test_adamax_op.py 5.9 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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import unittest
import numpy as np
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from .op_test import OpTest
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class TestAdamaxOp1(OpTest):
    def setUp(self):
        '''Test Adamax Operator with supplied attributes
        '''
        self.op_type = "adamax"
        param = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        grad = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        moment = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        # The infinity norm is positive
        inf_norm = np.random.random((102, 105)).astype("float32")

        learning_rate = 0.002
        beta1 = 0.78
        beta2 = 0.899
        epsilon = 1e-5
        beta1_pow = beta1**10

        self.inputs = {
            'Param': param,
            'Grad': grad,
            'Moment': moment,
            'InfNorm': inf_norm,
            'LearningRate': np.array([learning_rate]).astype("float32"),
            'Beta1Pow': np.array([beta1_pow]).astype("float32")
        }

        self.attrs = {'beta1': beta1, 'beta2': beta2, 'epsilon': epsilon}

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        param_out, moment_out, inf_norm_out = adamax_step(self.inputs,
                                                          self.attrs)
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        self.outputs = {
            'ParamOut': param_out,
            'MomentOut': moment_out,
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            'InfNormOut': inf_norm_out
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        }

    def test_check_output(self):
        self.check_output()


class TestAdamaxOp2(OpTest):
    '''Test Adamax Operator with default attributes
    '''

    def setUp(self):
        self.op_type = "adamax"
        param = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        grad = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        moment = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        # The infinity norm is positive
        inf_norm = np.random.random((102, 105)).astype("float32")

        learning_rate = 0.002
        beta1 = 0.9
        beta2 = 0.999
        epsilon = 1e-8
        beta1_pow = beta1**8

        self.inputs = {
            'Param': param,
            'Grad': grad,
            'Moment': moment,
            'InfNorm': inf_norm,
            'LearningRate': np.array([learning_rate]).astype("float32"),
            'Beta1Pow': np.array([beta1_pow]).astype("float32")
        }

        attrs = {'beta1': beta1, 'beta2': beta2, 'epsilon': epsilon}
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        param_out, moment_out, inf_norm_out = adamax_step(self.inputs, attrs)
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        self.outputs = {
            'ParamOut': param_out,
            'MomentOut': moment_out,
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            'InfNormOut': inf_norm_out
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        }

    def test_check_output(self):
        self.check_output()


class TestAdamaxOpMultipleSteps(OpTest):
    def setUp(self):
        '''Test Adamax Operator with supplied attributes
        '''
        self.op_type = "adamax"
        self.num_steps = 10

        param = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        grad = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        moment = np.random.uniform(-1, 1, (102, 105)).astype("float32")
        # The infinity norm is positive
        inf_norm = np.random.random((102, 105)).astype("float32")

        learning_rate = 0.002
        beta1 = 0.8
        beta2 = 0.99
        epsilon = 1e-5
        beta1_pow = 1

        self.inputs = {
            'Param': param,
            'Grad': grad,
            'Moment': moment,
            'InfNorm': inf_norm,
            'LearningRate': np.array([learning_rate]).astype("float32"),
            'Beta1Pow': np.array([beta1_pow]).astype("float32")
        }

        self.attrs = {'beta1': beta1, 'beta2': beta2, 'epsilon': epsilon}

    def test_check_output(self):
        for _ in range(self.num_steps):
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            param_out, moment_out, inf_norm_out = adamax_step(self.inputs,
                                                              self.attrs)
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            self.outputs = {
                'ParamOut': param_out,
                'MomentOut': moment_out,
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                'InfNormOut': inf_norm_out
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            }

            # Verify output for this step
            self.check_output()

            # Output of this step becomes input for next step
            self.inputs['Param'] = param_out
            self.inputs['Moment'] = moment_out
            self.inputs['InfNorm'] = inf_norm_out
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            # Update Beta1 Power accumulator for next step
            self.inputs['Beta1Pow'] *= self.attrs['beta1']
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            # Randomize gradient for next step
            self.inputs['Grad'] = np.random.uniform(
                -1, 1, (102, 105)).astype("float32")


def adamax_step(inputs, attributes):
    '''
    Simulate one step of the adamax optimizer
    :param inputs: dict of inputs
    :param attributes: dict of attributes
    :return tuple: tuple of output param, moment, inf_norm and
    beta1 power accumulator
    '''
    param = inputs['Param']
    grad = inputs['Grad']
    moment = inputs['Moment']
    inf_norm = inputs['InfNorm']
    lr = inputs['LearningRate']
    beta1_pow = inputs['Beta1Pow']

    beta1 = attributes['beta1']
    beta2 = attributes['beta2']
    epsilon = attributes['epsilon']

    moment_out = beta1 * moment + (1 - beta1) * grad
    inf_norm_out = np.maximum(beta2 * inf_norm + epsilon, np.abs(grad))
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    lr_t = (lr / (1 - beta1_pow))
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    param_out = param - lr_t * np.divide(moment_out, inf_norm_out)

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    return param_out, moment_out, inf_norm_out
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if __name__ == "__main__":
    unittest.main()