# Copyright (c) 2020 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. from __future__ import annotations import warnings from typing import TYPE_CHECKING from paddle import _C_ops, pir from ..base import core, framework from ..base.dygraph import no_grad from ..base.framework import name_scope from .optimizer import Optimizer if TYPE_CHECKING: from collections.abc import Sequence from typing_extensions import NotRequired from paddle import Tensor from paddle.nn.clip import GradientClipBase from paddle.regularizer import WeightDecayRegularizer from .lr import LRScheduler from .optimizer import _ParameterConfig class _AdamaxParameterConfig(_ParameterConfig): beta1: NotRequired[float | Tensor] beta2: NotRequired[float | Tensor] epsilon: NotRequired[float | Tensor] __all__ = [] class Adamax(Optimizer): r""" The Adamax optimizer is implemented based on the Adamax Optimization in Section 7 of `Adam paper `_. The Adamax algorithm is a variant of the Adam algorithm based on the infinite norm, which makes the learning rate update algorithm more stable and simple. The parameter ``param_out`` update rule with gradient ``grad``: .. math:: t & = t + 1 moment\_out & = {\beta}_1 * moment + (1 - {\beta}_1) * grad inf\_norm\_out & = max({\beta}_2 * inf\_norm + \epsilon, |grad|) learning\_rate & = \frac{learning\_rate}{1 - {\beta}_1^t} param\_out & = param - learning\_rate * \frac{moment\_out}{inf\_norm\_out} Related paper: `Adam: A Method for Stochastic Optimization `_ The original paper does not have an ``epsilon`` attribute, it is added here for numerical stability to prevent the division by 0 error. Args: learning_rate (float|LRScheduler, optional): The learning rate used to update ``Parameter``. It can be a float value or a LRScheduler. The default value is 0.001. beta1 (float|Tensor, optional): The exponential decay rate for the 1st moment estimates. It should be a float number or a 0-D Tensor with shape [] and data type as float32. The default value is 0.9. beta2 (float|Tensor, optional): The exponential decay rate for the 2nd moment estimates. It should be a float number or a 0-D Tensor with shape [] and data type as float32. The default value is 0.999. epsilon (float|Tensor, optional): A small float value for numerical stability. The default value is 1e-08. parameters (list|tuple|None, optional): List/Tuple of ``Tensor`` to update to minimize ``loss``. This parameter is required in dygraph mode. And you can specify different options for different parameter groups such as the learning rate, weight decay, etc, then the parameters are list of dict. Note that the learning_rate in parameter groups represents the scale of base learning_rate. The default value is None in static graph mode, at this time all parameters will be updated. weight_decay (int|float|WeightDecayRegularizer|None, optional): The strategy of regularization. It can be a int or float value as coeff of L2 regularization or :ref:`api_paddle_regularizer_L1Decay`, :ref:`api_paddle_regularizer_L2Decay`. If a parameter has set regularizer using :ref:`api_paddle_ParamAttr` already, the regularization setting here in optimizer will be ignored for this parameter. Otherwise, the regularization setting here in optimizer will take effect. Default None, meaning there is no regularization. grad_clip (GradientClipBase|None, optional): Gradient clipping strategy, it's an instance of some derived class of ``GradientClipBase`` . There are three clipping strategies ( :ref:`api_paddle_nn_ClipGradByGlobalNorm` , :ref:`api_paddle_nn_ClipGradByNorm` , :ref:`api_paddle_nn_ClipGradByValue` ). Default None, meaning there is no gradient clipping. name (str|None, optional): Normally there is no need for user to set this property. For more information, please refer to :ref:`api_guide_Name`. The default value is None. **Notes**: **Currently, Adamax doesn't support sparse parameter optimization.