n\n
    \n
  • program is a string that indicates which program was used to write the file.
  • \n
  • version is a string that specifies the version of the format.
  • \n
  • who is a string that specifies the user name of the creator of the file.
  • \n
  • date is a string and contains the creation date of the file.
  • \n
  • host is a string and contains the hostname of the machine where the file has been written.
  • \n
  • description contains information on the content of the file. This field is not filled automatically in pyerrors. The user is advised to provide as detailed information as possible in this field. Examples are: Input files of measurements or simulations, LaTeX formulae or references to publications to specify how the observables have been computed, details on the analysis strategy, ... This field may be any valid JSON type. Strings, arrays or objects (equivalent to dicts in python) are well suited to provide information.
  • \n
\n\n

The only necessary entry of the file is the field\n-obsdata, an array that contains the actual data.

\n\n

Each entry of the array belongs to a single structure of observables. Currently, these structures can be either of Obs, list, numpy.ndarray, Corr. All Obs inside a structure (with dimension > 0) have to be defined on the same set of configurations. Different structures, that are represented by entries of the array obsdata, are treated independently. Each entry of the array obsdata has the following required entries:

\n\n
    \n
  • type is a string that specifies the type of the structure. This allows to parse the content to the correct form after reading the file. It is always possible to interpret the content as list of Obs.
  • \n
  • value is an array that contains the mean values of the Obs inside the structure.\nThe following entries are optional:
  • \n
  • layout is a string that specifies the layout of multi-dimensional structures. Examples are \"2, 2\" for a 2x2 dimensional matrix or \"64, 4, 4\" for a Corr with $T=64$ and 4x4 matrices on each time slices. \"1\" denotes a single Obs. Multi-dimensional structures are stored in row-major format (see below).
  • \n
  • tag is any JSON type. It contains additional information concerning the structure. The tag of an Obs in pyerrors is written here.
  • \n
  • reweighted is a Bool that may be used to specify, whether the Obs in the structure have been reweighted.
  • \n
  • data is an array that contains the data from MC chains. We will define it below.
  • \n
  • cdata is an array that contains the data from external quantities with an error (Covobs in pyerrors). We will define it below.
  • \n
\n\n

The array data contains the data from MC chains. Each entry of the array corresponds to one ensemble and contains:

\n\n
    \n
  • id, a string that contains the name of the ensemble
  • \n
  • replica, an array that contains an entry per replica of the ensemble.
  • \n
\n\n

Each entry of replica contains\nname, a string that contains the name of the replica\ndeltas, an array that contains the actual data.

\n\n

Each entry in deltas corresponds to one configuration of the replica and has $1+N$ many entries. The first entry is an integer that specifies the configuration number that, together with ensemble and replica name, may be used to uniquely identify the configuration on which the data has been obtained. The following N entries specify the deltas, i.e., the deviation of the observable from the mean value on this configuration, of each Obs inside the structure. Multi-dimensional structures are stored in a row-major format. For primary observables, such as correlation functions, $value + delta_i$ matches the primary data obtained on the configuration.

\n\n

The array cdata contains information about the contribution of auxiliary observables, represented by Covobs in pyerrors, to the total error of the observables. Each entry of the array belongs to one auxiliary covariance matrix and contains:

\n\n
    \n
  • id, a string that identifies the covariance matrix
  • \n
  • layout, a string that defines the dimensions of the $M\\times M$ covariance matrix (has to be \"M, M\" or \"1\").
  • \n
  • cov, an array that contains the $M\\times M$ many entries of the covariance matrix, stored in row-major format.
  • \n
  • grad, an array that contains N entries, one for each Obs inside the structure. Each entry itself is an array, that contains the M gradients of the Nth observable with respect to the quantity that corresponds to the Mth diagonal entry of the covariance matrix.
  • \n
\n\n

A JSON schema that may be used to verify the correctness of a file with respect to the format definition is stored in ./examples/json_schema.json. The schema is a self-descriptive format definition and contains an exemplary file.

\n\n

Julia I/O routines for the json.gz format, compatible with ADerrors.jl, can be found here.

\n\n

Citing

\n\n

If you use pyerrors for research that leads to a publication please consider citing:

\n\n
    \n
  • Ulli Wolff, Monte Carlo errors with less errors. Comput.Phys.Commun. 156 (2004) 143-153, Comput.Phys.Commun. 176 (2007) 383 (erratum).
  • \n
  • Alberto Ramos, Automatic differentiation for error analysis of Monte Carlo data. Comput.Phys.Commun. 238 (2019) 19-35.\nand
  • \n
  • Stefan Schaefer, Rainer Sommer, Francesco Virotta, Critical slowing down and error analysis in lattice QCD simulations. Nucl.Phys.B 845 (2011) 93-119.\nwhere applicable.
  • \n
\n"}, "pyerrors.correlators": {"fullname": "pyerrors.correlators", "modulename": "pyerrors.correlators", "type": "module", "doc": "

\n"}, "pyerrors.correlators.Corr": {"fullname": "pyerrors.correlators.Corr", "modulename": "pyerrors.correlators", "qualname": "Corr", "type": "class", "doc": "

The class for a correlator (time dependent sequence of pe.Obs).

\n\n

Everything, this class does, can be achieved using lists or arrays of Obs.\nBut it is simply more convenient to have a dedicated object for correlators.\nOne often wants to add or multiply correlators of the same length at every timeslice and it is inconvenient\nto iterate over all timeslices for every operation. This is especially true, when dealing with matrices.

\n\n

The correlator can have two types of content: An Obs at every timeslice OR a GEVP\nmatrix at every timeslice. Other dependency (eg. spatial) are not supported.

\n"}, "pyerrors.correlators.Corr.__init__": {"fullname": "pyerrors.correlators.Corr.__init__", "modulename": "pyerrors.correlators", "qualname": "Corr.__init__", "type": "function", "doc": "

Initialize a Corr object.

\n\n
Parameters
\n\n
    \n
  • data_input (list or array):\nlist of Obs or list of arrays of Obs or array of Corrs
  • \n
  • padding (list, optional):\nList with two entries where the first labels the padding\nat the front of the correlator and the second the padding\nat the back.
  • \n
  • prange (list, optional):\nList containing the first and last timeslice of the plateau\nregion indentified for this correlator.
  • \n
\n", "signature": "(self, data_input, padding=[0, 0], prange=None)", "funcdef": "def"}, "pyerrors.correlators.Corr.reweighted": {"fullname": "pyerrors.correlators.Corr.reweighted", "modulename": "pyerrors.correlators", "qualname": "Corr.reweighted", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.gamma_method": {"fullname": "pyerrors.correlators.Corr.gamma_method", "modulename": "pyerrors.correlators", "qualname": "Corr.gamma_method", "type": "function", "doc": "

Apply the gamma method to the content of the Corr.

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.projected": {"fullname": "pyerrors.correlators.Corr.projected", "modulename": "pyerrors.correlators", "qualname": "Corr.projected", "type": "function", "doc": "

We need to project the Correlator with a Vector to get a single value at each timeslice.

\n\n

The method can use one or two vectors.\nIf two are specified it returns v1@G@v2 (the order might be very important.)\nBy default it will return the lowest source, which usually means unsmeared-unsmeared (0,0), but it does not have to

\n", "signature": "(self, vector_l=None, vector_r=None, normalize=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.item": {"fullname": "pyerrors.correlators.Corr.item", "modulename": "pyerrors.correlators", "qualname": "Corr.item", "type": "function", "doc": "

Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice.

\n\n
Parameters
\n\n
    \n
  • i (int):\nFirst index to be picked.
  • \n
  • j (int):\nSecond index to be picked.
  • \n
\n", "signature": "(self, i, j)", "funcdef": "def"}, "pyerrors.correlators.Corr.plottable": {"fullname": "pyerrors.correlators.Corr.plottable", "modulename": "pyerrors.correlators", "qualname": "Corr.plottable", "type": "function", "doc": "

Outputs the correlator in a plotable format.

\n\n

Outputs three lists containing the timeslice index, the value on each\ntimeslice and the error on each timeslice.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.symmetric": {"fullname": "pyerrors.correlators.Corr.symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.symmetric", "type": "function", "doc": "

Symmetrize the correlator around x0=0.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.anti_symmetric": {"fullname": "pyerrors.correlators.Corr.anti_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.anti_symmetric", "type": "function", "doc": "

Anti-symmetrize the correlator around x0=0.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.matrix_symmetric", "type": "function", "doc": "

Symmetrizes the correlator matrices on every timeslice.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.GEVP": {"fullname": "pyerrors.correlators.Corr.GEVP", "modulename": "pyerrors.correlators", "qualname": "Corr.GEVP", "type": "function", "doc": "

Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors.

\n\n

The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the\nlargest eigenvalue(s). The eigenvector(s) for the individual states can be accessed via slicing

\n\n
C.GEVP(t0=2)[0]  # Ground state vector(s)\nC.GEVP(t0=2)[:3]  # Vectors for the lowest three states\n
\n\n
Parameters
\n\n
    \n
  • t0 (int):\nThe time t0 for the right hand side of the GEVP according to $G(t)v_i=\\lambda_i G(t_0)v_i$
  • \n
  • ts (int):\nfixed time $G(t_s)v_i=\\lambda_i G(t_0)v_i$ if sort=None.\nIf sort=\"Eigenvector\" it gives a reference point for the sorting method.
  • \n
  • sort (string):\nIf this argument is set, a list of self.T vectors per state is returned. If it is set to None, only one vector is returned.\n
      \n
    • \"Eigenvalue\": The eigenvector is chosen according to which eigenvalue it belongs individually on every timeslice.
    • \n
    • \"Eigenvector\": Use the method described in arXiv:2004.10472 to find the set of v(t) belonging to the state.\nThe reference state is identified by its eigenvalue at $t=t_s$.
    • \n
  • \n
\n\n
Other Parameters
\n\n
    \n
  • state (int):\nReturns only the vector(s) for a specified state. The lowest state is zero.
  • \n
\n", "signature": "(self, t0, ts=None, sort='Eigenvalue', **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.Eigenvalue": {"fullname": "pyerrors.correlators.Corr.Eigenvalue", "modulename": "pyerrors.correlators", "qualname": "Corr.Eigenvalue", "type": "function", "doc": "

Determines the eigenvalue of the GEVP by solving and projecting the correlator

\n\n
Parameters
\n\n
    \n
  • state (int):\nThe state one is interested in ordered by energy. The lowest state is zero.
  • \n
  • All other parameters are identical to the ones of Corr.GEVP.
  • \n
\n", "signature": "(self, t0, ts=None, state=0, sort='Eigenvalue')", "funcdef": "def"}, "pyerrors.correlators.Corr.Hankel": {"fullname": "pyerrors.correlators.Corr.Hankel", "modulename": "pyerrors.correlators", "qualname": "Corr.Hankel", "type": "function", "doc": "

Constructs an NxN Hankel matrix

\n\n

C(t) c(t+1) ... c(t+n-1)\nC(t+1) c(t+2) ... c(t+n)\n.................\nC(t+(n-1)) c(t+n) ... c(t+2(n-1))

\n\n
Parameters
\n\n
    \n
  • N (int):\nDimension of the Hankel matrix
  • \n
  • periodic (bool, optional):\ndetermines whether the matrix is extended periodically
  • \n
\n", "signature": "(self, N, periodic=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.roll": {"fullname": "pyerrors.correlators.Corr.roll", "modulename": "pyerrors.correlators", "qualname": "Corr.roll", "type": "function", "doc": "

Periodically shift the correlator by dt timeslices

\n\n
Parameters
\n\n
    \n
  • dt (int):\nnumber of timeslices
  • \n
\n", "signature": "(self, dt)", "funcdef": "def"}, "pyerrors.correlators.Corr.reverse": {"fullname": "pyerrors.correlators.Corr.reverse", "modulename": "pyerrors.correlators", "qualname": "Corr.reverse", "type": "function", "doc": "

Reverse the time ordering of the Corr

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.thin": {"fullname": "pyerrors.correlators.Corr.thin", "modulename": "pyerrors.correlators", "qualname": "Corr.thin", "type": "function", "doc": "

Thin out a correlator to suppress correlations

\n\n
Parameters
\n\n
    \n
  • spacing (int):\nKeep only every 'spacing'th entry of the correlator
  • \n
  • offset (int):\nOffset the equal spacing
  • \n
\n", "signature": "(self, spacing=2, offset=0)", "funcdef": "def"}, "pyerrors.correlators.Corr.correlate": {"fullname": "pyerrors.correlators.Corr.correlate", "modulename": "pyerrors.correlators", "qualname": "Corr.correlate", "type": "function", "doc": "

Correlate the correlator with another correlator or Obs

\n\n
Parameters
\n\n
    \n
  • partner (Obs or Corr):\npartner to correlate the correlator with.\nCan either be an Obs which is correlated with all entries of the\ncorrelator or a Corr of same length.
  • \n
\n", "signature": "(self, partner)", "funcdef": "def"}, "pyerrors.correlators.Corr.reweight": {"fullname": "pyerrors.correlators.Corr.reweight", "modulename": "pyerrors.correlators", "qualname": "Corr.reweight", "type": "function", "doc": "

Reweight the correlator.

\n\n
Parameters
\n\n
    \n
  • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
  • \n
  • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
  • \n
\n", "signature": "(self, weight, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.T_symmetry": {"fullname": "pyerrors.correlators.Corr.T_symmetry", "modulename": "pyerrors.correlators", "qualname": "Corr.T_symmetry", "type": "function", "doc": "

Return the time symmetry average of the correlator and its partner

\n\n
Parameters
\n\n
    \n
  • partner (Corr):\nTime symmetry partner of the Corr
  • \n
  • partity (int):\nParity quantum number of the correlator, can be +1 or -1
  • \n
\n", "signature": "(self, partner, parity=1)", "funcdef": "def"}, "pyerrors.correlators.Corr.deriv": {"fullname": "pyerrors.correlators.Corr.deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.deriv", "type": "function", "doc": "

Return the first derivative of the correlator with respect to x0.

\n\n
Parameters
\n\n
    \n
  • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, forward, backward, improved, default: symmetric
  • \n
\n", "signature": "(self, variant='symmetric')", "funcdef": "def"}, "pyerrors.correlators.Corr.second_deriv": {"fullname": "pyerrors.correlators.Corr.second_deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.second_deriv", "type": "function", "doc": "

Return the second derivative of the correlator with respect to x0.

\n\n
Parameters
\n\n
    \n
  • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, improved, default: symmetric
  • \n
\n", "signature": "(self, variant='symmetric')", "funcdef": "def"}, "pyerrors.correlators.Corr.m_eff": {"fullname": "pyerrors.correlators.Corr.m_eff", "modulename": "pyerrors.correlators", "qualname": "Corr.m_eff", "type": "function", "doc": "

Returns the effective mass of the correlator as correlator object

\n\n
Parameters
\n\n
    \n
  • variant (str):\nlog : uses the standard effective mass log(C(t) / C(t+1))\ncosh, periodic : Use periodicitiy of the correlator by solving C(t) / C(t+1) = cosh(m * (t - T/2)) / cosh(m * (t + 1 - T/2)) for m.\nsinh : Use anti-periodicitiy of the correlator by solving C(t) / C(t+1) = sinh(m * (t - T/2)) / sinh(m * (t + 1 - T/2)) for m.\nSee, e.g., arXiv:1205.5380\narccosh : Uses the explicit form of the symmetrized correlator (not recommended)
  • \n
  • guess (float):\nguess for the root finder, only relevant for the root variant
  • \n
\n", "signature": "(self, variant='log', guess=1.0)", "funcdef": "def"}, "pyerrors.correlators.Corr.fit": {"fullname": "pyerrors.correlators.Corr.fit", "modulename": "pyerrors.correlators", "qualname": "Corr.fit", "type": "function", "doc": "

Fits function to the data

\n\n
Parameters
\n\n
    \n
  • function (obj):\nfunction to fit to the data. See fits.least_squares for details.
  • \n
  • fitrange (list):\nTwo element list containing the timeslices on which the fit is supposed to start and stop.\nCaution: This range is inclusive as opposed to standard python indexing.\nfitrange=[4, 6] corresponds to the three entries 4, 5 and 6.\nIf not specified, self.prange or all timeslices are used.
  • \n
  • silent (bool):\nDecides whether output is printed to the standard output.
  • \n
\n", "signature": "(self, function, fitrange=None, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.plateau": {"fullname": "pyerrors.correlators.Corr.plateau", "modulename": "pyerrors.correlators", "qualname": "Corr.plateau", "type": "function", "doc": "

Extract a plateau value from a Corr object

\n\n
Parameters
\n\n
    \n
  • plateau_range (list):\nlist with two entries, indicating the first and the last timeslice\nof the plateau region.
  • \n
  • method (str):\nmethod to extract the plateau.\n 'fit' fits a constant to the plateau region\n 'avg', 'average' or 'mean' just average over the given timeslices.
  • \n
  • auto_gamma (bool):\napply gamma_method with default parameters to the Corr. Defaults to None
  • \n
\n", "signature": "(self, plateau_range=None, method='fit', auto_gamma=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.set_prange": {"fullname": "pyerrors.correlators.Corr.set_prange", "modulename": "pyerrors.correlators", "qualname": "Corr.set_prange", "type": "function", "doc": "

Sets the attribute prange of the Corr object.

\n", "signature": "(self, prange)", "funcdef": "def"}, "pyerrors.correlators.Corr.show": {"fullname": "pyerrors.correlators.Corr.show", "modulename": "pyerrors.correlators", "qualname": "Corr.show", "type": "function", "doc": "

Plots the correlator using the tag of the correlator as label if available.

\n\n
Parameters
\n\n
    \n
  • x_range (list):\nlist of two values, determining the range of the x-axis e.g. [4, 8]
  • \n
  • comp (Corr or list of Corr):\nCorrelator or list of correlators which are plotted for comparison.\nThe tags of these correlators are used as labels if available.
  • \n
  • logscale (bool):\nSets y-axis to logscale
  • \n
  • plateau (Obs):\nPlateau value to be visualized in the figure
  • \n
  • fit_res (Fit_result):\nFit_result object to be visualized
  • \n
  • ylabel (str):\nLabel for the y-axis
  • \n
  • save (str):\npath to file in which the figure should be saved
  • \n
  • auto_gamma (bool):\nApply the gamma method with standard parameters to all correlators and plateau values before plotting.
  • \n
  • hide_sigma (float):\nHides data points from the first value on which is consistent with zero within 'hide_sigma' standard errors.
  • \n
  • references (list):\nList of floating point values that are displayed as horizontal lines for reference.
  • \n
\n", "signature": "(\n self,\n x_range=None,\n comp=None,\n y_range=None,\n logscale=False,\n plateau=None,\n fit_res=None,\n ylabel=None,\n save=None,\n auto_gamma=False,\n hide_sigma=None,\n references=None\n)", "funcdef": "def"}, "pyerrors.correlators.Corr.spaghetti_plot": {"fullname": "pyerrors.correlators.Corr.spaghetti_plot", "modulename": "pyerrors.correlators", "qualname": "Corr.spaghetti_plot", "type": "function", "doc": "

Produces a spaghetti plot of the correlator suited to monitor exceptional configurations.

\n\n
Parameters
\n\n
    \n
  • logscale (bool):\nDetermines whether the scale of the y-axis is logarithmic or standard.
  • \n
\n", "signature": "(self, logscale=True)", "funcdef": "def"}, "pyerrors.correlators.Corr.dump": {"fullname": "pyerrors.correlators.Corr.dump", "modulename": "pyerrors.correlators", "qualname": "Corr.dump", "type": "function", "doc": "

Dumps the Corr into a file of chosen type

\n\n
Parameters
\n\n
    \n
  • filename (str):\nName of the file to be saved.
  • \n
  • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(self, filename, datatype='json.gz', **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.print": {"fullname": "pyerrors.correlators.Corr.print", "modulename": "pyerrors.correlators", "qualname": "Corr.print", "type": "function", "doc": "

\n", "signature": "(self, range=[0, None])", "funcdef": "def"}, "pyerrors.correlators.Corr.sqrt": {"fullname": "pyerrors.correlators.Corr.sqrt", "modulename": "pyerrors.correlators", "qualname": "Corr.sqrt", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.log": {"fullname": "pyerrors.correlators.Corr.log", "modulename": "pyerrors.correlators", "qualname": "Corr.log", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.exp": {"fullname": "pyerrors.correlators.Corr.exp", "modulename": "pyerrors.correlators", "qualname": "Corr.exp", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.sin": {"fullname": "pyerrors.correlators.Corr.sin", "modulename": "pyerrors.correlators", "qualname": "Corr.sin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.cos": {"fullname": "pyerrors.correlators.Corr.cos", "modulename": "pyerrors.correlators", "qualname": "Corr.cos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.tan": {"fullname": "pyerrors.correlators.Corr.tan", "modulename": "pyerrors.correlators", "qualname": "Corr.tan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.sinh": {"fullname": "pyerrors.correlators.Corr.sinh", "modulename": "pyerrors.correlators", "qualname": "Corr.sinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.cosh": {"fullname": "pyerrors.correlators.Corr.cosh", "modulename": "pyerrors.correlators", "qualname": "Corr.cosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.tanh": {"fullname": "pyerrors.correlators.Corr.tanh", "modulename": "pyerrors.correlators", "qualname": "Corr.tanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsin": {"fullname": "pyerrors.correlators.Corr.arcsin", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arccos": {"fullname": "pyerrors.correlators.Corr.arccos", "modulename": "pyerrors.correlators", "qualname": "Corr.arccos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arctan": {"fullname": "pyerrors.correlators.Corr.arctan", "modulename": "pyerrors.correlators", "qualname": "Corr.arctan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsinh": {"fullname": "pyerrors.correlators.Corr.arcsinh", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arccosh": {"fullname": "pyerrors.correlators.Corr.arccosh", "modulename": "pyerrors.correlators", "qualname": "Corr.arccosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arctanh": {"fullname": "pyerrors.correlators.Corr.arctanh", "modulename": "pyerrors.correlators", "qualname": "Corr.arctanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.real": {"fullname": "pyerrors.correlators.Corr.real", "modulename": "pyerrors.correlators", "qualname": "Corr.real", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.imag": {"fullname": "pyerrors.correlators.Corr.imag", "modulename": "pyerrors.correlators", "qualname": "Corr.imag", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.prune": {"fullname": "pyerrors.correlators.Corr.prune", "modulename": "pyerrors.correlators", "qualname": "Corr.prune", "type": "function", "doc": "

Project large correlation matrix to lowest states

\n\n

This method can be used to reduce the size of an (N x N) correlation matrix\nto (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise\nis still small.

\n\n
Parameters
\n\n
    \n
  • Ntrunc (int):\nRank of the target matrix.
  • \n
  • tproj (int):\nTime where the eigenvectors are evaluated, corresponds to ts in the GEVP method.\nThe default value is 3.
  • \n
  • t0proj (int):\nTime where the correlation matrix is inverted. Choosing t0proj=1 is strongly\ndiscouraged for O(a) improved theories, since the correctness of the procedure\ncannot be granted in this case. The default value is 2.
  • \n
  • basematrix (Corr):\nCorrelation matrix that is used to determine the eigenvectors of the\nlowest states based on a GEVP. basematrix is taken to be the Corr itself if\nis is not specified.
  • \n
\n\n
Notes
\n\n

We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving\nthe GEVP $$C(t) v_n(t, t_0) = \\lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \\equiv t_\\mathrm{proj}$\nand $t_0 \\equiv t_{0, \\mathrm{proj}}$. The target matrix is projected onto the subspace of the\nresulting eigenvectors $v_n, n=1,\\dots,N_\\mathrm{trunc}$ via\n$$G^\\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large\ncorrelation matrix and to remove some noise that is added by irrelevant operators.\nThis may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated\nbound $t_0 \\leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.

\n", "signature": "(self, Ntrunc, tproj=3, t0proj=2, basematrix=None)", "funcdef": "def"}, "pyerrors.covobs": {"fullname": "pyerrors.covobs", "modulename": "pyerrors.covobs", "type": "module", "doc": "

\n"}, "pyerrors.covobs.Covobs": {"fullname": "pyerrors.covobs.Covobs", "modulename": "pyerrors.covobs", "qualname": "Covobs", "type": "class", "doc": "

\n"}, "pyerrors.covobs.Covobs.__init__": {"fullname": "pyerrors.covobs.Covobs.__init__", "modulename": "pyerrors.covobs", "qualname": "Covobs.__init__", "type": "function", "doc": "

Initialize Covobs object.

