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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.
-
- import numpy as np
-
- import mindspore.common.dtype as mstype
- import mindspore.nn as nn
- from mindspore import Tensor
- from mindspore.context import set_auto_parallel_context, ParallelMode
- from mindspore.ops import composite as C
- from mindspore.nn.parallel import TransformerEncoder, TransformerDecoder, Transformer, TransformerParallelConfig,\
- VocabEmbedding
- from mindspore.train import Model
- from tests.dataset_mock import MindData
- from tests.ut.python.ops.test_math_ops import VirtualLoss
-
- grad_all = C.GradOperation(get_all=True)
-
-
- class Dataset(MindData):
- def __init__(self, *inputs, length=3):
- super(Dataset, self).__init__(size=length)
- self.inputs = inputs
- self.index = 0
- self.length = length
-
- def __iter__(self):
- return self
-
- def __next__(self):
- if self.index >= self.length:
- raise StopIteration
- self.index += 1
- return self.inputs
-
- def reset(self):
- self.index = 0
-
-
- def test_transformer_model():
- class NetWithLoss(nn.Cell):
- def __init__(self, network):
- super(NetWithLoss, self).__init__()
- self.loss = VirtualLoss()
- self.network = network
-
- def construct(self, x1, x2, x3, x4, x5):
- predict, _, _ = self.network(x1, x2, x3, x4, x5)
- return self.loss(predict)
-
- config = TransformerParallelConfig(dp=1, mp=8)
- set_auto_parallel_context(device_num=8, global_rank=0, parallel_mode=ParallelMode.SEMI_AUTO_PARALLEL)
- net = Transformer(encoder_layers=1,
- decoder_layers=2,
- hidden_size=64,
- num_heads=8,
- ffn_hidden_size=64,
- src_seq_length=20,
- tgt_seq_length=20,
- parallel_config=config)
-
- encoder_input_value = Tensor(np.ones((2, 20, 64)), mstype.float32)
- encoder_input_mask = Tensor(np.ones((2, 1, 20, 20)), mstype.float16)
- decoder_input_value = Tensor(np.ones((2, 10, 64)), mstype.float32)
- decoder_input_mask = Tensor(np.ones((2, 1, 10, 10)), mstype.float16)
- memory_mask = Tensor(np.ones((2, 1, 10, 20)), mstype.float16)
- net = NetWithLoss(net)
-
- dataset = Dataset(encoder_input_value, encoder_input_mask, decoder_input_value, decoder_input_mask,
- memory_mask)
-
- model = Model(net)
-
- model.train(1, dataset, dataset_sink_mode=False)
-
-
- def test_encoder():
- class NetWithLoss(nn.Cell):
- def __init__(self, network):
- super(NetWithLoss, self).__init__()
- self.loss = VirtualLoss()
- self.network = network
-
- def construct(self, x1, x2):
- predict, _ = self.network(x1, x2)
- return self.loss(predict)
-
- config = TransformerParallelConfig(dp=1, mp=8)
- set_auto_parallel_context(device_num=8, global_rank=0, parallel_mode=ParallelMode.SEMI_AUTO_PARALLEL)
- net = TransformerEncoder(num_layers=2,
- hidden_size=8,
- ffn_hidden_size=64,
- seq_length=16,
- num_heads=8,
- parallel_config=config)
-
- encoder_input_value = Tensor(np.ones((2, 16, 8)), mstype.float32)
- encoder_input_mask = Tensor(np.ones((2, 1, 16, 16)), mstype.float16)
-
- net = NetWithLoss(net)
-
- dataset = Dataset(encoder_input_value, encoder_input_mask)
-
- model = Model(net)
-
- model.train(1, dataset, dataset_sink_mode=False)
-
-
- def test_decoder():
- class NetWithLoss(nn.Cell):
- def __init__(self, network):
- super(NetWithLoss, self).__init__()
- self.loss = VirtualLoss()
- self.network = network
-
- def construct(self, x1, x2, x3, x4):
- predict, _, _ = self.network(x1, x2, x3, x4)
- return self.loss(predict)
-
- config = TransformerParallelConfig(dp=1, mp=8)
- set_auto_parallel_context(device_num=8, global_rank=0, parallel_mode=ParallelMode.SEMI_AUTO_PARALLEL)
- net = TransformerDecoder(num_layers=1,
- hidden_size=16,
- ffn_hidden_size=8,
- num_heads=8,
- seq_length=10,
- parallel_config=config)
-
- encoder_input_value = Tensor(np.ones((2, 20, 16)), mstype.float32)
- decoder_input_value = Tensor(np.ones((2, 10, 16)), mstype.float32)
- decoder_input_mask = Tensor(np.ones((2, 1, 10, 10)), mstype.float16)
- memory_mask = Tensor(np.ones((2, 1, 10, 20)), mstype.float16)
-
- net = NetWithLoss(net)
-
- dataset = Dataset(decoder_input_value, decoder_input_mask, encoder_input_value, memory_mask)
-
- model = Model(net)
- model.train(1, dataset, dataset_sink_mode=False)
-
-
- def test_vocabembedding_dp_true():
- config = TransformerParallelConfig(dp=1, mp=8)
- set_auto_parallel_context(device_num=8, global_rank=0, parallel_mode=ParallelMode.SEMI_AUTO_PARALLEL)
-
- class NetWithLoss(nn.Cell):
- def __init__(self, network):
- super(NetWithLoss, self).__init__()
- self.loss = VirtualLoss()
- self.network = network
-
- def construct(self, x1):
- predict, _ = self.network(x1)
- return self.loss(predict)
-
- class GradWrap(nn.Cell):
- def __init__(self, network):
- super(GradWrap, self).__init__()
- self.network = network
-
- def construct(self, x1):
- return grad_all(self.network)(x1)
-
- net = VocabEmbedding(vocab_size=100, embedding_size=16, parallel_config=config)
- net = NetWithLoss(net)
- encoder_input_value = Tensor(np.ones((2, 64)), mstype.int32)
- dataset = Dataset(encoder_input_value)
-
- model = Model(net)
- model.train(1, dataset, dataset_sink_mode=False)
-
-
- def test_vocabembedding_dp_false():
- config = TransformerParallelConfig(dp=1, mp=8, vocab_emb_dp=False)
- set_auto_parallel_context(device_num=8, global_rank=0, parallel_mode=ParallelMode.SEMI_AUTO_PARALLEL)
-
- class NetWithLoss(nn.Cell):
- def __init__(self, network):
- super(NetWithLoss, self).__init__()
- self.loss = VirtualLoss()
- self.network = network
-
- def construct(self, x1):
- predict, _ = self.network(x1)
- return self.loss(predict)
-
- class GradWrap(nn.Cell):
- def __init__(self, network):
- super(GradWrap, self).__init__()
- self.network = network
-
- def construct(self, x1):
- return grad_all(self.network)(x1)
-
- net = VocabEmbedding(vocab_size=160, embedding_size=16, parallel_config=config)
- net = NetWithLoss(net)
- encoder_input_value = Tensor(np.ones((2, 64)), mstype.int32)
- dataset = Dataset(encoder_input_value)
-
- model = Model(net)
- model.train(1, dataset, dataset_sink_mode=False)
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