# -*- coding: utf-8 -*-
#
-# Copyright (C) 2008-2021 EDF R&D
+# Copyright (C) 2008-2023 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
import copy
import time
import numpy
+import warnings
from functools import partial
from daCore import Persistence, PlatformInfo, Interfaces
from daCore import Templates
"""
def __init__(self,
toleranceInRedundancy = 1.e-18,
- lenghtOfRedundancy = -1,
+ lengthOfRedundancy = -1,
):
"""
Les caractéristiques de tolérance peuvent être modifiées à la création.
"""
self.__tolerBP = float(toleranceInRedundancy)
- self.__lenghtOR = int(lenghtOfRedundancy)
- self.__initlnOR = self.__lenghtOR
+ self.__lengthOR = int(lengthOfRedundancy)
+ self.__initlnOR = self.__lengthOR
self.__seenNames = []
self.__enabled = True
self.clearCache()
__alc = False
__HxV = None
if self.__enabled:
- for i in range(min(len(self.__listOPCV),self.__lenghtOR)-1,-1,-1):
+ for i in range(min(len(self.__listOPCV),self.__lengthOR)-1,-1,-1):
if not hasattr(xValue, 'size'):
pass
elif (str(oName) != self.__listOPCV[i][3]):
def storeValueInX(self, xValue, HxValue, oName="" ):
"Stocke pour un opérateur o un calcul Hx correspondant à la valeur x"
- if self.__lenghtOR < 0:
- self.__lenghtOR = 2 * min(xValue.size, 50) + 2 # 2 * xValue.size + 2
- self.__initlnOR = self.__lenghtOR
+ if self.__lengthOR < 0:
+ self.__lengthOR = 2 * min(numpy.size(xValue), 50) + 2
+ self.__initlnOR = self.__lengthOR
self.__seenNames.append(str(oName))
if str(oName) not in self.__seenNames: # Etend la liste si nouveau
- self.__lenghtOR += 2 * min(xValue.size, 50) + 2 # 2 * xValue.size + 2
- self.__initlnOR += self.__lenghtOR
+ self.__lengthOR += 2 * min(numpy.size(xValue), 50) + 2
+ self.__initlnOR += self.__lengthOR
self.__seenNames.append(str(oName))
- while len(self.__listOPCV) > self.__lenghtOR:
+ while len(self.__listOPCV) > self.__lengthOR:
self.__listOPCV.pop(0)
self.__listOPCV.append( (
copy.copy(numpy.ravel(xValue)), # 0 Previous point
def disable(self):
"Inactive le cache"
- self.__initlnOR = self.__lenghtOR
- self.__lenghtOR = 0
+ self.__initlnOR = self.__lengthOR
+ self.__lengthOR = 0
self.__enabled = False
def enable(self):
"Active le cache"
- self.__lenghtOR = self.__initlnOR
+ self.__lengthOR = self.__initlnOR
self.__enabled = True
# ==============================================================================
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 )
else:
_hserie = self.__Method( _xserie, self.__extraArgs ) # Calcul MF
if not hasattr(_hserie, "pop"):
- raise TypeError("The user input multi-function doesn't seem to return sequence results, behaving like a mono-function. It has to be checked.")
+ raise TypeError(
+ "The user input multi-function doesn't seem to return a"+\
+ " result sequence, behaving like a mono-function. It has"+\
+ " to be checked."
