Ejemplo n.º 1
0
            return obj

    @property
    def shape(self):
        return self.args[0].shape

    def _entry(self, i, j):
        return Mul(*[arg._entry(i, j) for arg in self.args])

    def _eval_transpose(self):
        from transpose import Transpose
        return HadamardProduct(*[Transpose(arg) for arg in self.args])

    def canonicalize(self):
        return canonicalize(self)

def validate(*args):
    if not all(arg.is_Matrix for arg in args):
        raise TypeError("Mix of Matrix and Scalar symbols")
    A = args[0]
    for B in args[1:]:
        if A.shape != B.shape:
            raise ShapeError("Matrices %s and %s are not aligned"%(A, B))

rules = (unpack,
         flatten,
         sort(str))

canonicalize = exhaust(condition(lambda x: isinstance(x, HadamardProduct),
                                 do_one(*rules)))
Ejemplo n.º 2
0
        return MatAdd(*[Trace(arg) for arg in self.args])

    def canonicalize(self):
        return canonicalize(self)

def validate(*args):
    if not all(arg.is_Matrix for arg in args):
        raise TypeError("Mix of Matrix and Scalar symbols")
    A = args[0]
    for B in args[1:]:
        if A.shape != B.shape:
            raise ShapeError("Matrices %s and %s are not aligned"%(A, B))

factor_of = lambda arg: arg.as_coeff_mmul()[0]
matrix_of = lambda arg: unpack(arg.as_coeff_mmul()[1])
def combine(cnt, mat):
    from matmul import MatMul
    if cnt == 1:
        return mat
    else:
        return cnt * mat

rules = (rm_id(lambda x: x == 0 or isinstance(x, ZeroMatrix)),
         unpack,
         flatten,
         glom(matrix_of, factor_of, combine),
         sort(str))

canonicalize = exhaust(condition(lambda x: isinstance(x, MatAdd),
                                 do_one(*rules)))
Ejemplo n.º 3
0
    def canonicalize(self):
        return canonicalize(self)


def validate(*args):
    if not all(arg.is_Matrix for arg in args):
        raise TypeError("Mix of Matrix and Scalar symbols")
    A = args[0]
    for B in args[1:]:
        if A.shape != B.shape:
            raise ShapeError("Matrices %s and %s are not aligned" % (A, B))


factor_of = lambda arg: arg.as_coeff_mmul()[0]
matrix_of = lambda arg: unpack(arg.as_coeff_mmul()[1])


def combine(cnt, mat):
    from matmul import MatMul
    if cnt == 1:
        return mat
    else:
        return cnt * mat


rules = (rm_id(lambda x: x == 0 or isinstance(x, ZeroMatrix)), unpack, flatten,
         glom(matrix_of, factor_of, combine), sort(str))

canonicalize = exhaust(
    condition(lambda x: isinstance(x, MatAdd), do_one(*rules)))