# -*- coding: utf-8 -*-
#
-# Copyright (C) 2008-2021 EDF R&D
+# Copyright (C) 2008-2022 EDF R&D
#
# This library is free software; you can redistribute it and/or
# modify it under the terms of the GNU Lesser General Public
fromMethod = None,
fromMatrix = None,
avoidingRedundancy = True,
+ reducingMemoryUse = False,
inputAsMultiFunction = False,
enableMultiProcess = False,
extraArguments = None,
Arguments :
- name : nom d'opérateur
- fromMethod : argument de type fonction Python
- - fromMatrix : argument adapté au constructeur numpy.matrix
+ - fromMatrix : argument adapté au constructeur numpy.array/matrix
- avoidingRedundancy : booléen évitant (ou pas) les calculs redondants
+ - reducingMemoryUse : booléen forçant (ou pas) des calculs moins
+ gourmands en mémoire
- inputAsMultiFunction : booléen indiquant une fonction explicitement
définie (ou pas) en multi-fonction
- extraArguments : arguments supplémentaires passés à la fonction de
"""
self.__name = str(name)
self.__NbCallsAsMatrix, self.__NbCallsAsMethod, self.__NbCallsOfCached = 0, 0, 0
- self.__AvoidRC = bool( avoidingRedundancy )
+ self.__reduceM = bool( reducingMemoryUse )
+ self.__avoidRC = bool( avoidingRedundancy )
self.__inputAsMF = bool( inputAsMultiFunction )
self.__mpEnabled = bool( enableMultiProcess )
self.__extraArgs = extraArguments
self.__Type = "Method"
elif fromMatrix is not None:
self.__Method = None
- self.__Matrix = numpy.matrix( fromMatrix, numpy.float )
+ if isinstance(fromMatrix, str):
+ fromMatrix = PlatformInfo.strmatrix2liststr( fromMatrix )
+ self.__Matrix = numpy.asarray( fromMatrix, dtype=float )
self.__Type = "Matrix"
else:
self.__Method = None
def enableAvoidingRedundancy(self):
"Active le cache"
- if self.__AvoidRC:
+ if self.__avoidRC:
Operator.CM.enable()
else:
Operator.CM.disable()
assert len(_xValue) == len(_HValue), "Incompatible number of elements in xValue and HValue"
_HxValue = []
for i in range(len(_HValue)):
- _HxValue.append( numpy.asmatrix( numpy.ravel( _HValue[i] ) ).T )
- if self.__AvoidRC:
+ _HxValue.append( _HValue[i] )
+ if self.__avoidRC:
Operator.CM.storeValueInX(_xValue[i],_HxValue[-1],self.__name)
else:
_HxValue = []
_xserie = []
_hindex = []
for i, xv in enumerate(_xValue):
- if self.__AvoidRC:
+ if self.__avoidRC:
__alreadyCalculated, __HxV = Operator.CM.wasCalculatedIn(xv,self.__name)
else:
__alreadyCalculated = False
else:
if self.__Matrix is not None:
self.__addOneMatrixCall()
- _xv = numpy.matrix(numpy.ravel(xv)).T
- _hv = self.__Matrix * _xv
+ _hv = self.__Matrix @ numpy.ravel(xv)
else:
self.__addOneMethodCall()
_xserie.append( xv )
_xv = _xserie.pop(0)
_hv = _hserie.pop(0)
_HxValue[i] = _hv
- if self.__AvoidRC:
+ if self.__avoidRC:
Operator.CM.storeValueInX(_xv,_hv,self.__name)
#
if returnSerieAsArrayMatrix:
_HxValue = []
for paire in _xuValue:
_xValue, _uValue = paire
- _xValue = numpy.matrix(numpy.ravel(_xValue)).T
self.__addOneMatrixCall()
- _HxValue.append( self.__Matrix * _xValue )
+ _HxValue.append( self.__Matrix @ numpy.ravel(_xValue) )
else:
_xuArgs = []
for paire in _xuValue:
_HxValue = []
for paire in _nxValue:
_xNominal, _xValue = paire
- _xValue = numpy.matrix(numpy.ravel(_xValue)).T
self.__addOneMatrixCall()
- _HxValue.append( self.__Matrix * _xValue )
+ _HxValue.append( self.__Matrix @ numpy.ravel(_xValue) )
else:
self.__addOneMethodCall( len(_nxValue) )
if self.__extraArgs is None:
if argsAsSerie:
self.__addOneMethodCall( len(ValueForMethodForm) )
for _vfmf in ValueForMethodForm:
- mValue.append( numpy.matrix( self.__Method(((_vfmf, None),)) ) )
+ mValue.append( self.__Method(((_vfmf, None),)) )
else:
self.__addOneMethodCall()
mValue = self.__Method(((ValueForMethodForm, None),))
asDict = None, # Parameters
appliedInX = None,
extraArguments = None,
- avoidRC = True,
