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- # Copyright 2021 Huawei Technologies Co., Ltd
- #
- # 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.
- # ============================================================================
- """Architecture"""
- import os
- import numpy as np
- import pytest
-
- import mindspore.nn as nn
- from mindspore import Parameter, Tensor
- from mindspore.ops import operations as P
- from mindspore.common import dtype as mstype
- from mindspore.common.initializer import initializer
- from mindspore.train.serialization import export
-
-
- class MeanConv(nn.Cell):
- def __init__(self,
- feature_in_dim,
- feature_out_dim,
- activation,
- dropout=0.2):
- super(MeanConv, self).__init__()
- self.out_weight = Parameter(
- initializer("XavierUniform", [feature_in_dim * 2, feature_out_dim], dtype=mstype.float32))
- if activation == "tanh":
- self.act = P.Tanh()
- elif activation == "relu":
- self.act = P.ReLU()
- else:
- raise ValueError("activation should be tanh or relu")
- self.cast = P.Cast()
- self.matmul = P.MatMul()
- self.concat = P.Concat(axis=1)
- self.reduce_mean = P.ReduceMean(keep_dims=False)
- self.dropout = nn.Dropout(keep_prob=1 - dropout)
-
- def construct(self, self_feature, neigh_feature):
- neigh_matrix = self.reduce_mean(neigh_feature, 1)
- neigh_matrix = self.dropout(neigh_matrix)
- output = self.concat((self_feature, neigh_matrix))
- output = self.act(self.matmul(output, self.out_weight))
- return output
-
-
- class AttenConv(nn.Cell):
- def __init__(self,
- feature_in_dim,
- feature_out_dim,
- dropout=0.2):
- super(AttenConv, self).__init__()
- self.out_weight = Parameter(
- initializer("XavierUniform", [feature_in_dim * 2, feature_out_dim], dtype=mstype.float32))
- self.cast = P.Cast()
- self.squeeze = P.Squeeze(1)
- self.concat = P.Concat(axis=1)
- self.expanddims = P.ExpandDims()
- self.softmax = P.Softmax(axis=-1)
- self.matmul = P.MatMul()
- self.matmul_3 = P.BatchMatMul()
- self.matmul_t = P.BatchMatMul(transpose_b=True)
- self.dropout = nn.Dropout(keep_prob=1 - dropout)
-
- def construct(self, self_feature, neigh_feature):
- query = self.expanddims(self_feature, 1)
- neigh_matrix = self.dropout(neigh_feature)
- score = self.matmul_t(query, neigh_matrix)
- score = self.softmax(score)
- atten_agg = self.matmul_3(score, neigh_matrix)
- atten_agg = self.squeeze(atten_agg)
- output = self.matmul(self.concat((atten_agg, self_feature)), self.out_weight)
- return output
-
-
- class BGCF(nn.Cell):
- def __init__(self,
- dataset_argv,
- architect_argv,
- activation,
- neigh_drop_rate,
- num_user,
- num_item,
- input_dim):
- super(BGCF, self).__init__()
- self.user_embed = Parameter(initializer("XavierUniform", [num_user, input_dim], dtype=mstype.float32))
- self.item_embed = Parameter(initializer("XavierUniform", [num_item, input_dim], dtype=mstype.float32))
- self.cast = P.Cast()
- self.tanh = P.Tanh()
- self.shape = P.Shape()
- self.split = P.Split(0, 2)
- self.gather = P.Gather()
- self.reshape = P.Reshape()
- self.concat_0 = P.Concat(0)
- self.concat_1 = P.Concat(1)
- (self.input_dim, self.num_user, self.num_item) = dataset_argv
- self.layer_dim = architect_argv
- self.gnew_agg_mean = MeanConv(self.input_dim, self.layer_dim,
- activation=activation, dropout=neigh_drop_rate[1])
- self.gnew_agg_mean.to_float(mstype.float16)
- self.gnew_agg_user = AttenConv(self.input_dim, self.layer_dim, dropout=neigh_drop_rate[2])
- self.gnew_agg_user.to_float(mstype.float16)
- self.gnew_agg_item = AttenConv(self.input_dim, self.layer_dim, dropout=neigh_drop_rate[2])
- self.gnew_agg_item.to_float(mstype.float16)
- self.user_feature_dim = self.input_dim
- self.item_feature_dim = self.input_dim
- self.final_weight = Parameter(
- initializer("XavierUniform", [self.input_dim * 3, self.input_dim * 3], dtype=mstype.float32))
- self.raw_agg_funcs_user = MeanConv(self.input_dim, self.layer_dim,
- activation=activation, dropout=neigh_drop_rate[0])
- self.raw_agg_funcs_user.to_float(mstype.float16)
- self.raw_agg_funcs_item = MeanConv(self.input_dim, self.layer_dim,
- activation=activation, dropout=neigh_drop_rate[0])
- self.raw_agg_funcs_item.to_float(mstype.float16)
-
- def construct(self,
- u_id,
- pos_item_id,
- neg_item_id,
- pos_users,
- pos_items,
- u_group_nodes,
- u_neighs,
- u_gnew_neighs,
- i_group_nodes,
- i_neighs,
- i_gnew_neighs,
- neg_group_nodes,
- neg_neighs,
