test_optimizer.py 49.7 KB
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#   Copyright (c) 2018 PaddlePaddle Authors. All Rights Reserved.
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#
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# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
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#
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#     http://www.apache.org/licenses/LICENSE-2.0
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#
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# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.

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from __future__ import print_function

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import unittest

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import paddle.fluid as fluid
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import paddle.fluid.framework as framework
import paddle.fluid.optimizer as optimizer
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import paddle.fluid.core as core
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import paddle.compat as cpt
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import numpy as np
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from paddle.fluid.backward import append_backward
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from paddle.fluid.framework import Program, program_guard, convert_np_dtype_to_dtype_
import paddle
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from paddle.io import Dataset
import numpy
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paddle.enable_static()
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class TestOptimizer(unittest.TestCase):
    def test_sgd_optimizer(self):
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        def check_sgd_optimizer(optimizer_attr):
            init_program = framework.Program()
            program = framework.Program()
            block = program.global_block()
            mul_x = block.create_parameter(
                dtype="float32",
                shape=[5, 10],
                lod_level=0,
                name="mul.x",
                optimize_attr=optimizer_attr)
            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")
            mean_out = block.create_var(
                dtype="float32", shape=[1], lod_level=0, name="mean.out")
            block.append_op(
                type="mul",
                inputs={"X": mul_x,
                        "Y": mul_y},
                outputs={"Out": mul_out},
                attrs={"x_num_col_dims": 1})
            block.append_op(
                type="mean", inputs={"X": mul_out}, outputs={"Out": mean_out})
            sgd_optimizer = optimizer.SGDOptimizer(learning_rate=0.01)
            opts, _ = sgd_optimizer.minimize(mean_out, init_program)
            return opts

        opts = check_sgd_optimizer({'learning_rate': 1.1})
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "sgd"])
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        opts = check_sgd_optimizer({'learning_rate': 1.0})
        self.assertEqual(len(opts), 1)
        self.assertEqual([op.type for op in opts], ["sgd"])

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class TestOptimizerBackwardApplygrad(unittest.TestCase):
    def test_sgd_optimizer(self):
        def check_sgd_optimizer(optimizer_attr):
            init_program = framework.Program()
            program = framework.Program()
            block = program.global_block()
            mul_x = block.create_parameter(
                dtype="float32",
                shape=[5, 10],
                lod_level=0,
                name="mul.x",
                optimize_attr=optimizer_attr)
            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")
            mean_out = block.create_var(
                dtype="float32", shape=[1], lod_level=0, name="mean.out")
            block.append_op(
                type="mul",
                inputs={"X": mul_x,
                        "Y": mul_y},
                outputs={"Out": mul_out},
                attrs={"x_num_col_dims": 1})
            block.append_op(
                type="mean", inputs={"X": mul_out}, outputs={"Out": mean_out})
            sgd_optimizer = optimizer.SGDOptimizer(learning_rate=0.01)
            with framework.program_guard(program, init_program):
                p_g = sgd_optimizer.backward(mean_out)
                opts = sgd_optimizer.apply_gradients(p_g)
            return opts

        opts = check_sgd_optimizer({'learning_rate': 1.1})
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "sgd"])
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        opts = check_sgd_optimizer({'learning_rate': 1.0})
        self.assertEqual(len(opts), 1)
        self.assertEqual([op.type for op in opts], ["sgd"])


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class TestMomentumOptimizer(unittest.TestCase):
    class MockMomentum(optimizer.MomentumOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_velocity_str(self):
            return self._velocity_acc_str

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    def test_vanilla_momentum_optimizer(self):
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        init_program = framework.Program()
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        learning_rate = 0.01
        momentum_optimizer = self.MockMomentum(
            learning_rate=learning_rate, momentum=0.2)
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        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})
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(momentum_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = momentum_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
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        sgd_op = opts[-1]
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        self.assertEqual([op.type for op in opts], ["scale", "momentum"])
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        self.assertFalse(sgd_op.attr('use_nesterov'))
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        # Check accumulators
        accumulators = momentum_optimizer.get_accumulators()
        self.assertEqual(len(accumulators), 1)
        self.assertTrue(momentum_optimizer.get_velocity_str() in accumulators)
        velocity_acc = accumulators[momentum_optimizer.get_velocity_str()]
        self.assertEqual(len(velocity_acc), 1)
        self.assertTrue(mul_x.name in velocity_acc)

