FileMemoizeFunction¶
-
class
persalys.
FileMemoizeFunction
(*args)¶ Function proxy with a CSV file cache.
When this function is evaluated, it calls the
Function
passed as argument, and caches values with CSV files.- Parameters
- function
Function
Delegate function
- input_filestr
Input CSV file name
- output_filestr
Output CSV file name
- function
See also
Function
Examples
>>> import openturns as ot >>> import persalys as psl >>> f = ot.SymbolicFunction('x', 'x^2') >>> inputSample = ot.Sample([[1], [2], [3], [4]]) >>> f = psl.FileMemoizeFunction(f, 'input.csv', 'output.csv') >>> outputSample = f(inputSample)
- Attributes
thisown
The membership flag
Methods
__call__
(*args)Call self as a function.
addCacheContent
(inSample, outSample)Add input numerical points and associated output to the cache.
Empty the content of the cache.
Disable the cache mechanism.
draw
(*args)Draw the output of function as a
Graph
.Enable the cache mechanism.
Accessor to the number of computations saved thanks to the cache mecanism.
Accessor to all the input numerical points stored in the cache mecanism.
Cache input file accessor.
Accessor to all the output numerical points stored in the cache mecanism.
Cache output file accessor.
Accessor to the number of times the function has been called.
Accessor to the object’s name.
Accessor to the description of the inputs and outputs.
Accessor to the evaluation function.
Accessor to the number of times the function has been called.
Accessor to the gradient function.
Accessor to the number of times the gradient of the function has been called.
Accessor to the hessian function.
Accessor to the number of times the hessian of the function has been called.
getId
()Accessor to the object’s id.
Accessor to the description of the input vector.
Accessor to the dimension of the input vector.
getMarginal
(*args)Accessor to marginal.
getName
()Accessor to the object’s name.
Accessor to the description of the output vector.
Accessor to the number of the outputs.
Accessor to the parameter values.
Accessor to the parameter description.
Accessor to the dimension of the parameter.
Accessor to the object’s shadowed id.
Accessor to the object’s visibility state.
gradient
(inP)Return the Jacobian transposed matrix of the function at a point.
hasName
()Test if the object is named.
Test if the object has a distinguishable name.
hessian
(inP)Return the hessian of the function at a point.
Test whether the cache mechanism is enabled or not.
isLinear
()Accessor to the linearity of the function.
isLinearlyDependent
(index)Accessor to the linearity of the function with regard to a specific variable.
parameterGradient
(inP)Accessor to the gradient against the parameter.
setCacheFiles
(inputFile, outputFile)Cache files accessor.
setDescription
(description)Accessor to the description of the inputs and outputs.
setEvaluation
(evaluation)Accessor to the evaluation function.
setGradient
(gradient)Accessor to the gradient function.
setHessian
(hessian)Accessor to the hessian function.
setInputDescription
(inputDescription)Accessor to the description of the input vector.
setName
(name)Accessor to the object’s name.
setOutputDescription
(outputDescription)Accessor to the description of the output vector.
setParameter
(parameter)Accessor to the parameter values.
setParameterDescription
(description)Accessor to the parameter description.
setShadowedId
(id)Accessor to the object’s shadowed id.
setVisibility
(visible)Accessor to the object’s visibility state.
-
__init__
(*args)¶ Initialize self. See help(type(self)) for accurate signature.
-
addCacheContent
(inSample, outSample)¶ Add input numerical points and associated output to the cache.
- Parameters
- input_sample2-d sequence of float
Input numerical points to be added to the cache.
- output_sample2-d sequence of float
Output numerical points associated with the input_sample to be added to the cache.
-
clearCache
()¶ Empty the content of the cache.
-
disableCache
()¶ Disable the cache mechanism.
-
draw
(*args)¶ Draw the output of function as a
Graph
.- Available usages:
draw(inputMarg, outputMarg, CP, xiMin, xiMax, ptNb)
draw(firstInputMarg, secondInputMarg, outputMarg, CP, xiMin_xjMin, xiMax_xjMax, ptNbs)
draw(xiMin, xiMax, ptNb)
draw(xiMin_xjMin, xiMax_xjMax, ptNbs)
- Parameters
- outputMarg, inputMargint,
outputMarg is the index of the marginal to draw as a function of the marginal with index inputMarg.
- firstInputMarg, secondInputMargint,
In the 2D case, the marginal outputMarg is drawn as a function of the two marginals with indexes firstInputMarg and secondInputMarg.
- CPsequence of float
Central point.
- xiMin, xiMaxfloat
Define the interval where the curve is plotted.
- xiMin_xjMin, xiMax_xjMaxsequence of float of dimension 2.
In the 2D case, define the intervals where the curves are plotted.
- ptNbint or list of ints of dimension 2
The number of points to draw the curves.
Notes
We note where and , with and .