\n\n
Parameters
\n\n
    \n
  • mean (float):\nMean value of the new Obs
  • \n
  • cov (list or array):\n2d Covariance matrix or 1d diagonal entries
  • \n
  • name (str):\nidentifier for the covariance matrix
  • \n
  • pos (int):\nPosition of the variance belonging to mean in cov.\nIs taken to be 1 if cov is 0-dimensional
  • \n
  • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
  • \n
\n", "signature": "(self, mean, cov, name, pos=None, grad=None)", "funcdef": "def"}, "pyerrors.covobs.Covobs.errsq": {"fullname": "pyerrors.covobs.Covobs.errsq", "modulename": "pyerrors.covobs", "qualname": "Covobs.errsq", "type": "function", "doc": "

Return the variance (= square of the error) of the Covobs

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.covobs.Covobs.cov": {"fullname": "pyerrors.covobs.Covobs.cov", "modulename": "pyerrors.covobs", "qualname": "Covobs.cov", "type": "variable", "doc": "

\n"}, "pyerrors.covobs.Covobs.grad": {"fullname": "pyerrors.covobs.Covobs.grad", "modulename": "pyerrors.covobs", "qualname": "Covobs.grad", "type": "variable", "doc": "

\n"}, "pyerrors.dirac": {"fullname": "pyerrors.dirac", "modulename": "pyerrors.dirac", "type": "module", "doc": "

\n"}, "pyerrors.dirac.epsilon_tensor": {"fullname": "pyerrors.dirac.epsilon_tensor", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor", "type": "function", "doc": "

Rank-3 epsilon tensor

\n\n

Based on https://codegolf.stackexchange.com/a/160375

\n", "signature": "(i, j, k)", "funcdef": "def"}, "pyerrors.dirac.epsilon_tensor_rank4": {"fullname": "pyerrors.dirac.epsilon_tensor_rank4", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor_rank4", "type": "function", "doc": "

Rank-4 epsilon tensor

\n\n

Extension of https://codegolf.stackexchange.com/a/160375

\n", "signature": "(i, j, k, o)", "funcdef": "def"}, "pyerrors.dirac.Grid_gamma": {"fullname": "pyerrors.dirac.Grid_gamma", "modulename": "pyerrors.dirac", "qualname": "Grid_gamma", "type": "function", "doc": "

Returns gamma matrix in Grid labeling.

\n", "signature": "(gamma_tag)", "funcdef": "def"}, "pyerrors.fits": {"fullname": "pyerrors.fits", "modulename": "pyerrors.fits", "type": "module", "doc": "

\n"}, "pyerrors.fits.Fit_result": {"fullname": "pyerrors.fits.Fit_result", "modulename": "pyerrors.fits", "qualname": "Fit_result", "type": "class", "doc": "

Represents fit results.

\n\n
Attributes
\n\n
    \n
  • fit_parameters (list):\nresults for the individual fit parameters,\nalso accessible via indices.
  • \n
\n", "bases": "collections.abc.Sequence"}, "pyerrors.fits.Fit_result.__init__": {"fullname": "pyerrors.fits.Fit_result.__init__", "modulename": "pyerrors.fits", "qualname": "Fit_result.__init__", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.fits.Fit_result.gamma_method": {"fullname": "pyerrors.fits.Fit_result.gamma_method", "modulename": "pyerrors.fits", "qualname": "Fit_result.gamma_method", "type": "function", "doc": "

Apply the gamma method to all fit parameters

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.fits.least_squares": {"fullname": "pyerrors.fits.least_squares", "modulename": "pyerrors.fits", "qualname": "least_squares", "type": "function", "doc": "

Performs a non-linear fit to y = func(x).

\n\n
Parameters
\n\n
    \n
  • x (list):\nlist of floats.
  • \n
  • y (list):\nlist of Obs.
  • \n
  • func (object):\nfit function, has to be of the form

    \n\n
    import autograd.numpy as anp\n\ndef func(a, x):\n   return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
    \n\n

    For multiple x values func can be of the form

    \n\n
    def func(a, x):\n   (x1, x2) = x\n   return a[0] * x1 ** 2 + a[1] * x2\n
    \n\n

    It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

  • \n
  • priors (list, optional):\npriors has to be a list with an entry for every parameter in the fit. The entries can either be\nObs (e.g. results from a previous fit) or strings containing a value and an error formatted like\n0.548(23), 500(40) or 0.5(0.4)
  • \n
  • silent (bool, optional):\nIf true all output to the console is omitted (default False).
  • \n
  • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for\nnon-linear fits with many parameters. In case of correlated fits the guess is used to perform\nan uncorrelated fit which then serves as guess for the correlated fit.
  • \n
  • method (str, optional):\ncan be used to choose an alternative method for the minimization of chisquare.\nThe possible methods are the ones which can be used for scipy.optimize.minimize and\nmigrad of iminuit. If no method is specified, Levenberg-Marquard is used.\nReliable alternatives are migrad, Powell and Nelder-Mead.
  • \n
  • correlated_fit (bool):\nIf True, use the full inverse covariance matrix in the definition of the chisquare cost function.\nFor details about how the covariance matrix is estimated see pyerrors.obs.covariance.\nIn practice the correlation matrix is Cholesky decomposed and inverted (instead of the covariance matrix).\nThis procedure should be numerically more stable as the correlation matrix is typically better conditioned (Jacobi preconditioning).\nAt the moment this option only works for prior==None and when no method is given.
  • \n
  • expected_chisquare (bool):\nIf True estimates the expected chisquare which is\ncorrected by effects caused by correlated input data (default False).
  • \n
  • resplot (bool):\nIf True, a plot which displays fit, data and residuals is generated (default False).
  • \n
  • qqplot (bool):\nIf True, a quantile-quantile plot of the fit result is generated (default False).
  • \n
\n", "signature": "(x, y, func, priors=None, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.fits.total_least_squares": {"fullname": "pyerrors.fits.total_least_squares", "modulename": "pyerrors.fits", "qualname": "total_least_squares", "type": "function", "doc": "

Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters.

\n\n
Parameters
\n\n
    \n
  • x (list):\nlist of Obs, or a tuple of lists of Obs
  • \n
  • y (list):\nlist of Obs. The dvalues of the Obs are used as x- and yerror for the fit.
  • \n
  • func (object):\nfunc has to be of the form

    \n\n
    import autograd.numpy as anp\n\ndef func(a, x):\n   return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
    \n\n

    For multiple x values func can be of the form

    \n\n
    def func(a, x):\n   (x1, x2) = x\n   return a[0] * x1 ** 2 + a[1] * x2\n
    \n\n

    It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

  • \n
  • silent (bool, optional):\nIf true all output to the console is omitted (default False).
  • \n
  • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for non-linear\nfits with many parameters.
  • \n
  • expected_chisquare (bool):\nIf true prints the expected chisquare which is\ncorrected by effects caused by correlated input data.\nThis can take a while as the full correlation matrix\nhas to be calculated (default False).
  • \n
\n\n
Notes
\n\n

Based on the orthogonal distance regression module of scipy

\n", "signature": "(x, y, func, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.fits.fit_lin": {"fullname": "pyerrors.fits.fit_lin", "modulename": "pyerrors.fits", "qualname": "fit_lin", "type": "function", "doc": "

Performs a linear fit to y = n + m * x and returns two Obs n, m.

\n\n
Parameters
\n\n
    \n
  • x (list):\nCan either be a list of floats in which case no xerror is assumed, or\na list of Obs, where the dvalues of the Obs are used as xerror for the fit.
  • \n
  • y (list):\nList of Obs, the dvalues of the Obs are used as yerror for the fit.
  • \n
\n", "signature": "(x, y, **kwargs)", "funcdef": "def"}, "pyerrors.fits.qqplot": {"fullname": "pyerrors.fits.qqplot", "modulename": "pyerrors.fits", "qualname": "qqplot", "type": "function", "doc": "

Generates a quantile-quantile plot of the fit result which can be used to\ncheck if the residuals of the fit are gaussian distributed.

\n", "signature": "(x, o_y, func, p)", "funcdef": "def"}, "pyerrors.fits.residual_plot": {"fullname": "pyerrors.fits.residual_plot", "modulename": "pyerrors.fits", "qualname": "residual_plot", "type": "function", "doc": "

Generates a plot which compares the fit to the data and displays the corresponding residuals

\n", "signature": "(x, y, func, fit_res)", "funcdef": "def"}, "pyerrors.fits.error_band": {"fullname": "pyerrors.fits.error_band", "modulename": "pyerrors.fits", "qualname": "error_band", "type": "function", "doc": "

Returns the error band for an array of sample values x, for given fit function func with optimized parameters beta.

\n", "signature": "(x, func, beta)", "funcdef": "def"}, "pyerrors.fits.ks_test": {"fullname": "pyerrors.fits.ks_test", "modulename": "pyerrors.fits", "qualname": "ks_test", "type": "function", "doc": "

Performs a Kolmogorov\u2013Smirnov test for the p-values of all fit object.

\n\n
Parameters
\n\n
    \n
  • objects (list):\nList of fit results to include in the analysis (optional).
  • \n
\n", "signature": "(objects=None)", "funcdef": "def"}, "pyerrors.input": {"fullname": "pyerrors.input", "modulename": "pyerrors.input", "type": "module", "doc": "

pyerrors includes an input submodule in which input routines and parsers for the output of various numerical programs are contained.

\n\n

Jackknife samples

\n\n

For comparison with other analysis workflows pyerrors can also generate jackknife samples from an Obs object or import jackknife samples into an Obs object.\nSee pyerrors.obs.Obs.export_jackknife and pyerrors.obs.import_jackknife for details.

\n"}, "pyerrors.input.bdio": {"fullname": "pyerrors.input.bdio", "modulename": "pyerrors.input.bdio", "type": "module", "doc": "

\n"}, "pyerrors.input.bdio.read_ADerrors": {"fullname": "pyerrors.input.bdio.read_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "read_ADerrors", "type": "function", "doc": "

Extract generic MCMC data from a bdio file

\n\n

read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path -- path to the bdio file
  • \n
  • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.write_ADerrors": {"fullname": "pyerrors.input.bdio.write_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "write_ADerrors", "type": "function", "doc": "

Write Obs to a bdio file according to ADerrors conventions

\n\n

read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path -- path to the bdio file
  • \n
  • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
\n", "signature": "(obs_list, file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.read_mesons": {"fullname": "pyerrors.input.bdio.read_mesons", "modulename": "pyerrors.input.bdio", "qualname": "read_mesons", "type": "function", "doc": "

Extract mesons data from a bdio file and return it as a dictionary

\n\n

The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2)

\n\n

read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path (str):\npath to the bdio file
  • \n
  • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
  • start (int):\nThe first configuration to be read (default 1)
  • \n
  • stop (int):\nThe last configuration to be read (default None)
  • \n
  • step (int):\nFixed step size between two measurements (default 1)
  • \n
  • alternative_ensemble_name (str):\nManually overwrite ensemble name
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.read_dSdm": {"fullname": "pyerrors.input.bdio.read_dSdm", "modulename": "pyerrors.input.bdio", "qualname": "read_dSdm", "type": "function", "doc": "

Extract dSdm data from a bdio file and return it as a dictionary

\n\n

The dictionary can be accessed with a tuple consisting of (type, kappa)

\n\n

read_dSdm requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path (str):\npath to the bdio file
  • \n
  • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
  • start (int):\nThe first configuration to be read (default 1)
  • \n
  • stop (int):\nThe last configuration to be read (default None)
  • \n
  • step (int):\nFixed step size between two measurements (default 1)
  • \n
  • alternative_ensemble_name (str):\nManually overwrite ensemble name
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.dobs": {"fullname": "pyerrors.input.dobs", "modulename": "pyerrors.input.dobs", "type": "module", "doc": "

\n"}, "pyerrors.input.dobs.create_pobs_string": {"fullname": "pyerrors.input.dobs.create_pobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_pobs_string", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to an xml string\naccording to the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
  • \n
\n", "signature": "(obsl, name, spec='', origin='', symbol=[], enstag=None)", "funcdef": "def"}, "pyerrors.input.dobs.write_pobs": {"fullname": "pyerrors.input.dobs.write_pobs", "modulename": "pyerrors.input.dobs", "qualname": "write_pobs", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
  • \n
  • gz (bool):\nIf True, the output is a gzipped xml. If False, the output is an xml file.
  • \n
\n", "signature": "(\n obsl,\n fname,\n name,\n spec='',\n origin='',\n symbol=[],\n enstag=None,\n gz=True\n)", "funcdef": "def"}, "pyerrors.input.dobs.read_pobs": {"fullname": "pyerrors.input.dobs.read_pobs", "modulename": "pyerrors.input.dobs", "qualname": "read_pobs", "type": "function", "doc": "

Import a list of Obs from an xml.gz file in the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • separatior_insertion (str or int):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nNone (default): Replica names remain unchanged.
  • \n
\n", "signature": "(fname, full_output=False, gz=True, separator_insertion=None)", "funcdef": "def"}, "pyerrors.input.dobs.import_dobs_string": {"fullname": "pyerrors.input.dobs.import_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "import_dobs_string", "type": "function", "doc": "

Import a list of Obs from a string in the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • content (str):\nXML string containing the data
  • \n
  • noemtpy (bool):\nIf True, ensembles with no contribution to the Obs are not included.\nIf False, ensembles are included as written in the file, possibly with vanishing entries.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
  • \n
\n", "signature": "(content, noempty=False, full_output=False, separator_insertion=True)", "funcdef": "def"}, "pyerrors.input.dobs.read_dobs": {"fullname": "pyerrors.input.dobs.read_dobs", "modulename": "pyerrors.input.dobs", "qualname": "read_dobs", "type": "function", "doc": "

Import a list of Obs from an xml.gz file in the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • noemtpy (bool):\nIf True, ensembles with no contribution to the Obs are not included.\nIf False, ensembles are included as written in the file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes XML file.
  • \n
  • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
  • \n
\n", "signature": "(\n fname,\n noempty=False,\n full_output=False,\n gz=True,\n separator_insertion=True\n)", "funcdef": "def"}, "pyerrors.input.dobs.create_dobs_string": {"fullname": "pyerrors.input.dobs.create_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_dobs_string", "type": "function", "doc": "

Generate the string for the export of a list of Obs or structures containing Obs\nto a .xml.gz file according to the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically. The separator |is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • who (str):\nProvide the name of the person that exports the data.
  • \n
  • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
  • \n
\n", "signature": "(\n obsl,\n name,\n spec='dobs v1.0',\n origin='',\n symbol=[],\n who=None,\n enstags={}\n)", "funcdef": "def"}, "pyerrors.input.dobs.write_dobs": {"fullname": "pyerrors.input.dobs.write_dobs", "modulename": "pyerrors.input.dobs", "qualname": "write_dobs", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • who (str):\nProvide the name of the person that exports the data.
  • \n
  • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
  • \n
  • gz (bool):\nIf True, the output is a gzipped XML. If False, the output is a XML file.
  • \n
\n", "signature": "(\n obsl,\n fname,\n name,\n spec='dobs v1.0',\n origin='',\n symbol=[],\n who=None,\n enstags={},\n gz=True\n)", "funcdef": "def"}, "pyerrors.input.hadrons": {"fullname": "pyerrors.input.hadrons", "modulename": "pyerrors.input.hadrons", "type": "module", "doc": "

\n"}, "pyerrors.input.hadrons.read_meson_hd5": {"fullname": "pyerrors.input.hadrons.read_meson_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_meson_hd5", "type": "function", "doc": "

Read hadrons meson hdf5 file and extract the meson labeled 'meson'

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • meson (str):\nlabel of the meson to be extracted, standard value meson_0 which\ncorresponds to the pseudoscalar pseudoscalar two-point function.
  • \n
  • gammas (tuple of strings):\nInstrad of a meson label one can also provide a tuple of two strings\nindicating the gamma matrices at source and sink.\n(\"Gamma5\", \"Gamma5\") corresponds to the pseudoscalar pseudoscalar\ntwo-point function. The gammas argument dominateds over meson.
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_DistillationContraction_hd5": {"fullname": "pyerrors.input.hadrons.read_DistillationContraction_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_DistillationContraction_hd5", "type": "function", "doc": "

Read hadrons DistillationContraction hdf5 files in given directory structure

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the directories to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • diagrams (list):\nList of strings of the diagrams to extract, e.g. [\"direct\", \"box\", \"cross\"].
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, ens_id, diagrams=['direct'], idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix": {"fullname": "pyerrors.input.hadrons.Npr_matrix", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix", "type": "class", "doc": "

ndarray(shape, dtype=float, buffer=None, offset=0,\n strides=None, order=None)

\n\n

An array object represents a multidimensional, homogeneous array\nof fixed-size items. An associated data-type object describes the\nformat of each element in the array (its byte-order, how many bytes it\noccupies in memory, whether it is an integer, a floating point number,\nor something else, etc.)

\n\n

Arrays should be constructed using array, zeros or empty (refer\nto the See Also section below). The parameters given here refer to\na low-level method (ndarray(...)) for instantiating an array.

\n\n

For more information, refer to the numpy module and examine the\nmethods and attributes of an array.

\n\n
Parameters
\n\n
    \n
  • (for the __new__ method; see Notes below)
  • \n
  • shape (tuple of ints):\nShape of created array.
  • \n
  • dtype (data-type, optional):\nAny object that can be interpreted as a numpy data type.
  • \n
  • buffer (object exposing buffer interface, optional):\nUsed to fill the array with data.
  • \n
  • offset (int, optional):\nOffset of array data in buffer.
  • \n
  • strides (tuple of ints, optional):\nStrides of data in memory.
  • \n
  • order ({'C', 'F'}, optional):\nRow-major (C-style) or column-major (Fortran-style) order.
  • \n
\n\n
Attributes
\n\n
    \n
  • T (ndarray):\nTranspose of the array.
  • \n
  • data (buffer):\nThe array's elements, in memory.
  • \n
  • dtype (dtype object):\nDescribes the format of the elements in the array.
  • \n
  • flags (dict):\nDictionary containing information related to memory use, e.g.,\n'C_CONTIGUOUS', 'OWNDATA', 'WRITEABLE', etc.
  • \n
  • flat (numpy.flatiter object):\nFlattened version of the array as an iterator. The iterator\nallows assignments, e.g., x.flat = 3 (See ndarray.flat for\nassignment examples; TODO).
  • \n
  • imag (ndarray):\nImaginary part of the array.
  • \n
  • real (ndarray):\nReal part of the array.
  • \n
  • size (int):\nNumber of elements in the array.
  • \n
  • itemsize (int):\nThe memory use of each array element in bytes.
  • \n
  • nbytes (int):\nThe total number of bytes required to store the array data,\ni.e., itemsize * size.
  • \n
  • ndim (int):\nThe array's number of dimensions.
  • \n
  • shape (tuple of ints):\nShape of the array.
  • \n
  • strides (tuple of ints):\nThe step-size required to move from one element to the next in\nmemory. For example, a contiguous (3, 4) array of type\nint16 in C-order has strides (8, 2). This implies that\nto move from element to element in memory requires jumps of 2 bytes.\nTo move from row-to-row, one needs to jump 8 bytes at a time\n(2 * 4).
  • \n
  • ctypes (ctypes object):\nClass containing properties of the array needed for interaction\nwith ctypes.
  • \n
  • base (ndarray):\nIf the array is a view into another array, that array is its base\n(unless that array is also a view). The base array is where the\narray data is actually stored.
  • \n
\n\n
See Also
\n\n

array: Construct an array.
\nzeros: Create an array, each element of which is zero.
\nempty: Create an array, but leave its allocated memory unchanged (i.e.,\nit contains \"garbage\").
\ndtype: Create a data-type.
\nnumpy.typing.NDArray: An ndarray alias :term:generic <generic type>\nw.r.t. its dtype.type <numpy.dtype.type>.

\n\n
Notes
\n\n

There are two modes of creating an array using __new__:

\n\n
    \n
  1. If buffer is None, then only shape, dtype, and order\nare used.
  2. \n
  3. If buffer is an object exposing the buffer interface, then\nall keywords are interpreted.
  4. \n
\n\n

No __init__ method is needed because the array is fully initialized\nafter the __new__ method.

\n\n
Examples
\n\n

These examples illustrate the low-level ndarray constructor. Refer\nto the See Also section above for easier ways of constructing an\nndarray.

\n\n

First mode, buffer is None:

\n\n
>>> np.ndarray(shape=(2,2), dtype=float, order='F')\narray([[0.0e+000, 0.0e+000], # random\n       [     nan, 2.5e-323]])\n
\n\n

Second mode:

\n\n
>>> np.ndarray((2,), buffer=np.array([1,2,3]),\n...            offset=np.int_().itemsize,\n...            dtype=int) # offset = 1*itemsize, i.e. skip first element\narray([2, 3])\n
\n", "bases": "numpy.ndarray"}, "pyerrors.input.hadrons.Npr_matrix.__init__": {"fullname": "pyerrors.input.hadrons.Npr_matrix.__init__", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.__init__", "type": "function", "doc": "

\n", "signature": "()", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix.g5H": {"fullname": "pyerrors.input.hadrons.Npr_matrix.g5H", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.g5H", "type": "variable", "doc": "

Gamma_5 hermitean conjugate

\n\n

Uses the fact that the propagator is gamma5 hermitean, so just the\nin and out momenta of the propagator are exchanged.

\n"}, "pyerrors.input.hadrons.read_ExternalLeg_hd5": {"fullname": "pyerrors.input.hadrons.read_ExternalLeg_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_ExternalLeg_hd5", "type": "function", "doc": "

Read hadrons ExternalLeg hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_Bilinear_hd5": {"fullname": "pyerrors.input.hadrons.read_Bilinear_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Bilinear_hd5", "type": "function", "doc": "

Read hadrons Bilinear hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_Fourquark_hd5": {"fullname": "pyerrors.input.hadrons.read_Fourquark_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Fourquark_hd5", "type": "function", "doc": "

Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
  • vertices (list):\nVertex functions to be extracted.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None, vertices=['VA', 'AV'])", "funcdef": "def"}, "pyerrors.input.json": {"fullname": "pyerrors.input.json", "modulename": "pyerrors.input.json", "type": "module", "doc": "

\n"}, "pyerrors.input.json.create_json_string": {"fullname": "pyerrors.input.json.create_json_string", "modulename": "pyerrors.input.json", "qualname": "create_json_string", "type": "function", "doc": "

Generate the string for the export of a list of Obs or structures containing Obs\nto a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
\n", "signature": "(ol, description='', indent=1)", "funcdef": "def"}, "pyerrors.input.json.dump_to_json": {"fullname": "pyerrors.input.json.dump_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_to_json", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
  • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
  • \n
\n", "signature": "(ol, fname, description='', indent=1, gz=True)", "funcdef": "def"}, "pyerrors.input.json.import_json_string": {"fullname": "pyerrors.input.json.import_json_string", "modulename": "pyerrors.input.json", "qualname": "import_json_string", "type": "function", "doc": "

Reconstruct a list of Obs or structures containing Obs from a json string.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

\n\n
Parameters
\n\n
    \n
  • json_string (str):\njson string containing the data.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
\n", "signature": "(json_string, verbose=True, full_output=False)", "funcdef": "def"}, "pyerrors.input.json.load_json": {"fullname": "pyerrors.input.json.load_json", "modulename": "pyerrors.input.json", "qualname": "load_json", "type": "function", "doc": "

Import a list of Obs or structures containing Obs from a .json(.gz) file.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
\n", "signature": "(fname, verbose=True, gz=True, full_output=False)", "funcdef": "def"}, "pyerrors.input.json.dump_dict_to_json": {"fullname": "pyerrors.input.json.dump_dict_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_dict_to_json", "type": "function", "doc": "

Export a dict of Obs or structures containing Obs to a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • od (dict):\nDict of JSON valid structures and objects that will be exported.\nAt the moment, these objects can be either of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
  • reps (str):\nSpecify the structure of the placeholder in exported dict to be reps[0-9]+.
  • \n
  • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
  • \n
\n", "signature": "(od, fname, description='', indent=1, reps='DICTOBS', gz=True)", "funcdef": "def"}, "pyerrors.input.json.load_json_dict": {"fullname": "pyerrors.input.json.load_json_dict", "modulename": "pyerrors.input.json", "qualname": "load_json_dict", "type": "function", "doc": "

Import a dict of Obs or structures containing Obs from a .json(.gz) file.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
  • reps (str):\nSpecify the structure of the placeholder in imported dict to be reps[0-9]+.
  • \n
\n", "signature": "(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS')", "funcdef": "def"}, "pyerrors.input.misc": {"fullname": "pyerrors.input.misc", "modulename": "pyerrors.input.misc", "type": "module", "doc": "

\n"}, "pyerrors.input.misc.read_pbp": {"fullname": "pyerrors.input.misc.read_pbp", "modulename": "pyerrors.input.misc", "qualname": "read_pbp", "type": "function", "doc": "

Read pbp format from given folder structure. Returns a list of length nrw

\n\n
Parameters
\n\n
    \n
  • r_start (list):\nlist which contains the first config to be read for each replicum
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum
  • \n
\n", "signature": "(path, prefix, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD": {"fullname": "pyerrors.input.openQCD", "modulename": "pyerrors.input.openQCD", "type": "module", "doc": "

\n"}, "pyerrors.input.openQCD.read_rwms": {"fullname": "pyerrors.input.openQCD.read_rwms", "modulename": "pyerrors.input.openQCD", "qualname": "read_rwms", "type": "function", "doc": "

Read rwms format from given folder structure. Returns a list of length nrw

\n\n
Parameters
\n\n
    \n
  • path (str):\npath that contains the data files
  • \n
  • prefix (str):\nall files in path that start with prefix are considered as input files.\nMay be used together postfix to consider only special file endings.\nPrefix is ignored, if the keyword 'files' is used.
  • \n
  • version (str):\nversion of openQCD, default 2.0
  • \n
  • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum
  • \n
  • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
  • \n
  • postfix (str):\npostfix of the file to read, e.g. '.ms1' for openQCD-files
  • \n
  • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
  • \n
  • print_err (bool):\nPrint additional information that is useful for debugging.
  • \n
\n", "signature": "(path, prefix, version='2.0', names=None, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.extract_t0": {"fullname": "pyerrors.input.openQCD.extract_t0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_t0", "type": "function", "doc": "

Extract t0 from given .ms.dat files. Returns t0 as Obs.