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        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 2)
        self.assertEqual(init_ops[1].type, "fill_constant")
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        self.assertAlmostEqual(init_ops[1].attr('value'), learning_rate)
        self.assertEqual(init_ops[0].type, "fill_constant")
        self.assertAlmostEqual(init_ops[0].attr('value'), 0.0)
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    def test_nesterov_momentum_optimizer(self):
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        init_program = framework.Program()
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        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})
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        learning_rate = 0.01
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        momentum_optimizer = self.MockMomentum(
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            learning_rate=learning_rate, momentum=0.2, use_nesterov=True)
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(momentum_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = momentum_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
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        sgd_op = opts[-1]
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        self.assertEqual([op.type for op in opts], ["scale", "momentum"])
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        self.assertTrue(sgd_op.attr('use_nesterov'))
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        # Check accumulators
        accumulators = momentum_optimizer.get_accumulators()
        self.assertEqual(len(accumulators), 1)
        self.assertTrue(momentum_optimizer.get_velocity_str() in accumulators)
        velocity_acc = accumulators[momentum_optimizer.get_velocity_str()]
        self.assertEqual(len(velocity_acc), 1)
        self.assertTrue(mul_x.name in velocity_acc)

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        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 2)
        self.assertEqual(init_ops[1].type, "fill_constant")
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        self.assertAlmostEqual(init_ops[1].attr('value'), learning_rate)
        self.assertEqual(init_ops[0].type, "fill_constant")
        self.assertAlmostEqual(init_ops[0].attr('value'), 0.0)
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class TestAdagradOptimizer(unittest.TestCase):
    class MockAdagrad(optimizer.AdagradOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_moment_str(self):
            return self._moment_acc_str

    def test_adagrad_optimizer(self):
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        init_program = framework.Program()
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        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})
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        learning_rate = 0.01
        adagrad_optimizer = self.MockAdagrad(
            learning_rate=learning_rate, epsilon=1.0e-6)
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(adagrad_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = adagrad_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "adagrad"])
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        # Check accumulators
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        accumulators = adagrad_optimizer.get_accumulators()
        self.assertEqual(len(accumulators), 1)
        self.assertTrue(adagrad_optimizer.get_moment_str() in accumulators)
        moment_acc = accumulators[adagrad_optimizer.get_moment_str()]
        self.assertEqual(len(moment_acc), 1)
        self.assertTrue(mul_x.name in moment_acc)

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        # Check init_program
        init_ops = init_program.global_block().ops
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        self.assertEqual(len(init_ops), 2)
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        self.assertEqual(init_ops[1].type, "fill_constant")
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        self.assertAlmostEqual(init_ops[1].attr('value'), learning_rate)
        self.assertEqual(init_ops[0].type, "fill_constant")
        self.assertAlmostEqual(init_ops[0].attr('value'), 0.0)
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class TestAdamOptimizer(unittest.TestCase):
    class MockAdam(optimizer.AdamOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_moment1_str(self):
            return self._moment1_acc_str

        def get_moment2_str(self):
            return self._moment2_acc_str

    def test_adam_optimizer(self):
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        init_program = framework.Program()
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        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})
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        learning_rate = 0.01
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        adam_optimizer = self.MockAdam(
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            learning_rate=learning_rate, beta1=0.9, beta2=0.999)
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(adam_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = adam_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "adam"])
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        # Check accumulators
        accumulators = adam_optimizer.get_accumulators()
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        self.assertEqual(len(accumulators), 4)
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        self.assertTrue(adam_optimizer.get_moment1_str() in accumulators)
        self.assertTrue(adam_optimizer.get_moment2_str() in accumulators)
        moment1_acc = accumulators[adam_optimizer.get_moment1_str()]
        moment2_acc = accumulators[adam_optimizer.get_moment2_str()]
        self.assertEqual(len(moment1_acc), 1)
        self.assertEqual(len(moment2_acc), 1)
        self.assertTrue(mul_x.name in moment1_acc)
        self.assertTrue(mul_x.name in moment2_acc)