+ performancePrf = None,
inputAsMF = False,# Fonction(s) as Multi-Functions
scheduledBy = None,
toBeChecked = False,
__Parameters["EnableMultiProcessingInEvaluation"] = False
if "withIncrement" in __Parameters: # Temporaire
__Parameters["DifferentialIncrement"] = __Parameters["withIncrement"]
+ # Le défaut est équivalent à "ReducedOverallRequirements"
+ __reduceM, __avoidRC = True, True
+ if performancePrf is not None:
+ if performancePrf == "ReducedAmountOfCalculation":
+ __reduceM, __avoidRC = False, True
+ elif performancePrf == "ReducedMemoryFootprint":
+ __reduceM, __avoidRC = True, False
+ elif performancePrf == "NoSavings":
+ __reduceM, __avoidRC = False, False
#
if asScript is not None:
__Matrix, __Function = None, None
if "CenteredFiniteDifference" not in __Function: __Function["CenteredFiniteDifference"] = False
if "DifferentialIncrement" not in __Function: __Function["DifferentialIncrement"] = 0.01
if "withdX" not in __Function: __Function["withdX"] = None
- if "withAvoidingRedundancy" not in __Function: __Function["withAvoidingRedundancy"] = avoidRC
+ if "withReducingMemoryUse" not in __Function: __Function["withReducingMemoryUse"] = __reduceM
+ if "withAvoidingRedundancy" not in __Function: __Function["withAvoidingRedundancy"] = __avoidRC
if "withToleranceInRedundancy" not in __Function: __Function["withToleranceInRedundancy"] = 1.e-18
if "withLenghtOfRedundancy" not in __Function: __Function["withLenghtOfRedundancy"] = -1
if "NumberOfProcesses" not in __Function: __Function["NumberOfProcesses"] = None
increment = __Function["DifferentialIncrement"],
dX = __Function["withdX"],
extraArguments = self.__extraArgs,
+ reducingMemoryUse = __Function["withReducingMemoryUse"],
avoidingRedundancy = __Function["withAvoidingRedundancy"],
toleranceInRedundancy = __Function["withToleranceInRedundancy"],
lenghtOfRedundancy = __Function["withLenghtOfRedundancy"],
mpWorkers = __Function["NumberOfProcesses"],
mfEnabled = __Function["withmfEnabled"],
)
- self.__FO["Direct"] = Operator( name = self.__name, fromMethod = FDA.DirectOperator, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
- self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMethod = FDA.TangentOperator, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
- self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMethod = FDA.AdjointOperator, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
+ self.__FO["Direct"] = Operator( name = self.__name, fromMethod = FDA.DirectOperator, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
+ self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMethod = FDA.TangentOperator, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
+ self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMethod = FDA.AdjointOperator, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
elif isinstance(__Function, dict) and \
("Direct" in __Function) and ("Tangent" in __Function) and ("Adjoint" in __Function) and \
(__Function["Direct"] is not None) and (__Function["Tangent"] is not None) and (__Function["Adjoint"] is not None):
- self.__FO["Direct"] = Operator( name = self.__name, fromMethod = __Function["Direct"], avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
- self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMethod = __Function["Tangent"], avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
- self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMethod = __Function["Adjoint"], avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
+ self.__FO["Direct"] = Operator( name = self.__name, fromMethod = __Function["Direct"], reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
+ self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMethod = __Function["Tangent"], reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
