Function¶
- Function
- Example function:
Overview¶
A Function is a Component that “packages” a function for use by other Components.
Every Component in PsyNeuLink is assigned a Function; when that Component is executed, its
Function’s function
is executed. The function
can be any callable
operation, although most commonly it is a mathematical operation (and, for those, almost always uses a call to one or
more numpy functions). There are two reasons PsyNeuLink packages functions in a Function Component:
Manage parameters – parameters are attributes of a Function that either remain stable over multiple calls to the function (e.g., the
gain
orbias
of aLogistic
function, or the learning rate of a learning function); or, if they change, they do so less frequently or under the control of different factors than the function’s variable (i.e., its input). As a consequence, it is useful to manage these separately from the function’s variable, and not have to provide them every time the function is called. To address this, every PsyNeuLink Function has a set of attributes corresponding to the parameters of the function, that can be specified at the time the Function is created (in arguments to its constructor), and can be modified independently of a call to itsfunction
. Modifications can be directly (e.g., in a script), or by the operation of other PsyNeuLink Components (e.g., Modulatory Mechanisms) by way of ControlProjections.
Modularity – by providing a standard interface, any Function assigned to a Components in PsyNeuLink can be replaced with other PsyNeuLink Functions, or with user-written custom functions so long as they adhere to certain standards (the PsyNeuLink
Function API
).
Creating a Function¶
A Function can be created directly by calling its constructor. Functions are also created automatically whenever
any other type of PsyNeuLink Component is created (and its function
is not otherwise specified). The
constructor for a Function has an argument for its variable
and each of the parameters of
its function
. The variable
argument is used both to format the
input to the function
, and assign its default value. The arguments for each parameter can
be used to specify the default value for that parameter; the values can later be modified in various ways as described
below.
Structure¶
Core Attributes¶
Every Function has the following core attributes:
function
– determines the computation carried out by the Function; it must be a callable object (that is, a python function or method of some kind). Unlike other PsyNeuLink Components, it cannot be (another) Function object (it can’t be “turtles” all the way down!).
A Function also has an attribute for each of the parameters of its function
.
Owner¶
If a Function has been assigned to another Component, then it also has an owner
attribute
that refers to that Component. The Function itself is assigned as the Component’s
function
attribute. Each of the Function’s attributes is also assigned
as an attribute of the owner
, and those are each associated with with a
parameterPort of the owner
. Projections to those parameterPorts can be
used by ControlProjections to modify the Function’s parameters.
Modulatory Parameters¶
Some classes of Functions also implement a pair of modulatory parameters: multiplicative_param
and additive_param
.
Each of these is assigned the name of one of the function’s parameters. These are used by ModulatorySignals to modulate the function
of a Port and thereby its value
(see Modulation and figure for additional
details). For example, a ControlSignal typically uses the multiplicative_param
to modulate the value of a parameter
of a Mechanism’s function
, whereas a LearningSignal uses the additive_param
to increment
the value
of the matrix
parameter of a MappingProjection.
Execution¶
Functions are executable objects that can be called directly. More commonly, however, they are called when
their owner
is executed. The parameters
of the function
can be modified when it is executed, by assigning a
parameter specification dictionary to the params argument in the
call to the function
.
For Mechanisms, this can also be done by specifying runtime_params in the
Run
method of their Composition.
Class Reference¶
- class psyneulink.core.components.functions.function.ArgumentTherapy(default_variable=None, propensity=10.0, pertincacity=Manner.CONTRARIAN, params=None, owner=None, prefs=None)¶
Return
True
orFalse
according to the manner of the therapist.- Parameters
variable (boolean or statement that resolves to one : default class_defaults.variable) – assertion for which a therapeutic response will be offered.
propensity (Manner value : default Manner.CONTRARIAN) – specifies preferred therapeutic manner
pertinacity (float : default 10.0) – specifies therapeutic consistency
params (Dict[param keyword: param value] : default None) – a parameter dictionary that specifies the parameters for the function. Values specified for parameters in the dictionary override any assigned to those parameters in arguments of the constructor.
owner (Component) – component to which to assign the Function.
name (str : default see
name
) – specifies the name of the Function.prefs (PreferenceSet or specification dict : default Function.classPreferences) – specifies the
PreferenceSet
for the Function (seeprefs
for details).
- variable¶
assertion to which a therapeutic response is made.
- Type
boolean
- propensity¶
determines therapeutic manner: tendency to agree or disagree.
- Type
Manner value : default Manner.CONTRARIAN
- pertinacity¶
determines consistency with which the manner complies with the propensity.
- Type
float : default 10.0
- name¶
the name of the Function; if it is not specified in the name argument of the constructor, a default is assigned by FunctionRegistry (see Naming for conventions used for default and duplicate names).