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        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 5)
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        self.assertEqual(init_ops[-1].type, "fill_constant")
        self.assertAlmostEqual(init_ops[-1].attr('value'), learning_rate)
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class TestAdamaxOptimizer(unittest.TestCase):
    class MockAdamax(optimizer.AdamaxOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_moment_str(self):
            return self._moment_acc_str

        def get_inf_norm_str(self):
            return self._inf_norm_acc_str

    def test_adamax_optimizer(self):
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        init_program = framework.Program()
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        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})
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        learning_rate = 0.01
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        adamax_optimizer = self.MockAdamax(
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            learning_rate=learning_rate, beta1=0.9, beta2=0.999)
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(adamax_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = adamax_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 3)
        self.assertEqual([op.type for op in opts], ["scale", "adamax", "scale"])
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        # Check accumulators
        accumulators = adamax_optimizer.get_accumulators()
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        self.assertEqual(len(accumulators), 3)
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        self.assertTrue(adamax_optimizer.get_moment_str() in accumulators)
        self.assertTrue(adamax_optimizer.get_inf_norm_str() in accumulators)
        moment_acc = accumulators[adamax_optimizer.get_moment_str()]
        inf_norm_acc = accumulators[adamax_optimizer.get_inf_norm_str()]
        self.assertEqual(len(moment_acc), 1)
        self.assertEqual(len(inf_norm_acc), 1)
        self.assertTrue(mul_x.name in moment_acc)
        self.assertTrue(mul_x.name in inf_norm_acc)

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        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 4)
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        self.assertEqual(init_ops[-1].type, "fill_constant")
        self.assertAlmostEqual(init_ops[-1].attr('value'), learning_rate)
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class TestDpsgdOptimizer(unittest.TestCase):
    def test_dpsgd_optimizer(self):
        def check_dpsgd_optimizer(optimizer_attr):
            init_program = framework.Program()
            program = framework.Program()
            block = program.global_block()
            mul_x = block.create_parameter(
                dtype="float32",
                shape=[5, 10],
                lod_level=0,
                name="mul.x",
                optimize_attr=optimizer_attr)
            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})
            dpsgd_optimizer = optimizer.DpsgdOptimizer(
                learning_rate=0.01, clip=100.0, batch_size=16.0, sigma=0.0)
            opts, _ = dpsgd_optimizer.minimize(mean_out, init_program)
            return opts

        opts = check_dpsgd_optimizer({
            'learning_rate': 1.1,
            'clip': 100.0,
            'batch_size': 16.0,
            'sigma': 4.0
        })
        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "dpsgd"])


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class TestDecayedAdagradOptimizer(unittest.TestCase):
    class MockDecayedAdagrad(optimizer.DecayedAdagradOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_moment_str(self):
            return self._moment_acc_str

    def test_decayed_adagrad_optimizer(self):
        init_program = framework.Program()
        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
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            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
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        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})
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        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})
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        learning_rate = 0.01
        decayed_adagrad_optimizer = self.MockDecayedAdagrad(
            learning_rate=learning_rate, decay=0.95, epsilon=1.0e-6)
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        params_grads = append_backward(mean_out)
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        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(decayed_adagrad_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = decayed_adagrad_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "decayed_adagrad"])
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        # Check accumulators
        accumulators = decayed_adagrad_optimizer.get_accumulators()
        self.assertEqual(len(accumulators), 1)
        self.assertTrue(
            decayed_adagrad_optimizer.get_moment_str() in accumulators)
        moment_acc = accumulators[decayed_adagrad_optimizer.get_moment_str()]
        self.assertEqual(len(moment_acc), 1)
        self.assertTrue(mul_x.name in moment_acc)