+ self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMethod = __Function["Adjoint"], reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, extraArguments = self.__extraArgs )
elif asMatrix is not None:
- __matrice = numpy.matrix( __Matrix, numpy.float )
- self.__FO["Direct"] = Operator( name = self.__name, fromMatrix = __matrice, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
- self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMatrix = __matrice, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF )
- self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMatrix = __matrice.T, avoidingRedundancy = avoidRC, inputAsMultiFunction = inputAsMF )
+ if isinstance(__Matrix, str):
+ __Matrix = PlatformInfo.strmatrix2liststr( __Matrix )
+ __matrice = numpy.asarray( __Matrix, dtype=float )
+ self.__FO["Direct"] = Operator( name = self.__name, fromMatrix = __matrice, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF, enableMultiProcess = __Parameters["EnableMultiProcessingInEvaluation"] )
+ self.__FO["Tangent"] = Operator( name = self.__name+"Tangent", fromMatrix = __matrice, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF )
+ self.__FO["Adjoint"] = Operator( name = self.__name+"Adjoint", fromMatrix = __matrice.T, reducingMemoryUse = __reduceM, avoidingRedundancy = __avoidRC, inputAsMultiFunction = inputAsMF )
del __matrice
else:
raise ValueError("The %s object is improperly defined or undefined, it requires at minima either a matrix, a Direct operator for approximate derivatives or a Tangent/Adjoint operators pair. Please check your operator input."%self.__name)
- MahalanobisConsistency : indicateur de consistance des covariances
- OMA : Observation moins Analyse : Y - Xa
- OMB : Observation moins Background : Y - Xb
+ - ForecastCovariance : covariance de l'état prédit courant lors d'itérations
- ForecastState : état prédit courant lors d'itérations
- Residu : dans le cas des algorithmes de vérification
- SampledStateForQuantiles : échantillons d'états pour l'estimation des quantiles
#
self._name = str( name )
self._parameters = {"StoreSupplementaryCalculations":[]}
+ self.__internal_state = {}
self.__required_parameters = {}
self.__required_inputs = {
"RequiredInputValues":{"mandatory":(), "optional":()},
self.StoredVariables["CurrentIterationNumber"] = Persistence.OneIndex(name = "CurrentIterationNumber")
self.StoredVariables["CurrentOptimum"] = Persistence.OneVector(name = "CurrentOptimum")
self.StoredVariables["CurrentState"] = Persistence.OneVector(name = "CurrentState")
+ self.StoredVariables["ForecastCovariance"] = Persistence.OneMatrix(name = "ForecastCovariance")
self.StoredVariables["ForecastState"] = Persistence.OneVector(name = "ForecastState")
self.StoredVariables["GradientOfCostFunctionJ"] = Persistence.OneVector(name = "GradientOfCostFunctionJ")
self.StoredVariables["GradientOfCostFunctionJb"] = Persistence.OneVector(name = "GradientOfCostFunctionJb")
else:
logging.debug("%s %s vector %s is not set, but is not required."%(self._name,argname,symbol))
else:
- logging.debug("%s %s vector %s is set, and its size is %i."%(self._name,argname,symbol,numpy.array(argument).size))
+ if variable in self.__required_inputs["RequiredInputValues"]["mandatory"]:
+ logging.debug("%s %s vector %s is required and set, and its size is %i."%(self._name,argname,symbol,numpy.array(argument).size))
+ elif variable in self.__required_inputs["RequiredInputValues"]["optional"]:
+ logging.debug("%s %s vector %s is optional and set, and its size is %i."%(self._name,argname,symbol,numpy.array(argument).size))
+ else:
+ logging.debug("%s %s vector %s is set although neither required nor optional, and its size is %i."%(self._name,argname,symbol,numpy.array(argument).size))
