Source code for psyclone.psyad.transformations.adjoint_trans

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# Authors: R. W. Ford, A. R. Porter, N. Nobre and S. Siso, STFC Daresbury Lab

'''This module contains an abstract parent class for adjoint
transformations.

'''
from psyclone.psyGen import Transformation
from psyclone.psyir.symbols import DataSymbol

# AdjointTransformation is purposefully abstract. It does not
# implement the validate or apply methods and instead provides
# initialisation that all subclasses can benefit from. Therefore we
# disable the pylint warning here.
# pylint: disable=abstract-method

# We make use of the form of super that works with both Python2 and
# Python3 here so disable the pylint warning about using a Python3
# specific version of super.
# pylint: disable=super-with-arguments


[docs] class AdjointTransformation(Transformation): '''An abstract class for Adjoint transformations. Requires a list of active variables to be passed when creating an instance of the class. Also supports an optional writer argument. :param active_variables: a list of names of the active variables. :type active_variables: list of \ :py:class:`psyclone.psyir.symbols.DataSymbol` :raises TypeError: if the active_variables are of the wrong type. ''' def __init__(self, active_variables): super(AdjointTransformation, self).__init__() if not isinstance(active_variables, list): raise TypeError( f"The active variables argument should be a list, but found " f"'{type(active_variables).__name__}'.") if not active_variables: raise TypeError("There should be at least one active variable.") for active_variable in active_variables: if not isinstance(active_variable, DataSymbol): raise TypeError( f"Active variables should be of type DataSymbol, but " f"found '{type(active_variable).__name__}'.") # A list of active variables. self._active_variables = active_variables
# ============================================================================= # Documentation utils: The list of module members that we wish AutoAPI to # generate documentation for. __all__ = ["AdjointTransformation"]