- neg_gnew_neighs,
- neg_item_num):
- all_user_embed = self.gather(self.user_embed, self.concat_0((u_id, pos_users)), 0)
- u_self_matrix_at_layers = self.gather(self.user_embed, u_group_nodes, 0)
- u_neigh_matrix_at_layers = self.gather(self.item_embed, u_neighs, 0)
- u_output_mean = self.raw_agg_funcs_user(u_self_matrix_at_layers, u_neigh_matrix_at_layers)
- u_gnew_neighs_matrix = self.gather(self.item_embed, u_gnew_neighs, 0)
- u_output_from_gnew_mean = self.gnew_agg_mean(u_self_matrix_at_layers, u_gnew_neighs_matrix)
- u_output_from_gnew_att = self.gnew_agg_user(u_self_matrix_at_layers,
- self.concat_1((u_neigh_matrix_at_layers, u_gnew_neighs_matrix)))
- u_output = self.concat_1((u_output_mean, u_output_from_gnew_mean, u_output_from_gnew_att))
- all_user_rep = self.tanh(u_output)
- all_pos_item_embed = self.gather(self.item_embed, self.concat_0((pos_item_id, pos_items)), 0)
- i_self_matrix_at_layers = self.gather(self.item_embed, i_group_nodes, 0)
- i_neigh_matrix_at_layers = self.gather(self.user_embed, i_neighs, 0)
- i_output_mean = self.raw_agg_funcs_item(i_self_matrix_at_layers, i_neigh_matrix_at_layers)
- i_gnew_neighs_matrix = self.gather(self.user_embed, i_gnew_neighs, 0)
- i_output_from_gnew_mean = self.gnew_agg_mean(i_self_matrix_at_layers, i_gnew_neighs_matrix)
- i_output_from_gnew_att = self.gnew_agg_item(i_self_matrix_at_layers,
- self.concat_1((i_neigh_matrix_at_layers, i_gnew_neighs_matrix)))
- i_output = self.concat_1((i_output_mean, i_output_from_gnew_mean, i_output_from_gnew_att))
- all_pos_item_rep = self.tanh(i_output)
- neg_item_embed = self.gather(self.item_embed, neg_item_id, 0)
- neg_self_matrix_at_layers = self.gather(self.item_embed, neg_group_nodes, 0)
- neg_neigh_matrix_at_layers = self.gather(self.user_embed, neg_neighs, 0)
- neg_output_mean = self.raw_agg_funcs_item(neg_self_matrix_at_layers, neg_neigh_matrix_at_layers)
- neg_gnew_neighs_matrix = self.gather(self.user_embed, neg_gnew_neighs, 0)
- neg_output_from_gnew_mean = self.gnew_agg_mean(neg_self_matrix_at_layers, neg_gnew_neighs_matrix)
- neg_output_from_gnew_att = self.gnew_agg_item(neg_self_matrix_at_layers,
- self.concat_1(
- (neg_neigh_matrix_at_layers, neg_gnew_neighs_matrix)))
- neg_output = self.concat_1((neg_output_mean, neg_output_from_gnew_mean, neg_output_from_gnew_att))
- neg_output = self.tanh(neg_output)
- neg_output_shape = self.shape(neg_output)
- neg_item_rep = self.reshape(neg_output,
- (self.shape(neg_item_embed)[0], neg_item_num, neg_output_shape[-1]))
-
- return all_user_embed, all_user_rep, all_pos_item_embed, all_pos_item_rep, neg_item_embed, neg_item_rep
-
-
- class ForwardBGCF(nn.Cell):
- def __init__(self,
- network):
- super(ForwardBGCF, self).__init__()
- self.network = network
-
- def construct(self, users, items, neg_items, u_neighs, u_gnew_neighs, i_neighs, i_gnew_neighs):
- _, user_rep, _, item_rep, _, _, = self.network(users, items, neg_items, users, items, users,
- u_neighs, u_gnew_neighs, items, i_neighs, i_gnew_neighs,
- items, i_neighs, i_gnew_neighs, 1)
- return user_rep, item_rep
-
- @pytest.mark.level0
- @pytest.mark.platform_x86_ascend_training
- @pytest.mark.platform_arm_ascend_training
- @pytest.mark.env_onecard
- def test_export_bgcf():
- num_user, num_item = 7068, 3570
- network = BGCF([64, num_user, num_item], 64, "tanh",
- [0.0, 0.0, 0.0], num_user, num_item, 64)
-
- forward_net = ForwardBGCF(network)
- users = Tensor(np.zeros([num_user,]).astype(np.int32))
- items = Tensor(np.zeros([num_item,]).astype(np.int32))
- neg_items = Tensor(np.zeros([num_item, 1]).astype(np.int32))
- u_test_neighs = Tensor(np.zeros([num_user, 40]).astype(np.int32))
- u_test_gnew_neighs = Tensor(np.zeros([num_user, 20]).astype(np.int32))
- i_test_neighs = Tensor(np.zeros([num_item, 40]).astype(np.int32))
- i_test_gnew_neighs = Tensor(np.zeros([num_item, 20]).astype(np.int32))
- input_data = [users, items, neg_items, u_test_neighs, u_test_gnew_neighs, i_test_neighs, i_test_gnew_neighs]
- file_name = "bgcf"
- export(forward_net, *input_data, file_name=file_name, file_format="MINDIR")
- mindir_file = file_name + ".mindir"
- assert os.path.exists(mindir_file)
- os.remove(mindir_file)
- export(forward_net, *input_data, file_name=file_name, file_format="AIR")
- air_file = file_name + ".air"
- assert os.path.exists(air_file)
- os.remove(air_file)
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