return 0
__test_vvalue( Xb, "Xb", "Background or initial state" )
__test_vvalue( Y, "Y", "Observation" )
else:
logging.debug("%s %s error covariance matrix %s is not set, but is not required."%(self._name,argname,symbol))
else:
- logging.debug("%s %s error covariance matrix %s is set."%(self._name,argname,symbol))
+ if variable in self.__required_inputs["RequiredInputValues"]["mandatory"]:
+ logging.debug("%s %s error covariance matrix %s is required and set."%(self._name,argname,symbol))
+ elif variable in self.__required_inputs["RequiredInputValues"]["optional"]:
+ logging.debug("%s %s error covariance matrix %s is optional and set."%(self._name,argname,symbol))
+ else:
+ logging.debug("%s %s error covariance matrix %s is set although neither required nor optional."%(self._name,argname,symbol))
return 0
__test_cvalue( B, "B", "Background" )
__test_cvalue( R, "R", "Observation" )
else:
logging.debug("%s %s operator %s is not set, but is not required."%(self._name,argname,symbol))
else:
- logging.debug("%s %s operator %s is set."%(self._name,argname,symbol))
+ if variable in self.__required_inputs["RequiredInputValues"]["mandatory"]:
+ logging.debug("%s %s operator %s is required and set."%(self._name,argname,symbol))
+ elif variable in self.__required_inputs["RequiredInputValues"]["optional"]:
+ logging.debug("%s %s operator %s is optional and set."%(self._name,argname,symbol))
+ else:
+ logging.debug("%s %s operator %s is set although neither required nor optional."%(self._name,argname,symbol))
return 0
__test_ovalue( HO, "HO", "Observation", "H" )
__test_ovalue( EM, "EM", "Evolution", "M" )
logging.debug("%s Bounds taken into account"%(self._name,))
else:
self._parameters["Bounds"] = None
- if ("QBounds" in self._parameters) and isinstance(self._parameters["QBounds"], (list, tuple)) and (len(self._parameters["QBounds"]) > 0):
+ if ("StateBoundsForQuantiles" in self._parameters) and isinstance(self._parameters["StateBoundsForQuantiles"], (list, tuple)) and (len(self._parameters["StateBoundsForQuantiles"]) > 0):
logging.debug("%s Bounds for quantiles states taken into account"%(self._name,))
# Attention : contrairement à Bounds, pas de défaut à None, sinon on ne peut pas être sans bornes
#
self._parameters[k] = self.setParameterValue(k)
else:
pass
- logging.debug("%s %s : %s", self._name, self.__required_parameters[k]["message"], self._parameters[k])
+ if hasattr(self._parameters[k],"__len__") and len(self._parameters[k]) > 100:
+ logging.debug("%s %s de longueur %s", self._name, self.__required_parameters[k]["message"], len(self._parameters[k]))
+ else:
+ logging.debug("%s %s : %s", self._name, self.__required_parameters[k]["message"], self._parameters[k])
+
+ def _setInternalState(self, key=None, value=None, fromDico={}, reset=False):
+ """
+ Permet de stocker des variables nommées constituant l'état interne
+ """
+ if reset: # Vide le dictionnaire préalablement
+ self.__internal_state = {}
+ if key is not None and value is not None:
+ self.__internal_state[key] = value
+ self.__internal_state.update( dict(fromDico) )
+
+ def _getInternalState(self, key=None):
+ """
+ Restitue un état interne sous la forme d'un dictionnaire de variables nommées
+ """
+ if key is not None and key in self.__internal_state:
+ return self.__internal_state[key]
+ else:
+ return self.__internal_state
def _getTimeState(self, reset=False):
"""
else:
return __SC
+# ==============================================================================
+class PartialAlgorithm(object):
+ """
+ Classe pour mimer "Algorithm" du point de vue stockage, mais sans aucune
+ action avancée comme la vérification . Pour les méthodes reprises ici,
+ le fonctionnement est identique à celles de la classe "Algorithm".
