learning_rate_scheduler.py 12.1 KB
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# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved
#
# 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
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# 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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"""
When training a model, it's often useful to decay the
learning rate during training process, this is called
learning_rate_decay. There are many strategies to do
this, this module will provide some classical method.
User can also implement their own learning_rate_decay
strategy according to this module.
"""
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from __future__ import print_function

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from . import control_flow
from . import nn
from . import ops
from . import tensor
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from ..initializer import init_on_cpu
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from ..framework import default_main_program, Parameter, unique_name, name_scope
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__all__ = [
    'exponential_decay', 'natural_exp_decay', 'inverse_time_decay',
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    'polynomial_decay', 'piecewise_decay', 'noam_decay', 'append_LARS'
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]
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def _decay_step_counter(begin=0):
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    # the first global step is zero in learning rate decay
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    global_step = nn.autoincreased_step_counter(
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        counter_name='@LR_DECAY_COUNTER@', begin=begin, step=1)
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    global_step = tensor.cast(global_step, 'float32')
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    return global_step


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def noam_decay(d_model, warmup_steps):
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    """
    Noam decay method. The numpy implementation of noam decay as follows.

    >>> import numpy as np
    >>> lr_value = np.power(d_model, -0.5) * np.min([
    >>>                         np.power(current_steps, -0.5),
    >>>                         np.power(warmup_steps, -1.5) * current_steps])

    Please reference `attention is all you need
    <https://arxiv.org/pdf/1706.03762.pdf>`_.
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    Args:
        d_model(Variable): The dimensionality of input and output of model.
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        warmup_steps(Variable): A super parameter.

    Returns:
        The decayed learning rate.
    """
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    with default_main_program()._lr_schedule_guard():
        global_step = _decay_step_counter(1)
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        a = global_step**-0.5
        b = (warmup_steps**-1.5) * global_step
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        lr_value = (d_model**-0.5) * nn.elementwise_min(a, b)
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    return lr_value


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def exponential_decay(learning_rate, decay_steps, decay_rate, staircase=False):
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    """
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    Applies exponential decay to the learning rate.
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    When training a model, it is often recommended to lower the learning rate as the
    training progresses. By using this function, the learning rate will be decayed by
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    'decay_rate' every 'decay_steps' steps.

    >>> if staircase == True:
    >>>     decayed_learning_rate = learning_rate * decay_rate ^ floor(global_step / decay_steps)
    >>> else:
    >>>     decayed_learning_rate = learning_rate * decay_rate ^ (global_step / decay_steps)
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    Args:
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        learning_rate(Variable|float): The initial learning rate.
        decay_steps(int): See the decay computation above.
        decay_rate(float): The decay rate. See the decay computation above.
        staircase(Boolean): If True, decay the learning rate at discrete intervals.
                            Default: False
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    Returns:
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        Variable: The decayed learning rate
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    Examples:
        .. code-block:: python

          base_lr = 0.1
          sgd_optimizer = fluid.optimizer.SGD(
                learning_rate=fluid.layers.exponential_decay(
                    learning_rate=base_lr,
                    decay_steps=10000,
                    decay_rate=0.5,
                    staircase=True))
          sgd_optimizer.minimize(avg_cost)

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    """
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    with default_main_program()._lr_schedule_guard():
        global_step = _decay_step_counter()
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        div_res = global_step / decay_steps
        if staircase:
            div_res = ops.floor(div_res)
        decayed_lr = learning_rate * (decay_rate**div_res)
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        return decayed_lr
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def natural_exp_decay(learning_rate, decay_steps, decay_rate, staircase=False):
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    """Applies natural exponential decay to the initial learning rate.

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    >>> if not staircase:
    >>>     decayed_learning_rate = learning_rate * exp(- decay_rate * (global_step / decay_steps))
    >>> else:
    >>>     decayed_learning_rate = learning_rate * exp(- decay_rate * (global_step / decay_steps))

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    Args:
        learning_rate: A scalar float32 value or a Variable. This
          will be the initial learning rate during training
        decay_steps: A Python `int32` number.
        decay_rate: A Python `float` number.
        staircase: Boolean. If set true, decay the learning rate every decay_steps.

    Returns:
        The decayed learning rate
    """
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    with default_main_program()._lr_schedule_guard():
        global_step = _decay_step_counter()
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        div_res = global_step / decay_steps
        if staircase:
            div_res = ops.floor(div_res)
        decayed_lr = learning_rate * ops.exp(-1 * decay_rate * div_res)
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        return decayed_lr
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def inverse_time_decay(learning_rate, decay_steps, decay_rate, staircase=False):
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    """
    Applies inverse time decay to the initial learning rate.
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    When training a model, it is often recommended to lower the learning rate as the
    training progresses. By using this function, an inverse decay function will be
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    applied to the initial learning rate.
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    >>> if staircase == True:
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    >>>     decayed_learning_rate = learning_rate / (1 + decay_rate * floor(global_step / decay_step))
    >>> else:
    >>>     decayed_learning_rate = learning_rate / (1 + decay_rate * global_step / decay_step)

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    Args:
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        learning_rate(Variable|float): The initial learning rate.
        decay_steps(int): See the decay computation above.
        decay_rate(float): The decay rate. See the decay computation above.
        staircase(Boolean): If True, decay the learning rate at discrete intervals.
                            Default: False
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    Returns:
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        Variable: The decayed learning rate
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    Examples:
        .. code-block:: python

          base_lr = 0.1
          sgd_optimizer = fluid.optimizer.SGD(
                learning_rate=fluid.layers.inverse_time_decay(
                    learning_rate=base_lr,
                    decay_steps=10000,
                    decay_rate=0.5,
                    staircase=True))
          sgd_optimizer.minimize(avg_cost)
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    """
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    with default_main_program()._lr_schedule_guard():
        global_step = _decay_step_counter()
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        div_res = global_step / decay_steps
        if staircase:
            div_res = ops.floor(div_res)
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        decayed_lr = learning_rate / (1 + decay_rate * div_res)
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        return decayed_lr
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def polynomial_decay(learning_rate,
                     decay_steps,
                     end_learning_rate=0.0001,
                     power=1.0,
                     cycle=False):
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    """
    Applies polynomial decay to the initial learning rate.

