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- /**
- * Copyright 2019-2021 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.
- */
-
- #include <string>
- #include <list>
- #include <vector>
- #include "common/common_test.h"
- #include "frontend/parallel/strategy.h"
- #include "frontend/parallel/ops_info/prelu_info.h"
- #include "frontend/parallel/device_manager.h"
- #include "frontend/parallel/step_parallel.h"
-
- namespace mindspore {
- namespace parallel {
-
- class PReLUInfo;
- using PReLUInfoPtr = std::shared_ptr<PReLUInfo>;
- PReLUInfoPtr prelu;
- PReLUInfoPtr prelu_2d;
-
- class TestPReLUInfo : public UT::Common {
- public:
- TestPReLUInfo() {}
- void SetUp();
- void TearDown() {}
- };
-
- void TestPReLUInfo::SetUp() {
- RankList dev_list;
-
- for (int32_t i = 0; i < 1050; i++) {
- dev_list.push_back(i);
- }
-
- RankList stage_map;
- stage_map.push_back(1024);
- stage_map.push_back(26);
- int32_t local_dev = 0;
- // create a new g_device_manager
- g_device_manager = std::make_shared<DeviceManager>();
- g_device_manager->Init(dev_list, local_dev, stage_map, "hccl");
- Shapes inputs_shape = {{64, 4, 8, 16}, {4}};
- Shapes outputs_shape = {{64, 4, 8, 16}};
- mindspore::HashMap<std::string, ValuePtr> attr;
- prelu = std::make_shared<PReLUInfo>("prelu_info", inputs_shape, outputs_shape, attr);
-
- Shapes inputs_shape_2d = {{1024, 4}, {4}};
- Shapes outputs_shape_2d = {{1024, 4}};
- mindspore::HashMap<std::string, ValuePtr> attr_2d;
- prelu_2d = std::make_shared<PReLUInfo>("prelu_info", inputs_shape_2d, outputs_shape_2d, attr_2d);
- }
-
- TEST_F(TestPReLUInfo, InferDevMatrixShape1) {
- Strategys inputs = {{2, 1, 8, 16}, {1}};
- StrategyPtr strategy = NewStrategy(0, inputs);
-
- prelu->Init(strategy, nullptr);
- Shape dev_matrix_shape = prelu->dev_matrix_shape();
-
- Shape expect = {2, 1, 8, 16, 4};
- ASSERT_EQ(dev_matrix_shape, expect);
- }
-
- TEST_F(TestPReLUInfo, InferSliceShape1) {
- Strategys str = {{2, 1, 8, 16}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
-
- prelu->Init(strategy, nullptr);
- std::vector<TensorInfo> inputs = prelu->inputs_tensor_info();
- std::vector<TensorInfo> outputs = prelu->outputs_tensor_info();
-
- Shape input_slice_shape_expect = {32, 4, 1, 1};
- Shape param_slice_shape_expect = {4};
- Shape output_slice_shape_expect = {32, 4, 1, 1};
-
- TensorInfo input_tensor_info = inputs.at(0);
- TensorInfo param_tensor_info = inputs.at(1);
- TensorInfo output_tensor_info = outputs.at(0);
-
- Shape input_slice_shape = input_tensor_info.slice_shape();
- Shape output_slice_shape = output_tensor_info.slice_shape();
-
- ASSERT_EQ(input_slice_shape, input_slice_shape_expect);
- ASSERT_EQ(output_slice_shape, output_slice_shape_expect);
- }
-
- TEST_F(TestPReLUInfo, GetTensorLayout1) {
- Strategys str = {{2, 1, 8, 16}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
-
- prelu->Init(strategy, nullptr);
- std::vector<TensorInfo> inputs = prelu->inputs_tensor_info();
- std::vector<TensorInfo> outputs = prelu->outputs_tensor_info();
-