        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 2)
        self.assertEqual(init_ops[1].type, "fill_constant")
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        self.assertAlmostEqual(init_ops[1].attr('value'), learning_rate)
        self.assertEqual(init_ops[0].type, "fill_constant")
        self.assertAlmostEqual(init_ops[0].attr('value'), 0.0)
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class TestFtrlOptimizer(unittest.TestCase):
    class MockFtrl(optimizer.FtrlOptimizer):
        def get_accumulators(self):
            return self._accumulators

        def get_squared_str(self):
            return self._squared_acc_str

        def get_linear_str(self):
            return self._linear_acc_str

    def test_ftrl_optimizer(self):
        init_program = framework.Program()
        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
        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})
        learning_rate = 0.01
        ftrl_optimizer = self.MockFtrl(
            learning_rate=learning_rate, l1=0.0, l2=0.0, lr_power=-0.5)
        params_grads = append_backward(mean_out)
        self.assertEqual(len(params_grads), 1)
        self.assertEqual(len(ftrl_optimizer.get_accumulators()), 0)
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        with framework.program_guard(program, init_program):
            opts = ftrl_optimizer.apply_gradients(params_grads)
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "ftrl"])
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        # Check accumulators
        accumulators = ftrl_optimizer.get_accumulators()
        self.assertEqual(len(accumulators), 2)
        self.assertTrue(ftrl_optimizer.get_squared_str() in accumulators)
        self.assertTrue(ftrl_optimizer.get_linear_str() in accumulators)
        squared_acc = accumulators[ftrl_optimizer.get_squared_str()]
        linear_acc = accumulators[ftrl_optimizer.get_linear_str()]
        self.assertEqual(len(squared_acc), 1)
        self.assertEqual(len(linear_acc), 1)
        self.assertTrue(mul_x.name in squared_acc)
        self.assertTrue(mul_x.name in linear_acc)

        # Check init_program
        init_ops = init_program.global_block().ops
        self.assertEqual(len(init_ops), 3)
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        self.assertEqual(init_ops[-1].type, "fill_constant")
        self.assertAlmostEqual(init_ops[-1].attr('value'), learning_rate)
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class TestLookaheadOptimizer(unittest.TestCase):
    def test_lookahead_optimizer(self):
        init_program = framework.Program()
        program = framework.Program()
        block = program.global_block()
        init_block = init_program.global_block()
        mul_x = block.create_parameter(
            dtype="float32",
            shape=[5, 10],
            lod_level=0,
            name="mul.x",
            optimize_attr={'learning_rate': 1.1})
        init_mul_x = init_block.create_parameter(
            dtype="float32", shape=[5, 10], lod_level=0, name="mul.x")
        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")
        mean_out = block.create_var(
            dtype="float32", shape=[1], lod_level=0, name="mean.out")

        block.append_op(
            type="mul",
            inputs={"X": mul_x,
                    "Y": mul_y},
            outputs={"Out": mul_out},
            attrs={"x_num_col_dims": 1})
        block.append_op(
            type="mean", inputs={"X": mul_out}, outputs={"Out": mean_out})

        sgd = optimizer.SGD(learning_rate=0.01)
        lookahead = optimizer.LookaheadOptimizer(sgd, alpha=0.5, k=5)
        with framework.program_guard(program, init_program):
            opts, _ = lookahead.minimize(mean_out)
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        self.assertEqual(len(opts), 2)
        self.assertEqual([op.type for op in opts], ["scale", "sgd"])
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class TestRecomputeOptimizer(unittest.TestCase):
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    def net(self, return_input=False, with_dropout=False, with_seed=False):
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        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
            dtype="float32", shape=[5, 10], lod_level=0, name="mul.x")
        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")
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        if with_dropout is True:
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            mul_out_drop = block.create_var(
                dtype="float32",
                shape=[5, 8],
                lod_level=0,
                name="mul.out.dropout")
            mul_out_mask = block.create_var(
                dtype="uint8", shape=[5, 8], lod_level=0, name="mul.out.mask")
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            if with_seed is True:
                seed_out = block.create_var(
                    dtype="int32", shape=[1], name="seed.out")

