Package mdp :: Package parallel :: Class ParallelHistogramNode
[hide private]
[frames] | no frames]

Class ParallelHistogramNode


Parallel version of the HistogramNode.

Instance Methods [hide private]
 
_fork(self)
Hook method for forking with default implementation.
 
_join(self, forked_node)
Hook method for joining, to be overridden.

Inherited from unreachable.newobject: __long__, __native__, __nonzero__, __unicode__, next

Inherited from object: __delattr__, __format__, __getattribute__, __hash__, __new__, __reduce__, __reduce_ex__, __setattr__, __sizeof__, __subclasshook__

    Inherited from ParallelExtensionNode
 
_default_fork(self)
Default implementation of _fork.
 
fork(self)
Return a new instance of this node class for remote training.
 
join(self, forked_node)
Absorb the trained node from a fork into this parent node.
    Inherited from nodes.HistogramNode
 
__init__(self, hist_fraction=1.0, hist_filename=None, input_dim=None, output_dim=None, dtype=None)
Initializes an object of type 'HistogramNode'.
list
_get_supported_dtypes(self)
Return the data types supported by this node.
 
_stop_training(self)
Pickle the histogram data to file and clear it if required.
 
_train(self, x)
Store the history data.
 
stop_training(self)
Pickle the histogram data to file and clear it if required.
 
train(self, x)
Store the history data.
    Inherited from PreserveDimNode
 
_set_input_dim(self, n)
 
_set_output_dim(self, n)
    Inherited from Node
 
__add__(self, other)
 
__call__(self, x, *args, **kwargs)
Calling an instance of Node is equivalent to calling its execute method.
 
__repr__(self)
repr(x)
 
__str__(self)
str(x)
 
_check_input(self, x)
 
_check_output(self, y)
 
_check_train_args(self, x, *args, **kwargs)
 
_execute(self, x)
 
_get_train_seq(self)
 
_if_training_stop_training(self)
 
_inverse(self, x)
 
_pre_execution_checks(self, x)
This method contains all pre-execution checks.
 
_pre_inversion_checks(self, y)
This method contains all pre-inversion checks.
 
_refcast(self, x)
Helper function to cast arrays to the internal dtype.
 
_set_dtype(self, t)
 
copy(self, protocol=None)
Return a deep copy of the node.
 
execute(self, x, *args, **kwargs)
Process the data contained in x.
 
get_current_train_phase(self)
Return the index of the current training phase.
 
get_dtype(self)
Return dtype.
 
get_input_dim(self)
Return input dimensions.
 
get_output_dim(self)
Return output dimensions.
 
get_remaining_train_phase(self)
Return the number of training phases still to accomplish.
 
get_supported_dtypes(self)
Return dtypes supported by the node as a list of numpy.dtype objects.
 
has_multiple_training_phases(self)
Return True if the node has multiple training phases.
 
inverse(self, y, *args, **kwargs)
Invert y.
 
is_training(self)
Return True if the node is in the training phase, False otherwise.
 
save(self, filename, protocol=-1)
Save a pickled serialization of the node to filename. If filename is None, return a string.
 
set_dtype(self, t)
Set internal structures' dtype.
 
set_input_dim(self, n)
Set input dimensions.
 
set_output_dim(self, n)
Set output dimensions.
Static Methods [hide private]
    Inherited from ParallelExtensionNode
 
_join_covariance(cov, forked_cov)
Helper method to join two CovarianceMatrix instances.
 
use_execute_fork()
Return True if node requires a fork / join even during execution.
    Inherited from Node
 
is_invertible()
Return True if the node can be inverted, False otherwise.
 
is_trainable()
Return True if the node can be trained, False otherwise.
Class Variables [hide private]
    Inherited from ParallelExtensionNode
  extension_name = 'parallel'
hash(x)
Properties [hide private]

Inherited from object: __class__

    Inherited from Node
  _train_seq
List of tuples:
  dtype
dtype
  input_dim
Input dimensions
  output_dim
Output dimensions
  supported_dtypes
Supported dtypes
Method Details [hide private]

_fork(self)

 
Hook method for forking with default implementation.

Overwrite this method for nodes that can be parallelized.
You can use _default_fork, if that is compatible with your node class,
typically the hard part is the joining.

Overrides: ParallelExtensionNode._fork
(inherited documentation)

_join(self, forked_node)

 
Hook method for joining, to be overridden.

Overrides: ParallelExtensionNode._join
(inherited documentation)