- TensorMap input_expect = {4, 3, 2, 1};
- TensorMap param_expect = {2};
- TensorMap output_expect = {4, 3, 2, 1};
-
- TensorInfo input_tensor_info = inputs.at(0);
- TensorInfo param_tensor_info = inputs.at(1);
- TensorInfo output_tensor_info = outputs.at(0);
-
- Map input_tensor_map = input_tensor_info.tensor_layout().origin_tensor_map();
- Map param_tensor_map = param_tensor_info.tensor_layout().origin_tensor_map();
- Map output_tensor_map = output_tensor_info.tensor_layout().origin_tensor_map();
-
- ASSERT_EQ(input_tensor_map.array(), input_expect);
- ASSERT_EQ(output_tensor_map.array(), output_expect);
- }
-
- TEST_F(TestPReLUInfo, GetMirrorOPs1) {
- Strategys str = {{2, 1, 2, 2}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
- prelu->Init(strategy, nullptr);
- MirrorOps mirror_ops = prelu->mirror_ops();
- OperatorVector mirror_op = mirror_ops.at(1);
- OperatorArgs operator_args = mirror_op.at(0).second;
- std::string arg0_name = operator_args.first.at(0).first;
- ValuePtr arg0_value = operator_args.first.at(0).second;
- std::string group = arg0_value->cast<StringImmPtr>()->ToString();
-
- ASSERT_EQ(mirror_op.at(0).first, "_MirrorOperator");
- ASSERT_EQ(mirror_op.size(), 1);
- ASSERT_EQ(arg0_name, "group");
- }
-
- TEST_F(TestPReLUInfo, CheckStrategy1) {
- // Success: {{2,1,8,16},{1}}
- Strategys inputs = {{2, 1, 8, 16}};
- StrategyPtr strategy = NewStrategy(0, inputs);
- Status ret = prelu->Init(strategy, nullptr);
- ASSERT_EQ(ret, FAILED);
- }
-
- TEST_F(TestPReLUInfo, CheckStrategy2) {
- Strategys inputs = {{2, 4, 8, 16}, {4}};
- StrategyPtr strategy = NewStrategy(0, inputs);
- Status ret = prelu->Init(strategy, nullptr);
- ASSERT_EQ(ret, SUCCESS);
- }
-
- TEST_F(TestPReLUInfo, AutoStrategy1) {
- ASSERT_EQ(prelu->GenerateStrategies(0), Status::SUCCESS);
- std::vector<std::shared_ptr<StrategyWithCost>> sc = prelu->GetStrategyCost();
-
- Shapes splittable_inputs = {{1, 0, 1, 1}, {0}};
- std::vector<StrategyPtr> sp_vector;
- Shapes inputs_shape = {{64, 4, 8, 16}, {4}};
- GenerateStrategiesForIndependentInputs(0, inputs_shape, splittable_inputs, &sp_vector);
- for (auto stra : sp_vector) {
- auto stra0 = stra->GetInputDim()[0];
- auto stra1 = stra->GetInputDim()[1];
- ASSERT_EQ(stra0[1], 1);
- ASSERT_EQ(stra1[0], 1);
- }
- }
-
- TEST_F(TestPReLUInfo, InferDevMatrixShape_2d1) {
- Strategys inputs = {{128, 1}, {1}};
- StrategyPtr strategy = NewStrategy(0, inputs);
-
- prelu_2d->Init(strategy, nullptr);
- Shape dev_matrix_shape = prelu_2d->dev_matrix_shape();
-
- Shape expect = {128, 1, 8};
- ASSERT_EQ(dev_matrix_shape, expect);
- }
-
- TEST_F(TestPReLUInfo, InferSliceShape_2d1) {
- Strategys str = {{128, 1}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
-
- prelu_2d->Init(strategy, nullptr);
- std::vector<TensorInfo> inputs = prelu_2d->inputs_tensor_info();
- std::vector<TensorInfo> outputs = prelu_2d->outputs_tensor_info();
-
- Shape input_slice_shape_expect = {8, 4};
- Shape param_slice_shape_expect = {4};
- Shape output_slice_shape_expect = {8, 4};
-
- TensorInfo input_tensor_info = inputs.at(0);