\n\n

It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t^2 - 0.3\nis fitted with a linear function\nfrom which the exact root is extracted.

\n\n

It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

\n\n
Parameters
\n\n
    \n
  • path (str):\nPath to .ms.dat files
  • \n
  • prefix (str):\nEnsemble prefix
  • \n
  • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
  • \n
  • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
  • \n
  • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
  • \n
  • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum.
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum.
  • \n
  • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
  • \n
  • plaquette (bool):\nIf true extract the plaquette estimate of t0 instead.
  • \n
  • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
  • \n
  • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
  • \n
  • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
  • \n
  • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
  • \n
\n", "signature": "(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop": {"fullname": "pyerrors.input.openQCD.read_qtop", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop", "type": "function", "doc": "

Read the topologial charge based on openQCD gradient flow measurements.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath of the measurement files
  • \n
  • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
  • \n
  • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
  • \n
  • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
  • \n
  • steps (int):\n(optional) Distance between two configurations in units of trajectories /\ncycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
  • \n
  • version (str):\nEither openQCD or sfqcd, depending on the data.
  • \n
  • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum.
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum.
  • \n
  • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
  • \n
  • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
  • \n
  • integer_charge (bool):\nIf True, the charge is rounded towards the nearest integer on each config.
  • \n
\n", "signature": "(path, prefix, c, dtr_cnfg=1, version='openQCD', **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.qtop_projection": {"fullname": "pyerrors.input.openQCD.qtop_projection", "modulename": "pyerrors.input.openQCD", "qualname": "qtop_projection", "type": "function", "doc": "

Returns the projection to the topological charge sector defined by target.

\n\n
Parameters
\n\n
    \n
  • path (Obs):\nTopological charge.
  • \n
  • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
  • \n
\n", "signature": "(qtop, target=0)", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop_sector": {"fullname": "pyerrors.input.openQCD.read_qtop_sector", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop_sector", "type": "function", "doc": "

Constructs reweighting factors to a specified topological sector.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath of the measurement files
  • \n
  • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat
  • \n
  • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L
  • \n
  • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
  • \n
  • dtr_cnfg (int):\n(optional) parameter that specifies the number of trajectories\nbetween two configs.\nif it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
  • \n
  • steps (int):\n(optional) Distance between two configurations in units of trajectories /\ncycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
  • \n
  • version (str):\nversion string of the openQCD (sfqcd) version used to create\nthe ensemble. Default is 2.0. May also be set to sfqcd.
  • \n
  • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
  • \n
  • r_start (list):\noffset of the first ensemble, making it easier to match\nlater on with other Obs
  • \n
  • r_stop (list):\nlast configurations that need to be read (per replicum)
  • \n
  • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
  • \n
  • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
  • \n
\n", "signature": "(path, prefix, c, target=0, **kwargs)", "funcdef": "def"}, "pyerrors.input.sfcf": {"fullname": "pyerrors.input.sfcf", "modulename": "pyerrors.input.sfcf", "type": "module", "doc": "

\n"}, "pyerrors.input.sfcf.read_sfcf": {"fullname": "pyerrors.input.sfcf.read_sfcf", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf", "type": "function", "doc": "

Read sfcf c format from given folder structure.

\n\n
Parameters
\n\n
    \n
  • quarks (str):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
  • \n
  • noffset (int):\nOffset of the source (only relevant when wavefunctions are used)
  • \n
  • wf (int):\nID of wave function
  • \n
  • wf2 (int):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
  • \n
  • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
  • \n
  • corr_type (str):\nchange between bi (boundary - inner) (default) bib (boundary - inner - boundary) and bb (boundary - boundary)\ncorrelator types
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
  • \n
  • ens_name (str):\nreplaces the name of the ensemble
  • \n
  • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
  • \n
  • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
  • \n
  • replica (list):\nlist of replica to be read, default is all
  • \n
  • files (list):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
  • \n
  • check_configs:: list of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
  • \n
\n", "signature": "(\n path,\n prefix,\n name,\n quarks='.*',\n corr_type='bi',\n noffset=0,\n wf=0,\n wf2=0,\n version='1.0c',\n cfg_separator='n',\n **kwargs\n)", "funcdef": "def"}, "pyerrors.input.utils": {"fullname": "pyerrors.input.utils", "modulename": "pyerrors.input.utils", "type": "module", "doc": "

Utilities for the input

\n"}, "pyerrors.input.utils.check_idl": {"fullname": "pyerrors.input.utils.check_idl", "modulename": "pyerrors.input.utils", "qualname": "check_idl", "type": "function", "doc": "

Checks if list of configurations is contained in an idl

\n\n
Parameters
\n\n
    \n
  • idl (range or list):\nidl of the current replicum
  • \n
  • che (list):\nlist of configurations to be checked against
  • \n
\n", "signature": "(idl, che)", "funcdef": "def"}, "pyerrors.linalg": {"fullname": "pyerrors.linalg", "modulename": "pyerrors.linalg", "type": "module", "doc": "

\n"}, "pyerrors.linalg.matmul": {"fullname": "pyerrors.linalg.matmul", "modulename": "pyerrors.linalg", "qualname": "matmul", "type": "function", "doc": "

Matrix multiply all operands.

\n\n
Parameters
\n\n
    \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
  • This implementation is faster compared to standard multiplication via the @ operator.
  • \n
\n", "signature": "(*operands)", "funcdef": "def"}, "pyerrors.linalg.jack_matmul": {"fullname": "pyerrors.linalg.jack_matmul", "modulename": "pyerrors.linalg", "qualname": "jack_matmul", "type": "function", "doc": "

Matrix multiply both operands making use of the jackknife approximation.

\n\n
Parameters
\n\n
    \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
  • For large matrices this is considerably faster compared to matmul.
  • \n
\n", "signature": "(*operands)", "funcdef": "def"}, "pyerrors.linalg.einsum": {"fullname": "pyerrors.linalg.einsum", "modulename": "pyerrors.linalg", "qualname": "einsum", "type": "function", "doc": "

Wrapper for numpy.einsum

\n\n
Parameters
\n\n
    \n
  • subscripts (str):\nSubscripts for summation (see numpy documentation for details)
  • \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
\n", "signature": "(subscripts, *operands)", "funcdef": "def"}, "pyerrors.linalg.inv": {"fullname": "pyerrors.linalg.inv", "modulename": "pyerrors.linalg", "qualname": "inv", "type": "function", "doc": "

Inverse of Obs or CObs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.cholesky": {"fullname": "pyerrors.linalg.cholesky", "modulename": "pyerrors.linalg", "qualname": "cholesky", "type": "function", "doc": "

Cholesky decomposition of Obs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.det": {"fullname": "pyerrors.linalg.det", "modulename": "pyerrors.linalg", "qualname": "det", "type": "function", "doc": "

Determinant of Obs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.eigh": {"fullname": "pyerrors.linalg.eigh", "modulename": "pyerrors.linalg", "qualname": "eigh", "type": "function", "doc": "

Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.eig": {"fullname": "pyerrors.linalg.eig", "modulename": "pyerrors.linalg", "qualname": "eig", "type": "function", "doc": "

Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.pinv": {"fullname": "pyerrors.linalg.pinv", "modulename": "pyerrors.linalg", "qualname": "pinv", "type": "function", "doc": "

Computes the Moore-Penrose pseudoinverse of a matrix of Obs.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.svd": {"fullname": "pyerrors.linalg.svd", "modulename": "pyerrors.linalg", "qualname": "svd", "type": "function", "doc": "

Computes the singular value decomposition of a matrix of Obs.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.misc": {"fullname": "pyerrors.misc", "modulename": "pyerrors.misc", "type": "module", "doc": "

\n"}, "pyerrors.misc.dump_object": {"fullname": "pyerrors.misc.dump_object", "modulename": "pyerrors.misc", "qualname": "dump_object", "type": "function", "doc": "

Dump object into pickle file.

\n\n
Parameters
\n\n
    \n
  • obj (object):\nobject to be saved in the pickle file
  • \n
  • name (str):\nname of the file
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(obj, name, **kwargs)", "funcdef": "def"}, "pyerrors.misc.load_object": {"fullname": "pyerrors.misc.load_object", "modulename": "pyerrors.misc", "qualname": "load_object", "type": "function", "doc": "

Load object from pickle file.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the file
  • \n
\n", "signature": "(path)", "funcdef": "def"}, "pyerrors.misc.pseudo_Obs": {"fullname": "pyerrors.misc.pseudo_Obs", "modulename": "pyerrors.misc", "qualname": "pseudo_Obs", "type": "function", "doc": "

Generate an Obs object with given value, dvalue and name for test purposes

\n\n
Parameters
\n\n
    \n
  • value (float):\ncentral value of the Obs to be generated.
  • \n
  • dvalue (float):\nerror of the Obs to be generated.
  • \n
  • name (str):\nname of the ensemble for which the Obs is to be generated.
  • \n
  • samples (int):\nnumber of samples for the Obs (default 1000).
  • \n
\n", "signature": "(value, dvalue, name, samples=1000)", "funcdef": "def"}, "pyerrors.misc.gen_correlated_data": {"fullname": "pyerrors.misc.gen_correlated_data", "modulename": "pyerrors.misc", "qualname": "gen_correlated_data", "type": "function", "doc": "

Generate observables with given covariance and autocorrelation times.

\n\n
Parameters
\n\n
    \n
  • means (list):\nlist containing the mean value of each observable.
  • \n
  • cov (numpy.ndarray):\ncovariance matrix for the data to be generated.
  • \n
  • name (str):\nensemble name for the data to be geneated.
  • \n
  • tau (float or list):\ncan either be a real number or a list with an entry for\nevery dataset.
  • \n
  • samples (int):\nnumber of samples to be generated for each observable.
  • \n
\n", "signature": "(means, cov, name, tau=0.5, samples=1000)", "funcdef": "def"}, "pyerrors.mpm": {"fullname": "pyerrors.mpm", "modulename": "pyerrors.mpm", "type": "module", "doc": "

\n"}, "pyerrors.mpm.matrix_pencil_method": {"fullname": "pyerrors.mpm.matrix_pencil_method", "modulename": "pyerrors.mpm", "qualname": "matrix_pencil_method", "type": "function", "doc": "

Matrix pencil method to extract k energy levels from data

\n\n

Implementation of the matrix pencil method based on\neq. (2.17) of Y. Hua, T. K. Sarkar, IEEE Trans. Acoust. 38, 814-824 (1990)

\n\n
Parameters
\n\n
    \n
  • data (list):\ncan be a list of Obs for the analysis of a single correlator, or a list of lists\nof Obs if several correlators are to analyzed at once.
  • \n
  • k (int):\nNumber of states to extract (default 1).
  • \n
  • p (int):\nmatrix pencil parameter which filters noise. The optimal value is expected between\nlen(data)/3 and 2*len(data)/3. The computation is more expensive the closer p is\nto len(data)/2 but could possibly suppress more noise (default len(data)//2).
  • \n
\n", "signature": "(corrs, k=1, p=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs": {"fullname": "pyerrors.obs", "modulename": "pyerrors.obs", "type": "module", "doc": "

\n"}, "pyerrors.obs.Obs": {"fullname": "pyerrors.obs.Obs", "modulename": "pyerrors.obs", "qualname": "Obs", "type": "class", "doc": "

Class for a general observable.

\n\n

Instances of Obs are the basic objects of a pyerrors error analysis.\nThey are initialized with a list which contains arrays of samples for\ndifferent ensembles/replica and another list of same length which contains\nthe names of the ensembles/replica. Mathematical operations can be\nperformed on instances. The result is another instance of Obs. The error of\nan instance can be computed with the gamma_method. Also contains additional\nmethods for output and visualization of the error calculation.

\n\n
Attributes
\n\n
    \n
  • S_global (float):\nStandard value for S (default 2.0)
  • \n
  • S_dict (dict):\nDictionary for S values. If an entry for a given ensemble\nexists this overwrites the standard value for that ensemble.
  • \n
  • tau_exp_global (float):\nStandard value for tau_exp (default 0.0)
  • \n
  • tau_exp_dict (dict):\nDictionary for tau_exp values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
  • \n
  • N_sigma_global (float):\nStandard value for N_sigma (default 1.0)
  • \n
  • N_sigma_dict (dict):\nDictionary for N_sigma values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
  • \n
\n"}, "pyerrors.obs.Obs.__init__": {"fullname": "pyerrors.obs.Obs.__init__", "modulename": "pyerrors.obs", "qualname": "Obs.__init__", "type": "function", "doc": "

Initialize Obs object.

\n\n
Parameters
\n\n
    \n
  • samples (list):\nlist of numpy arrays containing the Monte Carlo samples
  • \n
  • names (list):\nlist of strings labeling the individual samples
  • \n
  • idl (list, optional):\nlist of ranges or lists on which the samples are defined
  • \n
\n", "signature": "(self, samples, names, idl=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.S_global": {"fullname": "pyerrors.obs.Obs.S_global", "modulename": "pyerrors.obs", "qualname": "Obs.S_global", "type": "variable", "doc": "

\n", "default_value": " = 2.0"}, "pyerrors.obs.Obs.S_dict": {"fullname": "pyerrors.obs.Obs.S_dict", "modulename": "pyerrors.obs", "qualname": "Obs.S_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.tau_exp_global": {"fullname": "pyerrors.obs.Obs.tau_exp_global", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_global", "type": "variable", "doc": "

\n", "default_value": " = 0.0"}, "pyerrors.obs.Obs.tau_exp_dict": {"fullname": "pyerrors.obs.Obs.tau_exp_dict", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.N_sigma_global": {"fullname": "pyerrors.obs.Obs.N_sigma_global", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_global", "type": "variable", "doc": "

\n", "default_value": " = 1.0"}, "pyerrors.obs.Obs.N_sigma_dict": {"fullname": "pyerrors.obs.Obs.N_sigma_dict", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.filter_eps": {"fullname": "pyerrors.obs.Obs.filter_eps", "modulename": "pyerrors.obs", "qualname": "Obs.filter_eps", "type": "variable", "doc": "

\n", "default_value": " = 1e-10"}, "pyerrors.obs.Obs.names": {"fullname": "pyerrors.obs.Obs.names", "modulename": "pyerrors.obs", "qualname": "Obs.names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.shape": {"fullname": "pyerrors.obs.Obs.shape", "modulename": "pyerrors.obs", "qualname": "Obs.shape", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.r_values": {"fullname": "pyerrors.obs.Obs.r_values", "modulename": "pyerrors.obs", "qualname": "Obs.r_values", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.deltas": {"fullname": "pyerrors.obs.Obs.deltas", "modulename": "pyerrors.obs", "qualname": "Obs.deltas", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.N": {"fullname": "pyerrors.obs.Obs.N", "modulename": "pyerrors.obs", "qualname": "Obs.N", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.is_merged": {"fullname": "pyerrors.obs.Obs.is_merged", "modulename": "pyerrors.obs", "qualname": "Obs.is_merged", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.idl": {"fullname": "pyerrors.obs.Obs.idl", "modulename": "pyerrors.obs", "qualname": "Obs.idl", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.ddvalue": {"fullname": "pyerrors.obs.Obs.ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.ddvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.reweighted": {"fullname": "pyerrors.obs.Obs.reweighted", "modulename": "pyerrors.obs", "qualname": "Obs.reweighted", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.tag": {"fullname": "pyerrors.obs.Obs.tag", "modulename": "pyerrors.obs", "qualname": "Obs.tag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.value": {"fullname": "pyerrors.obs.Obs.value", "modulename": "pyerrors.obs", "qualname": "Obs.value", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.dvalue": {"fullname": "pyerrors.obs.Obs.dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.dvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_names": {"fullname": "pyerrors.obs.Obs.e_names", "modulename": "pyerrors.obs", "qualname": "Obs.e_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.cov_names": {"fullname": "pyerrors.obs.Obs.cov_names", "modulename": "pyerrors.obs", "qualname": "Obs.cov_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.mc_names": {"fullname": "pyerrors.obs.Obs.mc_names", "modulename": "pyerrors.obs", "qualname": "Obs.mc_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_content": {"fullname": "pyerrors.obs.Obs.e_content", "modulename": "pyerrors.obs", "qualname": "Obs.e_content", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.covobs": {"fullname": "pyerrors.obs.Obs.covobs", "modulename": "pyerrors.obs", "qualname": "Obs.covobs", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.gamma_method": {"fullname": "pyerrors.obs.Obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "Obs.gamma_method", "type": "function", "doc": "

Estimate the error and related properties of the Obs.

\n\n
Parameters
\n\n
    \n
  • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
  • \n
  • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
  • \n
  • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
  • \n
  • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
  • \n
\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.details": {"fullname": "pyerrors.obs.Obs.details", "modulename": "pyerrors.obs", "qualname": "Obs.details", "type": "function", "doc": "

Output detailed properties of the Obs.

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Parameters
\n\n
    \n
  • ens_content (bool):\nprint details about the ensembles and replica if true.
  • \n
\n", "signature": "(self, ens_content=True)", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero_within_error": {"fullname": "pyerrors.obs.Obs.is_zero_within_error", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero_within_error", "type": "function", "doc": "

Checks whether the observable is zero within 'sigma' standard errors.

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Parameters
\n\n
    \n
  • sigma (int):\nNumber of standard errors used for the check.
  • \n
  • Works only properly when the gamma method was run.
  • \n
\n", "signature": "(self, sigma=1)", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero": {"fullname": "pyerrors.obs.Obs.is_zero", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero", "type": "function", "doc": "

Checks whether the observable is zero within a given tolerance.

\n\n
Parameters
\n\n
    \n
  • atol (float):\nAbsolute tolerance (for details see numpy documentation).
  • \n
\n", "signature": "(self, atol=1e-10)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_tauint": {"fullname": "pyerrors.obs.Obs.plot_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.plot_tauint", "type": "function", "doc": "

Plot integrated autocorrelation time for each ensemble.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rho": {"fullname": "pyerrors.obs.Obs.plot_rho", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rho", "type": "function", "doc": "

Plot normalized autocorrelation function time for each ensemble.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rep_dist": {"fullname": "pyerrors.obs.Obs.plot_rep_dist", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rep_dist", "type": "function", "doc": "

Plot replica distribution for each ensemble with more than one replicum.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_history": {"fullname": "pyerrors.obs.Obs.plot_history", "modulename": "pyerrors.obs", "qualname": "Obs.plot_history", "type": "function", "doc": "

Plot derived Monte Carlo history for each ensemble

\n\n
Parameters
\n\n
    \n
  • expand (bool):\nshow expanded history for irregular Monte Carlo chains (default: True).
  • \n
\n", "signature": "(self, expand=True)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_piechart": {"fullname": "pyerrors.obs.Obs.plot_piechart", "modulename": "pyerrors.obs", "qualname": "Obs.plot_piechart", "type": "function", "doc": "

Plot piechart which shows the fractional contribution of each\nensemble to the error and returns a dictionary containing the fractions.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.dump": {"fullname": "pyerrors.obs.Obs.dump", "modulename": "pyerrors.obs", "qualname": "Obs.dump", "type": "function", "doc": "

Dump the Obs to a file 'name' of chosen format.

\n\n
Parameters
\n\n
    \n
  • filename (str):\nname of the file to be saved.
  • \n
  • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
  • \n
  • description (str):\nDescription for output file, only relevant for json.gz format.
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(self, filename, datatype='json.gz', description='', **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.export_jackknife": {"fullname": "pyerrors.obs.Obs.export_jackknife", "modulename": "pyerrors.obs", "qualname": "Obs.export_jackknife", "type": "function", "doc": "

Export jackknife samples from the Obs

\n\n
Returns
\n\n
    \n
  • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N jackknife samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived jackknife samples\nshould agree with samples from a full jackknife analysis up to O(1/N).
  • \n
\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sqrt": {"fullname": "pyerrors.obs.Obs.sqrt", "modulename": "pyerrors.obs", "qualname": "Obs.sqrt", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.log": {"fullname": "pyerrors.obs.Obs.log", "modulename": "pyerrors.obs", "qualname": "Obs.log", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.exp": {"fullname": "pyerrors.obs.Obs.exp", "modulename": "pyerrors.obs", "qualname": "Obs.exp", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sin": {"fullname": "pyerrors.obs.Obs.sin", "modulename": "pyerrors.obs", "qualname": "Obs.sin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.cos": {"fullname": "pyerrors.obs.Obs.cos", "modulename": "pyerrors.obs", "qualname": "Obs.cos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.tan": {"fullname": "pyerrors.obs.Obs.tan", "modulename": "pyerrors.obs", "qualname": "Obs.tan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arcsin": {"fullname": "pyerrors.obs.Obs.arcsin", "modulename": "pyerrors.obs", "qualname": "Obs.arcsin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arccos": {"fullname": "pyerrors.obs.Obs.arccos", "modulename": "pyerrors.obs", "qualname": "Obs.arccos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arctan": {"fullname": "pyerrors.obs.Obs.arctan", "modulename": "pyerrors.obs", "qualname": "Obs.arctan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sinh": {"fullname": "pyerrors.obs.Obs.sinh", "modulename": "pyerrors.obs", "qualname": "Obs.sinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.cosh": {"fullname": "pyerrors.obs.Obs.cosh", "modulename": "pyerrors.obs", "qualname": "Obs.cosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.tanh": {"fullname": "pyerrors.obs.Obs.tanh", "modulename": "pyerrors.obs", "qualname": "Obs.tanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arcsinh": {"fullname": "pyerrors.obs.Obs.arcsinh", "modulename": "pyerrors.obs", "qualname": "Obs.arcsinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arccosh": {"fullname": "pyerrors.obs.Obs.arccosh", "modulename": "pyerrors.obs", "qualname": "Obs.arccosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arctanh": {"fullname": "pyerrors.obs.Obs.arctanh", "modulename": "pyerrors.obs", "qualname": "Obs.arctanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.N_sigma": {"fullname": "pyerrors.obs.Obs.N_sigma", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.S": {"fullname": "pyerrors.obs.Obs.S", "modulename": "pyerrors.obs", "qualname": "Obs.S", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_ddvalue": {"fullname": "pyerrors.obs.Obs.e_ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_ddvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_drho": {"fullname": "pyerrors.obs.Obs.e_drho", "modulename": "pyerrors.obs", "qualname": "Obs.e_drho", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_dtauint": {"fullname": "pyerrors.obs.Obs.e_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_dtauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_dvalue": {"fullname": "pyerrors.obs.Obs.e_dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_dvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_n_dtauint": {"fullname": "pyerrors.obs.Obs.e_n_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_dtauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_n_tauint": {"fullname": "pyerrors.obs.Obs.e_n_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_tauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_rho": {"fullname": "pyerrors.obs.Obs.e_rho", "modulename": "pyerrors.obs", "qualname": "Obs.e_rho", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_tauint": {"fullname": "pyerrors.obs.Obs.e_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_tauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_windowsize": {"fullname": "pyerrors.obs.Obs.e_windowsize", "modulename": "pyerrors.obs", "qualname": "Obs.e_windowsize", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.tau_exp": {"fullname": "pyerrors.obs.Obs.tau_exp", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs": {"fullname": "pyerrors.obs.CObs", "modulename": "pyerrors.obs", "qualname": "CObs", "type": "class", "doc": "

Class for a complex valued observable.

\n"}, "pyerrors.obs.CObs.__init__": {"fullname": "pyerrors.obs.CObs.__init__", "modulename": "pyerrors.obs", "qualname": "CObs.__init__", "type": "function", "doc": "

\n", "signature": "(self, real, imag=0.0)", "funcdef": "def"}, "pyerrors.obs.CObs.tag": {"fullname": "pyerrors.obs.CObs.tag", "modulename": "pyerrors.obs", "qualname": "CObs.tag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.real": {"fullname": "pyerrors.obs.CObs.real", "modulename": "pyerrors.obs", "qualname": "CObs.real", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.imag": {"fullname": "pyerrors.obs.CObs.imag", "modulename": "pyerrors.obs", "qualname": "CObs.imag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.gamma_method": {"fullname": "pyerrors.obs.CObs.gamma_method", "modulename": "pyerrors.obs", "qualname": "CObs.gamma_method", "type": "function", "doc": "

Executes the gamma_method for the real and the imaginary part.