+ )
for i in _hindex:
_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
__Function = asThreeFunctions
__Function.update({"useApproximatedDerivatives":True})
else:
- raise ValueError("The functions has to be given in a dictionnary which have either 1 key (\"Direct\") or 3 keys (\"Direct\" (optionnal), \"Tangent\" and \"Adjoint\")")
+ raise ValueError(
+ "The functions has to be given in a dictionnary which have either"+\
+ " 1 key (\"Direct\") or"+\
+ " 3 keys (\"Direct\" (optionnal), \"Tangent\" and \"Adjoint\")")
if "Direct" not in asThreeFunctions:
__Function["Direct"] = asThreeFunctions["Tangent"]
__Function.update(__Parameters)
else:
__Function = None
#
- # if sys.version_info[0] < 3 and isinstance(__Function, dict):
- # for k in ("Direct", "Tangent", "Adjoint"):
- # if k in __Function and hasattr(__Function[k],"__class__"):
- # if type(__Function[k]) is type(self.__init__):
- # raise TypeError("can't use a class method (%s) as a function for the \"%s\" operator. Use a real function instead."%(type(__Function[k]),k))
- #
if appliedInX is not None and isinstance(appliedInX, dict):
__appliedInX = appliedInX
elif appliedInX is not 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 "withLengthOfRedundancy" not in __Function: __Function["withLengthOfRedundancy"] = -1
if "NumberOfProcesses" not in __Function: __Function["NumberOfProcesses"] = None
if "withmfEnabled" not in __Function: __Function["withmfEnabled"] = inputAsMF
from daCore import NumericObjects
increment = __Function["DifferentialIncrement"],
dX = __Function["withdX"],
extraArguments = self.__extraArgs,
+ reducingMemoryUse = __Function["withReducingMemoryUse"],
avoidingRedundancy = __Function["withAvoidingRedundancy"],
toleranceInRedundancy = __Function["withToleranceInRedundancy"],
- lenghtOfRedundancy = __Function["withLenghtOfRedundancy"],
+ lengthOfRedundancy = __Function["withLengthOfRedundancy"],
mpEnabled = __Function["EnableMultiProcessingInDerivatives"],
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)
+ raise ValueError(
+ "The %s object is improperly defined or undefined,"%self.__name+\
+ " it requires at minima either a matrix, a Direct operator for"+\
+ " approximate derivatives or a Tangent/Adjoint operators pair."+\
+ " Please check your operator input.")
#
if __appliedInX is not None:
self.__FO["AppliedInX"] = {}
- for key in list(__appliedInX.keys()):
- if type( __appliedInX[key] ) is type( numpy.matrix([]) ):
- # Pour le cas où l'on a une vraie matrice
- self.__FO["AppliedInX"][key] = numpy.matrix( __appliedInX[key].A1, numpy.float ).T
- elif type( __appliedInX[key] ) is type( numpy.array([]) ) and len(__appliedInX[key].shape) > 1:
- # Pour le cas où l'on a un vecteur représenté en array avec 2 dimensions
- self.__FO["AppliedInX"][key] = numpy.matrix( __appliedInX[key].reshape(len(__appliedInX[key]),), numpy.float ).T
- else:
- self.__FO["AppliedInX"][key] = numpy.matrix( __appliedInX[key], numpy.float ).T
+ for key in __appliedInX:
+ if isinstance(__appliedInX[key], str):
+ __appliedInX[key] = PlatformInfo.strvect2liststr( __appliedInX[key] )
+ self.__FO["AppliedInX"][key] = numpy.ravel( __appliedInX[key] ).reshape((-1,1))
else:
self.__FO["AppliedInX"] = None
- CurrentIterationNumber : numéro courant d'itération dans les algorithmes itératifs, à partir de 0
- CurrentOptimum : état optimal courant lors d'itérations
- CurrentState : état courant lors d'itérations
+ - CurrentStepNumber : pas courant d'avancement dans les algorithmes en évolution, à partir de 0
+ - EnsembleOfSimulations : ensemble d'états (sorties, simulations) rangés par colonne dans une matrice
+ - EnsembleOfSnapshots : ensemble d'états rangés par colonne dans une matrice
+ - EnsembleOfStates : ensemble d'états (entrées, paramètres) rangés par colonne dans une matrice
+ - ForecastCovariance : covariance de l'état prédit courant lors d'itérations
+ - ForecastState : état prédit courant lors d'itérations
- GradientOfCostFunctionJ : gradient de la fonction-coût globale
- GradientOfCostFunctionJb : gradient de la partie ébauche de la fonction-coût
- GradientOfCostFunctionJo : gradient de la partie observations de la fonction-coût