In the first usage:
Draws graph of the given 1D outputMarg marginal as a function of the given 1D inputMarg marginal with respect to the variation of in the interval , when all the other components of are fixed to the corresponding ones of the central point CP. Then OpenTURNS draws the graph: .
In the second usage:
Draws the iso-curves of the given outputMarg marginal as a function of the given 2D firstInputMarg and secondInputMarg marginals with respect to the variation of in the interval , when all the other components of are fixed to the corresponding ones of the central point CP. Then OpenTURNS draws the graph: .
In the third usage:
The same as the first usage but only for function .
In the fourth usage:
The same as the second usage but only for function .
Examples
>>> import openturns as ot >>> from openturns.viewer import View >>> f = ot.SymbolicFunction('x', 'sin(2*pi_*x)*exp(-x^2/2)') >>> graph = f.draw(-1.2, 1.2, 100) >>> View(graph).show()
-
enableCache
()¶ Enable the cache mechanism.
-
getCacheHits
()¶ Accessor to the number of computations saved thanks to the cache mecanism.
- Returns
- cacheHitsint
Integer that counts the number of computations saved thanks to the cache mecanism.
-
getCacheInput
()¶ Accessor to all the input numerical points stored in the cache mecanism.
- Returns
- cacheInput
Sample
All the input numerical points stored in the cache mecanism.
- cacheInput
-
getCacheInputFile
()¶ Cache input file accessor.
- Returns
- input_filestr
Cache input file name.
-
getCacheOutput
()¶ Accessor to all the output numerical points stored in the cache mecanism.
- Returns
- cacheInput
Sample
All the output numerical points stored in the cache mecanism.
- cacheInput
-
getCacheOutputFile
()¶ Cache output file accessor.
- Returns
- output_filestr
Cache output file name.
-
getCallsNumber
()¶ Accessor to the number of times the function has been called.
- Returns
- calls_numberint
Integer that counts the number of times the function has been called since its creation.
-
getClassName
()¶ Accessor to the object’s name.
- Returns
- class_namestr
The object class name (object.__class__.__name__).
-
getDescription
()¶ Accessor to the description of the inputs and outputs.
- Returns
- description
Description
Description of the inputs and the outputs.
- description
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getDescription()) [x1,x2,y0]
-
getEvaluation
()¶ Accessor to the evaluation function.
- Returns
- function
EvaluationImplementation
The evaluation function.
- function
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getEvaluation()) [x1,x2]->[2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6]
-
getEvaluationCallsNumber
()¶ Accessor to the number of times the function has been called.
- Returns
- evaluation_calls_numberint
Integer that counts the number of times the function has been called since its creation.
-
getGradient
()¶ Accessor to the gradient function.
- Returns
- gradient
GradientImplementation
The gradient function.
- gradient
-
getGradientCallsNumber
()¶ Accessor to the number of times the gradient of the function has been called.
- Returns
- gradient_calls_numberint
Integer that counts the number of times the gradient of the Function has been called since its creation. Note that if the gradient is implemented by a finite difference method, the gradient calls number is equal to 0 and the different calls are counted in the evaluation calls number.
-
getHessian
()¶ Accessor to the hessian function.
- Returns
- hessian
HessianImplementation
The hessian function.
- hessian
-
getHessianCallsNumber
()¶ Accessor to the number of times the hessian of the function has been called.
- Returns
- hessian_calls_numberint
Integer that counts the number of times the hessian of the Function has been called since its creation. Note that if the hessian is implemented by a finite difference method, the hessian calls number is equal to 0 and the different calls are counted in the evaluation calls number.
-
getId
()¶ Accessor to the object’s id.
- Returns
- idint
Internal unique identifier.
-
getInputDescription
()¶ Accessor to the description of the input vector.
- Returns
- description
Description
Description of the input vector.
- description
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getInputDescription()) [x1,x2]
-
getInputDimension
()¶ Accessor to the dimension of the input vector.
- Returns
- inputDimint
Dimension of the input vector .
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getInputDimension()) 2
-
getMarginal
(*args)¶ Accessor to marginal.
- Parameters
- indicesint or list of ints
Set of indices for which the marginal is extracted.
- Returns
- marginal
Function
Function corresponding to either or , with and .
- marginal
-
getName
()¶ Accessor to the object’s name.
- Returns
- namestr
The name of the object.
-
getOutputDescription
()¶ Accessor to the description of the output vector.
- Returns
- description
Description
Description of the output vector.
- description
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getOutputDescription()) [y0]
-
getOutputDimension
()¶ Accessor to the number of the outputs.
- Returns
- number_outputsint
Dimension of the output vector .
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getOutputDimension()) 1
-
getParameterDescription
()¶ Accessor to the parameter description.
- Returns
- parameter
Description
The parameter description.
