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- # Copyright 2020 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 os
- import shutil
- import glob
-
- import numpy as np
- import mindspore as ms
- import mindspore.nn as nn
- from mindspore import context
- from mindspore import Tensor
- from mindspore.ops import operations as P
- from mindspore.common.parameter import Parameter
- from mindspore.common.initializer import initializer
- from mindspore.train.model import Model
- from mindspore.nn.wrap.cell_wrapper import PipelineCell, MicroBatchInterleaved
-
-
- class DatasetLenet():
- def __init__(self, data, label, length=3):
- self.data = data
- self.label = label
- self.index = 1
- self.length = length
-
- def __iter__(self):
- return self
-
- def __next__(self):
- if self.index >= self.length:
- raise StopIteration
- self.index += 1
- return self.data, self.label
-
- def reset(self):
- self.index = 0
-
- def get_dataset_size(self):
- return 32
-
- def get_repeat_count(self):
- return 1
-
- def get_batch_size(self):
- return 32
-
- def create_tuple_iterator(self, num_epochs=1, do_copy=True):
- return self
-
-
- class MatMulCell(nn.Cell):
- def __init__(self, strategy1, strategy2, param=None, dtype=ms.float32):
- super().__init__()
- self.param = Parameter(initializer("zeros", [64, 64]), name="param")
- if param is not None:
- self.param = param
- self.param1 = Parameter(initializer("zeros", [64, 64]), name="param1")
- self.matmul = P.MatMul().shard(strategy1)
- self.matmul1 = P.MatMul().shard(strategy2)
- self.cast = P.Cast()
- self.dtype = dtype
-
- def construct(self, x):
- out = self.matmul(self.cast(x, self.dtype), self.cast(self.param, self.dtype))
- out = self.matmul1(out, self.cast(self.param1, self.dtype))
- return out
-
-
- class Net(nn.Cell):
- def __init__(self, strategy1, strategy2, param=None, dtype=ms.float32):
- super().__init__()
- self.block = nn.CellList()
- for i in range(2):
- cell = MatMulCell(strategy1, strategy2, param, dtype)
- cell.pipeline_stage = i
- self.block.append(cell)
-
- def construct(self, x):
- for i in range(2):
- x = self.block[i](x)
- return x
-
-
- class PipelineSplit(nn.Cell):
- def __init__(self, strategy1, strategy2, dtype=ms.float32):
- super().__init__()
- self.cell = Net(strategy1, strategy2, dtype=dtype)
- self.cell.block[0].matmul.add_prim_attr("parameter_start", 0)
-
- def construct(self, x, label):
- x = self.cell(x)
- return x
-
-
- class PipelineSplit2(nn.Cell):
- def __init__(self, strategy1, strategy2, dtype=ms.float32):
- super().__init__()
- self.param = Parameter(initializer("zeros", [64, 64]), name="param")
- self.cell = Net(strategy1, strategy2, self.param, dtype)
- self.cell.block[0].matmul.add_prim_attr("parameter_start", 0)
-
- def construct(self, x, label):
- x = self.cell(x)
- return x
-
-
- def test_pipeline_split_stage0():
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.1.param"
- assert param.name != "cell.block.1.param1"
-
- def test_pipeline_split_stage1():
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.0.param"
- assert param.name != "cell.block.0.param1"
-
-
- def test_pipeline_split_shared_parameter_stage0():
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit2(strategy1, strategy2), 4)
- params = net.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def test_pipeline_split_shared_parameter_stage1():
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit2(strategy1, strategy2), 4)
- params = net.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def test_pipeline_split_shared_parameter_stage0_predict():
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2, full_batch=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineSplit2(strategy1, strategy2)
- model = Model(net)
- model.predict(data, label)
-
-
- def test_pipeline_split_shared_parameter_stage1_predict():
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2, full_batch=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineSplit2(strategy1, strategy2)
- model = Model(net)
- model.predict(data, label)
-
-
- def test_pipeline_split_stage0_opt_shard():
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.1.param"
- assert param.name != "cell.block.1.param1"
-
-
- def test_pipeline_split_stage1_opt_shard():
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.0.param"
- assert param.name != "cell.block.0.param1"
-
-
- def test_pipeline_split_shared_parameter_stage0_opt_shard():
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit2(strategy1, strategy2), 4)
- params = net.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def test_pipeline_split_shared_parameter_stage1_opt_shard():
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- net = PipelineCell(PipelineSplit2(strategy1, strategy2), 4)
- params = net.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def test_pipeline_split_with_micro_batch_interleaved_stage0():
- """
- Feature: test PipelineSplit with MicroBatchInterleaved in auto parallel.
- Description: net with MicroBatchInterleaved in semi auto parallel.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- micro_batch_interleaved = 2
- net = PipelineCell(MicroBatchInterleaved(PipelineSplit(strategy1, strategy2), micro_batch_interleaved), 4)
- params = net.network.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.1.param"
- assert param.name != "cell.block.1.param1"
-
-
- def test_pipeline_split_with_micro_batch_interleaved_stage1():
- """
- Feature: test PipelineSplit with MicroBatchInterleaved in auto parallel.
- Description: net with MicroBatchInterleaved in semi auto parallel.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- micro_batch_interleaved = 2
- net = PipelineCell(MicroBatchInterleaved(PipelineSplit(strategy1, strategy2), micro_batch_interleaved), 4)
- params = net.network.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.0.param"
- assert param.name != "cell.block.0.param1"
-
-
- def test_pipeline_split_shared_parameter_with_micro_batch_interleaved_stage0_opt_shard():
- """
- Feature: test PipelineSplitSharedParameter with MicroBatchInterleaved in auto parallel.