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.obs.CObs.is_zero": {"fullname": "pyerrors.obs.CObs.is_zero", "modulename": "pyerrors.obs", "qualname": "CObs.is_zero", "type": "function", "doc": "

Checks whether both real and imaginary part are zero within machine precision.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.CObs.conjugate": {"fullname": "pyerrors.obs.CObs.conjugate", "modulename": "pyerrors.obs", "qualname": "CObs.conjugate", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.derived_observable": {"fullname": "pyerrors.obs.derived_observable", "modulename": "pyerrors.obs", "qualname": "derived_observable", "type": "function", "doc": "

Construct a derived Obs according to func(data, **kwargs) using automatic differentiation.

\n\n
Parameters
\n\n
    \n
  • func (object):\narbitrary function of the form func(data, **kwargs). For the\nautomatic differentiation to work, all numpy functions have to have\nthe autograd wrapper (use 'import autograd.numpy as anp').
  • \n
  • data (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
  • \n
  • num_grad (bool):\nif True, numerical derivatives are used instead of autograd\n(default False). To control the numerical differentiation the\nkwargs of numdifftools.step_generators.MaxStepGenerator\ncan be used.
  • \n
  • man_grad (list):\nmanually supply a list or an array which contains the jacobian\nof func. Use cautiously, supplying the wrong derivative will\nnot be intercepted.
  • \n
\n\n
Notes
\n\n

For simple mathematical operations it can be practical to use anonymous\nfunctions. For the ratio of two observables one can e.g. use

\n\n

new_obs = derived_observable(lambda x: x[0] / x[1], [obs1, obs2])

\n", "signature": "(func, data, array_mode=False, **kwargs)", "funcdef": "def"}, "pyerrors.obs.reweight": {"fullname": "pyerrors.obs.reweight", "modulename": "pyerrors.obs", "qualname": "reweight", "type": "function", "doc": "

Reweight a list of observables.

\n\n
Parameters
\n\n
    \n
  • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
  • \n
  • obs (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
  • \n
  • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
  • \n
\n", "signature": "(weight, obs, **kwargs)", "funcdef": "def"}, "pyerrors.obs.correlate": {"fullname": "pyerrors.obs.correlate", "modulename": "pyerrors.obs", "qualname": "correlate", "type": "function", "doc": "

Correlate two observables.

\n\n
Parameters
\n\n
    \n
  • obs_a (Obs):\nFirst observable
  • \n
  • obs_b (Obs):\nSecond observable
  • \n
\n\n
Notes
\n\n

Keep in mind to only correlate primary observables which have not been reweighted\nyet. The reweighting has to be applied after correlating the observables.\nCurrently only works if ensembles are identical (this is not strictly necessary).

\n", "signature": "(obs_a, obs_b)", "funcdef": "def"}, "pyerrors.obs.covariance": {"fullname": "pyerrors.obs.covariance", "modulename": "pyerrors.obs", "qualname": "covariance", "type": "function", "doc": "

Calculates the error covariance matrix of a set of observables.

\n\n

The gamma method has to be applied first to all observables.

\n\n
Parameters
\n\n
    \n
  • obs (list or numpy.ndarray):\nList or one dimensional array of Obs
  • \n
  • visualize (bool):\nIf True plots the corresponding normalized correlation matrix (default False).
  • \n
  • correlation (bool):\nIf True the correlation matrix instead of the error covariance matrix is returned (default False).
  • \n
  • smooth (None or int):\nIf smooth is an integer 'E' between 2 and the dimension of the matrix minus 1 the eigenvalue\nsmoothing procedure of hep-lat/9412087 is applied to the correlation matrix which leaves the\nlargest E eigenvalues essentially unchanged and smoothes the smaller eigenvalues to avoid extremely\nsmall ones.
  • \n
\n\n
Notes
\n\n

The error covariance is defined such that it agrees with the squared standard error for two identical observables\n$$\\operatorname{cov}(a,a)=\\sum_{s=1}^N\\delta_a^s\\delta_a^s/N^2=\\Gamma_{aa}(0)/N=\\operatorname{var}(a)/N=\\sigma_a^2$$\nin the absence of autocorrelation.\nThe error covariance is estimated by calculating the correlation matrix assuming no autocorrelation and then rescaling the correlation matrix by the full errors including the previous gamma method estimate for the autocorrelation of the observables. The covariance at windowsize 0 is guaranteed to be positive semi-definite\n$$\\sum_{i,j}v_i\\Gamma_{ij}(0)v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i,j}v_i\\delta_i^s\\delta_j^s v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i}|v_i\\delta_i^s|^2\\geq 0\\,,$$ for every $v\\in\\mathbb{R}^M$, while such an identity does not hold for larger windows/lags.\nFor observables defined on a single ensemble our approximation is equivalent to assuming that the integrated autocorrelation time of an off-diagonal element is equal to the geometric mean of the integrated autocorrelation times of the corresponding diagonal elements.\n$$\\tau_{\\mathrm{int}, ij}=\\sqrt{\\tau_{\\mathrm{int}, i}\\times \\tau_{\\mathrm{int}, j}}$$\nThis construction ensures that the estimated covariance matrix is positive semi-definite (up to numerical rounding errors).

\n", "signature": "(obs, visualize=False, correlation=False, smooth=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs.import_jackknife": {"fullname": "pyerrors.obs.import_jackknife", "modulename": "pyerrors.obs", "qualname": "import_jackknife", "type": "function", "doc": "

Imports jackknife samples and returns an Obs

\n\n
Parameters
\n\n
    \n
  • jacks (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N jackknife samples as first to Nth entry.
  • \n
  • name (str):\nname of the ensemble the samples are defined on.
  • \n
\n", "signature": "(jacks, name, idl=None)", "funcdef": "def"}, "pyerrors.obs.merge_obs": {"fullname": "pyerrors.obs.merge_obs", "modulename": "pyerrors.obs", "qualname": "merge_obs", "type": "function", "doc": "

Combine all observables in list_of_obs into one new observable

\n\n
Parameters
\n\n
    \n
  • list_of_obs (list):\nlist of the Obs object to be combined
  • \n
\n\n
Notes
\n\n

It is not possible to combine obs which are based on the same replicum

\n", "signature": "(list_of_obs)", "funcdef": "def"}, "pyerrors.obs.cov_Obs": {"fullname": "pyerrors.obs.cov_Obs", "modulename": "pyerrors.obs", "qualname": "cov_Obs", "type": "function", "doc": "

Create an Obs based on mean(s) and a covariance matrix

\n\n
Parameters
\n\n
    \n
  • mean (list of floats or float):\nN mean value(s) of the new Obs
  • \n
  • cov (list or array):\n2d (NxN) Covariance matrix, 1d diagonal entries or 0d covariance
  • \n
  • name (str):\nidentifier for the covariance matrix
  • \n
  • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
  • \n
\n", "signature": "(means, cov, name, grad=None)", "funcdef": "def"}, "pyerrors.roots": {"fullname": "pyerrors.roots", "modulename": "pyerrors.roots", "type": "module", "doc": "

\n"}, "pyerrors.roots.find_root": {"fullname": "pyerrors.roots.find_root", "modulename": "pyerrors.roots", "qualname": "find_root", "type": "function", "doc": "

Finds the root of the function func(x, d) where d is an Obs.

\n\n
Parameters
\n\n
    \n
  • d (Obs):\nObs passed to the function.
  • \n
  • func (object):\nFunction to be minimized. Any numpy functions have to use the autograd.numpy wrapper.\nExample:\npython\nimport autograd.numpy as anp\ndef root_func(x, d):\n return anp.exp(-x ** 2) - d\n
  • \n
  • guess (float):\nInitial guess for the minimization.
  • \n
\n\n
Returns
\n\n
    \n
  • Obs: Obs valued root of the function.
  • \n
\n", "signature": "(d, func, guess=1.0, **kwargs)", "funcdef": "def"}, "pyerrors.version": {"fullname": "pyerrors.version", "modulename": "pyerrors.version", "type": "module", "doc": "

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What is pyerrors?

\n\n

pyerrors is a python package for error computation and propagation of Markov chain Monte Carlo data.\nIt is based on the gamma method arXiv:hep-lat/0306017. Some of its features are:

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    \n
  • automatic differentiation for exact liner error propagation as suggested in arXiv:1809.01289 (partly based on the autograd package).
  • \n
  • treatment of slow modes in the simulation as suggested in arXiv:1009.5228.
  • \n
  • coherent error propagation for data from different Markov chains.
  • \n
  • non-linear fits with x- and y-errors and exact linear error propagation based on automatic differentiation as introduced in arXiv:1809.01289.
  • \n
  • real and complex matrix operations and their error propagation based on automatic differentiation (Matrix inverse, Cholesky decomposition, calculation of eigenvalues and eigenvectors, singular value decomposition...).
  • \n
\n\n

More detailed examples can found in the GitHub repository \"badge\".

\n\n

There exist similar publicly available implementations of gamma method error analysis suites in Fortran, Julia and Python.

\n\n

Basic example

\n\n
import numpy as np\nimport pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name']) # Initialize an Obs object\nmy_new_obs = 2 * np.log(my_obs) / my_obs ** 2 # Construct derived Obs object\nmy_new_obs.gamma_method()                     # Estimate the statistical error\nprint(my_new_obs)                             # Print the result to stdout\n> 0.31498(72)\n
\n\n

The Obs class

\n\n

pyerrors introduces a new datatype, Obs, which simplifies error propagation and estimation for auto- and cross-correlated data.\nAn Obs object can be initialized with two arguments, the first is a list containing the samples for an observable from a Monte Carlo chain.\nThe samples can either be provided as python list or as numpy array.\nThe second argument is a list containing the names of the respective Monte Carlo chains as strings. These strings uniquely identify a Monte Carlo chain/ensemble.

\n\n
import pyerrors as pe\n\nmy_obs = pe.Obs([samples], ['ensemble_name'])\n
\n\n

Error propagation

\n\n

When performing mathematical operations on Obs objects the correct error propagation is intrinsically taken care of using a first order Taylor expansion\n$$\\delta_f^i=\\sum_\\alpha \\bar{f}_\\alpha \\delta_\\alpha^i\\,,\\quad \\delta_\\alpha^i=a_\\alpha^i-\\bar{a}_\\alpha\\,,$$\nas introduced in arXiv:hep-lat/0306017.\nThe required derivatives $\\bar{f}_\\alpha$ are evaluated up to machine precision via automatic differentiation as suggested in arXiv:1809.01289.

\n\n

The Obs class is designed such that mathematical numpy functions can be used on Obs just as for regular floats.

\n\n
import numpy as np\nimport pyerrors as pe\n\nmy_obs1 = pe.Obs([samples1], ['ensemble_name'])\nmy_obs2 = pe.Obs([samples2], ['ensemble_name'])\n\nmy_sum = my_obs1 + my_obs2\n\nmy_m_eff = np.log(my_obs1 / my_obs2)\n\niamzero = my_m_eff - my_m_eff\n# Check that value and fluctuations are zero within machine precision\nprint(iamzero == 0.0)\n> True\n
\n\n

Error estimation

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The error estimation within pyerrors is based on the gamma method introduced in arXiv:hep-lat/0306017.\nAfter having arrived at the derived quantity of interest the gamma_method can be called as detailed in the following example.

\n\n
my_sum.gamma_method()\nprint(my_sum)\n> 1.70(57)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 5.72046658e-01 +/- 7.56746598e-02 (33.650%)\n>  t_int         2.71422900e+00 +/- 6.40320983e-01 S = 2.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

We use the following definition of the integrated autocorrelation time established in Madras & Sokal 1988\n$$\\tau_\\mathrm{int}=\\frac{1}{2}+\\sum_{t=1}^{W}\\rho(t)\\geq \\frac{1}{2}\\,.$$\nThe window $W$ is determined via the automatic windowing procedure described in arXiv:hep-lat/0306017.\nThe standard value for the parameter $S$ of this automatic windowing procedure is $S=2$. Other values for $S$ can be passed to the gamma_method as parameter.

\n\n
my_sum.gamma_method(S=3.0)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.30675201e-01 +/- 1.04585650e-01 (37.099%)\n>  t_int         3.29909703e+00 +/- 9.77310102e-01 S = 3.00\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

The integrated autocorrelation time $\\tau_\\mathrm{int}$ and the autocorrelation function $\\rho(W)$ can be monitored via the methods pyerrors.obs.Obs.plot_tauint and pyerrors.obs.Obs.plot_tauint.

\n\n

If the parameter $S$ is set to zero it is assumed that the dataset does not exhibit any autocorrelation and the windowsize is chosen to be zero.\nIn this case the error estimate is identical to the sample standard error.

\n\n

Exponential tails

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Slow modes in the Monte Carlo history can be accounted for by attaching an exponential tail to the autocorrelation function $\\rho$ as suggested in arXiv:1009.5228. The longest autocorrelation time in the history, $\\tau_\\mathrm{exp}$, can be passed to the gamma_method as parameter. In this case the automatic windowing procedure is vacated and the parameter $S$ does not affect the error estimate.

\n\n
my_sum.gamma_method(tau_exp=7.2)\nmy_sum.details()\n> Result         1.70000000e+00 +/- 6.28097762e-01 +/- 5.79077524e-02 (36.947%)\n>  t_int         3.27218667e+00 +/- 7.99583654e-01 tau_exp = 7.20,  N_sigma = 1\n> 1000 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble_name' : 1000 configurations (from 1 to 1000)\n
\n\n

For the full API see pyerrors.obs.Obs.gamma_method.

\n\n

Multiple ensembles/replica

\n\n

Error propagation for multiple ensembles (Markov chains with different simulation parameters) is handled automatically. Ensembles are uniquely identified by their name.

\n\n
obs1 = pe.Obs([samples1], ['ensemble1'])\nobs2 = pe.Obs([samples2], ['ensemble2'])\n\nmy_sum = obs1 + obs2\nmy_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 2 ensembles:\n>   \u00b7 Ensemble 'ensemble1' : 1000 configurations (from 1 to 1000)\n>   \u00b7 Ensemble 'ensemble2' : 500 configurations (from 1 to 500)\n
\n\n

pyerrors identifies multiple replica (independent Markov chains with identical simulation parameters) by the vertical bar | in the name of the data set.

\n\n
obs1 = pe.Obs([samples1], ['ensemble1|r01'])\nobs2 = pe.Obs([samples2], ['ensemble1|r02'])\n\n> my_sum = obs1 + obs2\n> my_sum.details()\n> Result   2.00697958e+00\n> 1500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1'\n>     \u00b7 Replicum 'r01' : 1000 configurations (from 1 to 1000)\n>     \u00b7 Replicum 'r02' : 500 configurations (from 1 to 500)\n
\n\n

Error estimation for multiple ensembles

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In order to keep track of different error analysis parameters for different ensembles one can make use of global dictionaries as detailed in the following example.

\n\n
pe.Obs.S_dict['ensemble1'] = 2.5\npe.Obs.tau_exp_dict['ensemble2'] = 8.0\npe.Obs.tau_exp_dict['ensemble3'] = 2.0\n
\n\n

In case the gamma_method is called without any parameters it will use the values specified in the dictionaries for the respective ensembles.\nPassing arguments to the gamma_method still dominates over the dictionaries.

\n\n

Irregular Monte Carlo chains

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Obs objects defined on irregular Monte Carlo chains can be initialized with the parameter idl.

\n\n
# Observable defined on configurations 20 to 519\nobs1 = pe.Obs([samples1], ['ensemble1'], idl=[range(20, 520)])\nobs1.details()\n> Result         9.98319881e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 20 to 519)\n\n# Observable defined on every second configuration between 5 and 1003\nobs2 = pe.Obs([samples2], ['ensemble1'], idl=[range(5, 1005, 2)])\nobs2.details()\n> Result         9.99100712e-01\n> 500 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 500 configurations (from 5 to 1003 in steps of 2)\n\n# Observable defined on configurations 2, 9, 28, 29 and 501\nobs3 = pe.Obs([samples3], ['ensemble1'], idl=[[2, 9, 28, 29, 501]])\nobs3.details()\n> Result         1.01718064e+00\n> 5 samples in 1 ensemble:\n>   \u00b7 Ensemble 'ensemble1' : 5 configurations (irregular range)\n
\n\n

Obs objects defined on regular and irregular histories of the same ensemble can be combined with each other and the correct error propagation and estimation is automatically taken care of.

\n\n

Warning: Irregular Monte Carlo chains can result in odd patterns in the autocorrelation functions.\nMake sure to check the autocorrelation time with e.g. pyerrors.obs.Obs.plot_rho or pyerrors.obs.Obs.plot_tauint.

\n\n

For the full API see pyerrors.obs.Obs.

\n\n

Correlators

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When one is not interested in single observables but correlation functions, pyerrors offers the Corr class which simplifies the corresponding error propagation and provides the user with a set of standard methods. In order to initialize a Corr objects one needs to arrange the data as a list of Obs

\n\n
my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0      0.7957(80)\n> 1      0.5156(51)\n> 2      0.3227(33)\n> 3      0.2041(21)\n
\n\n

In case the correlation functions are not defined on the outermost timeslices, for example because of fixed boundary conditions, a padding can be introduced.

\n\n
my_corr = pe.Corr([obs_0, obs_1, obs_2, obs_3], padding=[1, 1])\nprint(my_corr)\n> x0/a  Corr(x0/a)\n> ------------------\n> 0\n> 1      0.7957(80)\n> 2      0.5156(51)\n> 3      0.3227(33)\n> 4      0.2041(21)\n> 5\n
\n\n

The individual entries of a correlator can be accessed via slicing

\n\n
print(my_corr[3])\n> 0.3227(33)\n
\n\n

Error propagation with the Corr class works very similar to Obs objects. Mathematical operations are overloaded and Corr objects can be computed together with other Corr objects, Obs objects or real numbers and integers.

\n\n
my_new_corr = 0.3 * my_corr[2] * my_corr * my_corr + 12 / my_corr\n
\n\n

pyerrors provides the user with a set of regularly used methods for the manipulation of correlator objects:

\n\n
    \n
  • Corr.gamma_method applies the gamma method to all entries of the correlator.
  • \n
  • Corr.m_eff to construct effective masses. Various variants for periodic and fixed temporal boundary conditions are available.
  • \n
  • Corr.deriv returns the first derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
  • \n
  • Corr.second_deriv returns the second derivative of the correlator as Corr. Different discretizations of the numerical derivative are available.
  • \n
  • Corr.symmetric symmetrizes parity even correlations functions, assuming periodic boundary conditions.
  • \n
  • Corr.anti_symmetric anti-symmetrizes parity odd correlations functions, assuming periodic boundary conditions.
  • \n
  • Corr.T_symmetry averages a correlator with its time symmetry partner, assuming fixed boundary conditions.
  • \n
  • Corr.plateau extracts a plateau value from the correlator in a given range.
  • \n
  • Corr.roll periodically shifts the correlator.
  • \n
  • Corr.reverse reverses the time ordering of the correlator.
  • \n
  • Corr.correlate constructs a disconnected correlation function from the correlator and another Corr or Obs object.
  • \n
  • Corr.reweight reweights the correlator.
  • \n
\n\n

pyerrors can also handle matrices of correlation functions and extract energy states from these matrices via a generalized eigenvalue problem (see pyerrors.correlators.Corr.GEVP).

\n\n

For the full API see pyerrors.correlators.Corr.

\n\n

Complex valued observables

\n\n

pyerrors can handle complex valued observables via the class pyerrors.obs.CObs.\nCObs are initialized with a real and an imaginary part which both can be Obs valued.

\n\n
my_real_part = pe.Obs([samples1], ['ensemble1'])\nmy_imag_part = pe.Obs([samples2], ['ensemble1'])\n\nmy_cobs = pe.CObs(my_real_part, my_imag_part)\nmy_cobs.gamma_method()\nprint(my_cobs)\n> (0.9959(91)+0.659(28)j)\n
\n\n

Elementary mathematical operations are overloaded and samples are properly propagated as for the Obs class.

\n\n
my_derived_cobs = (my_cobs + my_cobs.conjugate()) / np.abs(my_cobs)\nmy_derived_cobs.gamma_method()\nprint(my_derived_cobs)\n> (1.668(23)+0.0j)\n
\n\n

The Covobs class

\n\n

In many projects, auxiliary data that is not based on Monte Carlo chains enters. Examples are experimentally determined mesons masses which are used to set the scale or renormalization constants. These numbers come with an error that has to be propagated through the analysis. The Covobs class allows to define such quantities in pyerrors. Furthermore, external input might consist of correlated quantities. An example are the parameters of an interpolation formula, which are defined via mean values and a covariance matrix between all parameters. The contribution of the interpolation formula to the error of a derived quantity therefore might depend on the complete covariance matrix.

\n\n

This concept is built into the definition of Covobs. In pyerrors, external input is defined by $M$ mean values, a $M\\times M$ covariance matrix, where $M=1$ is permissible, and a name that uniquely identifies the covariance matrix. Below, we define the pion mass, based on its mean value and error, 134.9768(5). Note, that the square of the error enters cov_Obs, since the second argument of this function is the covariance matrix of the Covobs.

\n\n
import pyerrors.obs as pe\n\nmpi = pe.cov_Obs(134.9768, 0.0005**2, 'pi^0 mass')\nmpi.gamma_method()\nmpi.details()\n> Result         1.34976800e+02 +/- 5.00000000e-04 +/- 0.00000000e+00 (0.000%)\n>  pi^0 mass     5.00000000e-04\n> 0 samples in 1 ensemble:\n>   \u00b7 Covobs   'pi^0 mass'\n
\n\n

The resulting object mpi is an Obs that contains a Covobs. In the following, it may be handled as any other Obs. The contribution of the covariance matrix to the error of an Obs is determined from the $M \\times M$ covariance matrix $\\Sigma$ and the gradient of the Obs with respect to the external quantities, which is the $1\\times M$ Jacobian matrix $J$, via\n$$s = \\sqrt{J^T \\Sigma J}\\,,$$\nwhere the Jacobian is computed for each derived quantity via automatic differentiation.

\n\n

Correlated auxiliary data is defined similarly to above, e.g., via

\n\n
RAP = pe.cov_Obs([16.7457, -19.0475], [[3.49591, -6.07560], [-6.07560, 10.5834]], 'R_AP, 1906.03445, (5.3a)')\nprint(RAP)\n> [Obs[16.7(1.9)], Obs[-19.0(3.3)]]\n
\n\n

where RAP now is a list of two Obs that contains the two correlated parameters.

\n\n

Since the gradient of a derived observable with respect to an external covariance matrix is propagated through the entire analysis, the Covobs class allows to quote the derivative of a result with respect to the external quantities. If these derivatives are published together with the result, small shifts in the definition of external quantities, e.g., the definition of the physical point, can be performed a posteriori based on the published information. This may help to compare results of different groups. The gradient of an Obs o with respect to a covariance matrix with the identifying string k may be accessed via

\n\n
o.covobs[k].grad\n
\n\n

Error propagation in iterative algorithms

\n\n

pyerrors supports exact linear error propagation for iterative algorithms like various variants of non-linear least sqaures fits or root finding. The derivatives required for the error propagation are calculated as described in arXiv:1809.01289.

\n\n

Least squares fits

\n\n

Standard non-linear least square fits with errors on the dependent but not the independent variables can be performed with pyerrors.fits.least_squares. As default solver the Levenberg-Marquardt algorithm implemented in scipy is used.

\n\n

Fit functions have to be of the following form

\n\n
import autograd.numpy as anp\n\ndef func(a, x):\n    return a[1] * anp.exp(-a[0] * x)\n
\n\n

It is important that numerical functions refer to autograd.numpy instead of numpy for the automatic differentiation in iterative algorithms to work properly.

\n\n

Fits can then be performed via

\n\n
fit_result = pe.fits.least_squares(x, y, func)\nprint("\\n", fit_result)\n> Fit with 2 parameters\n> Method: Levenberg-Marquardt\n> `ftol` termination condition is satisfied.\n> chisquare/d.o.f.: 0.9593035785160936\n\n>  Goodness of fit:\n> \u03c7\u00b2/d.o.f. = 0.959304\n> p-value   = 0.5673\n> Fit parameters:\n> 0      0.0548(28)\n> 1      1.933(64)\n
\n\n

where x is a list or numpy.array of floats and y is a list or numpy.array of Obs.

\n\n

Data stored in Corr objects can be fitted directly using the Corr.fit method.

