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graph_runner_test.cc 8.7 kB

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  1. /**
  2. * Copyright 2020 Huawei Technologies Co., Ltd
  3. *
  4. * Licensed under the Apache License, Version 2.0 (the "License");
  5. * you may not use this file except in compliance with the License.
  6. * You may obtain a copy of the License at
  7. *
  8. * http://www.apache.org/licenses/LICENSE-2.0
  9. *
  10. * Unless required by applicable law or agreed to in writing, software
  11. * distributed under the License is distributed on an "AS IS" BASIS,
  12. * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. * See the License for the specific language governing permissions and
  14. * limitations under the License.
  15. */
  16. #include <iostream>
  17. #include <memory>
  18. #include "common/common_test.h"
  19. #include "ir/dtype.h"
  20. #include "transform/transform_base_test.h"
  21. #include "common/py_func_graph_fetcher.h"
  22. #include "pipeline/static_analysis/static_analysis.h"
  23. #include "operator/ops.h"
  24. #include "transform/df_graph_manager.h"
  25. #include "transform/convert.h"
  26. #include "utils/utils.h"
  27. #ifdef OPEN_SOURCE
  28. #include "ge/client/ge_api.h"
  29. #else
  30. #include "external/ge/ge_api.h"
  31. #endif
  32. #define private public
  33. #include "transform/graph_runner.h"
  34. namespace mindspore {
  35. namespace transform {
  36. class TestGraphRunner : public UT::Common {
  37. public:
  38. TestGraphRunner() {}
  39. void SetUp();
  40. static const std::shared_ptr<Float> kF64;
  41. static const std::shared_ptr<Float> kF32;
  42. private:
  43. };
  44. void TestGraphRunner::SetUp() { UT::InitPythonPath(); }
  45. const std::shared_ptr<Float> TestGraphRunner::kF64 = std::make_shared<Float>(64);
  46. const std::shared_ptr<Float> TestGraphRunner::kF32 = std::make_shared<Float>(32);
  47. std::shared_ptr<DfGraphConvertor> MakeGeGraph() {
  48. PrimitivePtr conv2d = prim::kPrimConv2D;
  49. conv2d->AddAttr("stride", MakeValue(1));
  50. conv2d->AddAttr("pad", MakeValue(0));
  51. conv2d->AddAttr("pad_mode", MakeValue(std::string("pad")));
  52. conv2d->AddAttr("dilation", MakeValue(1));
  53. conv2d->AddAttr("group", MakeValue(1));
  54. conv2d->AddAttr("mode", MakeValue(1));
  55. conv2d->AddAttr("out_channel", MakeValue(2));
  56. conv2d->AddAttr("kernel_size", MakeValue(std::vector<int>({2, 2})));
  57. conv2d->AddAttr("dilation", MakeValue(1));
  58. conv2d->AddAttr("data_format", MakeValue(kOpFormat_NCHW));
  59. FuncGraphPtr anf_graph = MakeFuncGraph(conv2d, 2);
  60. std::shared_ptr<FuncGraphManager> ir_graph_manager = MakeManager({anf_graph});
  61. return std::make_shared<DfGraphConvertor>(anf_graph);
  62. }
  63. namespace {
  64. std::shared_ptr<std::vector<MeTensorPtr>> DoExecGraph(const std::vector<MeTensorPtr>& inputs) {
  65. std::vector<GeTensorPtr> ge_tensor_ptrs = TransformUtil::ConvertInputTensors(inputs, kOpFormat_NCHW);
  66. std::vector<GeTensorPtr> ge_outputs;
  67. transform::GraphRunnerOptions options;
  68. transform::GraphRunner graph_runner(options);
  69. transform::RunOptions run_options;
  70. run_options.name = "fp_bp_subgraph";
