# 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. """ 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. """ from __future__ import print_function import math import numbers from . import control_flow from . import nn from . import ops from . import tensor from ..framework import default_main_program, Parameter, unique_name, name_scope from ..framework import Variable from ..framework import in_dygraph_mode from ..dygraph import learning_rate_scheduler as imperate_lr __all__ = [ 'exponential_decay', 'natural_exp_decay', 'inverse_time_decay', 'polynomial_decay', 'piecewise_decay', 'noam_decay', 'cosine_decay', 'linear_lr_warmup' ] def _decay_step_counter(begin=0): # the first global step is zero in learning rate decay global_step = nn.autoincreased_step_counter( counter_name='@LR_DECAY_COUNTER@', begin=begin, step=1) global_step = tensor.cast(global_step, 'float32') return global_step def noam_decay(d_model, warmup_steps, learning_rate=1.0): """ Noam decay method. The numpy implementation of noam decay as follows. .. code-block:: python import paddle.fluid as fluid import numpy as np # set hyper parameters base_lr = 0.01 d_model = 2 current_steps = 20 warmup_steps = 200 # compute lr_value = base_lr * 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 `_. Args: d_model(Variable): The dimensionality of input and output of model. warmup_steps(Variable): A super parameter. learning_rate(Variable|float|int): The initial learning rate. If the type is Variable, it's a tensor with shape [1], the data type can be float32 or float64. It also can be set to python int number. Default 1.0 Returns: The decayed learning rate. Examples: .. code-block:: python import paddle.fluid as fluid warmup_steps = 100 learning_rate = 0.01 lr = fluid.layers.learning_rate_scheduler.noam_decay( 1/(warmup_steps *(learning_rate ** 2)), warmup_steps, learning_rate) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.NoamDecay( d_model, warmup_steps, learning_rate=learning_rate) return decay else: global_step = _decay_step_counter(1) a = global_step**-0.5 b = (warmup_steps**-1.5) * global_step lr_value = learning_rate * (d_model**-0.5) * nn.elementwise_min(a, b) return lr_value def exponential_decay(learning_rate, decay_steps, decay_rate, staircase=False): """ Applies exponential decay to the learning rate. 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 'decay_rate' every 'decay_steps' steps. Decayed learning rate calculates as follows: >>> 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) Args: learning_rate(Variable|float): The initial learning rate. It should be a Variable or a float decay_steps(int): The learning rate decay steps. See the decay computation above. decay_rate(float): The learning rate decay rate. See the decay computation above. staircase(bool): If True, decay the learning rate at discrete intervals, which means the learning rate will be decayed by `decay_rate` every `decay_steps`. If False, learning rate will be decayed continuously and following the formula above. Default: False Returns: Variable: The decayed learning rate. The data type is float32. Examples: .. code-block:: python import paddle.fluid as fluid 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)) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.ExponentialDecay(learning_rate, decay_steps, decay_rate, staircase) return decay else: global_step = _decay_step_counter() div_res = global_step / decay_steps if staircase: div_res = ops.floor(div_res) decayed_lr = learning_rate * (decay_rate**div_res) return decayed_lr def natural_exp_decay(learning_rate, decay_steps, decay_rate, staircase=False): """Applies natural exponential decay to the initial learning rate. 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 natural exponential power 'decay_rate' every 'decay_steps' steps. Decayed learning rate calculates as follows: >>> if not staircase: >>> decayed_learning_rate = learning_rate * exp(- decay_rate * (global_step / decay_steps)) >>> else: >>> decayed_learning_rate = learning_rate * exp(- decay_rate * floor(global_step / decay_steps)) Args: learning_rate(Variable|float): The initial learning rate. It should be a Variable or a float decay_steps(int): The learning rate decay steps. See the decay computation above. decay_rate(float): The learning rate decay rate. See the decay computation above. staircase(bool): If True, decay the learning rate at discrete intervals, which means the learning rate will be decayed by natural exponential power `decay_rate` every `decay_steps`. If False, learning rate will be decayed continuously and following the formula above. Default: False Returns: The decayed learning rate. The data type is float32. Examples: .. code-block:: python import paddle.fluid as fluid base_lr = 0.1 sgd_optimizer = fluid.optimizer.SGD( learning_rate=fluid.layers.natural_exp_decay( learning_rate=base_lr, decay_steps=10000, decay_rate=0.5, staircase=True)) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.NaturalExpDecay(learning_rate, decay_steps, decay_rate, staircase) return decay else: global_step = _decay_step_counter() 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) return decayed_lr def inverse_time_decay(learning_rate, decay_steps, decay_rate, staircase=False): """ Applies inverse time decay to the initial learning rate. 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 applied to the initial learning rate. Decayed learning rate calculates as follows: >>> if staircase == True: >>> 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) Args: learning_rate(Variable|float): The initial learning rate. It should be a Variable or a float decay_steps(int): The learning rate decay steps. See the decay computation above. decay_rate(float): The learning rate decay rate. See the decay computation above. staircase(bool): If True, decay the learning rate at discrete intervals, which means the learning rate will be decayed by `decay_rate` times every `decay_steps`. If False, learning rate will be decayed continuously and following the formula above. Default: False Returns: Variable: The decayed learning rate. The data type is float32. Examples: .. code-block:: python import paddle.fluid as fluid 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)) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.InverseTimeDecay(learning_rate, decay_steps, decay_rate, staircase) return decay else: global_step = _decay_step_counter() div_res = global_step / decay_steps if staircase: div_res = ops.floor(div_res) decayed_lr = learning_rate / (1 + decay_rate * div_res) return decayed_lr def polynomial_decay(learning_rate, decay_steps, end_learning_rate=0.0001, power=1.0, cycle=False): """ Applies polynomial decay to the initial learning rate. .. code-block:: text 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 Args: learning_rate(Variable|float32): A scalar float32 value or a Variable. This will be the initial learning rate during training. decay_steps(int32): A Python `int32` number. 