\n\n
my_corr = pe.Corr(y)\nfit_result = my_corr.fit(func, fitrange=[12, 25])\n
\n\n

this can simplify working with absolute fit ranges and takes care of gaps in the data automatically.

\n\n

For fit functions with multiple independent variables the fit function can be of the form

\n\n
def func(a, x):\n    (x1, x2) = x\n    return a[0] * x1 ** 2 + a[1] * x2\n
\n\n

pyerrors also supports correlated fits which can be triggered via the parameter correlated_fit=True.\nDetails about how the required covariance matrix is estimated can be found in pyerrors.obs.covariance.

\n\n

Direct visualizations of the performed fits can be triggered via resplot=True or qqplot=True. For all available options see pyerrors.fits.least_squares.

\n\n

Total least squares fits

\n\n

pyerrors can also fit data with errors on both the dependent and independent variables using the total least squares method also referred to orthogonal distance regression as implemented in scipy, see pyerrors.fits.least_squares. The syntax is identical to the standard least squares case, the only diffrence being that x also has to be a list or numpy.array of Obs.

\n\n

For the full API see pyerrors.fits for fits and pyerrors.roots for finding roots of functions.

\n\n

Matrix operations

\n\n

pyerrors provides wrappers for Obs- and CObs-valued matrix operations based on numpy.linalg. The supported functions include:

\n\n
    \n
  • inv for the matrix inverse.
  • \n
  • cholseky for the Cholesky decomposition.
  • \n
  • det for the matrix determinant.
  • \n
  • eigh for eigenvalues and eigenvectors of hermitean matrices.
  • \n
  • eig for eigenvalues of general matrices.
  • \n
  • pinv for the Moore-Penrose pseudoinverse.
  • \n
  • svd for the singular-value-decomposition.
  • \n
\n\n

For the full API see pyerrors.linalg.

\n\n

Export data

\n\n

The preferred exported file format within pyerrors is json.gz. Files written to this format are valid JSON files that have been compressed using gzip. The structure of the content is inspired by the dobs format of the ALPHA collaboration. The aim of the format is to facilitate the storage of data in a self-contained way such that, even years after the creation of the file, it is possible to extract all necessary information:

\n\n
    \n
  • What observables are stored? Possibly: How exactly are they defined.
  • \n
  • How does each single ensemble or external quantity contribute to the error of the observable?
  • \n
  • Who did write the file when and on which machine?
  • \n
\n\n

This can be achieved by storing all information in one single file. The export routines of pyerrors are written such that as much information as possible is written automatically as described in the following example

\n\n
my_obs = pe.Obs([samples], ["test_ensemble"])\nmy_obs.tag = "My observable"\n\npe.input.json.dump_to_json(my_obs, "test_output_file", description="This file contains a test observable")\n# For a single observable one can equivalently use the class method dump\nmy_obs.dump("test_output_file", description="This file contains a test observable")\n\ncheck = pe.input.json.load_json("test_output_file")\n\nprint(my_obs == check)\n> True\n
\n\n

The format also allows to directly write out the content of Corr objects or lists and arrays of Obs objects by passing the desired data to pyerrors.input.json.dump_to_json.

\n\n

json.gz format specification

\n\n

The first entries of the file provide optional auxiliary information:

\n\n
    \n
  • program is a string that indicates which program was used to write the file.
  • \n
  • version is a string that specifies the version of the format.
  • \n
  • who is a string that specifies the user name of the creator of the file.
  • \n
  • date is a string and contains the creation date of the file.
  • \n
  • host is a string and contains the hostname of the machine where the file has been written.
  • \n
  • description contains information on the content of the file. This field is not filled automatically in pyerrors. The user is advised to provide as detailed information as possible in this field. Examples are: Input files of measurements or simulations, LaTeX formulae or references to publications to specify how the observables have been computed, details on the analysis strategy, ... This field may be any valid JSON type. Strings, arrays or objects (equivalent to dicts in python) are well suited to provide information.
  • \n
\n\n

The only necessary entry of the file is the field\n-obsdata, an array that contains the actual data.

\n\n

Each entry of the array belongs to a single structure of observables. Currently, these structures can be either of Obs, list, numpy.ndarray, Corr. All Obs inside a structure (with dimension > 0) have to be defined on the same set of configurations. Different structures, that are represented by entries of the array obsdata, are treated independently. Each entry of the array obsdata has the following required entries:

\n\n
    \n
  • type is a string that specifies the type of the structure. This allows to parse the content to the correct form after reading the file. It is always possible to interpret the content as list of Obs.
  • \n
  • value is an array that contains the mean values of the Obs inside the structure.\nThe following entries are optional:
  • \n
  • layout is a string that specifies the layout of multi-dimensional structures. Examples are \"2, 2\" for a 2x2 dimensional matrix or \"64, 4, 4\" for a Corr with $T=64$ and 4x4 matrices on each time slices. \"1\" denotes a single Obs. Multi-dimensional structures are stored in row-major format (see below).
  • \n
  • tag is any JSON type. It contains additional information concerning the structure. The tag of an Obs in pyerrors is written here.
  • \n
  • reweighted is a Bool that may be used to specify, whether the Obs in the structure have been reweighted.
  • \n
  • data is an array that contains the data from MC chains. We will define it below.
  • \n
  • cdata is an array that contains the data from external quantities with an error (Covobs in pyerrors). We will define it below.
  • \n
\n\n

The array data contains the data from MC chains. Each entry of the array corresponds to one ensemble and contains:

\n\n
    \n
  • id, a string that contains the name of the ensemble
  • \n
  • replica, an array that contains an entry per replica of the ensemble.
  • \n
\n\n

Each entry of replica contains\nname, a string that contains the name of the replica\ndeltas, an array that contains the actual data.

\n\n

Each entry in deltas corresponds to one configuration of the replica and has $1+N$ many entries. The first entry is an integer that specifies the configuration number that, together with ensemble and replica name, may be used to uniquely identify the configuration on which the data has been obtained. The following N entries specify the deltas, i.e., the deviation of the observable from the mean value on this configuration, of each Obs inside the structure. Multi-dimensional structures are stored in a row-major format. For primary observables, such as correlation functions, $value + delta_i$ matches the primary data obtained on the configuration.

\n\n

The array cdata contains information about the contribution of auxiliary observables, represented by Covobs in pyerrors, to the total error of the observables. Each entry of the array belongs to one auxiliary covariance matrix and contains:

\n\n
    \n
  • id, a string that identifies the covariance matrix
  • \n
  • layout, a string that defines the dimensions of the $M\\times M$ covariance matrix (has to be \"M, M\" or \"1\").
  • \n
  • cov, an array that contains the $M\\times M$ many entries of the covariance matrix, stored in row-major format.
  • \n
  • grad, an array that contains N entries, one for each Obs inside the structure. Each entry itself is an array, that contains the M gradients of the Nth observable with respect to the quantity that corresponds to the Mth diagonal entry of the covariance matrix.
  • \n
\n\n

A JSON schema that may be used to verify the correctness of a file with respect to the format definition is stored in ./examples/json_schema.json. The schema is a self-descriptive format definition and contains an exemplary file.

\n\n

Julia I/O routines for the json.gz format, compatible with ADerrors.jl, can be found here.

\n\n

Citing

\n\n

If you use pyerrors for research that leads to a publication please consider citing:

\n\n
    \n
  • Ulli Wolff, Monte Carlo errors with less errors. Comput.Phys.Commun. 156 (2004) 143-153, Comput.Phys.Commun. 176 (2007) 383 (erratum).
  • \n
  • Alberto Ramos, Automatic differentiation for error analysis of Monte Carlo data. Comput.Phys.Commun. 238 (2019) 19-35.\nand
  • \n
  • Stefan Schaefer, Rainer Sommer, Francesco Virotta, Critical slowing down and error analysis in lattice QCD simulations. Nucl.Phys.B 845 (2011) 93-119.\nwhere applicable.
  • \n
\n"}, "pyerrors.correlators": {"fullname": "pyerrors.correlators", "modulename": "pyerrors.correlators", "type": "module", "doc": "

\n"}, "pyerrors.correlators.Corr": {"fullname": "pyerrors.correlators.Corr", "modulename": "pyerrors.correlators", "qualname": "Corr", "type": "class", "doc": "

The class for a correlator (time dependent sequence of pe.Obs).

\n\n

Everything, this class does, can be achieved using lists or arrays of Obs.\nBut it is simply more convenient to have a dedicated object for correlators.\nOne often wants to add or multiply correlators of the same length at every timeslice and it is inconvenient\nto iterate over all timeslices for every operation. This is especially true, when dealing with matrices.

\n\n

The correlator can have two types of content: An Obs at every timeslice OR a GEVP\nmatrix at every timeslice. Other dependency (eg. spatial) are not supported.

\n"}, "pyerrors.correlators.Corr.__init__": {"fullname": "pyerrors.correlators.Corr.__init__", "modulename": "pyerrors.correlators", "qualname": "Corr.__init__", "type": "function", "doc": "

Initialize a Corr object.

\n\n
Parameters
\n\n
    \n
  • data_input (list or array):\nlist of Obs or list of arrays of Obs or array of Corrs
  • \n
  • padding (list, optional):\nList with two entries where the first labels the padding\nat the front of the correlator and the second the padding\nat the back.
  • \n
  • prange (list, optional):\nList containing the first and last timeslice of the plateau\nregion indentified for this correlator.
  • \n
\n", "signature": "(self, data_input, padding=[0, 0], prange=None)", "funcdef": "def"}, "pyerrors.correlators.Corr.reweighted": {"fullname": "pyerrors.correlators.Corr.reweighted", "modulename": "pyerrors.correlators", "qualname": "Corr.reweighted", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.gamma_method": {"fullname": "pyerrors.correlators.Corr.gamma_method", "modulename": "pyerrors.correlators", "qualname": "Corr.gamma_method", "type": "function", "doc": "

Apply the gamma method to the content of the Corr.

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.projected": {"fullname": "pyerrors.correlators.Corr.projected", "modulename": "pyerrors.correlators", "qualname": "Corr.projected", "type": "function", "doc": "

We need to project the Correlator with a Vector to get a single value at each timeslice.

\n\n

The method can use one or two vectors.\nIf two are specified it returns v1@G@v2 (the order might be very important.)\nBy default it will return the lowest source, which usually means unsmeared-unsmeared (0,0), but it does not have to

\n", "signature": "(self, vector_l=None, vector_r=None, normalize=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.item": {"fullname": "pyerrors.correlators.Corr.item", "modulename": "pyerrors.correlators", "qualname": "Corr.item", "type": "function", "doc": "

Picks the element [i,j] from every matrix and returns a correlator containing one Obs per timeslice.

\n\n
Parameters
\n\n
    \n
  • i (int):\nFirst index to be picked.
  • \n
  • j (int):\nSecond index to be picked.
  • \n
\n", "signature": "(self, i, j)", "funcdef": "def"}, "pyerrors.correlators.Corr.plottable": {"fullname": "pyerrors.correlators.Corr.plottable", "modulename": "pyerrors.correlators", "qualname": "Corr.plottable", "type": "function", "doc": "

Outputs the correlator in a plotable format.

\n\n

Outputs three lists containing the timeslice index, the value on each\ntimeslice and the error on each timeslice.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.symmetric": {"fullname": "pyerrors.correlators.Corr.symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.symmetric", "type": "function", "doc": "

Symmetrize the correlator around x0=0.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.anti_symmetric": {"fullname": "pyerrors.correlators.Corr.anti_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.anti_symmetric", "type": "function", "doc": "

Anti-symmetrize the correlator around x0=0.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.matrix_symmetric": {"fullname": "pyerrors.correlators.Corr.matrix_symmetric", "modulename": "pyerrors.correlators", "qualname": "Corr.matrix_symmetric", "type": "function", "doc": "

Symmetrizes the correlator matrices on every timeslice.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.GEVP": {"fullname": "pyerrors.correlators.Corr.GEVP", "modulename": "pyerrors.correlators", "qualname": "Corr.GEVP", "type": "function", "doc": "

Solve the generalized eigenvalue problem on the correlator matrix and returns the corresponding eigenvectors.

\n\n

The eigenvectors are sorted according to the descending eigenvalues, the zeroth eigenvector(s) correspond to the\nlargest eigenvalue(s). The eigenvector(s) for the individual states can be accessed via slicing

\n\n
C.GEVP(t0=2)[0]  # Ground state vector(s)\nC.GEVP(t0=2)[:3]  # Vectors for the lowest three states\n
\n\n
Parameters
\n\n
    \n
  • t0 (int):\nThe time t0 for the right hand side of the GEVP according to $G(t)v_i=\\lambda_i G(t_0)v_i$
  • \n
  • ts (int):\nfixed time $G(t_s)v_i=\\lambda_i G(t_0)v_i$ if sort=None.\nIf sort=\"Eigenvector\" it gives a reference point for the sorting method.
  • \n
  • sort (string):\nIf this argument is set, a list of self.T vectors per state is returned. If it is set to None, only one vector is returned.\n
      \n
    • \"Eigenvalue\": The eigenvector is chosen according to which eigenvalue it belongs individually on every timeslice.
    • \n
    • \"Eigenvector\": Use the method described in arXiv:2004.10472 to find the set of v(t) belonging to the state.\nThe reference state is identified by its eigenvalue at $t=t_s$.
    • \n
  • \n
\n\n
Other Parameters
\n\n
    \n
  • state (int):\nReturns only the vector(s) for a specified state. The lowest state is zero.
  • \n
\n", "signature": "(self, t0, ts=None, sort='Eigenvalue', **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.Eigenvalue": {"fullname": "pyerrors.correlators.Corr.Eigenvalue", "modulename": "pyerrors.correlators", "qualname": "Corr.Eigenvalue", "type": "function", "doc": "

Determines the eigenvalue of the GEVP by solving and projecting the correlator

\n\n
Parameters
\n\n
    \n
  • state (int):\nThe state one is interested in ordered by energy. The lowest state is zero.
  • \n
  • All other parameters are identical to the ones of Corr.GEVP.
  • \n
\n", "signature": "(self, t0, ts=None, state=0, sort='Eigenvalue')", "funcdef": "def"}, "pyerrors.correlators.Corr.Hankel": {"fullname": "pyerrors.correlators.Corr.Hankel", "modulename": "pyerrors.correlators", "qualname": "Corr.Hankel", "type": "function", "doc": "

Constructs an NxN Hankel matrix

\n\n

C(t) c(t+1) ... c(t+n-1)\nC(t+1) c(t+2) ... c(t+n)\n.................\nC(t+(n-1)) c(t+n) ... c(t+2(n-1))

\n\n
Parameters
\n\n
    \n
  • N (int):\nDimension of the Hankel matrix
  • \n
  • periodic (bool, optional):\ndetermines whether the matrix is extended periodically
  • \n
\n", "signature": "(self, N, periodic=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.roll": {"fullname": "pyerrors.correlators.Corr.roll", "modulename": "pyerrors.correlators", "qualname": "Corr.roll", "type": "function", "doc": "

Periodically shift the correlator by dt timeslices

\n\n
Parameters
\n\n
    \n
  • dt (int):\nnumber of timeslices
  • \n
\n", "signature": "(self, dt)", "funcdef": "def"}, "pyerrors.correlators.Corr.reverse": {"fullname": "pyerrors.correlators.Corr.reverse", "modulename": "pyerrors.correlators", "qualname": "Corr.reverse", "type": "function", "doc": "

Reverse the time ordering of the Corr

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.thin": {"fullname": "pyerrors.correlators.Corr.thin", "modulename": "pyerrors.correlators", "qualname": "Corr.thin", "type": "function", "doc": "

Thin out a correlator to suppress correlations

\n\n
Parameters
\n\n
    \n
  • spacing (int):\nKeep only every 'spacing'th entry of the correlator
  • \n
  • offset (int):\nOffset the equal spacing
  • \n
\n", "signature": "(self, spacing=2, offset=0)", "funcdef": "def"}, "pyerrors.correlators.Corr.correlate": {"fullname": "pyerrors.correlators.Corr.correlate", "modulename": "pyerrors.correlators", "qualname": "Corr.correlate", "type": "function", "doc": "

Correlate the correlator with another correlator or Obs

\n\n
Parameters
\n\n
    \n
  • partner (Obs or Corr):\npartner to correlate the correlator with.\nCan either be an Obs which is correlated with all entries of the\ncorrelator or a Corr of same length.
  • \n
\n", "signature": "(self, partner)", "funcdef": "def"}, "pyerrors.correlators.Corr.reweight": {"fullname": "pyerrors.correlators.Corr.reweight", "modulename": "pyerrors.correlators", "qualname": "Corr.reweight", "type": "function", "doc": "

Reweight the correlator.

\n\n
Parameters
\n\n
    \n
  • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
  • \n
  • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
  • \n
\n", "signature": "(self, weight, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.T_symmetry": {"fullname": "pyerrors.correlators.Corr.T_symmetry", "modulename": "pyerrors.correlators", "qualname": "Corr.T_symmetry", "type": "function", "doc": "

Return the time symmetry average of the correlator and its partner

\n\n
Parameters
\n\n
    \n
  • partner (Corr):\nTime symmetry partner of the Corr
  • \n
  • partity (int):\nParity quantum number of the correlator, can be +1 or -1
  • \n
\n", "signature": "(self, partner, parity=1)", "funcdef": "def"}, "pyerrors.correlators.Corr.deriv": {"fullname": "pyerrors.correlators.Corr.deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.deriv", "type": "function", "doc": "

Return the first derivative of the correlator with respect to x0.

\n\n
Parameters
\n\n
    \n
  • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, forward, backward, improved, default: symmetric
  • \n
\n", "signature": "(self, variant='symmetric')", "funcdef": "def"}, "pyerrors.correlators.Corr.second_deriv": {"fullname": "pyerrors.correlators.Corr.second_deriv", "modulename": "pyerrors.correlators", "qualname": "Corr.second_deriv", "type": "function", "doc": "

Return the second derivative of the correlator with respect to x0.

\n\n
Parameters
\n\n
    \n
  • variant (str):\ndecides which definition of the finite differences derivative is used.\nAvailable choice: symmetric, improved, default: symmetric
  • \n
\n", "signature": "(self, variant='symmetric')", "funcdef": "def"}, "pyerrors.correlators.Corr.m_eff": {"fullname": "pyerrors.correlators.Corr.m_eff", "modulename": "pyerrors.correlators", "qualname": "Corr.m_eff", "type": "function", "doc": "

Returns the effective mass of the correlator as correlator object

\n\n
Parameters
\n\n
    \n
  • variant (str):\nlog : uses the standard effective mass log(C(t) / C(t+1))\ncosh, periodic : Use periodicitiy of the correlator by solving C(t) / C(t+1) = cosh(m * (t - T/2)) / cosh(m * (t + 1 - T/2)) for m.\nsinh : Use anti-periodicitiy of the correlator by solving C(t) / C(t+1) = sinh(m * (t - T/2)) / sinh(m * (t + 1 - T/2)) for m.\nSee, e.g., arXiv:1205.5380\narccosh : Uses the explicit form of the symmetrized correlator (not recommended)
  • \n
  • guess (float):\nguess for the root finder, only relevant for the root variant
  • \n
\n", "signature": "(self, variant='log', guess=1.0)", "funcdef": "def"}, "pyerrors.correlators.Corr.fit": {"fullname": "pyerrors.correlators.Corr.fit", "modulename": "pyerrors.correlators", "qualname": "Corr.fit", "type": "function", "doc": "

Fits function to the data

\n\n
Parameters
\n\n
    \n
  • function (obj):\nfunction to fit to the data. See fits.least_squares for details.
  • \n
  • fitrange (list):\nTwo element list containing the timeslices on which the fit is supposed to start and stop.\nCaution: This range is inclusive as opposed to standard python indexing.\nfitrange=[4, 6] corresponds to the three entries 4, 5 and 6.\nIf not specified, self.prange or all timeslices are used.
  • \n
  • silent (bool):\nDecides whether output is printed to the standard output.
  • \n
\n", "signature": "(self, function, fitrange=None, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.plateau": {"fullname": "pyerrors.correlators.Corr.plateau", "modulename": "pyerrors.correlators", "qualname": "Corr.plateau", "type": "function", "doc": "

Extract a plateau value from a Corr object

\n\n
Parameters
\n\n
    \n
  • plateau_range (list):\nlist with two entries, indicating the first and the last timeslice\nof the plateau region.
  • \n
  • method (str):\nmethod to extract the plateau.\n 'fit' fits a constant to the plateau region\n 'avg', 'average' or 'mean' just average over the given timeslices.
  • \n
  • auto_gamma (bool):\napply gamma_method with default parameters to the Corr. Defaults to None
  • \n
\n", "signature": "(self, plateau_range=None, method='fit', auto_gamma=False)", "funcdef": "def"}, "pyerrors.correlators.Corr.set_prange": {"fullname": "pyerrors.correlators.Corr.set_prange", "modulename": "pyerrors.correlators", "qualname": "Corr.set_prange", "type": "function", "doc": "

Sets the attribute prange of the Corr object.

\n", "signature": "(self, prange)", "funcdef": "def"}, "pyerrors.correlators.Corr.show": {"fullname": "pyerrors.correlators.Corr.show", "modulename": "pyerrors.correlators", "qualname": "Corr.show", "type": "function", "doc": "

Plots the correlator using the tag of the correlator as label if available.

\n\n
Parameters
\n\n
    \n
  • x_range (list):\nlist of two values, determining the range of the x-axis e.g. [4, 8]
  • \n
  • comp (Corr or list of Corr):\nCorrelator or list of correlators which are plotted for comparison.\nThe tags of these correlators are used as labels if available.
  • \n
  • logscale (bool):\nSets y-axis to logscale
  • \n
  • plateau (Obs):\nPlateau value to be visualized in the figure
  • \n
  • fit_res (Fit_result):\nFit_result object to be visualized
  • \n
  • ylabel (str):\nLabel for the y-axis
  • \n
  • save (str):\npath to file in which the figure should be saved
  • \n
  • auto_gamma (bool):\nApply the gamma method with standard parameters to all correlators and plateau values before plotting.
  • \n
  • hide_sigma (float):\nHides data points from the first value on which is consistent with zero within 'hide_sigma' standard errors.
  • \n
  • references (list):\nList of floating point values that are displayed as horizontal lines for reference.
  • \n
\n", "signature": "(\n self,\n x_range=None,\n comp=None,\n y_range=None,\n logscale=False,\n plateau=None,\n fit_res=None,\n ylabel=None,\n save=None,\n auto_gamma=False,\n hide_sigma=None,\n references=None\n)", "funcdef": "def"}, "pyerrors.correlators.Corr.spaghetti_plot": {"fullname": "pyerrors.correlators.Corr.spaghetti_plot", "modulename": "pyerrors.correlators", "qualname": "Corr.spaghetti_plot", "type": "function", "doc": "

Produces a spaghetti plot of the correlator suited to monitor exceptional configurations.

\n\n
Parameters
\n\n
    \n
  • logscale (bool):\nDetermines whether the scale of the y-axis is logarithmic or standard.
  • \n
\n", "signature": "(self, logscale=True)", "funcdef": "def"}, "pyerrors.correlators.Corr.dump": {"fullname": "pyerrors.correlators.Corr.dump", "modulename": "pyerrors.correlators", "qualname": "Corr.dump", "type": "function", "doc": "

Dumps the Corr into a file of chosen type

\n\n
Parameters
\n\n
    \n
  • filename (str):\nName of the file to be saved.
  • \n
  • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(self, filename, datatype='json.gz', **kwargs)", "funcdef": "def"}, "pyerrors.correlators.Corr.print": {"fullname": "pyerrors.correlators.Corr.print", "modulename": "pyerrors.correlators", "qualname": "Corr.print", "type": "function", "doc": "

\n", "signature": "(self, print_range=None)", "funcdef": "def"}, "pyerrors.correlators.Corr.sqrt": {"fullname": "pyerrors.correlators.Corr.sqrt", "modulename": "pyerrors.correlators", "qualname": "Corr.sqrt", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.log": {"fullname": "pyerrors.correlators.Corr.log", "modulename": "pyerrors.correlators", "qualname": "Corr.log", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.exp": {"fullname": "pyerrors.correlators.Corr.exp", "modulename": "pyerrors.correlators", "qualname": "Corr.exp", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.sin": {"fullname": "pyerrors.correlators.Corr.sin", "modulename": "pyerrors.correlators", "qualname": "Corr.sin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.cos": {"fullname": "pyerrors.correlators.Corr.cos", "modulename": "pyerrors.correlators", "qualname": "Corr.cos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.tan": {"fullname": "pyerrors.correlators.Corr.tan", "modulename": "pyerrors.correlators", "qualname": "Corr.tan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.sinh": {"fullname": "pyerrors.correlators.Corr.sinh", "modulename": "pyerrors.correlators", "qualname": "Corr.sinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.cosh": {"fullname": "pyerrors.correlators.Corr.cosh", "modulename": "pyerrors.correlators", "qualname": "Corr.cosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.tanh": {"fullname": "pyerrors.correlators.Corr.tanh", "modulename": "pyerrors.correlators", "qualname": "Corr.tanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsin": {"fullname": "pyerrors.correlators.Corr.arcsin", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arccos": {"fullname": "pyerrors.correlators.Corr.arccos", "modulename": "pyerrors.correlators", "qualname": "Corr.arccos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arctan": {"fullname": "pyerrors.correlators.Corr.arctan", "modulename": "pyerrors.correlators", "qualname": "Corr.arctan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arcsinh": {"fullname": "pyerrors.correlators.Corr.arcsinh", "modulename": "pyerrors.correlators", "qualname": "Corr.arcsinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arccosh": {"fullname": "pyerrors.correlators.Corr.arccosh", "modulename": "pyerrors.correlators", "qualname": "Corr.arccosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.arctanh": {"fullname": "pyerrors.correlators.Corr.arctanh", "modulename": "pyerrors.correlators", "qualname": "Corr.arctanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.correlators.Corr.real": {"fullname": "pyerrors.correlators.Corr.real", "modulename": "pyerrors.correlators", "qualname": "Corr.real", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.imag": {"fullname": "pyerrors.correlators.Corr.imag", "modulename": "pyerrors.correlators", "qualname": "Corr.imag", "type": "variable", "doc": "

\n"}, "pyerrors.correlators.Corr.prune": {"fullname": "pyerrors.correlators.Corr.prune", "modulename": "pyerrors.correlators", "qualname": "Corr.prune", "type": "function", "doc": "

Project large correlation matrix to lowest states

\n\n

This method can be used to reduce the size of an (N x N) correlation matrix\nto (Ntrunc x Ntrunc) by solving a GEVP at very early times where the noise\nis still small.