** Examples: .. code-block:: pycon >>> import paddle >>> inp = paddle.uniform([10, 10], dtype="float32", min=-0.1, max=0.1) >>> linear = paddle.nn.Linear(10, 10) >>> inp = paddle.to_tensor(inp) >>> out = linear(inp) >>> loss = paddle.mean(out) >>> beta1 = paddle.to_tensor([0.9], dtype="float32") >>> beta2 = paddle.to_tensor([0.99], dtype="float32") >>> adamax = paddle.optimizer.Adamax( ... learning_rate=0.1, ... parameters=linear.parameters(), ... beta1=beta1, ... beta2=beta2, ... weight_decay=0.01, ... ) >>> out.backward() >>> adamax.step() >>> adamax.clear_grad() >>> # Note that the learning_rate of linear_2 is 0.01. >>> linear_1 = paddle.nn.Linear(10, 10) >>> linear_2 = paddle.nn.Linear(10, 10) >>> inp = paddle.uniform(shape=[10, 10], min=-0.1, max=0.1) >>> out = linear_1(inp) >>> out = linear_2(out) >>> loss = paddle.mean(out) >>> adamax = paddle.optimizer.Adamax( ... learning_rate=0.1, ... parameters=[ # type: ignore ... { ... 'params': linear_1.parameters(), ... }, ... { ... 'params': linear_2.parameters(), ... 'weight_decay': 0.001, ... 'learning_rate': 0.1, ... 'beta1': 0.8, ... }, ... ], ... weight_decay=0.01, ... beta1=0.9, ... ) >>> out.backward() >>> adamax.step() >>> adamax.clear_grad() """ type: str _moment_acc_str = "moment" _inf_norm_acc_str = "inf_norm" _beta1_pow_acc_str = "beta1_pow_acc" def __init__( self, learning_rate: float | LRScheduler = 0.001, beta1: float | Tensor = 0.9, beta2: float | Tensor = 0.999, epsilon: float | Tensor = 1e-8, parameters: ( Sequence[Tensor] | Sequence[_AdamaxParameterConfig] | None ) = None, weight_decay: float | WeightDecayRegularizer | None = None, grad_clip: GradientClipBase | None = None, name: str | None = None, ) -> None: assert learning_rate is not None assert beta1 is not None assert beta2 is not None assert epsilon is not None if not 0 <= beta1 < 1: raise ValueError("Invalid value of beta1, expect beta1 in [0,1).") if not 0 <= beta2 < 1: raise ValueError("Invalid value of beta2, expect beta2 in [0,1).") if not 0 <= epsilon: raise ValueError("Invalid value of epsilon, expect epsilon >= 0.") super().__init__( learning_rate=learning_rate, parameters=parameters, weight_decay=weight_decay, grad_clip=grad_clip, name=name, ) self.type = "adamax" self._beta1 = beta1 self._beta2 = beta2 self._epsilon = epsilon self._multi_precision = False self._master_weights = {} self._default_dict = { 'beta1': beta1, 'beta2': beta2, 'epsilon': epsilon, } def _add_moments_pows(self, p): acc_dtype = p.dtype if self._is_dtype_fp16_or_bf16(acc_dtype): acc_dtype = core.VarDesc.VarType.FP32 self._add_accumulator(self._moment_acc_str, p, dtype=acc_dtype) self._add_accumulator(self._inf_norm_acc_str, p, dtype=acc_dtype) self._add_accumulator( name=self._beta1_pow_acc_str, param=p, fill_value=self._beta1, shape=[1], ) def _create_accumulators(self, block, parameters): if isinstance(parameters, dict): parameters = self._update_param_group(parameters) # Create accumulator tensors for first moment and infinity norm for p in parameters: if p.name in self._already_create_accumulator: continue if self._multi_precision and self._is_dtype_fp16_or_bf16(p.dtype): master_p = self._create_master_weight(p) self._add_moments_pows(master_p) self._already_create_accumulator.add(p.name) continue if ( self._is_dtype_fp16_or_bf16(p.dtype) and not self._multi_precision ): warnings.warn( "Accumulating with FP16/BF16 in optimizer can lead to poor accuracy or slow convergence." "Consider using multi_precision=True option of the