+ """
+ def __init__(self, name):
+ self._name = str( name )
+ self._parameters = {"StoreSupplementaryCalculations":[]}
+ #
+ self.StoredVariables = {}
+ self.StoredVariables["Analysis"] = Persistence.OneVector(name = "Analysis")
+ self.StoredVariables["CostFunctionJ"] = Persistence.OneScalar(name = "CostFunctionJ")
+ self.StoredVariables["CostFunctionJb"] = Persistence.OneScalar(name = "CostFunctionJb")
+ self.StoredVariables["CostFunctionJo"] = Persistence.OneScalar(name = "CostFunctionJo")
+ self.StoredVariables["CurrentIterationNumber"] = Persistence.OneIndex(name = "CurrentIterationNumber")
+ #
+ self.__canonical_stored_name = {}
+ for k in self.StoredVariables:
+ self.__canonical_stored_name[k.lower()] = k
+
+ def _toStore(self, key):
+ "True if in StoreSupplementaryCalculations, else False"
+ return key in self._parameters["StoreSupplementaryCalculations"]
+
+ def get(self, key=None):
+ """
+ Renvoie l'une des variables stockées identifiée par la clé, ou le
+ dictionnaire de l'ensemble des variables disponibles en l'absence de
+ clé. Ce sont directement les variables sous forme objet qui sont
+ renvoyées, donc les méthodes d'accès à l'objet individuel sont celles
+ des classes de persistance.
+ """
+ if key is not None:
+ return self.StoredVariables[self.__canonical_stored_name[key.lower()]]
+ else:
+ return self.StoredVariables
+
# ==============================================================================
class AlgorithmAndParameters(object):
"""
if self.__B is not None and len(self.__B) > 0 and not( __B_shape[1] == max(__Xb_shape) ):
if self.__algorithmName in ["EnsembleBlue",]:
asPersistentVector = self.__Xb.reshape((-1,min(__B_shape)))
- self.__Xb = Persistence.OneVector("Background", basetype=numpy.matrix)
+ self.__Xb = Persistence.OneVector("Background")
for member in asPersistentVector:
- self.__Xb.store( numpy.matrix( numpy.ravel(member), numpy.float ).T )
+ self.__Xb.store( numpy.asarray(member, dtype=float) )
__Xb_shape = min(__B_shape)
else:
raise ValueError("Shape characteristic of a priori errors covariance matrix (B) \"%s\" and background (Xb) \"%s\" are incompatible."%(__B_shape,__Xb_shape))
raise ValueError("The number \"%s\" of bound pairs for the state (X) components is different of the size \"%s\" of the state itself." \
%(len(self.__P["Bounds"]),max(__Xb_shape)))
#
- if ("QBounds" in self.__P) \
- and (isinstance(self.__P["QBounds"], list) or isinstance(self.__P["QBounds"], tuple)) \
- and (len(self.__P["QBounds"]) != max(__Xb_shape)):
+ if ("StateBoundsForQuantiles" in self.__P) \
+ and (isinstance(self.__P["StateBoundsForQuantiles"], list) or isinstance(self.__P["StateBoundsForQuantiles"], tuple)) \
+ and (len(self.__P["StateBoundsForQuantiles"]) != max(__Xb_shape)):
raise ValueError("The number \"%s\" of bound pairs for the quantile state (X) components is different of the size \"%s\" of the state itself." \
- %(len(self.__P["QBounds"]),max(__Xb_shape)))
+ %(len(self.__P["StateBoundsForQuantiles"]),max(__Xb_shape)))
#
return 1
#
if __Vector is not None:
self.__is_vector = True
- self.__V = numpy.matrix( numpy.asmatrix(__Vector).A1, numpy.float ).T
+ if isinstance(__Vector, str):
+ __Vector = PlatformInfo.strvect2liststr( __Vector )
+ self.__V = numpy.ravel(numpy.asarray( __Vector, dtype=float )).reshape((-1,1))
self.shape = self.__V.shape
self.size = self.__V.size
elif __Series is not None:
self.__is_series = True
if isinstance(__Series, (tuple, list, numpy.ndarray, numpy.matrix, str)):