- 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
- SigmaBck2 : indicateur de correction optimale des erreurs d'ébauche
#
self._name = str( name )
self._parameters = {"StoreSupplementaryCalculations":[]}
+ self.__internal_state = {}
self.__required_parameters = {}
self.__required_inputs = {
"RequiredInputValues":{"mandatory":(), "optional":()},
self.__variable_names_not_public = {"nextStep":False} # Duplication dans AlgorithmAndParameters
self.__canonical_parameter_name = {} # Correspondance "lower"->"correct"
self.__canonical_stored_name = {} # Correspondance "lower"->"correct"
+ self.__replace_by_the_new_name = {} # Nouveau nom à partir d'un nom ancien
#
self.StoredVariables = {}
self.StoredVariables["APosterioriCorrelations"] = Persistence.OneMatrix(name = "APosterioriCorrelations")
self.StoredVariables["CurrentIterationNumber"] = Persistence.OneIndex(name = "CurrentIterationNumber")
self.StoredVariables["CurrentOptimum"] = Persistence.OneVector(name = "CurrentOptimum")
self.StoredVariables["CurrentState"] = Persistence.OneVector(name = "CurrentState")
+ self.StoredVariables["CurrentStepNumber"] = Persistence.OneIndex(name = "CurrentStepNumber")
+ self.StoredVariables["EnsembleOfSimulations"] = Persistence.OneMatrix(name = "EnsembleOfSimulations")
+ self.StoredVariables["EnsembleOfSnapshots"] = Persistence.OneMatrix(name = "EnsembleOfSnapshots")
+ self.StoredVariables["EnsembleOfStates"] = Persistence.OneMatrix(name = "EnsembleOfStates")
self.StoredVariables["ForecastCovariance"] = Persistence.OneMatrix(name = "ForecastCovariance")
self.StoredVariables["ForecastState"] = Persistence.OneVector(name = "ForecastState")
self.StoredVariables["GradientOfCostFunctionJ"] = Persistence.OneVector(name = "GradientOfCostFunctionJ")
self.StoredVariables["MahalanobisConsistency"] = Persistence.OneScalar(name = "MahalanobisConsistency")
self.StoredVariables["OMA"] = Persistence.OneVector(name = "OMA")
self.StoredVariables["OMB"] = Persistence.OneVector(name = "OMB")
+ self.StoredVariables["OptimalPoints"] = Persistence.OneVector(name = "OptimalPoints")
+ self.StoredVariables["ReducedBasis"] = Persistence.OneMatrix(name = "ReducedBasis")
self.StoredVariables["Residu"] = Persistence.OneScalar(name = "Residu")
+ self.StoredVariables["Residus"] = Persistence.OneVector(name = "Residus")
self.StoredVariables["SampledStateForQuantiles"] = Persistence.OneMatrix(name = "SampledStateForQuantiles")
self.StoredVariables["SigmaBck2"] = Persistence.OneScalar(name = "SigmaBck2")
self.StoredVariables["SigmaObs2"] = Persistence.OneScalar(name = "SigmaObs2")
logging.debug("%s Taille mémoire utilisée de %.0f Mio"%(self._name, self._m.getUsedMemory("Mio")))
self._getTimeState(reset=True)
#
- # Mise a jour des paramètres internes avec le contenu de Parameters, en
+ # Mise à jour des paramètres internes avec le contenu de Parameters, en
# reprenant les valeurs par défauts pour toutes celles non définies
self.__setParameters(Parameters, reset=True)
for k, v in self.__variable_names_not_public.items():
if k not in self._parameters: self.__setParameters( {k:v} )
- #
+
# Corrections et compléments des vecteurs
def __test_vvalue(argument, variable, argname, symbol=None):
if symbol is None: symbol = variable
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" )
__test_vvalue( U, "U", "Control" )
- #
+
# Corrections et compléments des covariances
def __test_cvalue(argument, variable, argname, symbol=None):
if symbol is None: symbol = variable
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" )
__test_cvalue( Q, "Q", "Evolution" )
- #
+
# Corrections et compléments des opérateurs
def __test_ovalue(argument, variable, argname, symbol=None):
if symbol is None: symbol = variable
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 ("StateBoundsForQuantiles" in self._parameters) and isinstance(self._parameters["StateBoundsForQuantiles"], (list, tuple)) and (len(self._parameters["StateBoundsForQuantiles"]) > 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
#
# Verbosité et logging
if logging.getLogger().level < logging.WARNING:
self._parameters["optiprint"], self._parameters["optdisp"] = 1, 1
- if PlatformInfo.has_scipy:
- import scipy.optimize