- parameter
-
getParameterDimension
()¶ Accessor to the dimension of the parameter.
- Returns
- parameterDimensionint
Dimension of the parameter.
-
getShadowedId
()¶ Accessor to the object’s shadowed id.
- Returns
- idint
Internal unique identifier.
-
getVisibility
()¶ Accessor to the object’s visibility state.
- Returns
- visiblebool
Visibility flag.
-
gradient
(inP)¶ Return the Jacobian transposed matrix of the function at a point.
- Parameters
- pointsequence of float
Point where the Jacobian transposed matrix is calculated.
- Returns
- gradient
Matrix
The Jacobian transposed matrix of the function at point.
- gradient
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6','x1 + x2']) >>> print(f.gradient([3.14, 4])) [[ 13.5345 1 ] [ 4.00001 1 ]]
-
hasName
()¶ Test if the object is named.
- Returns
- hasNamebool
True if the name is not empty.
-
hasVisibleName
()¶ Test if the object has a distinguishable name.
- Returns
- hasVisibleNamebool
True if the name is not empty and not the default one.
-
hessian
(inP)¶ Return the hessian of the function at a point.
- Parameters
- pointsequence of float
Point where the hessian of the function is calculated.
- Returns
- hessian
SymmetricTensor
Hessian of the function at point.
- hessian
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6','x1 + x2']) >>> print(f.hessian([3.14, 4])) sheet #0 [[ 20 -0.00637061 ] [ -0.00637061 0 ]] sheet #1 [[ 0 0 ] [ 0 0 ]]
-
isCacheEnabled
()¶ Test whether the cache mechanism is enabled or not.
- Returns
- isCacheEnabledbool
Flag telling whether the cache mechanism is enabled. It is disabled by default.
-
isLinear
()¶ Accessor to the linearity of the function.
- Returns
- linearbool
True if the function is linear, False otherwise.
-
isLinearlyDependent
(index)¶ Accessor to the linearity of the function with regard to a specific variable.
- Parameters
- indexint
The index of the variable with regard to which linearity is evaluated.
- Returns
- linearbool
True if the function is linearly dependent on the specified variable, False otherwise.
-
parameterGradient
(inP)¶ Accessor to the gradient against the parameter.
- Returns
- gradient
Matrix
The gradient.
- gradient
-
setCacheFiles
(inputFile, outputFile)¶ Cache files accessor.
- Parameters
- input_filestr
Cache input file name.
- output_filestr
Cache output file name.
-
setDescription
(description)¶ Accessor to the description of the inputs and outputs.
- Parameters
- descriptionsequence of str
Description of the inputs and the outputs.
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> print(f.getDescription()) [x1,x2,y0] >>> f.setDescription(['a','b','y']) >>> print(f.getDescription()) [a,b,y]
-
setEvaluation
(evaluation)¶ Accessor to the evaluation function.
- Parameters
- function
EvaluationImplementation
The evaluation function.
- function
-
setGradient
(gradient)¶ Accessor to the gradient function.
- Parameters
- gradient_function
GradientImplementation
The gradient function.
- gradient_function
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> f.setGradient(ot.CenteredFiniteDifferenceGradient( ... ot.ResourceMap.GetAsScalar('CenteredFiniteDifferenceGradient-DefaultEpsilon'), ... f.getEvaluation()))
-
setHessian
(hessian)¶ Accessor to the hessian function.
- Parameters
- hessian_function
HessianImplementation
The hessian function.
- hessian_function
Examples
>>> import openturns as ot >>> f = ot.SymbolicFunction(['x1', 'x2'], ... ['2 * x1^2 + x1 + 8 * x2 + 4 * cos(x1) * x2 + 6']) >>> f.setHessian(ot.CenteredFiniteDifferenceHessian( ... ot.ResourceMap.GetAsScalar('CenteredFiniteDifferenceHessian-DefaultEpsilon'), ... f.getEvaluation()))
-
setInputDescription
(inputDescription)¶ Accessor to the description of the input vector.
- Parameters
- description
Description
Description of the input vector.
- description
-
setName
(name)¶ Accessor to the object’s name.
- Parameters
- namestr
The name of the object.
-
setOutputDescription
(outputDescription)¶ Accessor to the description of the output vector.
- Parameters
- description
Description
Description of the output vector.
- description
-
setParameter
(parameter)¶ Accessor to the parameter values.
- Parameters
- parametersequence of float
The parameter values.
-
setParameterDescription
(description)¶ Accessor to the parameter description.
- Parameters
- parameter
Description
The parameter description.
- parameter
-
setShadowedId
(id)¶ Accessor to the object’s shadowed id.
- Parameters
- idint
Internal unique identifier.
-
setVisibility
(visible)¶ Accessor to the object’s visibility state.
- Parameters
- visiblebool
Visibility flag.
-
property
thisown
¶ The membership flag