- self.__V = Persistence.OneVector(self.__name, basetype=numpy.matrix)
- if isinstance(__Series, str): __Series = eval(__Series)
+ #~ self.__V = Persistence.OneVector(self.__name, basetype=numpy.matrix)
+ self.__V = Persistence.OneVector(self.__name)
+ if isinstance(__Series, str):
+ __Series = PlatformInfo.strmatrix2liststr(__Series)
for member in __Series:
- self.__V.store( numpy.matrix( numpy.asmatrix(member).A1, numpy.float ).T )
+ if isinstance(member, str):
+ member = PlatformInfo.strvect2liststr( member )
+ self.__V.store(numpy.asarray( member, dtype=float ))
else:
self.__V = __Series
if isinstance(self.__V.shape, (tuple, list)):
#
if __Scalar is not None:
if isinstance(__Scalar, str):
- __Scalar = __Scalar.replace(";"," ").replace(","," ").split()
+ __Scalar = PlatformInfo.strvect2liststr( __Scalar )
if len(__Scalar) > 0: __Scalar = __Scalar[0]
if numpy.array(__Scalar).size != 1:
raise ValueError(' The diagonal multiplier given to define a sparse matrix is not a unique scalar value.\n Its actual measured size is %i. Please check your scalar input.'%numpy.array(__Scalar).size)
self.size = 0
elif __Vector is not None:
if isinstance(__Vector, str):
- __Vector = __Vector.replace(";"," ").replace(","," ").split()
+ __Vector = PlatformInfo.strvect2liststr( __Vector )
self.__is_vector = True
- self.__C = numpy.abs( numpy.array( numpy.ravel( __Vector ), dtype=float ) )
+ self.__C = numpy.abs( numpy.ravel(numpy.asarray( __Vector, dtype=float )) )
self.shape = (self.__C.size,self.__C.size)
self.size = self.__C.size**2
elif __Matrix is not None:
def asfullmatrix(self, msize=None):
"Matrice pleine"
if self.ismatrix():
- return numpy.asarray(self.__C)
+ return numpy.asarray(self.__C, dtype=float)
elif self.isvector():
- return numpy.asarray( numpy.diag(self.__C), float )
+ return numpy.asarray( numpy.diag(self.__C), dtype=float )
elif self.isscalar():
if msize is None:
raise ValueError("the size of the %s covariance matrix has to be given in case of definition as a scalar over the diagonal."%(self.__name,))
else:
- return numpy.asarray( self.__C * numpy.eye(int(msize)), float )
+ return numpy.asarray( self.__C * numpy.eye(int(msize)), dtype=float )
elif self.isobject() and hasattr(self.__C,"asfullmatrix"):
return self.__C.asfullmatrix()
else:
raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.ravel(other).shape,self.shape,self.__name))
elif self.isscalar() and isinstance(other,numpy.matrix):
return other * self.__C
+ elif self.isscalar() and isinstance(other,float):
+ return other * self.__C
elif self.isobject():
return self.__C.__rmul__(other)
else:
# ==============================================================================
class Observer2Func(object):
"""
- Creation d'une fonction d'observateur a partir de son texte
+ Création d'une fonction d'observateur a partir de son texte
"""
def __init__(self, corps=""):
self.__corps = corps
# ==============================================================================
class CaseLogger(object):
"""
- Conservation des commandes de creation d'un cas
+ Conservation des commandes de création d'un cas
"""
def __init__(self, __name="", __objname="case", __addViewers=None, __addLoaders=None):
self.__name = str(__name)
"TUI" :Interfaces._TUIViewer,
"SCD" :Interfaces._SCDViewer,
"YACS":Interfaces._YACSViewer,
+ "SimpleReportInRst":Interfaces._SimpleReportInRstViewer,
+ "SimpleReportInHtml":Interfaces._SimpleReportInHtmlViewer,
+ "SimpleReportInPlainTxt":Interfaces._SimpleReportInPlainTxtViewer,
}
self.__loaders = {
"TUI" :Interfaces._TUIViewer,