- self._parameters["optmessages"] = scipy.optimize.tnc.MSG_ALL
- else:
- self._parameters["optmessages"] = 15
+ self._parameters["optmessages"] = 15
else:
self._parameters["optiprint"], self._parameters["optdisp"] = -1, 0
- if PlatformInfo.has_scipy:
- import scipy.optimize
- self._parameters["optmessages"] = scipy.optimize.tnc.MSG_NONE
- else:
- self._parameters["optmessages"] = 15
+ self._parameters["optmessages"] = 0
#
return 0
_C = numpy.dot(_EI, numpy.dot(_A, _EI))
self.StoredVariables["APosterioriCorrelations"].store( _C )
if _oH is not None and "Direct" in _oH and "Tangent" in _oH and "Adjoint" in _oH:
- logging.debug("%s Nombre d'évaluation(s) de l'opérateur d'observation direct/tangent/adjoint.: %i/%i/%i", self._name, _oH["Direct"].nbcalls(0),_oH["Tangent"].nbcalls(0),_oH["Adjoint"].nbcalls(0))
- logging.debug("%s Nombre d'appels au cache d'opérateur d'observation direct/tangent/adjoint..: %i/%i/%i", self._name, _oH["Direct"].nbcalls(3),_oH["Tangent"].nbcalls(3),_oH["Adjoint"].nbcalls(3))
+ logging.debug(
+ "%s Nombre d'évaluation(s) de l'opérateur d'observation direct/tangent/adjoint.: %i/%i/%i",
+ self._name, _oH["Direct"].nbcalls(0),_oH["Tangent"].nbcalls(0),_oH["Adjoint"].nbcalls(0))
+ logging.debug(
+ "%s Nombre d'appels au cache d'opérateur d'observation direct/tangent/adjoint..: %i/%i/%i",
+ self._name, _oH["Direct"].nbcalls(3),_oH["Tangent"].nbcalls(3),_oH["Adjoint"].nbcalls(3))
logging.debug("%s Taille mémoire utilisée de %.0f Mio", self._name, self._m.getUsedMemory("Mio"))
logging.debug("%s Durées d'utilisation CPU de %.1fs et elapsed de %.1fs", self._name, self._getTimeState()[0], self._getTimeState()[1])
logging.debug("%s Terminé", self._name)
else:
try:
msg = "'%s'"%k
- except:
+ except Exception:
raise TypeError("pop expected at least 1 arguments, got 0")
"If key is not found, d is returned if given, otherwise KeyError is raised"
try:
return d
- except:
+ except Exception:
raise KeyError(msg)
def run(self, Xb=None, Y=None, H=None, M=None, R=None, B=None, Q=None, Parameters=None):
"""
- Doit implémenter l'opération élémentaire de calcul d'assimilation sous
- sa forme mathématique la plus naturelle possible.
+ Doit implémenter l'opération élémentaire de calcul algorithmique.
"""
- raise NotImplementedError("Mathematical assimilation calculation has not been implemented!")
-
- def defineRequiredParameter(self, name = None, default = None, typecast = None, message = None, minval = None, maxval = None, listval = None, listadv = None):
+ raise NotImplementedError("Mathematical algorithmic calculation has not been implemented!")
+
+ def defineRequiredParameter(self,
+ name = None,
+ default = None,
+ typecast = None,
+ message = None,
+ minval = None,
+ maxval = None,
+ listval = None,
+ listadv = None,
+ oldname = None,
+ ):
"""
Permet de définir dans l'algorithme des paramètres requis et leurs
caractéristiques par défaut.
"listval" : listval,
"listadv" : listadv,
"message" : message,
+ "oldname" : oldname,
}
self.__canonical_parameter_name[name.lower()] = name
+ if oldname is not None:
+ self.__canonical_parameter_name[oldname.lower()] = name # Conversion
+ self.__replace_by_the_new_name[oldname.lower()] = name
logging.debug("%s %s (valeur par défaut = %s)", self._name, message, self.setParameterValue(name))
def getRequiredParameters(self, noDetails=True):
else:
try:
__val = typecast( value )
- except:
+ except Exception:
raise ValueError("The value '%s' for the parameter named '%s' can not be correctly evaluated with type '%s'."%(value, __k, typecast))
#
if minval is not None and (numpy.array(__val, float) < minval).any():
__inverse_fromDico_keys[self.__canonical_parameter_name[k.lower()]] = k
#~ __inverse_fromDico_keys = dict([(self.__canonical_parameter_name[k.lower()],k) for k in fromDico.keys()])
__canonic_fromDico_keys = __inverse_fromDico_keys.keys()
+ #
+ for k in __inverse_fromDico_keys.values():
+ if k.lower() in self.__replace_by_the_new_name:
+ __newk = self.__replace_by_the_new_name[k.lower()]
+ __msg = "the parameter \"%s\" used in \"%s\" algorithm case is deprecated and has to be replaced by \"%s\"."%(k,self._name,__newk)
+ __msg += " Please update your code."