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        b1 = block.create_parameter(
            dtype="float32", shape=[5, 8], lod_level=0, name="b1")
        b1_out = block.create_var(
            dtype="float32", shape=[5, 8], lod_level=0, name="b1_out")
        b2 = block.create_parameter(
            dtype="float32", shape=[5, 8], lod_level=0, name="b2")
        b2_out = block.create_var(
            dtype="float32", shape=[5, 8], lod_level=0, name="b2_out")
        mean_out = block.create_var(
            dtype="float32", shape=[1], lod_level=0, name="mean.out")
        block.append_op(
            type="mul",
            inputs={"X": mul_x,
                    "Y": mul_y},
            outputs={"Out": mul_out},
            attrs={"x_num_col_dims": 1})
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        if with_dropout is True:
            dropout_inputs = {'X': [mul_out]}
            if with_seed is True:
                block.append_op(
                    type='seed',
                    outputs={'Out': seed_out},
                    attrs={
                        'deterministic': True,
                        'rng_name': 'rng0',
                        'force_cpu': True
                    })
                dropout_inputs = {'X': [mul_out], 'Seed': [seed_out]}

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            block.append_op(
                type='dropout',
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                inputs=dropout_inputs,
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                outputs={'Out': [mul_out_drop],
                         'Mask': [mul_out_mask]},
                attrs={'dropout_prob': 0.5, })
            block.append_op(
                type="elementwise_add",
                inputs={"X": mul_out_drop,
                        "Y": b1},
                outputs={"Out": b1_out})
        else:
            block.append_op(
                type="elementwise_add",
                inputs={"X": mul_out,
                        "Y": b1},
                outputs={"Out": b1_out})
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        block.append_op(
            type="elementwise_add",
            inputs={"X": b1_out,
                    "Y": b2},
            outputs={"Out": b2_out})
        block.append_op(
            type="mean", inputs={"X": b2_out}, outputs={"Out": mean_out})

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        if return_input == True:
            return mul_x, mul_out, b1_out, b2_out, mean_out
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        return mul_out, b1_out, b2_out, mean_out

    def test_no_checkpoint(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 12)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add_grad",
            "elementwise_add_grad", "mul_grad", "sgd", "sgd", "sgd"
        ])

    def test_one_checkpoint(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 13)
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        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add_grad", "mul",
            "elementwise_add_grad", "mul_grad", "sgd", "sgd", "sgd"
        ])

    def test_str_checkpoints(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out.name])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 13)
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        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add_grad", "mul",
            "elementwise_add_grad", "mul_grad", "sgd", "sgd", "sgd"
        ])

    def test_multi_checkpoint(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([mul_out, b2_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 13)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add",
            "elementwise_add_grad", "elementwise_add_grad", "mul_grad", "sgd",
            "sgd", "sgd"
        ])

    def test_adjacent_checkpoint(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([mul_out, b1_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 12)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add_grad",
            "elementwise_add_grad", "mul_grad", "sgd", "sgd", "sgd"
        ])

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    def test_out_of_order_checkpoint(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b2_out, mul_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 13)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add",
            "elementwise_add_grad", "elementwise_add_grad", "mul_grad", "sgd",
            "sgd", "sgd"
        ])

    def test_input_as_checkpoints(self):
        mul_x, mul_out, b1_out, b2_out, mean_out = self.net(return_input=True)
        self.assertEqual(len(mean_out.block.ops), 4)
        self.assertEqual([op.type for op in mean_out.block.ops],
                         ["mul", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([mul_x, b2_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 14)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "mul", "elementwise_add",
            "elementwise_add_grad", "elementwise_add_grad", "mul_grad", "sgd",
            "sgd", "sgd"
        ])

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    def test_apply_gradients(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out])
        # apply backward
        params_grads = recompute_optimizer.backward(
            mean_out,
            startup_program=None,
            parameter_list=None,
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            no_grad_set=None)
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        # apply gradient
        program = mean_out.block.program
        with framework.program_guard(program, None):
            optimize_ops = recompute_optimizer.apply_gradients(params_grads)

        self.assertEqual(len(mean_out.block.ops), 13)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "elementwise_add", "elementwise_add", "mean",
            "fill_constant", "mean_grad", "elementwise_add_grad", "mul",
            "elementwise_add_grad", "mul_grad", "sgd", "sgd", "sgd"
        ])

    def test_load(self):
        mul_out, b1_out, b2_out, mean_out = self.net()
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out])
        try:
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            state_dict = {}
            recompute_optimizer.load(state_dict)
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        except NotImplementedError as e:
            self.assertEqual(
                "load function is not supported by Recompute Optimizer for now",
                cpt.get_exception_message(e))