\n\n
Parameters
\n\n
    \n
  • Ntrunc (int):\nRank of the target matrix.
  • \n
  • tproj (int):\nTime where the eigenvectors are evaluated, corresponds to ts in the GEVP method.\nThe default value is 3.
  • \n
  • t0proj (int):\nTime where the correlation matrix is inverted. Choosing t0proj=1 is strongly\ndiscouraged for O(a) improved theories, since the correctness of the procedure\ncannot be granted in this case. The default value is 2.
  • \n
  • basematrix (Corr):\nCorrelation matrix that is used to determine the eigenvectors of the\nlowest states based on a GEVP. basematrix is taken to be the Corr itself if\nis is not specified.
  • \n
\n\n
Notes
\n\n

We have the basematrix $C(t)$ and the target matrix $G(t)$. We start by solving\nthe GEVP $$C(t) v_n(t, t_0) = \\lambda_n(t, t_0) C(t_0) v_n(t, t_0)$$ where $t \\equiv t_\\mathrm{proj}$\nand $t_0 \\equiv t_{0, \\mathrm{proj}}$. The target matrix is projected onto the subspace of the\nresulting eigenvectors $v_n, n=1,\\dots,N_\\mathrm{trunc}$ via\n$$G^\\prime_{i, j}(t) = (v_i, G(t) v_j)$$. This allows to reduce the size of a large\ncorrelation matrix and to remove some noise that is added by irrelevant operators.\nThis may allow to use the GEVP on $G(t)$ at late times such that the theoretically motivated\nbound $t_0 \\leq t/2$ holds, since the condition number of $G(t)$ is decreased, compared to $C(t)$.

\n", "signature": "(self, Ntrunc, tproj=3, t0proj=2, basematrix=None)", "funcdef": "def"}, "pyerrors.covobs": {"fullname": "pyerrors.covobs", "modulename": "pyerrors.covobs", "type": "module", "doc": "

\n"}, "pyerrors.covobs.Covobs": {"fullname": "pyerrors.covobs.Covobs", "modulename": "pyerrors.covobs", "qualname": "Covobs", "type": "class", "doc": "

\n"}, "pyerrors.covobs.Covobs.__init__": {"fullname": "pyerrors.covobs.Covobs.__init__", "modulename": "pyerrors.covobs", "qualname": "Covobs.__init__", "type": "function", "doc": "

Initialize Covobs object.

\n\n
Parameters
\n\n
    \n
  • mean (float):\nMean value of the new Obs
  • \n
  • cov (list or array):\n2d Covariance matrix or 1d diagonal entries
  • \n
  • name (str):\nidentifier for the covariance matrix
  • \n
  • pos (int):\nPosition of the variance belonging to mean in cov.\nIs taken to be 1 if cov is 0-dimensional
  • \n
  • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
  • \n
\n", "signature": "(self, mean, cov, name, pos=None, grad=None)", "funcdef": "def"}, "pyerrors.covobs.Covobs.errsq": {"fullname": "pyerrors.covobs.Covobs.errsq", "modulename": "pyerrors.covobs", "qualname": "Covobs.errsq", "type": "function", "doc": "

Return the variance (= square of the error) of the Covobs

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.covobs.Covobs.cov": {"fullname": "pyerrors.covobs.Covobs.cov", "modulename": "pyerrors.covobs", "qualname": "Covobs.cov", "type": "variable", "doc": "

\n"}, "pyerrors.covobs.Covobs.grad": {"fullname": "pyerrors.covobs.Covobs.grad", "modulename": "pyerrors.covobs", "qualname": "Covobs.grad", "type": "variable", "doc": "

\n"}, "pyerrors.dirac": {"fullname": "pyerrors.dirac", "modulename": "pyerrors.dirac", "type": "module", "doc": "

\n"}, "pyerrors.dirac.epsilon_tensor": {"fullname": "pyerrors.dirac.epsilon_tensor", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor", "type": "function", "doc": "

Rank-3 epsilon tensor

\n\n

Based on https://codegolf.stackexchange.com/a/160375

\n", "signature": "(i, j, k)", "funcdef": "def"}, "pyerrors.dirac.epsilon_tensor_rank4": {"fullname": "pyerrors.dirac.epsilon_tensor_rank4", "modulename": "pyerrors.dirac", "qualname": "epsilon_tensor_rank4", "type": "function", "doc": "

Rank-4 epsilon tensor

\n\n

Extension of https://codegolf.stackexchange.com/a/160375

\n", "signature": "(i, j, k, o)", "funcdef": "def"}, "pyerrors.dirac.Grid_gamma": {"fullname": "pyerrors.dirac.Grid_gamma", "modulename": "pyerrors.dirac", "qualname": "Grid_gamma", "type": "function", "doc": "

Returns gamma matrix in Grid labeling.

\n", "signature": "(gamma_tag)", "funcdef": "def"}, "pyerrors.fits": {"fullname": "pyerrors.fits", "modulename": "pyerrors.fits", "type": "module", "doc": "

\n"}, "pyerrors.fits.Fit_result": {"fullname": "pyerrors.fits.Fit_result", "modulename": "pyerrors.fits", "qualname": "Fit_result", "type": "class", "doc": "

Represents fit results.

\n\n
Attributes
\n\n
    \n
  • fit_parameters (list):\nresults for the individual fit parameters,\nalso accessible via indices.
  • \n
\n", "bases": "collections.abc.Sequence"}, "pyerrors.fits.Fit_result.__init__": {"fullname": "pyerrors.fits.Fit_result.__init__", "modulename": "pyerrors.fits", "qualname": "Fit_result.__init__", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.fits.Fit_result.gamma_method": {"fullname": "pyerrors.fits.Fit_result.gamma_method", "modulename": "pyerrors.fits", "qualname": "Fit_result.gamma_method", "type": "function", "doc": "

Apply the gamma method to all fit parameters

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.fits.least_squares": {"fullname": "pyerrors.fits.least_squares", "modulename": "pyerrors.fits", "qualname": "least_squares", "type": "function", "doc": "

Performs a non-linear fit to y = func(x).

\n\n
Parameters
\n\n
    \n
  • x (list):\nlist of floats.
  • \n
  • y (list):\nlist of Obs.
  • \n
  • func (object):\nfit function, has to be of the form

    \n\n
    import autograd.numpy as anp\n\ndef func(a, x):\n   return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
    \n\n

    For multiple x values func can be of the form

    \n\n
    def func(a, x):\n   (x1, x2) = x\n   return a[0] * x1 ** 2 + a[1] * x2\n
    \n\n

    It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

  • \n
  • priors (list, optional):\npriors has to be a list with an entry for every parameter in the fit. The entries can either be\nObs (e.g. results from a previous fit) or strings containing a value and an error formatted like\n0.548(23), 500(40) or 0.5(0.4)
  • \n
  • silent (bool, optional):\nIf true all output to the console is omitted (default False).
  • \n
  • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for\nnon-linear fits with many parameters. In case of correlated fits the guess is used to perform\nan uncorrelated fit which then serves as guess for the correlated fit.
  • \n
  • method (str, optional):\ncan be used to choose an alternative method for the minimization of chisquare.\nThe possible methods are the ones which can be used for scipy.optimize.minimize and\nmigrad of iminuit. If no method is specified, Levenberg-Marquard is used.\nReliable alternatives are migrad, Powell and Nelder-Mead.
  • \n
  • correlated_fit (bool):\nIf True, use the full inverse covariance matrix in the definition of the chisquare cost function.\nFor details about how the covariance matrix is estimated see pyerrors.obs.covariance.\nIn practice the correlation matrix is Cholesky decomposed and inverted (instead of the covariance matrix).\nThis procedure should be numerically more stable as the correlation matrix is typically better conditioned (Jacobi preconditioning).\nAt the moment this option only works for prior==None and when no method is given.
  • \n
  • expected_chisquare (bool):\nIf True estimates the expected chisquare which is\ncorrected by effects caused by correlated input data (default False).
  • \n
  • resplot (bool):\nIf True, a plot which displays fit, data and residuals is generated (default False).
  • \n
  • qqplot (bool):\nIf True, a quantile-quantile plot of the fit result is generated (default False).
  • \n
\n", "signature": "(x, y, func, priors=None, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.fits.total_least_squares": {"fullname": "pyerrors.fits.total_least_squares", "modulename": "pyerrors.fits", "qualname": "total_least_squares", "type": "function", "doc": "

Performs a non-linear fit to y = func(x) and returns a list of Obs corresponding to the fit parameters.

\n\n
Parameters
\n\n
    \n
  • x (list):\nlist of Obs, or a tuple of lists of Obs
  • \n
  • y (list):\nlist of Obs. The dvalues of the Obs are used as x- and yerror for the fit.
  • \n
  • func (object):\nfunc has to be of the form

    \n\n
    import autograd.numpy as anp\n\ndef func(a, x):\n   return a[0] + a[1] * x + a[2] * anp.sinh(x)\n
    \n\n

    For multiple x values func can be of the form

    \n\n
    def func(a, x):\n   (x1, x2) = x\n   return a[0] * x1 ** 2 + a[1] * x2\n
    \n\n

    It is important that all numpy functions refer to autograd.numpy, otherwise the differentiation\nwill not work.

  • \n
  • silent (bool, optional):\nIf true all output to the console is omitted (default False).
  • \n
  • initial_guess (list):\ncan provide an initial guess for the input parameters. Relevant for non-linear\nfits with many parameters.
  • \n
  • expected_chisquare (bool):\nIf true prints the expected chisquare which is\ncorrected by effects caused by correlated input data.\nThis can take a while as the full correlation matrix\nhas to be calculated (default False).
  • \n
\n\n
Notes
\n\n

Based on the orthogonal distance regression module of scipy

\n", "signature": "(x, y, func, silent=False, **kwargs)", "funcdef": "def"}, "pyerrors.fits.fit_lin": {"fullname": "pyerrors.fits.fit_lin", "modulename": "pyerrors.fits", "qualname": "fit_lin", "type": "function", "doc": "

Performs a linear fit to y = n + m * x and returns two Obs n, m.

\n\n
Parameters
\n\n
    \n
  • x (list):\nCan either be a list of floats in which case no xerror is assumed, or\na list of Obs, where the dvalues of the Obs are used as xerror for the fit.
  • \n
  • y (list):\nList of Obs, the dvalues of the Obs are used as yerror for the fit.
  • \n
\n", "signature": "(x, y, **kwargs)", "funcdef": "def"}, "pyerrors.fits.qqplot": {"fullname": "pyerrors.fits.qqplot", "modulename": "pyerrors.fits", "qualname": "qqplot", "type": "function", "doc": "

Generates a quantile-quantile plot of the fit result which can be used to\ncheck if the residuals of the fit are gaussian distributed.

\n", "signature": "(x, o_y, func, p)", "funcdef": "def"}, "pyerrors.fits.residual_plot": {"fullname": "pyerrors.fits.residual_plot", "modulename": "pyerrors.fits", "qualname": "residual_plot", "type": "function", "doc": "

Generates a plot which compares the fit to the data and displays the corresponding residuals

\n", "signature": "(x, y, func, fit_res)", "funcdef": "def"}, "pyerrors.fits.error_band": {"fullname": "pyerrors.fits.error_band", "modulename": "pyerrors.fits", "qualname": "error_band", "type": "function", "doc": "

Returns the error band for an array of sample values x, for given fit function func with optimized parameters beta.

\n", "signature": "(x, func, beta)", "funcdef": "def"}, "pyerrors.fits.ks_test": {"fullname": "pyerrors.fits.ks_test", "modulename": "pyerrors.fits", "qualname": "ks_test", "type": "function", "doc": "

Performs a Kolmogorov\u2013Smirnov test for the p-values of all fit object.

\n\n
Parameters
\n\n
    \n
  • objects (list):\nList of fit results to include in the analysis (optional).
  • \n
\n", "signature": "(objects=None)", "funcdef": "def"}, "pyerrors.input": {"fullname": "pyerrors.input", "modulename": "pyerrors.input", "type": "module", "doc": "

pyerrors includes an input submodule in which input routines and parsers for the output of various numerical programs are contained.

\n\n

Jackknife samples

\n\n

For comparison with other analysis workflows pyerrors can also generate jackknife samples from an Obs object or import jackknife samples into an Obs object.\nSee pyerrors.obs.Obs.export_jackknife and pyerrors.obs.import_jackknife for details.

\n"}, "pyerrors.input.bdio": {"fullname": "pyerrors.input.bdio", "modulename": "pyerrors.input.bdio", "type": "module", "doc": "

\n"}, "pyerrors.input.bdio.read_ADerrors": {"fullname": "pyerrors.input.bdio.read_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "read_ADerrors", "type": "function", "doc": "

Extract generic MCMC data from a bdio file

\n\n

read_ADerrors requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path -- path to the bdio file
  • \n
  • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.write_ADerrors": {"fullname": "pyerrors.input.bdio.write_ADerrors", "modulename": "pyerrors.input.bdio", "qualname": "write_ADerrors", "type": "function", "doc": "

Write Obs to a bdio file according to ADerrors conventions

\n\n

read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path -- path to the bdio file
  • \n
  • bdio_path -- path to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
\n", "signature": "(obs_list, file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.read_mesons": {"fullname": "pyerrors.input.bdio.read_mesons", "modulename": "pyerrors.input.bdio", "qualname": "read_mesons", "type": "function", "doc": "

Extract mesons data from a bdio file and return it as a dictionary

\n\n

The dictionary can be accessed with a tuple consisting of (type, source_position, kappa1, kappa2)

\n\n

read_mesons requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path (str):\npath to the bdio file
  • \n
  • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
  • start (int):\nThe first configuration to be read (default 1)
  • \n
  • stop (int):\nThe last configuration to be read (default None)
  • \n
  • step (int):\nFixed step size between two measurements (default 1)
  • \n
  • alternative_ensemble_name (str):\nManually overwrite ensemble name
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.bdio.read_dSdm": {"fullname": "pyerrors.input.bdio.read_dSdm", "modulename": "pyerrors.input.bdio", "qualname": "read_dSdm", "type": "function", "doc": "

Extract dSdm data from a bdio file and return it as a dictionary

\n\n

The dictionary can be accessed with a tuple consisting of (type, kappa)

\n\n

read_dSdm requires bdio to be compiled into a shared library. This can be achieved by\nadding the flag -fPIC to CC and changing the all target to

\n\n

all: bdio.o $(LIBDIR)\n gcc -shared -Wl,-soname,libbdio.so -o $(BUILDDIR)/libbdio.so $(BUILDDIR)/bdio.o\n cp $(BUILDDIR)/libbdio.so $(LIBDIR)/

\n\n
Parameters
\n\n
    \n
  • file_path (str):\npath to the bdio file
  • \n
  • bdio_path (str):\npath to the shared bdio library libbdio.so (default ./libbdio.so)
  • \n
  • start (int):\nThe first configuration to be read (default 1)
  • \n
  • stop (int):\nThe last configuration to be read (default None)
  • \n
  • step (int):\nFixed step size between two measurements (default 1)
  • \n
  • alternative_ensemble_name (str):\nManually overwrite ensemble name
  • \n
\n", "signature": "(file_path, bdio_path='./libbdio.so', **kwargs)", "funcdef": "def"}, "pyerrors.input.dobs": {"fullname": "pyerrors.input.dobs", "modulename": "pyerrors.input.dobs", "type": "module", "doc": "

\n"}, "pyerrors.input.dobs.create_pobs_string": {"fullname": "pyerrors.input.dobs.create_pobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_pobs_string", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to an xml string\naccording to the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
  • \n
\n", "signature": "(obsl, name, spec='', origin='', symbol=[], enstag=None)", "funcdef": "def"}, "pyerrors.input.dobs.write_pobs": {"fullname": "pyerrors.input.dobs.write_pobs", "modulename": "pyerrors.input.dobs", "qualname": "write_pobs", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure have to be defined on the same ensemble.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • enstag (str):\nEnstag that is written to pobs. If None, the ensemble name is used.
  • \n
  • gz (bool):\nIf True, the output is a gzipped xml. If False, the output is an xml file.
  • \n
\n", "signature": "(\n obsl,\n fname,\n name,\n spec='',\n origin='',\n symbol=[],\n enstag=None,\n gz=True\n)", "funcdef": "def"}, "pyerrors.input.dobs.read_pobs": {"fullname": "pyerrors.input.dobs.read_pobs", "modulename": "pyerrors.input.dobs", "qualname": "read_pobs", "type": "function", "doc": "

Import a list of Obs from an xml.gz file in the Zeuthen pobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • separatior_insertion (str or int):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nNone (default): Replica names remain unchanged.
  • \n
\n", "signature": "(fname, full_output=False, gz=True, separator_insertion=None)", "funcdef": "def"}, "pyerrors.input.dobs.import_dobs_string": {"fullname": "pyerrors.input.dobs.import_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "import_dobs_string", "type": "function", "doc": "

Import a list of Obs from a string in the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • content (str):\nXML string containing the data
  • \n
  • noemtpy (bool):\nIf True, ensembles with no contribution to the Obs are not included.\nIf False, ensembles are included as written in the file, possibly with vanishing entries.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
  • \n
\n", "signature": "(content, noempty=False, full_output=False, separator_insertion=True)", "funcdef": "def"}, "pyerrors.input.dobs.read_dobs": {"fullname": "pyerrors.input.dobs.read_dobs", "modulename": "pyerrors.input.dobs", "qualname": "read_dobs", "type": "function", "doc": "

Import a list of Obs from an xml.gz file in the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • noemtpy (bool):\nIf True, ensembles with no contribution to the Obs are not included.\nIf False, ensembles are included as written in the file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned as list.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes XML file.
  • \n
  • separatior_insertion (str, int or bool):\nstr: replace all occurences of \"separator_insertion\" within the replica names\nby \"|%s\" % (separator_insertion) when constructing the names of the replica.\nint: Insert the separator \"|\" at the position given by separator_insertion.\nTrue (default): separator \"|\" is inserted after len(ensname), assuming that the\nensemble name is a prefix to the replica name.\nNone or False: No separator is inserted.
  • \n
\n", "signature": "(\n fname,\n noempty=False,\n full_output=False,\n gz=True,\n separator_insertion=True\n)", "funcdef": "def"}, "pyerrors.input.dobs.create_dobs_string": {"fullname": "pyerrors.input.dobs.create_dobs_string", "modulename": "pyerrors.input.dobs", "qualname": "create_dobs_string", "type": "function", "doc": "

Generate the string for the export of a list of Obs or structures containing Obs\nto a .xml.gz file according to the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically. The separator |is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • who (str):\nProvide the name of the person that exports the data.
  • \n
  • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
  • \n
\n", "signature": "(\n obsl,\n name,\n spec='dobs v1.0',\n origin='',\n symbol=[],\n who=None,\n enstags=None\n)", "funcdef": "def"}, "pyerrors.input.dobs.write_dobs": {"fullname": "pyerrors.input.dobs.write_dobs", "modulename": "pyerrors.input.dobs", "qualname": "write_dobs", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .xml.gz file\naccording to the Zeuthen dobs format.

\n\n

Tags are not written or recovered automatically. The separator | is removed from the replica names.

\n\n
Parameters
\n\n
    \n
  • obsl (list):\nList of Obs that will be exported.\nThe Obs inside a structure do not have to be defined on the same set of configurations,\nbut the storage requirement is increased, if this is not the case.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • name (str):\nThe name of the observable.
  • \n
  • spec (str):\nOptional string that describes the contents of the file.
  • \n
  • origin (str):\nSpecify where the data has its origin.
  • \n
  • symbol (list):\nA list of symbols that describe the observables to be written. May be empty.
  • \n
  • who (str):\nProvide the name of the person that exports the data.
  • \n
  • enstags (dict):\nProvide alternative enstag for ensembles in the form enstags = {ename: enstag}\nOtherwise, the ensemble name is used.
  • \n
  • gz (bool):\nIf True, the output is a gzipped XML. If False, the output is a XML file.
  • \n
\n", "signature": "(\n obsl,\n fname,\n name,\n spec='dobs v1.0',\n origin='',\n symbol=[],\n who=None,\n enstags={},\n gz=True\n)", "funcdef": "def"}, "pyerrors.input.hadrons": {"fullname": "pyerrors.input.hadrons", "modulename": "pyerrors.input.hadrons", "type": "module", "doc": "

\n"}, "pyerrors.input.hadrons.read_meson_hd5": {"fullname": "pyerrors.input.hadrons.read_meson_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_meson_hd5", "type": "function", "doc": "

Read hadrons meson hdf5 file and extract the meson labeled 'meson'

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • meson (str):\nlabel of the meson to be extracted, standard value meson_0 which\ncorresponds to the pseudoscalar pseudoscalar two-point function.
  • \n
  • gammas (tuple of strings):\nInstrad of a meson label one can also provide a tuple of two strings\nindicating the gamma matrices at source and sink.\n(\"Gamma5\", \"Gamma5\") corresponds to the pseudoscalar pseudoscalar\ntwo-point function. The gammas argument dominateds over meson.
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, meson='meson_0', idl=None, gammas=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_DistillationContraction_hd5": {"fullname": "pyerrors.input.hadrons.read_DistillationContraction_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_DistillationContraction_hd5", "type": "function", "doc": "

Read hadrons DistillationContraction hdf5 files in given directory structure

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the directories to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • diagrams (list):\nList of strings of the diagrams to extract, e.g. [\"direct\", \"box\", \"cross\"].
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, ens_id, diagrams=['direct'], idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix": {"fullname": "pyerrors.input.hadrons.Npr_matrix", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix", "type": "class", "doc": "

ndarray(shape, dtype=float, buffer=None, offset=0,\n strides=None, order=None)

\n\n

An array object represents a multidimensional, homogeneous array\nof fixed-size items. An associated data-type object describes the\nformat of each element in the array (its byte-order, how many bytes it\noccupies in memory, whether it is an integer, a floating point number,\nor something else, etc.)

\n\n

Arrays should be constructed using array, zeros or empty (refer\nto the See Also section below). The parameters given here refer to\na low-level method (ndarray(...)) for instantiating an array.

\n\n

For more information, refer to the numpy module and examine the\nmethods and attributes of an array.