- Description: net with MicroBatchInterleaved in semi auto parallel.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- micro_batch_interleaved = 2
- net = PipelineCell(MicroBatchInterleaved(PipelineSplit2(strategy1, strategy2), micro_batch_interleaved), 4)
- params = net.network.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def test_pipeline_split_shared_parameter_with_micro_batch_interleaved_stage1_opt_shard():
- """
- Feature: test PipelineSplitSharedParameter with MicroBatchInterleaved in auto parallel.
- Description: net with MicroBatchInterleaved in semi auto parallel.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=16, pipeline_stages=2, enable_parallel_optimizer=True)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- micro_batch_interleaved = 2
- net = PipelineCell(MicroBatchInterleaved(PipelineSplit2(strategy1, strategy2), micro_batch_interleaved), 4)
- params = net.network.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- def run_pipeline_split_function(pipeline_net, micro_batch_interleaved=1):
- """
- Feature: test PipelineSplitSharedParameter with MicroBatchInterleaved in auto parallel.
- Description: net with MicroBatchInterleaved in semi auto parallel.
- Expectation: success.
- """
- data = Tensor(np.ones([32, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64, 64]), dtype=ms.float32)
-
- net = PipelineCell(MicroBatchInterleaved(pipeline_net, micro_batch_interleaved), 4)
- params = net.infer_param_pipeline_stage()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
-
-
- class TestPipelineSplitWithNoOptimizer:
- def setup_method(self):
- self.output_path = './graphs' + self.__str__()
- context.set_context(save_graphs=True,
- save_graphs_path=self.output_path)
-
- def teardown_method(self):
- shutil.rmtree(self.output_path)
-
- def cat_fp16_from_ir(self, pattern, target_count):
- """
- This function will check the float16 count with the golden one.
- :param pattern: The match pattern for the specific count
- :param target_count: The gold float16 count in the Ir files
- """
- ir_files = glob.glob(os.path.join(self.output_path, 'rank_0', '*_validate*.ir'))
- assert len(ir_files) == 1
- appear_count = 0
- with open(ir_files[0], 'r') as fp:
- for line in fp:
- if pattern in line:
- appear_count += 1
- assert appear_count == target_count
-
- def test_pipeline_with_no_parallel_optimizer_and_micro(self):
- """
- Feature: Test Pipeline with Mirror Operator.
- Description: When using fp16 computation, there should be only one mirror operator for one parameter.
- Expectation: the number of the float16 tensor is not equal to 16, 16 is obtained by manually checked graph.
- the number of the Mirror is not equal to 2, 2 is obtained by manually checked graph.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2,
- enable_parallel_optimizer=False)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- pipeline_net = PipelineSplit(strategy1, strategy2, dtype=ms.float16)
- run_pipeline_split_function(pipeline_net, micro_batch_interleaved=1)
- self.cat_fp16_from_ir(pattern='grad_mirror_MirrorMicroStepOperator',
- target_count=2)
- self.cat_fp16_from_ir(pattern='Cast(',
- target_count=15)
-
- def test_pipeline_with_micro_batch_no_parallel_optimizer(self):
- """
- Feature: Test Pipeline with Mirror Operator, when enabled the micro batch interleave.
- Description: When using fp16 computation, there should be only one mirror operator for one parameter.
- Expectation: the number of the float16 tensor is not equal to 16, 16 is obtained by manually checked graph.
- the number of the Mirror is not equal to 2, 2 is obtained by manually checked graph.
- """
- context.set_auto_parallel_context(device_num=32, global_rank=0, pipeline_stages=2,
- enable_parallel_optimizer=False)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- strategy1 = ((16, 1), (1, 1))
- strategy2 = ((8, 1), (1, 1))
- pipeline_net = PipelineSplit(strategy1, strategy2, dtype=ms.float16)
- run_pipeline_split_function(pipeline_net, micro_batch_interleaved=2)
- self.cat_fp16_from_ir(pattern='grad_mirror_MirrorMicroStepOperator',
- target_count=2)
- self.cat_fp16_from_ir(pattern='Cast(',
- target_count=27)
-
- def test_pipeline_split_stage0_device_num_48():
- """
- Feature: test PipelineSplit with 48 devices in auto parallel.
- Description: net with pipeline parallel in auto parallel mode using 48 devices, stage0.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=48, global_rank=0, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- context.set_context(device_target="Ascend")
- data = Tensor(np.ones([32 * 6, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64 * 6, 64]), dtype=ms.float32)
- strategy1 = ((3, 8), (8, 1))
- strategy2 = ((24, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[0].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.1.param"
- assert param.name != "cell.block.1.param1"
-
- def test_pipeline_split_stage1_device_num_48():
- """
- Feature: test PipelineSplit with 48 devices in auto parallel.
- Description: net with pipeline parallel in auto parallel mode using 48 devices, stage1.
- Expectation: success.
- """
- context.set_auto_parallel_context(device_num=48, global_rank=24, pipeline_stages=2)
- context.set_auto_parallel_context(parallel_mode="semi_auto_parallel")
- context.set_context(device_target="Ascend")
- data = Tensor(np.ones([32 * 6, 64]), dtype=ms.float32)
- label = Tensor(np.ones([64 * 6, 64]), dtype=ms.float32)
- strategy1 = ((3, 8), (8, 1))
- strategy2 = ((24, 1), (1, 1))
- net = PipelineCell(PipelineSplit(strategy1, strategy2), 4)
- params = net.network.cell.block[1].trainable_params()
- dataset = DatasetLenet(data, label, 3)
- optimizer = nn.Lamb(params, learning_rate=0.01)
- model = Model(net, optimizer=optimizer)
- model.train(2, dataset, dataset_sink_mode=False)
- for _, param in model._train_network.parameters_and_names():
- assert param.name != "cell.block.0.param"
- assert param.name != "cell.block.0.param1"
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