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    def test_dropout(self):
        """
        If there are dropout layers in the forward nets, we should add a
        seed op
        """
        mul_out, b1_out, b2_out, mean_out = self.net(with_dropout=True)
        self.assertEqual(len(mean_out.block.ops), 5)
        self.assertEqual(
            [op.type for op in mean_out.block.ops],
            ["mul", "dropout", "elementwise_add", "elementwise_add", "mean"])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 17)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "seed", "dropout", "elementwise_add", "elementwise_add",
            "mean", "fill_constant", "mean_grad", "elementwise_add_grad", "mul",
            "dropout", "elementwise_add_grad", "dropout_grad", "mul_grad",
            "sgd", "sgd", "sgd"
        ])

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    def test_dropout_with_determinate_seed(self):
        mul_out, b1_out, b2_out, mean_out = self.net(with_dropout=True,
                                                     with_seed=True)
        self.assertEqual(len(mean_out.block.ops), 6)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "seed", "dropout", "elementwise_add", "elementwise_add",
            "mean"
        ])
        sgd_optimizer = optimizer.SGD(learning_rate=1.0)
        recompute_optimizer = optimizer.RecomputeOptimizer(sgd_optimizer)
        recompute_optimizer._set_checkpoints([b1_out])
        opts, params_grads = recompute_optimizer.minimize(mean_out)

        self.assertEqual(len(mean_out.block.ops), 17)
        self.assertEqual([op.type for op in mean_out.block.ops], [
            "mul", "seed", "dropout", "elementwise_add", "elementwise_add",
            "mean", "fill_constant", "mean_grad", "elementwise_add_grad", "mul",
            "dropout", "elementwise_add_grad", "dropout_grad", "mul_grad",
            "sgd", "sgd", "sgd"
        ])

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    def test_dropout_with_seed(self):
        """
        when we recompute a dropout op, make sure that the recomputed one
	    is the same as the original var.
	    """

        def gen_data():
            return {
                "x": np.random.random(size=(100, 3)).astype('float32'),
                "y": np.random.randint(
                    2, size=(100, 1)).astype('int64')
            }

        def mlp(input_x, input_y):
            drop_res = fluid.layers.dropout(
                input_x, dropout_prob=0.5, name="dropout_with_seed_cpu")
            prediction = fluid.layers.fc(input=[drop_res],
                                         size=2,
                                         act='softmax')
            cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
            sum_cost = fluid.layers.reduce_mean(cost)
            return drop_res, prediction, sum_cost

        main_program = Program()
        startup_program = Program()
        scope = fluid.Scope()
        with fluid.scope_guard(scope):
            with program_guard(main_program, startup_program):
                input_x = fluid.layers.data(
                    name="x", shape=[3], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                drop_res, prediction, cost = mlp(input_x, input_y)
                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
                sgd._set_checkpoints([prediction])
                sgd.minimize(cost)

                place = fluid.CPUPlace()
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                feed_data = gen_data()
                drop_vec = exe.run(feed=feed_data,
                                   program=fluid.default_main_program(),
                                   fetch_list=[
                                       "dropout_with_seed_cpu.tmp_1",
                                       "dropout_with_seed_cpu.tmp_1.subprog_0"
                                   ])
                self.assertEqual(drop_vec[0].tolist(), drop_vec[1].tolist())