Adam optimizer." ) self._add_moments_pows(p) self._already_create_accumulator.add(p.name) def _append_optimize_op(self, block, param_and_grad): assert isinstance(block, (framework.Block, pir.Block)) if isinstance(param_and_grad, dict): param_and_grad = self._update_param_group(param_and_grad) moment = self._get_accumulator_master( self._moment_acc_str, param_and_grad[0] ) inf_norm = self._get_accumulator_master( self._inf_norm_acc_str, param_and_grad[0] ) find_master = self._multi_precision and self._is_dtype_fp16_or_bf16( param_and_grad[0].dtype ) master_weight = ( self._master_weights[param_and_grad[0].name] if find_master else None ) beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param_and_grad[0] ) if framework.in_dynamic_or_pir_mode(): _C_ops.adamax_( param_and_grad[0], param_and_grad[1], self._create_param_lr(param_and_grad), moment, inf_norm, beta1_pow_acc, master_weight, self._beta1, self._beta2, self._epsilon, find_master, ) else: # create the adamax optimize op inputs = { "Param": param_and_grad[0], "Grad": param_and_grad[1], "LearningRate": self._create_param_lr(param_and_grad), "Moment": moment, "InfNorm": inf_norm, "Beta1Pow": beta1_pow_acc, } outputs = { "ParamOut": param_and_grad[0], "MomentOut": moment, "InfNormOut": inf_norm, } if find_master: inputs["MasterParam"] = master_weight outputs["MasterParamOut"] = master_weight attrs = { "beta1": self._beta1, "beta2": self._beta2, "epsilon": self._epsilon, "multi_precision": find_master, } adamax_op = block.append_op( type=self.type, inputs=inputs, outputs=outputs, attrs=attrs, stop_gradient=True, ) return adamax_op def _finish_update(self, block, parameters_and_grads): """Update Beta1 Power accumulator""" assert isinstance(block, (framework.Block, pir.Block)) if isinstance(parameters_and_grads, list): for param, grad in parameters_and_grads: if grad is None or param.stop_gradient is True: continue if framework.in_dygraph_mode(): beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param ) with no_grad(): tmp = _C_ops.scale( beta1_pow_acc, self._beta1, 0.0, True ) beta1_pow_acc.copy_(tmp, False) elif framework.in_pir_mode(): with param.block.program._optimized_guard([param, grad]): beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param ) _C_ops.scale_(beta1_pow_acc, self._beta1, 0.0, True) else: with ( param.block.program._optimized_guard([param, grad]), name_scope('adamax'), ): beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param ) block.append_op( type="scale", inputs={"X": beta1_pow_acc}, outputs={"Out": beta1_pow_acc}, attrs={"scale": self._beta1}, stop_gradient=True, ) else: for param, grad in parameters_and_grads['params']: if grad is None or param.stop_gradient is True: continue if framework.in_dygraph_mode(): beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param ) self._beta1 = parameters_and_grads.get( 'beta1', self._default_dict['beta1'] ) with no_grad(): tmp = _C_ops.scale( beta1_pow_acc, self._beta1, 0.0, True ) beta1_pow_acc.copy_(tmp, False) else: with ( param.block.program._optimized_guard([param, grad]), name_scope('adamax'), ): beta1_pow_acc = self._get_accumulator_master( self._beta1_pow_acc_str, param ) self._beta1 = parameters_and_grads.get( 'beta1', self._default_dict['beta1'] ) block.append_op( type="scale", inputs={"X": beta1_pow_acc}, outputs={"Out": beta1_pow_acc}, attrs={"scale": self._beta1}, stop_gradient=True, ) def _update_param_group(self, parameters): self._beta1 = parameters.get('beta1', self._default_dict['beta1']) self._beta2 = parameters.get('beta2', self._default_dict['beta2']) self._epsilon = parameters.get('epsilon', self._default_dict['epsilon']) parameters = parameters.get('params') return parameters