+ warnings.warn(__msg, FutureWarning, stacklevel=50)
+ #
for k in self.__required_parameters.keys():
if k in __canonic_fromDico_keys:
self._parameters[k] = self.setParameterValue(k,fromDico[__inverse_fromDico_keys[k]])
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.StoredVariables["CurrentStepNumber"] = Persistence.OneIndex(name = "CurrentStepNumber")
+ #
+ 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):
"""
asDict = None,
asScript = None,
):
- "Mise a jour des parametres"
+ "Mise à jour des paramètres"
if asDict is None and asScript is not None:
__Dict = Interfaces.ImportFromScript(asScript).getvalue( self.__name, "Parameters" )
else:
try:
catalogAd = r.loadCatalog("proc", __file)
r.addCatalog(catalogAd)
- except:
+ except Exception:
pass
try:
if os.path.isfile(os.path.join(directory, daDirectory, str(choice)+'.py')):
module_path = os.path.abspath(os.path.join(directory, daDirectory))
if module_path is None:
- raise ImportError("No algorithm module named \"%s\" has been found in the search path.\n The search path is %s"%(choice, sys.path))
+ raise ImportError(
+ "No algorithm module named \"%s\" has been found in the search path.\n The search path is %s"%(choice, sys.path))
#
# Importe le fichier complet comme un module
# ------------------------------------------
self.__algorithmName = str(choice)
sys.path = sys_path_tmp ; del sys_path_tmp
except ImportError as e:
- raise ImportError("The module named \"%s\" was found, but is incorrect at the import stage.\n The import error message is: %s"%(choice,e))
+ raise ImportError(
+ "The module named \"%s\" was found, but is incorrect at the import stage.\n The import error message is: %s"%(choice,e))
#
# Instancie un objet du type élémentaire du fichier
# -------------------------------------------------
raise ValueError("Shape characteristic of evolution operator (EM) is incorrect: \"%s\"."%(__EM_shape,))
#
if len(self.__HO) > 0 and not isinstance(self.__HO, dict) and not( __HO_shape[1] == max(__Xb_shape) ):
- raise ValueError("Shape characteristic of observation operator (H) \"%s\" and state (X) \"%s\" are incompatible."%(__HO_shape,__Xb_shape))
+ raise ValueError(
+ "Shape characteristic of observation operator (H)"+\
+ " \"%s\" and state (X) \"%s\" are incompatible."%(__HO_shape,__Xb_shape))
if len(self.__HO) > 0 and not isinstance(self.__HO, dict) and not( __HO_shape[0] == max(__Y_shape) ):
- raise ValueError("Shape characteristic of observation operator (H) \"%s\" and observation (Y) \"%s\" are incompatible."%(__HO_shape,__Y_shape))
+ raise ValueError(
+ "Shape characteristic of observation operator (H)"+\
+ " \"%s\" and observation (Y) \"%s\" are incompatible."%(__HO_shape,__Y_shape))
if len(self.__HO) > 0 and not isinstance(self.__HO, dict) and len(self.__B) > 0 and not( __HO_shape[1] == __B_shape[0] ):
- raise ValueError("Shape characteristic of observation operator (H) \"%s\" and a priori errors covariance matrix (B) \"%s\" are incompatible."%(__HO_shape,__B_shape))
+ raise ValueError(
+ "Shape characteristic of observation operator (H)"+\
+ " \"%s\" and a priori errors covariance matrix (B) \"%s\" are incompatible."%(__HO_shape,__B_shape))
if len(self.__HO) > 0 and not isinstance(self.__HO, dict) and len(self.__R) > 0 and not( __HO_shape[0] == __R_shape[1] ):
- raise ValueError("Shape characteristic of observation operator (H) \"%s\" and observation errors covariance matrix (R) \"%s\" are incompatible."%(__HO_shape,__R_shape))
+ raise ValueError(
+ "Shape characteristic of observation operator (H)"+\
+ " \"%s\" and observation errors covariance matrix (R) \"%s\" are incompatible."%(__HO_shape,__R_shape))
#
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(
+ "Shape characteristic of a priori errors covariance matrix (B)"+\
+ " \"%s\" and background vector (Xb) \"%s\" are incompatible."%(__B_shape,__Xb_shape))
#
if self.__R is not None and len(self.__R) > 0 and not( __R_shape[1] == max(__Y_shape) ):
- raise ValueError("Shape characteristic of observation errors covariance matrix (R) \"%s\" and observation (Y) \"%s\" are incompatible."%(__R_shape,__Y_shape))
+ raise ValueError(
+ "Shape characteristic of observation errors covariance matrix (R)"+\
+ " \"%s\" and observation vector (Y) \"%s\" are incompatible."%(__R_shape,__Y_shape))
#
if self.__EM is not None and len(self.__EM) > 0 and not isinstance(self.__EM, dict) and not( __EM_shape[1] == max(__Xb_shape) ):
- raise ValueError("Shape characteristic of evolution model (EM) \"%s\" and state (X) \"%s\" are incompatible."%(__EM_shape,__Xb_shape))
+ raise ValueError(
+ "Shape characteristic of evolution model (EM)"+\