@unittest.skipIf(not core.is_compiled_with_cuda(),
                 "core is not compiled with CUDA")
class TestRecomputeOptimizerCUDA(unittest.TestCase):
    def test_dropout_with_seed(self):
        """
        when we recompute a dropout op, make sure that the recomputed one
        is the same as the original var.
        """

        def gen_data():
            return {
                "x": np.random.random(size=(100, 3)).astype('float32'),
                "y": np.random.randint(
                    2, size=(100, 1)).astype('int64')
            }

        def mlp(input_x, input_y):
            drop_res = fluid.layers.dropout(
                input_x, dropout_prob=0.5, name="dropout_with_seed_gpu")
            prediction = fluid.layers.fc(input=[drop_res],
                                         size=2,
                                         act='softmax')
            cost = fluid.layers.cross_entropy(input=prediction, label=input_y)
            sum_cost = fluid.layers.reduce_mean(cost)
            return drop_res, prediction, sum_cost

        main_program = Program()
        startup_program = Program()
        scope = fluid.Scope()
        with fluid.scope_guard(scope):
            with program_guard(main_program, startup_program):
                input_x = fluid.layers.data(
                    name="x", shape=[3], dtype='float32')
                input_y = fluid.layers.data(name="y", shape=[1], dtype='int64')
                drop_res, prediction, cost = mlp(input_x, input_y)
                sgd = fluid.optimizer.Adam(learning_rate=0.01)
                sgd = fluid.optimizer.RecomputeOptimizer(sgd)
                sgd._set_checkpoints([prediction])
                sgd.minimize(cost)

                place = fluid.CUDAPlace(0)
                exe = fluid.Executor(place)
                exe.run(fluid.default_startup_program())
                feed_data = gen_data()
                drop_vec = exe.run(feed=feed_data,
                                   program=fluid.default_main_program(),
                                   fetch_list=[
                                       "dropout_with_seed_gpu.tmp_1",
                                       "dropout_with_seed_gpu.tmp_1.subprog_0"
                                   ])
                self.assertEqual(drop_vec[0].tolist(), drop_vec[1].tolist())

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mapingshuo 已提交
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class TestGradientMergeOptimizer(unittest.TestCase):
    def net(self):
        program = framework.Program()
        block = program.global_block()
        mul_x = block.create_parameter(
            dtype="float32", shape=[5, 10], lod_level=0, name="mul.x")
        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")
        b1 = block.create_parameter(
            dtype="float32", shape=[5, 8], lod_level=0, name="b1")
        b1_out = block.create_var(
            dtype="float32", shape=[5, 8], lod_level=0, name="b1_out")
        mean_out = block.create_var(
            dtype="float32", shape=[1], lod_level=0, name="mean.out")
        block.append_op(
            type="mul",
            inputs={"X": mul_x,
                    "Y": mul_y},
            outputs={"Out": mul_out},
            attrs={"x_num_col_dims": 1})
        block.append_op(
            type="elementwise_add",
            inputs={"X": mul_out,
                    "Y": b1},
            outputs={"Out": b1_out})
        block.append_op(
            type="mean", inputs={"X": b1_out}, outputs={"Out": mean_out})
        return mean_out

    def test_program_desc(self, ):
        cost = self.net()
        main_program = cost.block.program
        init_program = framework.Program()
        self.assertEqual(main_program.num_blocks, 1)
        self.assertEqual(len(cost.block.ops), 3)
        self.assertEqual([op.type for op in cost.block.ops],
                         ["mul", "elementwise_add", "mean"])

        opt = optimizer.SGD(learning_rate=1.0)
        opt = optimizer.GradientMergeOptimizer(opt, k_steps=4)
        with framework.program_guard(main_program, init_program):
            ops, params_grads = opt.minimize(cost)

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        self.assertEqual(main_program.num_blocks, 2)
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        # main block
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        self.assertEqual(len(cost.block.ops), 13)
        self.assertEqual(
            [op.type for op in cost.block.ops],
            [
                'mul',
                'elementwise_add',
                'mean',
                'fill_constant',
                'mean_grad',
                'elementwise_add_grad',
                'mul_grad',
                'increment',  # step += 1
                'elementwise_mod',  # step %= k_steps
                'equal',  # cond_var == (step == 0)
                'elementwise_add',
                'elementwise_add',
                'conditional_block',
            ])
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        # optimize block
        self.assertEqual(len(main_program.block(1).ops), 6)
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        self.assertEqual([op.type for op in main_program.block(1).ops], [
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            'scale', 'scale', 'sgd', 'sgd', 'fill_constant', 'fill_constant'
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        ])