- TensorInfo param_tensor_info = inputs.at(1);
- TensorInfo output_tensor_info = outputs.at(0);
-
- Shape input_slice_shape = input_tensor_info.slice_shape();
- Shape output_slice_shape = output_tensor_info.slice_shape();
-
- ASSERT_EQ(input_slice_shape, input_slice_shape_expect);
- ASSERT_EQ(output_slice_shape, output_slice_shape_expect);
- }
-
- TEST_F(TestPReLUInfo, GetTensorLayout_2d1) {
- Strategys str = {{128, 1}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
-
- prelu_2d->Init(strategy, nullptr);
- std::vector<TensorInfo> inputs = prelu_2d->inputs_tensor_info();
- std::vector<TensorInfo> outputs = prelu_2d->outputs_tensor_info();
-
- TensorMap input_expect = {2, 1};
- TensorMap param_expect = {0};
- TensorMap output_expect = {2, 1};
-
- TensorInfo input_tensor_info = inputs.at(0);
- TensorInfo param_tensor_info = inputs.at(1);
- TensorInfo output_tensor_info = outputs.at(0);
-
- Map input_tensor_map = input_tensor_info.tensor_layout().origin_tensor_map();
- Map param_tensor_map = param_tensor_info.tensor_layout().origin_tensor_map();
- Map output_tensor_map = output_tensor_info.tensor_layout().origin_tensor_map();
-
- ASSERT_EQ(input_tensor_map.array(), input_expect);
- ASSERT_EQ(output_tensor_map.array(), output_expect);
- }
-
- TEST_F(TestPReLUInfo, GetMirrorOPs_2d1) {
- Strategys str = {{128, 1}, {1}};
- StrategyPtr strategy = NewStrategy(0, str);
- prelu_2d->Init(strategy, nullptr);
- MirrorOps mirror_ops = prelu_2d->mirror_ops();
- OperatorVector mirror_op = mirror_ops.at(1);
- OperatorArgs operator_args = mirror_op.at(0).second;
- std::string arg0_name = operator_args.first.at(0).first;
- ValuePtr arg0_value = operator_args.first.at(0).second;
- std::string group = arg0_value->cast<StringImmPtr>()->ToString();
-
- ASSERT_EQ(mirror_op.at(0).first, "_MirrorOperator");
- ASSERT_EQ(mirror_op.size(), 1);
- ASSERT_EQ(arg0_name, "group");
- }
-
- TEST_F(TestPReLUInfo, CheckStrategy_2d1) {
- // Success: {{2,1,8,16},{1}}
- Strategys inputs = {{128, 1}};
- StrategyPtr strategy = NewStrategy(0, inputs);
- Status ret = prelu_2d->Init(strategy, nullptr);
- ASSERT_EQ(ret, FAILED);
- }
-
- TEST_F(TestPReLUInfo, CheckStrategy_2d2) {
- Strategys inputs = {{128, 4}, {4}};
- StrategyPtr strategy = NewStrategy(0, inputs);
- Status ret = prelu_2d->Init(strategy, nullptr);
- ASSERT_EQ(ret, SUCCESS);
- }
-
- TEST_F(TestPReLUInfo, AutoStrategy_2d1) {
- ASSERT_EQ(prelu_2d->GenerateStrategies(0), Status::SUCCESS);
- std::vector<std::shared_ptr<StrategyWithCost>> sc = prelu_2d->GetStrategyCost();
-
- Shapes splittable_inputs = {{1, 0}, {0}};
- std::vector<StrategyPtr> sp_vector;
- Shapes inputs_shape = {{1024, 4}, {4}};
- GenerateStrategiesForIndependentInputs(0, inputs_shape, splittable_inputs, &sp_vector);
- for (auto stra : sp_vector) {
- auto stra0 = stra->GetInputDim()[0];
- auto stra1 = stra->GetInputDim()[1];
- ASSERT_EQ(stra0[1], 1);
- ASSERT_EQ(stra1[0], 1);
- }
- }
- } // namespace parallel
- } // namespace mindspore
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