コード例 #1
0
    def testSddmm(self, m, k, n, sparsity, use_gpu):
        # Helpers to set up the matrices.
        connector = connectors.Uniform(sparsity)
        initializer = initializers.Uniform()

        # Numpy matrices for verification.
        lhs_np = initializer([m, k])
        rhs_np = initializer([n, k])
        output_np = connector(np.ones([m, n]))

        # TensorFlow graph.
        output_topology = sparse_matrix.SparseMatrix("output",
                                                     matrix=output_np)
        lhs = tf.Variable(lhs_np, dtype=tf.float32)
        rhs = tf.Variable(rhs_np, dtype=tf.float32)
        output = ops.sddmm(lhs, rhs, output_topology, transpose_rhs=True)

        # Execute the op and compare the results.
        with self.test_session(use_gpu=use_gpu) as sess:
            sess.run(tf.global_variables_initializer())
            expected_output = self.dense_to_scipy(
                output_np * np.dot(lhs_np, np.transpose(rhs_np)))
            actual_output = self.sparse_to_scipy(*sess.run(
                [output.values, output.row_offsets, output.column_indices]),
                                                 shape=expected_output.shape)

            self.assert_sparse_matrix_equal(actual_output,
                                            expected_output,
                                            atol=1e-03,
                                            rtol=1e-05)
コード例 #2
0
    def testSddmmGradient(self, m, k, n, sparsity, use_gpu):
        # Helpers to set up the matrices.
        connector = connectors.Uniform(sparsity)
        initializer = initializers.Uniform()

        # Numpy matrices for verification.
        lhs_np = initializer([m, k])
        rhs_np = initializer([n, k])
        output_np = connector(np.ones([m, n]))

        # TensorFlow graph.
        output_topology = sparse_matrix.SparseMatrix("output",
                                                     matrix=output_np)
        lhs = tf.Variable(lhs_np, dtype=tf.float32)
        rhs = tf.Variable(rhs_np, dtype=tf.float32)
        output = ops.sddmm(lhs, rhs, output_topology, transpose_rhs=True)

        # Execute the op and compare the results.
        with self.test_session(use_gpu=use_gpu) as sess:
            sess.run(tf.global_variables_initializer())
            error = tf.test.compute_gradient_error(
                [lhs, rhs], [[m, k], [n, k]], output.values,
                output.values.shape.as_list())
            self.assertLess(error, 1e-3)