# Copyright (c) 2019 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 .... import layers from .... import optimizer from .... import Executor from .... import Program from .... import program_guard from .... import regularizer __all__ = ['FSPDistiller', 'L2Distiller', 'SoftLabelDistiller'] class L2Distiller(object): """ Combine two layers from student net and teacher net by l2-loss. And add the loss into the total loss using for distillation training. """ def __init__(self, student_feature_map, teacher_feature_map, distillation_loss_weight=1): """ Args: student_feature_map(str): The name of feature map from student network. teacher_feature_map(str): The name of feature map from teacher network. It's shape should be the same with student network. distillation_loss_weight(float): The weight of the l2-loss. """ self.student_feature_map = student_feature_map self.teacher_feature_map = teacher_feature_map self.distillation_loss_weight = distillation_loss_weight def distiller_loss(self, graph): """ Modify graph inplace to add l2-loss. Args: graph(GraphWrapper): The graph to be modified. Returns: GraphWrapper: The modified graph. """ distiller_pass = L2DistillerPass(self.student_feature_map, self.teacher_feature_map, self.distillation_loss_weight) dis_graph = distiller_pass.apply(graph) return dis_graph class L2DistillerPass(object): """ The pass used to add l2-loss. """ def __init__(self, student_feature_map, teacher_feature_map, distillation_loss_weight=1): """ Args: student_feature_map(str): The name of feature map from student network. teacher_feature_map(str): The name of feature map from teacher network. It's shape should be the same with student network. distillation_loss_weight(float): The weight of the l2-loss. """ self.student_feature_map = student_feature_map self.teacher_feature_map = teacher_feature_map self.distillation_loss_weight = distillation_loss_weight def apply(self, graph): ret_graph = graph with program_guard(ret_graph.program): student_feature_map = ret_graph.var(self.student_feature_map)._var teacher_feature_map = ret_graph.var(self.teacher_feature_map)._var l2loss = layers.reduce_mean( layers.square(student_feature_map - teacher_feature_map)) distillation_loss = l2loss * self.distillation_loss_weight student_loss = 0 if 'loss' in ret_graph.out_nodes: student_loss = ret_graph.var(ret_graph.out_nodes['loss'])._var loss = distillation_loss + student_loss ret_graph.out_nodes['loss'] = loss.name ret_graph.out_nodes[ 'l2loss_' + self.student_feature_map + "_" + self.teacher_feature_map] = distillation_loss.name return ret_graph class FSPDistiller(object): """ Combine layers from student net and teacher net by fsp-loss. """ def __init__(self, student_pairs, teacher_pairs, distillation_loss_weight=1): """ Args: student_pairs(list): Each tuple, with two variable names, in student_pairs indicates a section in student network. The variables in a tuple should have the same feature map size. teacher_pairs(list): Each tuple, with two variable names, in teacher_pairs indicates a section in teacher network. The variables in a tuple should have the same feature map size. Varibale named teacher_pairs[i][j] should has the save channel number with that of variable named student_pairs[i][j]. distillation_loss_weight(float): The weight of the fsp-loss. default: 1. """ self.student_pairs = student_pairs self.teacher_pairs = teacher_pairs self.distillation_loss_weight = distillation_loss_weight def distiller_loss(self, graph): """ Modify graph inplace to add fsp-loss. Args: graph(GraphWrapper): The graph to be modified. Returns: GraphWrapper: The modified graph. """ distiller_pass = FSPDistillerPass(self.student_pairs, self.teacher_pairs, self.distillation_loss_weight) dis_graph = distiller_pass.apply(graph) return dis_graph class FSPDistillerPass(object): ''' Combine layers from student net and teacher net by fsp-loss. ''' def __init__(self, s_pairs, t_pairs, distillation_loss_weight=1): """ Args: s_pairs(list): Each tuple, with two variable names, in student_pairs indicates a section in student network. The variables in a tuple should have the same feature map size. t_pairs(list): Each tuple, with two variable names, in teacher_pairs indicates a section in teacher network. The variables in a tuple should have the same feature map size. Varibale named teacher_pairs[i][j] should has the save channel number with that of variable named student_pairs[i][j]. distillation_loss_weight(float): The