- Type
str
- prefs¶
the
PreferenceSet
for function; if it is not specified in the prefs argument of the Function’s constructor, a default is assigned usingclassPreferences
defined in __init__.py (see Preferences for details).- Type
PreferenceSet or specification dict : Function.classPreferences
- class Manner(value, names=None, *, module=None, qualname=None, type=None, start=1, boundary=None)¶
- _validate_variable(variable, context=None)¶
Validates variable and returns validated value
This overrides the class method, to perform more detailed type checking See explanation in class method. Note: this method (or the class version) is called only if the parameter_validation attribute is
True
- Parameters
variable – (anything but a dict) - variable to be validated:
context – (str)
- Return variable
validated
- _validate_params(request_set, target_set=None, context=None)¶
Validates variable and /or params and assigns to targets
This overrides the class method, to perform more detailed type checking See explanation in class method. Note: this method (or the class version) is called only if the parameter_validation attribute is
True
- Parameters
request_set – (dict) - params to be validated
target_set – (dict) - destination of validated params
- Return none
- _function(variable=None, context=None, params=None)¶
Returns a boolean that is (or tends to be) the same as or opposite the one passed in.
- Parameters
variable (boolean : default class_defaults.variable) – an assertion to which a therapeutic response is made.
params (Dict[param keyword: param value] : default None) – a parameter dictionary that specifies the parameters for the function. Values specified for parameters in the dictionary override any assigned to those parameters in arguments of the constructor.
- Returns
therapeutic response
- Return type
boolean
- class psyneulink.core.components.functions.function.Function_Base(default_variable, params=None, owner=None, name=None, prefs=None)¶
Implement abstract class for Function category of Component class
- Parameters
variable (value : default class_defaults.variable) – specifies the format and a default value for the input to function.
params (Dict[param keyword: param value] : default None) – a parameter dictionary that specifies the parameters for the function. Values specified for parameters in the dictionary override any assigned to those parameters in arguments of the constructor.
owner (Component) – component to which to assign the Function.
name (str : default see
name
) – specifies the name of the Function.prefs (PreferenceSet or specification dict : default Function.classPreferences) – specifies the
PreferenceSet
for the Function (seeprefs
for details).
- variable¶
format and default value can be specified by the
variable
argument of the constructor; otherwise, they are specified by the Function’sclass_defaults.variable
.- Type
value
- name¶
the name of the Function; if it is not specified in the name argument of the constructor, a default is assigned by FunctionRegistry (see Naming for conventions used for default and duplicate names).
- Type
str
- prefs¶
the
PreferenceSet
for function; if it is not specified in the prefs argument of the Function’s constructor, a default is assigned usingclassPreferences
defined in __init__.py (see Preferences for details).- Type
PreferenceSet or specification dict : Function.classPreferences
- _parse_arg_generic(arg_val)¶
Argument parser for any argument that does not have a specialized parser
- _validate_parameter_spec(param, param_name, numeric_only=True)¶
Validates function param Replace direct call to parameter_spec in tc, which seems to not get called by Function __init__()’s
- property _model_spec_parameter_blacklist¶
A set of Parameter names that should not be added to the generated constructor string
- _assign_to_mdf_model(model, input_id)¶
Adds an MDF representation of this function to MDF object model, including all necessary auxiliary functions. input_id is the input to the singular MDF function or first function representing this psyneulink Function, if applicable.
- Returns
the identifier of the final MDF function representing this psyneulink Function
- Return type
str
- _get_pytorch_fct_param_value(param_name, device, context)¶
Return the current value of param_name for the function Use default value if not yet assigned Convert using torch.tensor if val is an array
- class psyneulink.core.components.functions.function.RandomMatrix(center=0.0, range=1.0)¶
Function that returns matrix with random elements distributed uniformly around center across range.
The center and range arguments are passed at construction, and used for all subsequent calls. Once constructed, the function must be called with two floats, sender_size and receiver_size, that specify the number of rows and columns of the matrix, respectively.
Can be used to specify the
matrix
parameter of a MappingProjection, and to specify a default matrix for Projections in the construction of a Pathway (see Projection Specifications) or in a call to a Composition’sadd_linear_processing_pathway
method.A call to the class calls
random_matrix
, passing sender_size and receiver_size torandom_matrix
as its num_rows and num_cols arguments, respectively, and passing thecenter
-0.5 andrange
attributes specified at construction torandom_matrix
as its offset and scale arguments, respectively.- Parameters
center (float) – specifies the value around which the matrix elements are distributed in all calls to the function.
range (float) – specifies range over which all matrix elements are distributed in all calls to the function.
- center¶
determines the center of the distribution of the matrix elements;
- Type
float
- range¶
determines the range of the distribution of the matrix elements;
- Type
float