+ " \"%s\" and state (X) \"%s\" are incompatible."%(__EM_shape,__Xb_shape))
#
if self.__CM is not None and len(self.__CM) > 0 and not isinstance(self.__CM, dict) and not( __CM_shape[1] == max(__U_shape) ):
- raise ValueError("Shape characteristic of control model (CM) \"%s\" and control (U) \"%s\" are incompatible."%(__CM_shape,__U_shape))
+ raise ValueError(
+ "Shape characteristic of control model (CM)"+\
+ " \"%s\" and control (U) \"%s\" are incompatible."%(__CM_shape,__U_shape))
#
if ("Bounds" in self.__P) \
and (isinstance(self.__P["Bounds"], list) or isinstance(self.__P["Bounds"], tuple)) \
# ==============================================================================
class ExternalParameters(object):
"""
- Classe générale d'interface de type texte de script utilisateur
+ Classe générale d'interface pour le stockage des paramètres externes
"""
def __init__(self,
name = "GenericExternalParameters",
asDict = None,
asScript = None,
):
- "Mise a jour des parametres"
+ "Mise à jour des paramètres"
if asDict is None and asScript is not None:
__Dict = Interfaces.ImportFromScript(asScript).getvalue( self.__name, "ExternalParameters" )
else:
#
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)
+ 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)):
self.shape = (self.shape[0],1)
self.size = self.shape[0] * self.shape[1]
else:
- raise ValueError("The %s object is improperly defined or undefined, it requires at minima either a vector, a list/tuple of vectors or a persistent object. Please check your vector input."%self.__name)
+ raise ValueError(
+ "The %s object is improperly defined or undefined,"%self.__name+\
+ " it requires at minima either a vector, a list/tuple of"+\
+ " vectors or a persistent object. Please check your vector input.")
#
if scheduledBy is not None:
self.__T = scheduledBy
#
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)
+ 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.__is_scalar = True
self.__C = numpy.abs( float(__Scalar) )
self.shape = (0,0)
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:
self.size = 0
else:
pass
- # raise ValueError("The %s covariance matrix has to be specified either as a matrix, a vector for its diagonal or a scalar multiplying an identity matrix."%self.__name)
#
self.__validate()
raise ValueError("The \"%s\" covariance matrix is not positive-definite. Please check your vector input."%(self.__name,))
if self.ismatrix() and (self.__check or logging.getLogger().level < logging.WARNING):
try:
- L = numpy.linalg.cholesky( self.__C )
- except:
+ numpy.linalg.cholesky( self.__C )
+ except Exception:
raise ValueError("The %s covariance matrix is not symmetric positive-definite. Please check your matrix input."%(self.__name,))
if self.isobject() and (self.__check or logging.getLogger().level < logging.WARNING):
try:
- L = self.__C.cholesky()
- except:
+ self.__C.cholesky()
+ except Exception:
raise ValueError("The %s covariance object is not symmetric positive-definite. Please check your matrix input."%(self.__name,))
def isscalar(self):
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:
return self.__C + numpy.asmatrix(other)
elif self.isvector() or self.isscalar():
_A = numpy.asarray(other)
- _A.reshape(_A.size)[::_A.shape[1]+1] += self.__C
+ if len(_A.shape) == 1:
+ _A.reshape((-1,1))[::2] += self.__C
+ else:
+ _A.reshape(_A.size)[::_A.shape[1]+1] += self.__C
return numpy.asmatrix(_A)
def __radd__(self, other):
elif numpy.asmatrix(other).shape[0] == self.shape[1]: # Matrice
return self.__C * numpy.asmatrix(other)
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(self.shape,numpy.asmatrix(other).shape,self.__name))
+ raise ValueError(
+ "operands could not be broadcast together with shapes %s %s in %s matrix"%(self.shape,numpy.asmatrix(other).shape,self.__name))
elif self.isvector() and isinstance(other, (list, numpy.matrix, numpy.ndarray, tuple)):
if numpy.ravel(other).size == self.shape[1]: # Vecteur
return numpy.asmatrix(self.__C * numpy.ravel(other)).T
elif numpy.asmatrix(other).shape[0] == self.shape[1]: # Matrice
return numpy.asmatrix((self.__C * (numpy.asarray(other).transpose())).transpose())
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(self.shape,numpy.ravel(other).shape,self.__name))
+ raise ValueError(
+ "operands could not be broadcast together with shapes %s %s in %s matrix"%(self.shape,numpy.ravel(other).shape,self.__name))
elif self.isscalar() and isinstance(other,numpy.matrix):
return self.__C * other
elif self.isscalar() and isinstance(other, (list, numpy.ndarray, tuple)):
elif self.isobject():