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Leo Chen 已提交
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class TestOptimizerDtype(unittest.TestCase):
    '''
    The dtype of optimizer should be inferred by parameters, and the learning rate
    is cteated with the same dtype.
    '''

    def check_with_dtype(self, dtype):
        class MyLayer(paddle.nn.Layer):
            def __init__(self, dtype):
                super(MyLayer, self).__init__()
                self._w = self.create_parameter([2, 3], dtype=dtype)
                self._b = self.create_parameter([2, 3], dtype=dtype)

            def forward(self, x):
                return x * self._w + self._b

        with paddle.fluid.dygraph.guard():
            model = MyLayer(dtype)
            x = paddle.rand([10, 2, 3], dtype=dtype)
            loss = model(x)
            adam = paddle.optimizer.Adam(parameters=model.parameters())
            loss.backward()
            adam.step()
            self.assertEqual(adam._dtype, convert_np_dtype_to_dtype_(dtype))

    def test_float64(self):
        self.check_with_dtype('float64')

    def test_float32(self):
        self.check_with_dtype('float32')


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class TestMasterWeightSaveForFP16(unittest.TestCase):
    '''
    For Amp-O2, some optimizer(Momentum, Adam ...) will create master weights for parameters to to improve the accuracy.
    Master weights will be saved by optimizer::state_dict.
    '''

    def check_with_opt_state_dict(self, use_save_load=True):
        paddle.seed(100)
        numpy.random.seed(100)

        class SimpleNet(paddle.nn.Layer):
            def __init__(self, input_size, output_size):
                super(SimpleNet, self).__init__()
                self.linears = paddle.nn.LayerList([
                    paddle.nn.Linear(input_size, output_size) for i in range(1)
                ])

            def forward(self, x):
                for i, l in enumerate(self.linears):
                    x = self.linears[i](x)
                return x

        input_size = 2  # 设为较大的值
        output_size = 2  # 设为较大的值
        batch_size = 2  # batch_size 为8的倍数
        nums_batch = 10

        class RandomDataset(Dataset):
            def __init__(self, num_samples):
                self.num_samples = num_samples

            def __getitem__(self, idx):
                data = numpy.random.random([input_size]).astype('float16')
                label = numpy.random.random([output_size]).astype('float16')
                return data, label

            def __len__(self):
                return self.num_samples

        dataset = RandomDataset(nums_batch * batch_size)
        loader = paddle.io.DataLoader(
            dataset,
            batch_size=batch_size,
            shuffle=False,
            drop_last=True,
            num_workers=0)

        mse = paddle.nn.MSELoss()
        model = SimpleNet(input_size, output_size)  # 定义模型
        optimizer = paddle.optimizer.Momentum(
            learning_rate=0.0001,
            parameters=model.parameters(),
            multi_precision=True)  # 定义优化器
        scaler = paddle.amp.GradScaler(init_loss_scaling=1024)
        model = paddle.amp.decorate(models=model, level='O2')

        for i, (data, label) in enumerate(loader):
            with paddle.amp.auto_cast(level='O2'):
                output = model(data)
                loss = mse(output, label)
            scaled = scaler.scale(loss)
            scaled.backward()
            scaler.step(optimizer)
            scaler.update()
            optimizer.clear_grad(set_to_zero=False)

            if use_save_load and i == 5:
                paddle.save(model.state_dict(), "model.pdparams")
                paddle.save(optimizer.state_dict(), "opt.pdopt")
                model.set_state_dict(paddle.load("model.pdparams"))
                optimizer.set_state_dict(paddle.load("opt.pdopt"))

        return loss.numpy()

    def test_with_state_dict(self):
        if core.is_compiled_with_cuda():
            with fluid.dygraph.guard():
                out_use_state_dict = self.check_with_opt_state_dict(
                    use_save_load=True)
                out_no_state_dict = self.check_with_opt_state_dict(
                    use_save_load=False)
            self.assertTrue(
                np.array_equal(out_use_state_dict, out_no_state_dict))


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Qiao Longfei 已提交
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if __name__ == '__main__':
    unittest.main()