\n\n
Parameters
\n\n
    \n
  • (for the __new__ method; see Notes below)
  • \n
  • shape (tuple of ints):\nShape of created array.
  • \n
  • dtype (data-type, optional):\nAny object that can be interpreted as a numpy data type.
  • \n
  • buffer (object exposing buffer interface, optional):\nUsed to fill the array with data.
  • \n
  • offset (int, optional):\nOffset of array data in buffer.
  • \n
  • strides (tuple of ints, optional):\nStrides of data in memory.
  • \n
  • order ({'C', 'F'}, optional):\nRow-major (C-style) or column-major (Fortran-style) order.
  • \n
\n\n
Attributes
\n\n
    \n
  • T (ndarray):\nTranspose of the array.
  • \n
  • data (buffer):\nThe array's elements, in memory.
  • \n
  • dtype (dtype object):\nDescribes the format of the elements in the array.
  • \n
  • flags (dict):\nDictionary containing information related to memory use, e.g.,\n'C_CONTIGUOUS', 'OWNDATA', 'WRITEABLE', etc.
  • \n
  • flat (numpy.flatiter object):\nFlattened version of the array as an iterator. The iterator\nallows assignments, e.g., x.flat = 3 (See ndarray.flat for\nassignment examples; TODO).
  • \n
  • imag (ndarray):\nImaginary part of the array.
  • \n
  • real (ndarray):\nReal part of the array.
  • \n
  • size (int):\nNumber of elements in the array.
  • \n
  • itemsize (int):\nThe memory use of each array element in bytes.
  • \n
  • nbytes (int):\nThe total number of bytes required to store the array data,\ni.e., itemsize * size.
  • \n
  • ndim (int):\nThe array's number of dimensions.
  • \n
  • shape (tuple of ints):\nShape of the array.
  • \n
  • strides (tuple of ints):\nThe step-size required to move from one element to the next in\nmemory. For example, a contiguous (3, 4) array of type\nint16 in C-order has strides (8, 2). This implies that\nto move from element to element in memory requires jumps of 2 bytes.\nTo move from row-to-row, one needs to jump 8 bytes at a time\n(2 * 4).
  • \n
  • ctypes (ctypes object):\nClass containing properties of the array needed for interaction\nwith ctypes.
  • \n
  • base (ndarray):\nIf the array is a view into another array, that array is its base\n(unless that array is also a view). The base array is where the\narray data is actually stored.
  • \n
\n\n
See Also
\n\n

array: Construct an array.
\nzeros: Create an array, each element of which is zero.
\nempty: Create an array, but leave its allocated memory unchanged (i.e.,\nit contains \"garbage\").
\ndtype: Create a data-type.
\nnumpy.typing.NDArray: An ndarray alias :term:generic <generic type>\nw.r.t. its dtype.type <numpy.dtype.type>.

\n\n
Notes
\n\n

There are two modes of creating an array using __new__:

\n\n
    \n
  1. If buffer is None, then only shape, dtype, and order\nare used.
  2. \n
  3. If buffer is an object exposing the buffer interface, then\nall keywords are interpreted.
  4. \n
\n\n

No __init__ method is needed because the array is fully initialized\nafter the __new__ method.

\n\n
Examples
\n\n

These examples illustrate the low-level ndarray constructor. Refer\nto the See Also section above for easier ways of constructing an\nndarray.

\n\n

First mode, buffer is None:

\n\n
>>> np.ndarray(shape=(2,2), dtype=float, order='F')\narray([[0.0e+000, 0.0e+000], # random\n       [     nan, 2.5e-323]])\n
\n\n

Second mode:

\n\n
>>> np.ndarray((2,), buffer=np.array([1,2,3]),\n...            offset=np.int_().itemsize,\n...            dtype=int) # offset = 1*itemsize, i.e. skip first element\narray([2, 3])\n
\n", "bases": "numpy.ndarray"}, "pyerrors.input.hadrons.Npr_matrix.__init__": {"fullname": "pyerrors.input.hadrons.Npr_matrix.__init__", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.__init__", "type": "function", "doc": "

\n", "signature": "()", "funcdef": "def"}, "pyerrors.input.hadrons.Npr_matrix.g5H": {"fullname": "pyerrors.input.hadrons.Npr_matrix.g5H", "modulename": "pyerrors.input.hadrons", "qualname": "Npr_matrix.g5H", "type": "variable", "doc": "

Gamma_5 hermitean conjugate

\n\n

Uses the fact that the propagator is gamma5 hermitean, so just the\nin and out momenta of the propagator are exchanged.

\n"}, "pyerrors.input.hadrons.read_ExternalLeg_hd5": {"fullname": "pyerrors.input.hadrons.read_ExternalLeg_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_ExternalLeg_hd5", "type": "function", "doc": "

Read hadrons ExternalLeg hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_Bilinear_hd5": {"fullname": "pyerrors.input.hadrons.read_Bilinear_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Bilinear_hd5", "type": "function", "doc": "

Read hadrons Bilinear hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None)", "funcdef": "def"}, "pyerrors.input.hadrons.read_Fourquark_hd5": {"fullname": "pyerrors.input.hadrons.read_Fourquark_hd5", "modulename": "pyerrors.input.hadrons", "qualname": "read_Fourquark_hd5", "type": "function", "doc": "

Read hadrons FourquarkFullyConnected hdf5 file and output an array of CObs

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the files to read
  • \n
  • filestem (str):\nnamestem of the files to read
  • \n
  • ens_id (str):\nname of the ensemble, required for internal bookkeeping
  • \n
  • idl (range):\nIf specified only configurations in the given range are read in.
  • \n
  • vertices (list):\nVertex functions to be extracted.
  • \n
\n", "signature": "(path, filestem, ens_id, idl=None, vertices=['VA', 'AV'])", "funcdef": "def"}, "pyerrors.input.json": {"fullname": "pyerrors.input.json", "modulename": "pyerrors.input.json", "type": "module", "doc": "

\n"}, "pyerrors.input.json.create_json_string": {"fullname": "pyerrors.input.json.create_json_string", "modulename": "pyerrors.input.json", "qualname": "create_json_string", "type": "function", "doc": "

Generate the string for the export of a list of Obs or structures containing Obs\nto a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
\n", "signature": "(ol, description='', indent=1)", "funcdef": "def"}, "pyerrors.input.json.dump_to_json": {"fullname": "pyerrors.input.json.dump_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_to_json", "type": "function", "doc": "

Export a list of Obs or structures containing Obs to a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • ol (list):\nList of objects that will be exported. At the moment, these objects can be\neither of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
  • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
  • \n
\n", "signature": "(ol, fname, description='', indent=1, gz=True)", "funcdef": "def"}, "pyerrors.input.json.import_json_string": {"fullname": "pyerrors.input.json.import_json_string", "modulename": "pyerrors.input.json", "qualname": "import_json_string", "type": "function", "doc": "

Reconstruct a list of Obs or structures containing Obs from a json string.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

\n\n
Parameters
\n\n
    \n
  • json_string (str):\njson string containing the data.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
\n", "signature": "(json_string, verbose=True, full_output=False)", "funcdef": "def"}, "pyerrors.input.json.load_json": {"fullname": "pyerrors.input.json.load_json", "modulename": "pyerrors.input.json", "qualname": "load_json", "type": "function", "doc": "

Import a list of Obs or structures containing Obs from a .json(.gz) file.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr\nIf the list contains only one element, it is unpacked from the list.

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
\n", "signature": "(fname, verbose=True, gz=True, full_output=False)", "funcdef": "def"}, "pyerrors.input.json.dump_dict_to_json": {"fullname": "pyerrors.input.json.dump_dict_to_json", "modulename": "pyerrors.input.json", "qualname": "dump_dict_to_json", "type": "function", "doc": "

Export a dict of Obs or structures containing Obs to a .json(.gz) file

\n\n
Parameters
\n\n
    \n
  • od (dict):\nDict of JSON valid structures and objects that will be exported.\nAt the moment, these objects can be either of: Obs, list, numpy.ndarray, Corr.\nAll Obs inside a structure have to be defined on the same set of configurations.
  • \n
  • fname (str):\nFilename of the output file.
  • \n
  • description (str):\nOptional string that describes the contents of the json file.
  • \n
  • indent (int):\nSpecify the indentation level of the json file. None or 0 is permissible and\nsaves disk space.
  • \n
  • reps (str):\nSpecify the structure of the placeholder in exported dict to be reps[0-9]+.
  • \n
  • gz (bool):\nIf True, the output is a gzipped json. If False, the output is a json file.
  • \n
\n", "signature": "(od, fname, description='', indent=1, reps='DICTOBS', gz=True)", "funcdef": "def"}, "pyerrors.input.json.load_json_dict": {"fullname": "pyerrors.input.json.load_json_dict", "modulename": "pyerrors.input.json", "qualname": "load_json_dict", "type": "function", "doc": "

Import a dict of Obs or structures containing Obs from a .json(.gz) file.

\n\n

The following structures are supported: Obs, list, numpy.ndarray, Corr

\n\n
Parameters
\n\n
    \n
  • fname (str):\nFilename of the input file.
  • \n
  • verbose (bool):\nPrint additional information that was written to the file.
  • \n
  • gz (bool):\nIf True, assumes that data is gzipped. If False, assumes JSON file.
  • \n
  • full_output (bool):\nIf True, a dict containing auxiliary information and the data is returned.\nIf False, only the data is returned.
  • \n
  • reps (str):\nSpecify the structure of the placeholder in imported dict to be reps[0-9]+.
  • \n
\n", "signature": "(fname, verbose=True, gz=True, full_output=False, reps='DICTOBS')", "funcdef": "def"}, "pyerrors.input.misc": {"fullname": "pyerrors.input.misc", "modulename": "pyerrors.input.misc", "type": "module", "doc": "

\n"}, "pyerrors.input.misc.read_pbp": {"fullname": "pyerrors.input.misc.read_pbp", "modulename": "pyerrors.input.misc", "qualname": "read_pbp", "type": "function", "doc": "

Read pbp format from given folder structure. Returns a list of length nrw

\n\n
Parameters
\n\n
    \n
  • r_start (list):\nlist which contains the first config to be read for each replicum
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum
  • \n
\n", "signature": "(path, prefix, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD": {"fullname": "pyerrors.input.openQCD", "modulename": "pyerrors.input.openQCD", "type": "module", "doc": "

\n"}, "pyerrors.input.openQCD.read_rwms": {"fullname": "pyerrors.input.openQCD.read_rwms", "modulename": "pyerrors.input.openQCD", "qualname": "read_rwms", "type": "function", "doc": "

Read rwms format from given folder structure. Returns a list of length nrw

\n\n
Parameters
\n\n
    \n
  • path (str):\npath that contains the data files
  • \n
  • prefix (str):\nall files in path that start with prefix are considered as input files.\nMay be used together postfix to consider only special file endings.\nPrefix is ignored, if the keyword 'files' is used.
  • \n
  • version (str):\nversion of openQCD, default 2.0
  • \n
  • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum
  • \n
  • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
  • \n
  • postfix (str):\npostfix of the file to read, e.g. '.ms1' for openQCD-files
  • \n
  • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
  • \n
  • print_err (bool):\nPrint additional information that is useful for debugging.
  • \n
\n", "signature": "(path, prefix, version='2.0', names=None, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.extract_t0": {"fullname": "pyerrors.input.openQCD.extract_t0", "modulename": "pyerrors.input.openQCD", "qualname": "extract_t0", "type": "function", "doc": "

Extract t0 from given .ms.dat files. Returns t0 as Obs.

\n\n

It is assumed that all boundary effects have\nsufficiently decayed at x0=xmin.\nThe data around the zero crossing of t^2 - 0.3\nis fitted with a linear function\nfrom which the exact root is extracted.

\n\n

It is assumed that one measurement is performed for each config.\nIf this is not the case, the resulting idl, as well as the handling\nof r_start, r_stop and r_step is wrong and the user has to correct\nthis in the resulting observable.

\n\n
Parameters
\n\n
    \n
  • path (str):\nPath to .ms.dat files
  • \n
  • prefix (str):\nEnsemble prefix
  • \n
  • dtr_read (int):\nDetermines how many trajectories should be skipped\nwhen reading the ms.dat files.\nCorresponds to dtr_cnfg / dtr_ms in the openQCD input file.
  • \n
  • xmin (int):\nFirst timeslice where the boundary\neffects have sufficiently decayed.
  • \n
  • spatial_extent (int):\nspatial extent of the lattice, required for normalization.
  • \n
  • fit_range (int):\nNumber of data points left and right of the zero\ncrossing to be included in the linear fit. (Default: 5)
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum.
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum.
  • \n
  • r_step (int):\ninteger that defines a fixed step size between two measurements (in units of configs)\nIf not given, r_step=1 is assumed.
  • \n
  • plaquette (bool):\nIf true extract the plaquette estimate of t0 instead.
  • \n
  • names (list):\nlist of names that is assigned to the data according according\nto the order in the file list. Use careful, if you do not provide file names!
  • \n
  • files (list):\nlist which contains the filenames to be read. No automatic detection of\nfiles performed if given.
  • \n
  • plot_fit (bool):\nIf true, the fit for the extraction of t0 is shown together with the data.
  • \n
  • assume_thermalization (bool):\nIf True: If the first record divided by the distance between two measurements is larger than\n1, it is assumed that this is due to thermalization and the first measurement belongs\nto the first config (default).\nIf False: The config numbers are assumed to be traj_number // difference
  • \n
\n", "signature": "(path, prefix, dtr_read, xmin, spatial_extent, fit_range=5, **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop": {"fullname": "pyerrors.input.openQCD.read_qtop", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop", "type": "function", "doc": "

Read the topologial charge based on openQCD gradient flow measurements.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath of the measurement files
  • \n
  • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat.\nIgnored if file names are passed explicitly via keyword files.
  • \n
  • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L.
  • \n
  • dtr_cnfg (int):\n(optional) parameter that specifies the number of measurements\nbetween two configs.\nIf it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
  • \n
  • steps (int):\n(optional) Distance between two configurations in units of trajectories /\ncycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
  • \n
  • version (str):\nEither openQCD or sfqcd, depending on the data.
  • \n
  • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
  • \n
  • r_start (list):\nlist which contains the first config to be read for each replicum.
  • \n
  • r_stop (list):\nlist which contains the last config to be read for each replicum.
  • \n
  • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length.
  • \n
  • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
  • \n
  • integer_charge (bool):\nIf True, the charge is rounded towards the nearest integer on each config.
  • \n
\n", "signature": "(path, prefix, c, dtr_cnfg=1, version='openQCD', **kwargs)", "funcdef": "def"}, "pyerrors.input.openQCD.qtop_projection": {"fullname": "pyerrors.input.openQCD.qtop_projection", "modulename": "pyerrors.input.openQCD", "qualname": "qtop_projection", "type": "function", "doc": "

Returns the projection to the topological charge sector defined by target.

\n\n
Parameters
\n\n
    \n
  • path (Obs):\nTopological charge.
  • \n
  • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
  • \n
\n", "signature": "(qtop, target=0)", "funcdef": "def"}, "pyerrors.input.openQCD.read_qtop_sector": {"fullname": "pyerrors.input.openQCD.read_qtop_sector", "modulename": "pyerrors.input.openQCD", "qualname": "read_qtop_sector", "type": "function", "doc": "

Constructs reweighting factors to a specified topological sector.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath of the measurement files
  • \n
  • prefix (str):\nprefix of the measurement files, e.g. _id0_r0.ms.dat
  • \n
  • c (double):\nSmearing radius in units of the lattice extent, c = sqrt(8 t0) / L
  • \n
  • target (int):\nSpecifies the topological sector to be reweighted to (default 0)
  • \n
  • dtr_cnfg (int):\n(optional) parameter that specifies the number of trajectories\nbetween two configs.\nif it is not set, the distance between two measurements\nin the file is assumed to be the distance between two configurations.
  • \n
  • steps (int):\n(optional) Distance between two configurations in units of trajectories /\ncycles. Assumed to be the distance between two measurements * dtr_cnfg if not given
  • \n
  • version (str):\nversion string of the openQCD (sfqcd) version used to create\nthe ensemble. Default is 2.0. May also be set to sfqcd.
  • \n
  • L (int):\nspatial length of the lattice in L/a.\nHAS to be set if version != sfqcd, since openQCD does not provide\nthis in the header
  • \n
  • r_start (list):\noffset of the first ensemble, making it easier to match\nlater on with other Obs
  • \n
  • r_stop (list):\nlast configurations that need to be read (per replicum)
  • \n
  • files (list):\nspecify the exact files that need to be read\nfrom path, practical if e.g. only one replicum is needed
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
  • \n
  • Zeuthen_flow (bool):\n(optional) If True, the Zeuthen flow is used for Qtop. Only possible\nfor version=='sfqcd' If False, the Wilson flow is used.
  • \n
\n", "signature": "(path, prefix, c, target=0, **kwargs)", "funcdef": "def"}, "pyerrors.input.sfcf": {"fullname": "pyerrors.input.sfcf", "modulename": "pyerrors.input.sfcf", "type": "module", "doc": "

\n"}, "pyerrors.input.sfcf.read_sfcf": {"fullname": "pyerrors.input.sfcf.read_sfcf", "modulename": "pyerrors.input.sfcf", "qualname": "read_sfcf", "type": "function", "doc": "

Read sfcf c format from given folder structure.

\n\n
Parameters
\n\n
    \n
  • quarks (str):\nLabel of the quarks used in the sfcf input file. e.g. \"quark quark\"\nfor version 0.0 this does NOT need to be given with the typical \" - \"\nthat is present in the output file,\nthis is done automatically for this version
  • \n
  • noffset (int):\nOffset of the source (only relevant when wavefunctions are used)
  • \n
  • wf (int):\nID of wave function
  • \n
  • wf2 (int):\nID of the second wavefunction\n(only relevant for boundary-to-boundary correlation functions)
  • \n
  • im (bool):\nif True, read imaginary instead of real part\nof the correlation function.
  • \n
  • corr_type (str):\nchange between bi (boundary - inner) (default) bib (boundary - inner - boundary) and bb (boundary - boundary)\ncorrelator types
  • \n
  • names (list):\nAlternative labeling for replicas/ensembles.\nHas to have the appropriate length
  • \n
  • ens_name (str):\nreplaces the name of the ensemble
  • \n
  • version (str):\nversion of SFCF, with which the measurement was done.\nif the compact output option (-c) was specified,\nappend a \"c\" to the version (e.g. \"1.0c\")\nif the append output option (-a) was specified,\nappend an \"a\" to the version
  • \n
  • cfg_separator (str):\nString that separates the ensemble identifier from the configuration number (default 'n').
  • \n
  • replica (list):\nlist of replica to be read, default is all
  • \n
  • files (list):\nlist of files to be read per replica, default is all.\nfor non-compact output format, hand the folders to be read here.
  • \n
  • check_configs:: list of list of supposed configs, eg. [range(1,1000)]\nfor one replicum with 1000 configs
  • \n
\n", "signature": "(\n path,\n prefix,\n name,\n quarks='.*',\n corr_type='bi',\n noffset=0,\n wf=0,\n wf2=0,\n version='1.0c',\n cfg_separator='n',\n **kwargs\n)", "funcdef": "def"}, "pyerrors.input.utils": {"fullname": "pyerrors.input.utils", "modulename": "pyerrors.input.utils", "type": "module", "doc": "

Utilities for the input

\n"}, "pyerrors.input.utils.check_idl": {"fullname": "pyerrors.input.utils.check_idl", "modulename": "pyerrors.input.utils", "qualname": "check_idl", "type": "function", "doc": "

Checks if list of configurations is contained in an idl

\n\n
Parameters
\n\n
    \n
  • idl (range or list):\nidl of the current replicum
  • \n
  • che (list):\nlist of configurations to be checked against
  • \n
\n", "signature": "(idl, che)", "funcdef": "def"}, "pyerrors.linalg": {"fullname": "pyerrors.linalg", "modulename": "pyerrors.linalg", "type": "module", "doc": "

\n"}, "pyerrors.linalg.matmul": {"fullname": "pyerrors.linalg.matmul", "modulename": "pyerrors.linalg", "qualname": "matmul", "type": "function", "doc": "

Matrix multiply all operands.

\n\n
Parameters
\n\n
    \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
  • This implementation is faster compared to standard multiplication via the @ operator.
  • \n
\n", "signature": "(*operands)", "funcdef": "def"}, "pyerrors.linalg.jack_matmul": {"fullname": "pyerrors.linalg.jack_matmul", "modulename": "pyerrors.linalg", "qualname": "jack_matmul", "type": "function", "doc": "

Matrix multiply both operands making use of the jackknife approximation.

\n\n
Parameters
\n\n
    \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
  • For large matrices this is considerably faster compared to matmul.
  • \n
\n", "signature": "(*operands)", "funcdef": "def"}, "pyerrors.linalg.einsum": {"fullname": "pyerrors.linalg.einsum", "modulename": "pyerrors.linalg", "qualname": "einsum", "type": "function", "doc": "

Wrapper for numpy.einsum

\n\n
Parameters
\n\n
    \n
  • subscripts (str):\nSubscripts for summation (see numpy documentation for details)
  • \n
  • operands (numpy.ndarray):\nArbitrary number of 2d-numpy arrays which can be real or complex\nObs valued.
  • \n
\n", "signature": "(subscripts, *operands)", "funcdef": "def"}, "pyerrors.linalg.inv": {"fullname": "pyerrors.linalg.inv", "modulename": "pyerrors.linalg", "qualname": "inv", "type": "function", "doc": "

Inverse of Obs or CObs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.cholesky": {"fullname": "pyerrors.linalg.cholesky", "modulename": "pyerrors.linalg", "qualname": "cholesky", "type": "function", "doc": "

Cholesky decomposition of Obs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.det": {"fullname": "pyerrors.linalg.det", "modulename": "pyerrors.linalg", "qualname": "det", "type": "function", "doc": "

Determinant of Obs valued matrices.

\n", "signature": "(x)", "funcdef": "def"}, "pyerrors.linalg.eigh": {"fullname": "pyerrors.linalg.eigh", "modulename": "pyerrors.linalg", "qualname": "eigh", "type": "function", "doc": "

Computes the eigenvalues and eigenvectors of a given hermitian matrix of Obs according to np.linalg.eigh.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.eig": {"fullname": "pyerrors.linalg.eig", "modulename": "pyerrors.linalg", "qualname": "eig", "type": "function", "doc": "

Computes the eigenvalues of a given matrix of Obs according to np.linalg.eig.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.pinv": {"fullname": "pyerrors.linalg.pinv", "modulename": "pyerrors.linalg", "qualname": "pinv", "type": "function", "doc": "

Computes the Moore-Penrose pseudoinverse of a matrix of Obs.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.linalg.svd": {"fullname": "pyerrors.linalg.svd", "modulename": "pyerrors.linalg", "qualname": "svd", "type": "function", "doc": "

Computes the singular value decomposition of a matrix of Obs.

\n", "signature": "(obs, **kwargs)", "funcdef": "def"}, "pyerrors.misc": {"fullname": "pyerrors.misc", "modulename": "pyerrors.misc", "type": "module", "doc": "

\n"}, "pyerrors.misc.dump_object": {"fullname": "pyerrors.misc.dump_object", "modulename": "pyerrors.misc", "qualname": "dump_object", "type": "function", "doc": "

Dump object into pickle file.

\n\n
Parameters
\n\n
    \n
  • obj (object):\nobject to be saved in the pickle file
  • \n
  • name (str):\nname of the file
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(obj, name, **kwargs)", "funcdef": "def"}, "pyerrors.misc.load_object": {"fullname": "pyerrors.misc.load_object", "modulename": "pyerrors.misc", "qualname": "load_object", "type": "function", "doc": "

Load object from pickle file.

\n\n
Parameters
\n\n
    \n
  • path (str):\npath to the file
  • \n
\n", "signature": "(path)", "funcdef": "def"}, "pyerrors.misc.pseudo_Obs": {"fullname": "pyerrors.misc.pseudo_Obs", "modulename": "pyerrors.misc", "qualname": "pseudo_Obs", "type": "function", "doc": "

Generate an Obs object with given value, dvalue and name for test purposes

\n\n
Parameters
\n\n
    \n
  • value (float):\ncentral value of the Obs to be generated.
  • \n
  • dvalue (float):\nerror of the Obs to be generated.
  • \n
  • name (str):\nname of the ensemble for which the Obs is to be generated.
  • \n
  • samples (int):\nnumber of samples for the Obs (default 1000).
  • \n
\n", "signature": "(value, dvalue, name, samples=1000)", "funcdef": "def"}, "pyerrors.misc.gen_correlated_data": {"fullname": "pyerrors.misc.gen_correlated_data", "modulename": "pyerrors.misc", "qualname": "gen_correlated_data", "type": "function", "doc": "

Generate observables with given covariance and autocorrelation times.

\n\n
Parameters
\n\n
    \n
  • means (list):\nlist containing the mean value of each observable.
  • \n
  • cov (numpy.ndarray):\ncovariance matrix for the data to be generated.
  • \n
  • name (str):\nensemble name for the data to be geneated.
  • \n
  • tau (float or list):\ncan either be a real number or a list with an entry for\nevery dataset.
  • \n
  • samples (int):\nnumber of samples to be generated for each observable.
  • \n
\n", "signature": "(means, cov, name, tau=0.5, samples=1000)", "funcdef": "def"}, "pyerrors.mpm": {"fullname": "pyerrors.mpm", "modulename": "pyerrors.mpm", "type": "module", "doc": "

\n"}, "pyerrors.mpm.matrix_pencil_method": {"fullname": "pyerrors.mpm.matrix_pencil_method", "modulename": "pyerrors.mpm", "qualname": "matrix_pencil_method", "type": "function", "doc": "

Matrix pencil method to extract k energy levels from data

\n\n

Implementation of the matrix pencil method based on\neq. (2.17) of Y. Hua, T. K. Sarkar, IEEE Trans. Acoust. 38, 814-824 (1990)

\n\n
Parameters
\n\n
    \n
  • data (list):\ncan be a list of Obs for the analysis of a single correlator, or a list of lists\nof Obs if several correlators are to analyzed at once.
  • \n
  • k (int):\nNumber of states to extract (default 1).
  • \n
  • p (int):\nmatrix pencil parameter which filters noise. The optimal value is expected between\nlen(data)/3 and 2*len(data)/3. The computation is more expensive the closer p is\nto len(data)/2 but could possibly suppress more noise (default len(data)//2).
  • \n
\n", "signature": "(corrs, k=1, p=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs": {"fullname": "pyerrors.obs", "modulename": "pyerrors.obs", "type": "module", "doc": "

\n"}, "pyerrors.obs.Obs": {"fullname": "pyerrors.obs.Obs", "modulename": "pyerrors.obs", "qualname": "Obs", "type": "class", "doc": "

Class for a general observable.