return self.__C.__mul__(other)
else:
- raise NotImplementedError("%s covariance matrix __mul__ method not available for %s type!"%(self.__name,type(other)))
+ raise NotImplementedError(
+ "%s covariance matrix __mul__ method not available for %s type!"%(self.__name,type(other)))
def __rmatmul__(self, other):
"x.__rmul__(y) <==> y@x"
elif numpy.asmatrix(other).shape[0] == self.shape[1]: # Matrice
return numpy.asmatrix(other) * self.__C
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.asmatrix(other).shape,self.shape,self.__name))
+ raise ValueError(
+ "operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.asmatrix(other).shape,self.shape,self.__name))
elif self.isvector() and isinstance(other,numpy.matrix):
if numpy.ravel(other).size == self.shape[0]: # Vecteur
return numpy.asmatrix(numpy.ravel(other) * self.__C)
elif numpy.asmatrix(other).shape[1] == self.shape[0]: # Matrice
return numpy.asmatrix(numpy.array(other) * self.__C)
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.ravel(other).shape,self.shape,self.__name))
+ 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.isobject():
return self.__C.__rmatmul__(other)
else:
- raise NotImplementedError("%s covariance matrix __rmatmul__ method not available for %s type!"%(self.__name,type(other)))
+ raise NotImplementedError(
+ "%s covariance matrix __rmatmul__ method not available for %s type!"%(self.__name,type(other)))
def __rmul__(self, other):
"x.__rmul__(y) <==> y*x"
elif numpy.asmatrix(other).shape[0] == self.shape[1]: # Matrice
return numpy.asmatrix(other) * self.__C
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.asmatrix(other).shape,self.shape,self.__name))
+ raise ValueError(
+ "operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.asmatrix(other).shape,self.shape,self.__name))
elif self.isvector() and isinstance(other,numpy.matrix):
if numpy.ravel(other).size == self.shape[0]: # Vecteur
return numpy.asmatrix(numpy.ravel(other) * self.__C)
elif numpy.asmatrix(other).shape[1] == self.shape[0]: # Matrice
return numpy.asmatrix(numpy.array(other) * self.__C)
else:
- raise ValueError("operands could not be broadcast together with shapes %s %s in %s matrix"%(numpy.ravel(other).shape,self.shape,self.__name))
+ 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:
- raise NotImplementedError("%s covariance matrix __rmul__ method not available for %s type!"%(self.__name,type(other)))
+ raise NotImplementedError(
+ "%s covariance matrix __rmul__ method not available for %s type!"%(self.__name,type(other)))
def __len__(self):
"x.__len__() <==> len(x)"
# ==============================================================================
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,
if __mpEnabled:
_jobs = __xserie
# logging.debug("MULTF Internal multiprocessing calculations begin : evaluation of %i point(s)"%(len(_jobs),))
- import multiprocessing
with multiprocessing.Pool(__mpWorkers) as pool:
__multiHX = pool.map( _sFunction, _jobs )
pool.close()
# logging.debug("MULTF Internal multifonction calculations end")
return __multiHX
-# ==============================================================================
-def CostFunction3D(_x,
- _Hm = None, # Pour simuler Hm(x) : HO["Direct"].appliedTo
- _HmX = None, # Simulation déjà faite de Hm(x)
- _arg = None, # Arguments supplementaires pour Hm, sous la forme d'un tuple
- _BI = None,
- _RI = None,
- _Xb = None,
- _Y = None,
- _SIV = False, # A résorber pour la 8.0
- _SSC = [], # self._parameters["StoreSupplementaryCalculations"]
- _nPS = 0, # nbPreviousSteps
- _QM = "DA", # QualityMeasure
- _SSV = {}, # Entrée et/ou sortie : self.StoredVariables
- _fRt = False, # Restitue ou pas la sortie étendue
- _sSc = True, # Stocke ou pas les SSC
- ):
- """
- Fonction-coût générale utile pour les algorithmes statiques/3D : 3DVAR, BLUE
- et dérivés, Kalman et dérivés, LeastSquares, SamplingTest, PSO, SA, Tabu,
- DFO, QuantileRegression
- """
- if not _sSc:
- _SIV = False
- _SSC = {}
- else:
- for k in ["CostFunctionJ",
- "CostFunctionJb",
- "CostFunctionJo",
- "CurrentOptimum",
- "CurrentState",
- "IndexOfOptimum",
- "SimulatedObservationAtCurrentOptimum",
- "SimulatedObservationAtCurrentState",
- ]:
- if k not in _SSV:
- _SSV[k] = []
- if hasattr(_SSV[k],"store"):
- _SSV[k].append = _SSV[k].store # Pour utiliser "append" au lieu de "store"
- #
- _X = numpy.asmatrix(numpy.ravel( _x )).T
- if _SIV or "CurrentState" in _SSC or "CurrentOptimum" in _SSC:
- _SSV["CurrentState"].append( _X )
- #
- if _HmX is not None:
- _HX = _HmX
- else:
- if _Hm is None:
- raise ValueError("COSTFUNCTION3D Operator has to be defined.")