  71. MS_LOG(INFO) << "Run func_graph begin, inputs size is: " << inputs.size();
  72. Status ret = graph_runner.RunGraph(run_options, ge_tensor_ptrs, &ge_outputs);
  73. MS_LOG(INFO) << "Run func_graph finish, outputs size is: " << ge_outputs.size();
  74. if (ret != Status::SUCCESS) {
  75. return nullptr;
  76. }
  77. std::vector<std::vector<int>> request_dims;
  78. std::vector<int> dims1 = {1, 1, 4, 4};
  79. std::vector<int> dims2 = {2, 3, 4, 5};
  80. std::vector<int> dims3 = {9, 9};
  81. request_dims.emplace_back(dims1);
  82. request_dims.emplace_back(dims2);
  83. request_dims.emplace_back(dims3);
  84. std::vector<MeTensorPtr> me_outputs = TransformUtil::ConvertGeTensors(ge_outputs, request_dims);
  85. return std::make_shared<std::vector<MeTensorPtr>>(me_outputs);
  86. }
  87. } // namespace
  88. TEST_F(TestGraphRunner, TestGeTensorConstructor) {
  89. // Init a data buffer
  90. float ge_tensor_data[] = {1.1, 2.2, 3.3, 4.4, 5.5, 6.6};
  91. // Create a Tensor with wanted data type and shape
  92. MeTensor tensor = MeTensor(TypeId::kNumberTypeFloat32, std::vector<int>({1, 2, 3}));
  93. // Get the writable data pointer from the tensor
  94. float* me_tensor_data = reinterpret_cast<float*>(tensor.data_c(true));
  95. // Copy data from buffer to tensor's data
  96. memcpy_s(me_tensor_data, static_cast<size_t>(tensor.data().nbytes()), ge_tensor_data, sizeof(ge_tensor_data));
  97. PrintMeTensor(&tensor);
  98. std::cout << "----------------------------------" << std::endl;
  99. py::tuple py_tuple =
  100. py::make_tuple(py::make_tuple(py::make_tuple(1.1f, 2.2f, 3.3f), py::make_tuple(4.4f, 5.5f, 6.6f)));
  101. py::array my_arry = py::array(py_tuple).attr("astype").cast<py::function>()("float32").cast<py::array>();
  102. MeTensor tensor_tuple = MeTensor(my_arry, kFloat32);
  103. PrintMeTensor(&tensor_tuple);
  104. py::array tensor_array = tensor.data();
  105. py::array tensor_tuple_array = tensor_tuple.data();
  106. assert(memcmp(ge_tensor_data, tensor_array.data(), sizeof(ge_tensor_data)) == 0);
  107. assert(memcmp(ge_tensor_data, tensor_tuple_array.data(), sizeof(ge_tensor_data)) == 0);
  108. }
  109. #if (!defined ENABLE_GE)
  110. TEST_F(TestGraphRunner, TestRunGraphException) {
  111. DfGraphManager& graph_manager = DfGraphManager::GetInstance();
  112. graph_manager.ClearGraph();
  113. std::map<string, MeTensorPtr> dict;
  114. MeTensorPtr init_tensor_ptr = MakeTensor(kF32, {2, 1, 2, 2});
  115. dict["x1"] = init_tensor_ptr;
  116. std::shared_ptr<DfGraphConvertor> convertor = MakeGeGraph();
  117. (*convertor).ConvertAllNode().InitParam(dict).BuildGraph();
  118. auto df_graph = (*convertor).GetComputeGraph();
  119. graph_manager.AddGraph("test_graph", df_graph);
  120. MeTensorPtr me_tensor_ptr = MakeTensor(kF32, {1, 1, 2, 3});
  121. MeTensorPtr input_ptr = MakeTensor(kF32, {1, 1, 4, 4});
  122. std::vector<MeTensorPtr> me_inputs;
  123. me_inputs.emplace_back(input_ptr);
  124. std::vector<MeTensorPtr> me_outputs;
  125. GraphRunnerOptions options;
  126. GraphRunner graph_runner(options);
  127. RunOptions run_options;
  128. ASSERT_TRUE(graph_runner.RunGraph(run_options, me_inputs, &me_outputs) != Status::SUCCESS);
  129. run_options.name = "test_graph";