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. Returns: Variable: The decayed learning rate Examples: .. code-block:: python import paddle.fluid as fluid start_lr = 0.01 total_step = 5000 end_lr = 0 lr = fluid.layers.polynomial_decay( start_lr, total_step, end_lr, power=1) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.PolynomialDecay(learning_rate, decay_steps, end_learning_rate, power, cycle) return decay else: 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)) global_step = nn.elementwise_min( x=global_step, y=decay_steps_var) decayed_lr = (learning_rate - end_learning_rate) * \ ((1 - global_step / decay_steps) ** power) + end_learning_rate return decayed_lr def piecewise_decay(boundaries, values): """Applies piecewise decay to the initial learning rate. The algorithm can be described as the code below. .. code-block:: text 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 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. Examples: .. code-block:: python import paddle.fluid as fluid boundaries = [10000, 20000] values = [1.0, 0.5, 0.1] optimizer = fluid.optimizer.Momentum( momentum=0.9, learning_rate=fluid.layers.piecewise_decay(boundaries=boundaries, values=values), regularization=fluid.regularizer.L2Decay(1e-4)) """ with default_main_program()._lr_schedule_guard(): if len(values) - len(boundaries) != 1: raise ValueError("len(values) - len(boundaries) should be 1") if in_dygraph_mode(): decay = imperate_lr.PiecewiseDecay(boundaries, values, 0) return decay else: global_step = _decay_step_counter() lr = tensor.create_global_var( shape=[1], value=0.0, dtype='float32', persistable=True, name="learning_rate") 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( shape=[1], dtype='float32', value=float(values[len(values) - 1])) with switch.default(): tensor.assign(last_value_var, lr) return lr def cosine_decay(learning_rate, step_each_epoch, epochs): """ Applies cosine decay to the learning rate. 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 following cosine decay strategy. .. math:: decayed\_lr = learning\_rate * 0.5 * (math.cos * (epoch * \\frac{math.pi}{epochs} ) + 1) Args: learning_rate(Variable|float): The initial learning rate. step_each_epoch(int): the number of steps in an epoch. epochs(int): the number of epochs. Returns: Variable: The decayed learning rate. Examples: .. code-block:: python import paddle.fluid as fluid base_lr = 0.1 lr = fluid.layers.cosine_decay( learning_rate = base_lr, step_each_epoch=10000, epochs=120) """ with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): decay = imperate_lr.CosineDecay(learning_rate, step_each_epoch, epochs) return decay else: global_step = _decay_step_counter() cur_epoch = ops.floor(global_step / step_each_epoch) decayed_lr = learning_rate * 0.5 * ( ops.cos(cur_epoch * math.pi / epochs) + 1) return decayed_lr def linear_lr_warmup(learning_rate, warmup_steps, start_lr, end_lr): """ This operator use the linear learning rate warm up strategy to adjust the learning rate preliminarily before the normal learning rate scheduling. For more information, please refer to `Bag of Tricks for Image Classification with Convolutional Neural Networks `_ When global_step < warmup_steps, learning rate is updated as: .. code-block:: text linear_step = end_lr - start_lr lr = start_lr + linear_step * (global_step / warmup_steps) where start_lr is the initial learning rate, and end_lr is the final learning rate; When global_step >= warmup_steps, learning rate is updated as: .. code-block:: text lr = learning_rate where lr is the learning_rate after warm-up. Args: learning_rate (Variable|float): Learning_rate after warm-up, it could be 1D-Tensor or single value with the data type of float32. warmup_steps (int): Steps for warm up. start_lr (float): Initial learning rate of warm up. end_lr (float): Final learning rate of warm up. Returns: Variable: Warm-up learning rate with the same data type as learning_rate. Examples: .. code-block:: python import paddle.fluid as fluid boundaries = [100, 200] lr_steps = [0.1, 0.01, 0.001] learning_rate = fluid.layers.piecewise_decay(boundaries, lr_steps) #case1, 1D-Tensor #learning_rate = 0.1 #case2, single-value warmup_steps = 50 start_lr = 1. / 3. end_lr = 0.1 decayed_lr = fluid.layers.linear_lr_warmup(learning_rate, warmup_steps, start_lr, end_lr) place = fluid.CPUPlace() exe = fluid.Executor(place) exe.run(fluid.default_startup_program()) out, = exe.run(fetch_list=[decayed_lr.name]) print(out) # case1: [0.33333334] # case2: [0.33333334] """ dtype = 'float32' if isinstance(learning_rate, Variable): dtype = learning_rate.dtype linear_step = float(end_lr) - float(start_lr) with default_main_program()._lr_schedule_guard(): if in_dygraph_mode(): lr = imperate_lr.LinearLrWarmup(learning_rate, warmup_steps, start_lr, end_lr) return lr else: lr = tensor.create_global_var( shape=[1], value=0.0, dtype=dtype, persistable=True, name="learning_rate_warmup") global_step = _decay_step_counter() with control_flow.Switch() as switch: with switch.case(global_step < warmup_steps): decayed_lr = start_lr + linear_step * (global_step / float(warmup_steps)) tensor.assign(decayed_lr, lr) with switch.default(): if not isinstance(learning_rate, Variable): learning_rate = tensor.fill_constant( shape=[1], dtype=dtype, value=float(learning_rate)) tensor.assign(learning_rate, lr) return lr