\n\n

Instances of Obs are the basic objects of a pyerrors error analysis.\nThey are initialized with a list which contains arrays of samples for\ndifferent ensembles/replica and another list of same length which contains\nthe names of the ensembles/replica. Mathematical operations can be\nperformed on instances. The result is another instance of Obs. The error of\nan instance can be computed with the gamma_method. Also contains additional\nmethods for output and visualization of the error calculation.

\n\n
Attributes
\n\n
    \n
  • S_global (float):\nStandard value for S (default 2.0)
  • \n
  • S_dict (dict):\nDictionary for S values. If an entry for a given ensemble\nexists this overwrites the standard value for that ensemble.
  • \n
  • tau_exp_global (float):\nStandard value for tau_exp (default 0.0)
  • \n
  • tau_exp_dict (dict):\nDictionary for tau_exp values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
  • \n
  • N_sigma_global (float):\nStandard value for N_sigma (default 1.0)
  • \n
  • N_sigma_dict (dict):\nDictionary for N_sigma values. If an entry for a given ensemble exists\nthis overwrites the standard value for that ensemble.
  • \n
\n"}, "pyerrors.obs.Obs.__init__": {"fullname": "pyerrors.obs.Obs.__init__", "modulename": "pyerrors.obs", "qualname": "Obs.__init__", "type": "function", "doc": "

Initialize Obs object.

\n\n
Parameters
\n\n
    \n
  • samples (list):\nlist of numpy arrays containing the Monte Carlo samples
  • \n
  • names (list):\nlist of strings labeling the individual samples
  • \n
  • idl (list, optional):\nlist of ranges or lists on which the samples are defined
  • \n
\n", "signature": "(self, samples, names, idl=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.S_global": {"fullname": "pyerrors.obs.Obs.S_global", "modulename": "pyerrors.obs", "qualname": "Obs.S_global", "type": "variable", "doc": "

\n", "default_value": " = 2.0"}, "pyerrors.obs.Obs.S_dict": {"fullname": "pyerrors.obs.Obs.S_dict", "modulename": "pyerrors.obs", "qualname": "Obs.S_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.tau_exp_global": {"fullname": "pyerrors.obs.Obs.tau_exp_global", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_global", "type": "variable", "doc": "

\n", "default_value": " = 0.0"}, "pyerrors.obs.Obs.tau_exp_dict": {"fullname": "pyerrors.obs.Obs.tau_exp_dict", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.N_sigma_global": {"fullname": "pyerrors.obs.Obs.N_sigma_global", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_global", "type": "variable", "doc": "

\n", "default_value": " = 1.0"}, "pyerrors.obs.Obs.N_sigma_dict": {"fullname": "pyerrors.obs.Obs.N_sigma_dict", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma_dict", "type": "variable", "doc": "

\n", "default_value": " = {}"}, "pyerrors.obs.Obs.filter_eps": {"fullname": "pyerrors.obs.Obs.filter_eps", "modulename": "pyerrors.obs", "qualname": "Obs.filter_eps", "type": "variable", "doc": "

\n", "default_value": " = 1e-10"}, "pyerrors.obs.Obs.names": {"fullname": "pyerrors.obs.Obs.names", "modulename": "pyerrors.obs", "qualname": "Obs.names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.shape": {"fullname": "pyerrors.obs.Obs.shape", "modulename": "pyerrors.obs", "qualname": "Obs.shape", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.r_values": {"fullname": "pyerrors.obs.Obs.r_values", "modulename": "pyerrors.obs", "qualname": "Obs.r_values", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.deltas": {"fullname": "pyerrors.obs.Obs.deltas", "modulename": "pyerrors.obs", "qualname": "Obs.deltas", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.N": {"fullname": "pyerrors.obs.Obs.N", "modulename": "pyerrors.obs", "qualname": "Obs.N", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.is_merged": {"fullname": "pyerrors.obs.Obs.is_merged", "modulename": "pyerrors.obs", "qualname": "Obs.is_merged", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.idl": {"fullname": "pyerrors.obs.Obs.idl", "modulename": "pyerrors.obs", "qualname": "Obs.idl", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.ddvalue": {"fullname": "pyerrors.obs.Obs.ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.ddvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.reweighted": {"fullname": "pyerrors.obs.Obs.reweighted", "modulename": "pyerrors.obs", "qualname": "Obs.reweighted", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.tag": {"fullname": "pyerrors.obs.Obs.tag", "modulename": "pyerrors.obs", "qualname": "Obs.tag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.value": {"fullname": "pyerrors.obs.Obs.value", "modulename": "pyerrors.obs", "qualname": "Obs.value", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.dvalue": {"fullname": "pyerrors.obs.Obs.dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.dvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_names": {"fullname": "pyerrors.obs.Obs.e_names", "modulename": "pyerrors.obs", "qualname": "Obs.e_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.cov_names": {"fullname": "pyerrors.obs.Obs.cov_names", "modulename": "pyerrors.obs", "qualname": "Obs.cov_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.mc_names": {"fullname": "pyerrors.obs.Obs.mc_names", "modulename": "pyerrors.obs", "qualname": "Obs.mc_names", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_content": {"fullname": "pyerrors.obs.Obs.e_content", "modulename": "pyerrors.obs", "qualname": "Obs.e_content", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.covobs": {"fullname": "pyerrors.obs.Obs.covobs", "modulename": "pyerrors.obs", "qualname": "Obs.covobs", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.gamma_method": {"fullname": "pyerrors.obs.Obs.gamma_method", "modulename": "pyerrors.obs", "qualname": "Obs.gamma_method", "type": "function", "doc": "

Estimate the error and related properties of the Obs.

\n\n
Parameters
\n\n
    \n
  • S (float):\nspecifies a custom value for the parameter S (default 2.0).\nIf set to 0 it is assumed that the data exhibits no\nautocorrelation. In this case the error estimates coincides\nwith the sample standard error.
  • \n
  • tau_exp (float):\npositive value triggers the critical slowing down analysis\n(default 0.0).
  • \n
  • N_sigma (float):\nnumber of standard deviations from zero until the tail is\nattached to the autocorrelation function (default 1).
  • \n
  • fft (bool):\ndetermines whether the fft algorithm is used for the computation\nof the autocorrelation function (default True)
  • \n
\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.details": {"fullname": "pyerrors.obs.Obs.details", "modulename": "pyerrors.obs", "qualname": "Obs.details", "type": "function", "doc": "

Output detailed properties of the Obs.

\n\n
Parameters
\n\n
    \n
  • ens_content (bool):\nprint details about the ensembles and replica if true.
  • \n
\n", "signature": "(self, ens_content=True)", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero_within_error": {"fullname": "pyerrors.obs.Obs.is_zero_within_error", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero_within_error", "type": "function", "doc": "

Checks whether the observable is zero within 'sigma' standard errors.

\n\n
Parameters
\n\n
    \n
  • sigma (int):\nNumber of standard errors used for the check.
  • \n
  • Works only properly when the gamma method was run.
  • \n
\n", "signature": "(self, sigma=1)", "funcdef": "def"}, "pyerrors.obs.Obs.is_zero": {"fullname": "pyerrors.obs.Obs.is_zero", "modulename": "pyerrors.obs", "qualname": "Obs.is_zero", "type": "function", "doc": "

Checks whether the observable is zero within a given tolerance.

\n\n
Parameters
\n\n
    \n
  • atol (float):\nAbsolute tolerance (for details see numpy documentation).
  • \n
\n", "signature": "(self, atol=1e-10)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_tauint": {"fullname": "pyerrors.obs.Obs.plot_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.plot_tauint", "type": "function", "doc": "

Plot integrated autocorrelation time for each ensemble.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rho": {"fullname": "pyerrors.obs.Obs.plot_rho", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rho", "type": "function", "doc": "

Plot normalized autocorrelation function time for each ensemble.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_rep_dist": {"fullname": "pyerrors.obs.Obs.plot_rep_dist", "modulename": "pyerrors.obs", "qualname": "Obs.plot_rep_dist", "type": "function", "doc": "

Plot replica distribution for each ensemble with more than one replicum.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_history": {"fullname": "pyerrors.obs.Obs.plot_history", "modulename": "pyerrors.obs", "qualname": "Obs.plot_history", "type": "function", "doc": "

Plot derived Monte Carlo history for each ensemble

\n\n
Parameters
\n\n
    \n
  • expand (bool):\nshow expanded history for irregular Monte Carlo chains (default: True).
  • \n
\n", "signature": "(self, expand=True)", "funcdef": "def"}, "pyerrors.obs.Obs.plot_piechart": {"fullname": "pyerrors.obs.Obs.plot_piechart", "modulename": "pyerrors.obs", "qualname": "Obs.plot_piechart", "type": "function", "doc": "

Plot piechart which shows the fractional contribution of each\nensemble to the error and returns a dictionary containing the fractions.

\n\n
Parameters
\n\n
    \n
  • save (str):\nsaves the figure to a file named 'save' if.
  • \n
\n", "signature": "(self, save=None)", "funcdef": "def"}, "pyerrors.obs.Obs.dump": {"fullname": "pyerrors.obs.Obs.dump", "modulename": "pyerrors.obs", "qualname": "Obs.dump", "type": "function", "doc": "

Dump the Obs to a file 'name' of chosen format.

\n\n
Parameters
\n\n
    \n
  • filename (str):\nname of the file to be saved.
  • \n
  • datatype (str):\nFormat of the exported file. Supported formats include\n\"json.gz\" and \"pickle\"
  • \n
  • description (str):\nDescription for output file, only relevant for json.gz format.
  • \n
  • path (str):\nspecifies a custom path for the file (default '.')
  • \n
\n", "signature": "(self, filename, datatype='json.gz', description='', **kwargs)", "funcdef": "def"}, "pyerrors.obs.Obs.export_jackknife": {"fullname": "pyerrors.obs.Obs.export_jackknife", "modulename": "pyerrors.obs", "qualname": "Obs.export_jackknife", "type": "function", "doc": "

Export jackknife samples from the Obs

\n\n
Returns
\n\n
    \n
  • numpy.ndarray: Returns a numpy array of length N + 1 where N is the number of samples\nfor the given ensemble and replicum. The zeroth entry of the array contains\nthe mean value of the Obs, entries 1 to N contain the N jackknife samples\nderived from the Obs. The current implementation only works for observables\ndefined on exactly one ensemble and replicum. The derived jackknife samples\nshould agree with samples from a full jackknife analysis up to O(1/N).
  • \n
\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sqrt": {"fullname": "pyerrors.obs.Obs.sqrt", "modulename": "pyerrors.obs", "qualname": "Obs.sqrt", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.log": {"fullname": "pyerrors.obs.Obs.log", "modulename": "pyerrors.obs", "qualname": "Obs.log", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.exp": {"fullname": "pyerrors.obs.Obs.exp", "modulename": "pyerrors.obs", "qualname": "Obs.exp", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sin": {"fullname": "pyerrors.obs.Obs.sin", "modulename": "pyerrors.obs", "qualname": "Obs.sin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.cos": {"fullname": "pyerrors.obs.Obs.cos", "modulename": "pyerrors.obs", "qualname": "Obs.cos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.tan": {"fullname": "pyerrors.obs.Obs.tan", "modulename": "pyerrors.obs", "qualname": "Obs.tan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arcsin": {"fullname": "pyerrors.obs.Obs.arcsin", "modulename": "pyerrors.obs", "qualname": "Obs.arcsin", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arccos": {"fullname": "pyerrors.obs.Obs.arccos", "modulename": "pyerrors.obs", "qualname": "Obs.arccos", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arctan": {"fullname": "pyerrors.obs.Obs.arctan", "modulename": "pyerrors.obs", "qualname": "Obs.arctan", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.sinh": {"fullname": "pyerrors.obs.Obs.sinh", "modulename": "pyerrors.obs", "qualname": "Obs.sinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.cosh": {"fullname": "pyerrors.obs.Obs.cosh", "modulename": "pyerrors.obs", "qualname": "Obs.cosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.tanh": {"fullname": "pyerrors.obs.Obs.tanh", "modulename": "pyerrors.obs", "qualname": "Obs.tanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arcsinh": {"fullname": "pyerrors.obs.Obs.arcsinh", "modulename": "pyerrors.obs", "qualname": "Obs.arcsinh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arccosh": {"fullname": "pyerrors.obs.Obs.arccosh", "modulename": "pyerrors.obs", "qualname": "Obs.arccosh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.arctanh": {"fullname": "pyerrors.obs.Obs.arctanh", "modulename": "pyerrors.obs", "qualname": "Obs.arctanh", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.Obs.N_sigma": {"fullname": "pyerrors.obs.Obs.N_sigma", "modulename": "pyerrors.obs", "qualname": "Obs.N_sigma", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.S": {"fullname": "pyerrors.obs.Obs.S", "modulename": "pyerrors.obs", "qualname": "Obs.S", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_ddvalue": {"fullname": "pyerrors.obs.Obs.e_ddvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_ddvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_drho": {"fullname": "pyerrors.obs.Obs.e_drho", "modulename": "pyerrors.obs", "qualname": "Obs.e_drho", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_dtauint": {"fullname": "pyerrors.obs.Obs.e_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_dtauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_dvalue": {"fullname": "pyerrors.obs.Obs.e_dvalue", "modulename": "pyerrors.obs", "qualname": "Obs.e_dvalue", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_n_dtauint": {"fullname": "pyerrors.obs.Obs.e_n_dtauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_dtauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_n_tauint": {"fullname": "pyerrors.obs.Obs.e_n_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_n_tauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_rho": {"fullname": "pyerrors.obs.Obs.e_rho", "modulename": "pyerrors.obs", "qualname": "Obs.e_rho", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_tauint": {"fullname": "pyerrors.obs.Obs.e_tauint", "modulename": "pyerrors.obs", "qualname": "Obs.e_tauint", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.e_windowsize": {"fullname": "pyerrors.obs.Obs.e_windowsize", "modulename": "pyerrors.obs", "qualname": "Obs.e_windowsize", "type": "variable", "doc": "

\n"}, "pyerrors.obs.Obs.tau_exp": {"fullname": "pyerrors.obs.Obs.tau_exp", "modulename": "pyerrors.obs", "qualname": "Obs.tau_exp", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs": {"fullname": "pyerrors.obs.CObs", "modulename": "pyerrors.obs", "qualname": "CObs", "type": "class", "doc": "

Class for a complex valued observable.

\n"}, "pyerrors.obs.CObs.__init__": {"fullname": "pyerrors.obs.CObs.__init__", "modulename": "pyerrors.obs", "qualname": "CObs.__init__", "type": "function", "doc": "

\n", "signature": "(self, real, imag=0.0)", "funcdef": "def"}, "pyerrors.obs.CObs.tag": {"fullname": "pyerrors.obs.CObs.tag", "modulename": "pyerrors.obs", "qualname": "CObs.tag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.real": {"fullname": "pyerrors.obs.CObs.real", "modulename": "pyerrors.obs", "qualname": "CObs.real", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.imag": {"fullname": "pyerrors.obs.CObs.imag", "modulename": "pyerrors.obs", "qualname": "CObs.imag", "type": "variable", "doc": "

\n"}, "pyerrors.obs.CObs.gamma_method": {"fullname": "pyerrors.obs.CObs.gamma_method", "modulename": "pyerrors.obs", "qualname": "CObs.gamma_method", "type": "function", "doc": "

Executes the gamma_method for the real and the imaginary part.

\n", "signature": "(self, **kwargs)", "funcdef": "def"}, "pyerrors.obs.CObs.is_zero": {"fullname": "pyerrors.obs.CObs.is_zero", "modulename": "pyerrors.obs", "qualname": "CObs.is_zero", "type": "function", "doc": "

Checks whether both real and imaginary part are zero within machine precision.

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.CObs.conjugate": {"fullname": "pyerrors.obs.CObs.conjugate", "modulename": "pyerrors.obs", "qualname": "CObs.conjugate", "type": "function", "doc": "

\n", "signature": "(self)", "funcdef": "def"}, "pyerrors.obs.derived_observable": {"fullname": "pyerrors.obs.derived_observable", "modulename": "pyerrors.obs", "qualname": "derived_observable", "type": "function", "doc": "

Construct a derived Obs according to func(data, **kwargs) using automatic differentiation.

\n\n
Parameters
\n\n
    \n
  • func (object):\narbitrary function of the form func(data, **kwargs). For the\nautomatic differentiation to work, all numpy functions have to have\nthe autograd wrapper (use 'import autograd.numpy as anp').
  • \n
  • data (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
  • \n
  • num_grad (bool):\nif True, numerical derivatives are used instead of autograd\n(default False). To control the numerical differentiation the\nkwargs of numdifftools.step_generators.MaxStepGenerator\ncan be used.
  • \n
  • man_grad (list):\nmanually supply a list or an array which contains the jacobian\nof func. Use cautiously, supplying the wrong derivative will\nnot be intercepted.
  • \n
\n\n
Notes
\n\n

For simple mathematical operations it can be practical to use anonymous\nfunctions. For the ratio of two observables one can e.g. use

\n\n

new_obs = derived_observable(lambda x: x[0] / x[1], [obs1, obs2])

\n", "signature": "(func, data, array_mode=False, **kwargs)", "funcdef": "def"}, "pyerrors.obs.reweight": {"fullname": "pyerrors.obs.reweight", "modulename": "pyerrors.obs", "qualname": "reweight", "type": "function", "doc": "

Reweight a list of observables.

\n\n
Parameters
\n\n
    \n
  • weight (Obs):\nReweighting factor. An Observable that has to be defined on a superset of the\nconfigurations in obs[i].idl for all i.
  • \n
  • obs (list):\nlist of Obs, e.g. [obs1, obs2, obs3].
  • \n
  • all_configs (bool):\nif True, the reweighted observables are normalized by the average of\nthe reweighting factor on all configurations in weight.idl and not\non the configurations in obs[i].idl.
  • \n
\n", "signature": "(weight, obs, **kwargs)", "funcdef": "def"}, "pyerrors.obs.correlate": {"fullname": "pyerrors.obs.correlate", "modulename": "pyerrors.obs", "qualname": "correlate", "type": "function", "doc": "

Correlate two observables.

\n\n
Parameters
\n\n
    \n
  • obs_a (Obs):\nFirst observable
  • \n
  • obs_b (Obs):\nSecond observable
  • \n
\n\n
Notes
\n\n

Keep in mind to only correlate primary observables which have not been reweighted\nyet. The reweighting has to be applied after correlating the observables.\nCurrently only works if ensembles are identical (this is not strictly necessary).

\n", "signature": "(obs_a, obs_b)", "funcdef": "def"}, "pyerrors.obs.covariance": {"fullname": "pyerrors.obs.covariance", "modulename": "pyerrors.obs", "qualname": "covariance", "type": "function", "doc": "

Calculates the error covariance matrix of a set of observables.

\n\n

The gamma method has to be applied first to all observables.

\n\n
Parameters
\n\n
    \n
  • obs (list or numpy.ndarray):\nList or one dimensional array of Obs
  • \n
  • visualize (bool):\nIf True plots the corresponding normalized correlation matrix (default False).
  • \n
  • correlation (bool):\nIf True the correlation matrix instead of the error covariance matrix is returned (default False).
  • \n
  • smooth (None or int):\nIf smooth is an integer 'E' between 2 and the dimension of the matrix minus 1 the eigenvalue\nsmoothing procedure of hep-lat/9412087 is applied to the correlation matrix which leaves the\nlargest E eigenvalues essentially unchanged and smoothes the smaller eigenvalues to avoid extremely\nsmall ones.
  • \n
\n\n
Notes
\n\n

The error covariance is defined such that it agrees with the squared standard error for two identical observables\n$$\\operatorname{cov}(a,a)=\\sum_{s=1}^N\\delta_a^s\\delta_a^s/N^2=\\Gamma_{aa}(0)/N=\\operatorname{var}(a)/N=\\sigma_a^2$$\nin the absence of autocorrelation.\nThe error covariance is estimated by calculating the correlation matrix assuming no autocorrelation and then rescaling the correlation matrix by the full errors including the previous gamma method estimate for the autocorrelation of the observables. The covariance at windowsize 0 is guaranteed to be positive semi-definite\n$$\\sum_{i,j}v_i\\Gamma_{ij}(0)v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i,j}v_i\\delta_i^s\\delta_j^s v_j=\\frac{1}{N}\\sum_{s=1}^N\\sum_{i}|v_i\\delta_i^s|^2\\geq 0\\,,$$ for every $v\\in\\mathbb{R}^M$, while such an identity does not hold for larger windows/lags.\nFor observables defined on a single ensemble our approximation is equivalent to assuming that the integrated autocorrelation time of an off-diagonal element is equal to the geometric mean of the integrated autocorrelation times of the corresponding diagonal elements.\n$$\\tau_{\\mathrm{int}, ij}=\\sqrt{\\tau_{\\mathrm{int}, i}\\times \\tau_{\\mathrm{int}, j}}$$\nThis construction ensures that the estimated covariance matrix is positive semi-definite (up to numerical rounding errors).

\n", "signature": "(obs, visualize=False, correlation=False, smooth=None, **kwargs)", "funcdef": "def"}, "pyerrors.obs.import_jackknife": {"fullname": "pyerrors.obs.import_jackknife", "modulename": "pyerrors.obs", "qualname": "import_jackknife", "type": "function", "doc": "

Imports jackknife samples and returns an Obs

\n\n
Parameters
\n\n
    \n
  • jacks (numpy.ndarray):\nnumpy array containing the mean value as zeroth entry and\nthe N jackknife samples as first to Nth entry.
  • \n
  • name (str):\nname of the ensemble the samples are defined on.
  • \n
\n", "signature": "(jacks, name, idl=None)", "funcdef": "def"}, "pyerrors.obs.merge_obs": {"fullname": "pyerrors.obs.merge_obs", "modulename": "pyerrors.obs", "qualname": "merge_obs", "type": "function", "doc": "

Combine all observables in list_of_obs into one new observable

\n\n
Parameters
\n\n
    \n
  • list_of_obs (list):\nlist of the Obs object to be combined
  • \n
\n\n
Notes
\n\n

It is not possible to combine obs which are based on the same replicum

\n", "signature": "(list_of_obs)", "funcdef": "def"}, "pyerrors.obs.cov_Obs": {"fullname": "pyerrors.obs.cov_Obs", "modulename": "pyerrors.obs", "qualname": "cov_Obs", "type": "function", "doc": "

Create an Obs based on mean(s) and a covariance matrix

\n\n
Parameters
\n\n
    \n
  • mean (list of floats or float):\nN mean value(s) of the new Obs
  • \n
  • cov (list or array):\n2d (NxN) Covariance matrix, 1d diagonal entries or 0d covariance
  • \n
  • name (str):\nidentifier for the covariance matrix
  • \n
  • grad (list or array):\nGradient of the Covobs wrt. the means belonging to cov.
  • \n
\n", "signature": "(means, cov, name, grad=None)", "funcdef": "def"}, "pyerrors.roots": {"fullname": "pyerrors.roots", "modulename": "pyerrors.roots", "type": "module", "doc": "

\n"}, "pyerrors.roots.find_root": {"fullname": "pyerrors.roots.find_root", "modulename": "pyerrors.roots", "qualname": "find_root", "type": "function", "doc": "

Finds the root of the function func(x, d) where d is an Obs.

\n\n
Parameters
\n\n
    \n
  • d (Obs):\nObs passed to the function.
  • \n
  • func (object):\nFunction to be minimized. Any numpy functions have to use the autograd.numpy wrapper.\nExample:\npython\nimport autograd.numpy as anp\ndef root_func(x, d):\n return anp.exp(-x ** 2) - d\n
  • \n
  • guess (float):\nInitial guess for the minimization.
  • \n
\n\n
Returns
\n\n
    \n
  • Obs: Obs valued root of the function.
  • \n
\n", "signature": "(d, func, guess=1.0, **kwargs)", "funcdef": "def"}, "pyerrors.version": {"fullname": "pyerrors.version", "modulename": "pyerrors.version", "type": "module", "doc": "

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