  130. ASSERT_TRUE(graph_runner.RunGraph(run_options, me_inputs, &me_outputs) == Status::SUCCESS);
  131. GraphRunner graph_runner2(options);
  132. ASSERT_TRUE(graph_runner2.RunGraph(run_options, me_inputs, &me_outputs) == Status::SUCCESS);
  133. // when the GraphManager is empty
  134. graph_manager.ClearGraph();
  135. GraphRunner graph_runner3(options);
  136. ASSERT_TRUE(graph_runner3.RunGraph(run_options, me_inputs, &me_outputs) != Status::SUCCESS);
  137. }
  138. TEST_F(TestGraphRunner, TestRunGraph) {
  139. DfGraphManager& graph_manager = DfGraphManager::GetInstance();
  140. graph_manager.ClearGraph();
  141. std::shared_ptr<DfGraphConvertor> convertor = MakeGeGraph();
  142. std::map<std::string, MeTensorPtr> dict;
  143. dict.emplace("x1", MakeTensor(kF32, {2, 1, 2, 2}));
  144. (*convertor).ConvertAllNode().InitParam(dict).BuildGraph();
  145. graph_manager.AddGraph("test_graph", (*convertor).GetComputeGraph());
  146. TypePtr type_id = kFloat32;
  147. py::tuple tuple = py::make_tuple(
  148. py::make_tuple(py::make_tuple(py::make_tuple(1.0, 2.0, 3.0, 4.0), py::make_tuple(4.0, 5.0, 6.0, 7.0))),
  149. py::make_tuple(py::make_tuple(py::make_tuple(1.0, 2.0, 3.0, 4.0), py::make_tuple(4.0, 5.0, 6.0, 7.0))));
  150. py::array array = py::array(tuple);
  151. MeTensorPtr me_tensor_ptr = std::make_shared<MeTensor>(array, type_id);
  152. MS_LOG(INFO) << "inputs me tensor data is: ";
  153. PrintMeTensor(&(*me_tensor_ptr));
  154. std::vector<MeTensorPtr> me_inputs;
  155. me_inputs.emplace_back(me_tensor_ptr);
  156. std::vector<MeTensorPtr> me_outputs;
  157. GraphRunnerOptions options;
  158. GraphRunner graph_runner(options);
  159. RunOptions run_options;
  160. run_options.name = "test_graph";
  161. ASSERT_TRUE(graph_runner.RunGraph(run_options, me_inputs, &me_outputs) == Status::SUCCESS);
  162. MS_LOG(INFO) << "outputs me tensor data is: ";
  163. for (auto i = 0; i < me_outputs.size(); i++) {
  164. PrintMeTensor(&(*me_outputs[i]));
  165. }
  166. }
  167. TEST_F(TestGraphRunner, TestAPI) {
  168. DfGraphManager& graph_manager = DfGraphManager::GetInstance();
  169. graph_manager.ClearGraph();
  170. std::shared_ptr<DfGraphConvertor> convertor = MakeGeGraph();
  171. std::map<std::string, MeTensorPtr> dict;
  172. dict.emplace("x1", MakeTensor(kF32, {2, 1, 2, 2}));
  173. (*convertor).ConvertAllNode().InitParam(dict).BuildGraph();
  174. (*convertor).DrawComputeGraph("TestGraphRunner_TestAPI_Training.dot");
  175. graph_manager.AddGraph("fp_bp_subgraph", (*convertor).GetComputeGraph());
  176. MeTensorPtr input_ptr1 = MakeTensor(kF32, {1, 1, 4, 4});
  177. MeTensorPtr input_ptr2 = MakeTensor(kF32, {2, 3, 4, 5});
  178. MeTensorPtr input_ptr3 = MakeTensor(kF32, {9, 9, 1, 1});
  179. std::vector<MeTensorPtr> me_inputs;
  180. std::vector<MeTensorPtr> me_outputs;
  181. me_inputs.emplace_back(input_ptr1);
  182. me_inputs.emplace_back(input_ptr2);
  183. me_inputs.emplace_back(input_ptr3);
  184. auto ret = DoExecGraph(me_inputs);
  185. ASSERT_TRUE(ret != nullptr);
  186. me_outputs = *ret;
  187. MS_LOG(INFO) << "outputs me tensor data is: ";
  188. for (auto tensor : me_outputs) {
  189. PrintMeTensor(&(*tensor));
  190. }
  191. }
  192. #endif
  193. } // namespace transform
  194. } // namespace mindspore