weight of the fsp-loss. default: 1. """ self.s_pairs = s_pairs self.t_pairs = t_pairs self.distillation_loss_weight = distillation_loss_weight def apply(self, graph): ret_graph = graph with program_guard(ret_graph.program): losses = [] for s_pair, t_pair in zip(self.s_pairs, self.t_pairs): s_pair_start = ret_graph.var(s_pair[0])._var s_pair_end = ret_graph.var(s_pair[1])._var s_fsp_matrix = self._fsp_matrix(s_pair_start, s_pair_end) t_pair_start = ret_graph.var(t_pair[0])._var t_pair_end = ret_graph.var(t_pair[1])._var t_fsp_matrix = self._fsp_matrix(t_pair_start, t_pair_end) l2_loss = layers.reduce_mean( layers.square(s_fsp_matrix - t_fsp_matrix)) losses.append(l2_loss) distillation_loss = layers.sum( losses) * self.distillation_loss_weight student_loss = 0 if 'loss' in ret_graph.out_nodes: student_loss = ret_graph.var(ret_graph.out_nodes['loss'])._var loss = distillation_loss + student_loss ret_graph.out_nodes['loss'] = loss.name ret_graph.out_nodes[ 'fsp_distillation_loss'] = distillation_loss.name return ret_graph def _fsp_matrix(self, fea_map_0, fea_map_1): return layers.fsp_matrix(fea_map_0, fea_map_1) class SoftLabelDistiller(object): """ Combine two layers from student net and teacher net by softmax_with_cross_entropy loss. And add the loss into the total loss using for distillation training. """ def __init__(self, student_feature_map=None, teacher_feature_map=None, student_temperature=1.0, teacher_temperature=1.0, distillation_loss_weight=1): """ Args: student_feature_map(str): The name of feature map from student network. teacher_feature_map(str): The name of feature map from teacher network. It's shape should be the same with student network. student_temperature(float): Temperature used to divide student_feature_map before softmax_with_cross_entropy. default: 1.0 teacher_temperature(float): Temperature used to divide teacher_feature_map before softmax_with_cross_entropy. default: 1.0 distillation_loss_weight(float): The weight of the l2-loss. """ self.student_feature_map = student_feature_map self.teacher_feature_map = teacher_feature_map self.distillation_loss_weight = distillation_loss_weight self.student_temperature = student_temperature self.teacher_temperature = teacher_temperature def distiller_loss(self, graph): """ Modify graph inplace to add softmax_with_cross_entropy loss. Args: graph(GraphWrapper): The graph to be modified. Returns: GraphWrapper: The modified graph. """ distiller_pass = SoftLabelDistillerPass( self.student_feature_map, self.teacher_feature_map, self.student_temperature, self.teacher_temperature, self.distillation_loss_weight) dis_graph = distiller_pass.apply(graph) return dis_graph class SoftLabelDistillerPass(object): def __init__(self, student_feature_map, teacher_feature_map, student_temperature, teacher_temperature, distillation_loss_weight=1): """ Args: student_feature_map(str): The name of feature map from student network. teacher_feature_map(str): The name of feature map from teacher network. It's shape should be the same with student network. student_temperature(float): Temperature used to divide student_feature_map before softmax_with_cross_entropy. teacher_temperature(float): Temperature used to divide teacher_feature_map before softmax_with_cross_entropy. distillation_loss_weight(float): The weight of the l2-loss. """ self.student_feature_map = student_feature_map self.teacher_feature_map = teacher_feature_map self.student_temperature = student_temperature self.teacher_temperature = teacher_temperature self.distillation_loss_weight = distillation_loss_weight def apply(self, graph): ret_graph = graph with program_guard(ret_graph.program): student_feature_map = ret_graph.var(self.student_feature_map)._var teacher_feature_map = ret_graph.var(self.teacher_feature_map)._var s_fea = layers.softmax(student_feature_map / self.student_temperature) t_fea = layers.softmax(teacher_feature_map / self.teacher_temperature) t_fea.stop_gradient = True ce_loss = layres.reduce_mean( layers.cross_entropy( s_fea, t_fea, soft_label=True)) distillation_loss = ce_loss * self.distillation_loss_weight student_loss = 0 if 'loss' in ret_graph.out_nodes: student_loss = ret_graph.var(ret_graph.out_nodes['loss'])._var loss = distillation_loss + student_loss ret_graph.out_nodes['loss'] = loss.name ret_graph.out_nodes[ 'soft_label_loss_' + self.student_feature_map + "_" + self.teacher_feature_map] = distillation_loss.name return ret_graph