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    .. code-block:: python
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     if cycle:
       decay_steps = decay_steps * ceil(global_step / decay_steps)
     else:
       global_step = min(global_step, decay_steps)
       decayed_learning_rate = (learning_rate - end_learning_rate) *
            (1 - global_step / decay_steps) ^ power + end_learning_rate
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    Args:
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        learning_rate(Variable|float32): A scalar float32 value or a Variable. This
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          will be the initial learning rate during training.
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        decay_steps(int32): A Python `int32` number.
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        end_learning_rate(float): A Python `float` number.
        power(float): A Python `float` number.
        cycle(bool): If set true, decay the learning rate every decay_steps.
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    Returns:
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        Variable: The decayed learning rate
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    """
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    with default_main_program()._lr_schedule_guard():
        global_step = _decay_step_counter()

        if cycle:
            div_res = ops.ceil(global_step / decay_steps)
            zero_var = tensor.fill_constant(
                shape=[1], dtype='float32', value=0.0)
            one_var = tensor.fill_constant(
                shape=[1], dtype='float32', value=1.0)

            with control_flow.Switch() as switch:
                with switch.case(global_step == zero_var):
                    tensor.assign(input=one_var, output=div_res)
            decay_steps = decay_steps * div_res
        else:
            decay_steps_var = tensor.fill_constant(
                shape=[1], dtype='float32', value=float(decay_steps))
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            global_step = nn.elementwise_min(x=global_step, y=decay_steps_var)
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        decayed_lr = (learning_rate - end_learning_rate) * \
            ((1 - global_step / decay_steps) ** power) + end_learning_rate
        return decayed_lr
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def piecewise_decay(boundaries, values):
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    """Applies piecewise decay to the initial learning rate.

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      The algorithm can be described as the code below.

      .. code-block:: python

        boundaries = [10000, 20000]
        values = [1.0, 0.5, 0.1]
        if step < 10000:
            learning_rate = 1.0
        elif 10000 <= step < 20000:
            learning_rate = 0.5
        else:
            learning_rate = 0.1
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    Args:
        boundaries: A list of steps numbers.
        values: A list of learning rate values that will be picked during
            different step boundaries.

    Returns:
        The decayed learning rate.

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    """
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    with default_main_program()._lr_schedule_guard():
        if len(values) - len(boundaries) != 1:
            raise ValueError("len(values) - len(boundaries) should be 1")
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        global_step = _decay_step_counter()
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        lr = tensor.create_global_var(
            shape=[1],
            value=0.0,
            dtype='float32',
            persistable=True,
            name="learning_rate")
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        with control_flow.Switch() as switch:
            for i in range(len(boundaries)):
                boundary_val = tensor.fill_constant(
                    shape=[1],
                    dtype='float32',
                    value=float(boundaries[i]),
                    force_cpu=True)
                value_var = tensor.fill_constant(
                    shape=[1], dtype='float32', value=float(values[i]))
                with switch.case(global_step < boundary_val):
                    tensor.assign(value_var, lr)
            last_value_var = tensor.fill_constant(
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                shape=[1],
                dtype='float32',
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                value=float(values[len(values) - 1]))
            with switch.default():
                tensor.assign(last_value_var, lr)
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    return lr
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def append_LARS(params_grads, learning_rate, weight_decay):
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    """
    Applies LARS (LAYER-WISE ADAPTIVE RATE SCALING) to learning rate for
    each layer.
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    Args:
        learning_rate: A learning rate Variable. This
          is the global learning rate for LARS.
        weight_decay: A Python `float` number.

    Returns:
        The decayed learning rate
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    Examples:
        .. code-block:: python
        
            learning_rate *= local_gw_ratio * sqrt(sumsq(param))
                        / (sqrt(sumsq(gradient))+ weight_decay * sqrt(sumsq(param)))
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    """

    def _balanced_weight(param_norm, grad_norm):
        if weight_decay == 1.0:
            return grad_norm + param_norm
        else:
            return grad_norm + weight_decay * param_norm

    for param, grad in params_grads:
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        with param.block.program.optimized_guard(
            [param, grad]), name_scope("optimizer"):
            param_lr = param.optimize_attr['learning_rate']
            param_norm = ops.sqrt(nn.reduce_sum(input=ops.square(param)))
            grad_norm = ops.sqrt(nn.reduce_sum(input=ops.square(grad)))
            if type(param_lr) == float and param_lr == 1.0:
                decayed_lr = learning_rate * param_norm \
                    / _balanced_weight(param_norm, grad_norm)
            else:
                decayed_lr = learning_rate * param_lr * param_norm \
                    / _balanced_weight(param_norm, grad_norm)
            # set back param local learning rate
            param.optimize_attr['learning_rate'] = decayed_lr