import unittest import paddle.v2.fluid.framework as framework import paddle.v2.fluid.optimizer as optimizer import paddle.v2.fluid.regularizer as regularizer from paddle.v2.fluid.backward import append_backward class TestL2DecayRegularizer(unittest.TestCase): def test_l2decay_regularizer(self): program = framework.Program() block = program.global_block() mul_x = block.create_parameter( dtype="float32", shape=[5, 10], lod_level=0, name="mul.x", regularizer=regularizer.L2DecayRegularizer(0.5)) self.assertTrue(mul_x.regularizer is not None) self.assertTrue( isinstance(mul_x.regularizer, regularizer.L2DecayRegularizer)) mul_y = block.create_var( dtype="float32", shape=[10, 8], lod_level=0, name="mul.y") mul_out = block.create_var( dtype="float32", shape=[5, 8], lod_level=0, name="mul.out") block.append_op( type="mul", inputs={"X": mul_x, "Y": mul_y}, outputs={"Out": mul_out}, attrs={"x_num_col_dims": 1}) mean_out = block.create_var( dtype="float32", shape=[1], lod_level=0, name="mean.out") block.append_op( type="mean", inputs={"X": mul_out}, outputs={"Out": mean_out}) params_grads = append_backward(mean_out) self.assertEqual(len(params_grads), 1) count_ops = len(block.ops) params_grads = optimizer.append_regularization_ops(params_grads) self.assertEqual(len(params_grads), 1) self.assertEqual(len(block.ops), count_ops + 2) self.assertEqual(block.ops[-1].type, 'elementwise_add') self.assertEqual(block.ops[-2].type, 'scale') class TestL1DecayRegularizer(unittest.TestCase): def test_l2decay_regularizer(self): program = framework.Program() block = program.global_block() mul_x = block.create_parameter( dtype="float32", shape=[5, 10], lod_level=0, name="mul.x", regularizer=regularizer.L1DecayRegularizer(0.5)) self.assertTrue(mul_x.regularizer is not None) self.assertTrue( isinstance(mul_x.regularizer, regularizer.L1DecayRegularizer)) mul_y = block.create_var( dtype="float32", shape=[10, 8], lod_level=0, name="mul.y") mul_out = block.create_var( dtype="float32", shape=[5, 8], lod_level=0, name="mul.out") block.append_op( type="mul", inputs={"X": mul_x, "Y": mul_y}, outputs={"Out": mul_out}, attrs={"x_num_col_dims": 1}) mean_out = block.create_var( dtype="float32", shape=[1], lod_level=0, name="mean.out") block.append_op( type="mean", inputs={"X": mul_out}, outputs={"Out": mean_out}) params_grads = append_backward(mean_out) self.assertEqual(len(params_grads), 1) count_ops = len(block.ops) params_grads = optimizer.append_regularization_ops(params_grads) self.assertEqual(len(params_grads), 1) self.assertEqual(len(block.ops), count_ops + 3) self.assertEqual(block.ops[-1].type, 'elementwise_add') self.assertEqual(block.ops[-2].type, 'scale') self.assertEqual(block.ops[-3].type, 'sign') if __name__ == '__main__': unittest.main()