# 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. import math import paddle.fluid as fluid from paddlerec.core.utils import envs from paddlerec.core.model import ModelBase class Model(ModelBase): def __init__(self, config): ModelBase.__init__(self, config) def _init_hyper_parameters(self): self.is_distributed = False self.distributed_embedding = False if envs.get_fleet_mode().upper() == "PSLIB": self.is_distributed = True if envs.get_global_env("hyper_parameters.distributed_embedding", 0) == 1: self.distributed_embedding = True self.sparse_feature_number = envs.get_global_env( "hyper_parameters.sparse_feature_number") self.sparse_feature_dim = envs.get_global_env( "hyper_parameters.sparse_feature_dim") self.learning_rate = envs.get_global_env( "hyper_parameters.optimizer.learning_rate") def net(self, input, is_infer=False): self.sparse_inputs = self._sparse_data_var[1:] self.dense_input = self._dense_data_var[0] self.label_input = self._sparse_data_var[0] def embedding_layer(input): if self.distributed_embedding: emb = fluid.contrib.layers.sparse_embedding( input=input, size=[ self.sparse_feature_number, self.sparse_feature_dim ], param_attr=fluid.ParamAttr( name="SparseFeatFactors", initializer=fluid.initializer.Uniform())) else: emb = fluid.layers.embedding( input=input, is_sparse=True, is_distributed=self.is_distributed, size=[ self.sparse_feature_number, self.sparse_feature_dim ], param_attr=fluid.ParamAttr( name="SparseFeatFactors", initializer=fluid.initializer.Uniform())) emb_sum = fluid.layers.sequence_pool(input=emb, pool_type='sum') return emb_sum sparse_embed_seq = list(map(embedding_layer, self.sparse_inputs)) concated = fluid.layers.concat( sparse_embed_seq + [self.dense_input], axis=1) fcs = [concated] hidden_layers = envs.get_global_env("hyper_parameters.fc_sizes") for size in hidden_layers: output = fluid.layers.fc( input=fcs[-1], size=size, act='relu', param_attr=fluid.ParamAttr( initializer=fluid.initializer.Normal( scale=1.0 / math.sqrt(fcs[-1].shape[1])))) fcs.append(output) predict = fluid.layers.fc( input=fcs[-1], size=2, act="softmax", param_attr=fluid.ParamAttr(initializer=fluid.initializer.Normal( scale=1 / math.sqrt(fcs[-1].shape[1])))) self.predict = predict auc, batch_auc, _ = fluid.layers.auc(input=self.predict, label=self.label_input, num_thresholds=2**12, slide_steps=20) if is_infer: self._infer_results["AUC"] = auc self._infer_results["BATCH_AUC"] = batch_auc return self._metrics["AUC"] = auc self._metrics["BATCH_AUC"] = batch_auc cost = fluid.layers.cross_entropy( input=self.predict, label=self.label_input) avg_cost = fluid.layers.reduce_mean(cost) self._cost = avg_cost def optimizer(self): optimizer = fluid.optimizer.Adam(self.learning_rate, lazy_mode=True) return optimizer def infer_net(self): pass