- if _arg is None:
- _HX = _Hm( _X )
- else:
- _HX = _Hm( _X, *_arg )
- _HX = numpy.asmatrix(numpy.ravel( _HX )).T
- #
- if "SimulatedObservationAtCurrentState" in _SSC or \
- "SimulatedObservationAtCurrentOptimum" in _SSC:
- _SSV["SimulatedObservationAtCurrentState"].append( _HX )
- #
- if numpy.any(numpy.isnan(_HX)):
- Jb, Jo, J = numpy.nan, numpy.nan, numpy.nan
- else:
- _Y = numpy.asmatrix(numpy.ravel( _Y )).T
- if _QM in ["AugmentedWeightedLeastSquares", "AWLS", "AugmentedPonderatedLeastSquares", "APLS", "DA"]:
- if _BI is None or _RI is None:
- raise ValueError("Background and Observation error covariance matrix has to be properly defined!")
- _Xb = numpy.asmatrix(numpy.ravel( _Xb )).T
- Jb = 0.5 * (_X - _Xb).T * _BI * (_X - _Xb)
- Jo = 0.5 * (_Y - _HX).T * _RI * (_Y - _HX)
- elif _QM in ["WeightedLeastSquares", "WLS", "PonderatedLeastSquares", "PLS"]:
- if _RI is None:
- raise ValueError("Observation error covariance matrix has to be properly defined!")
- Jb = 0.
- Jo = 0.5 * (_Y - _HX).T * _RI * (_Y - _HX)
- elif _QM in ["LeastSquares", "LS", "L2"]:
- Jb = 0.
- Jo = 0.5 * (_Y - _HX).T * (_Y - _HX)
- elif _QM in ["AbsoluteValue", "L1"]:
- Jb = 0.
- Jo = numpy.sum( numpy.abs(_Y - _HX) )
- elif _QM in ["MaximumError", "ME"]:
- Jb = 0.
- Jo = numpy.max( numpy.abs(_Y - _HX) )
- elif _QM in ["QR", "Null"]:
- Jb = 0.
- Jo = 0.
- else:
- raise ValueError("Unknown asked quality measure!")
- #
- J = float( Jb ) + float( Jo )
- #
- if _sSc:
- _SSV["CostFunctionJb"].append( Jb )
- _SSV["CostFunctionJo"].append( Jo )
- _SSV["CostFunctionJ" ].append( J )
- #
- if "IndexOfOptimum" in _SSC or \
- "CurrentOptimum" in _SSC or \
- "SimulatedObservationAtCurrentOptimum" in _SSC:
- IndexMin = numpy.argmin( _SSV["CostFunctionJ"][_nPS:] ) + _nPS
- if "IndexOfOptimum" in _SSC:
- _SSV["IndexOfOptimum"].append( IndexMin )
- if "CurrentOptimum" in _SSC:
- _SSV["CurrentOptimum"].append( _SSV["CurrentState"][IndexMin] )
- if "SimulatedObservationAtCurrentOptimum" in _SSC:
- _SSV["SimulatedObservationAtCurrentOptimum"].append( _SSV["SimulatedObservationAtCurrentState"][IndexMin] )
- #
- if _fRt:
- return _SSV
- else:
- if _QM in ["QR"]: # Pour le QuantileRegression
- return _HX
- else:
- return J
-
# ==============================================================================
if __name__ == "__main__":
print('\n AUTODIAGNOSTIC\n')