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py_pass.cc 13 kB

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  1. /**
  2. * Copyright 2020-2021 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 "frontend/optimizer/py_pass.h"
  17. #include <deque>
  18. #include <vector>
  19. #include "utils/hash_set.h"
  20. #include "ir/func_graph.h"
  21. #include "ir/manager.h"
  22. #include "pybind_api/ir/primitive_py.h"
  23. #include "ir/scalar.h"
  24. #include "ir/graph_utils.h"
  25. #include "pipeline/jit/parse/parse_base.h"
  26. #include "pipeline/jit/resource.h"
  27. #include "frontend/optimizer/py_pass_manager.h"
  28. #include "utils/info.h"
  29. namespace mindspore {
  30. namespace opt {
  31. namespace python_pass {
  32. namespace internal {
  33. const char PARAMETER_MODULE[] = "mindspore.common.parameter";
  34. const char PARAMETER_CLASS[] = "Parameter";
  35. const char SET_PARAM[] = "__setattr__";
  36. AnfNodePtr ProcessSinglePattern(const PatternPtr &pattern, const MatchResultPtr &res, const FuncGraphPtr &func_graph,
  37. const FuncGraphPtr &top_graph);
  38. AnfNodePtr BuildTarget(const PatternPtr &pattern, const FuncGraphPtr &func_graph, const FuncGraphPtr &top_graph,
  39. const MatchResultPtr &res);
  40. void ReflectParamBackToPython(const AnfNodePtr &param, const string &param_name, const tensor::TensorPtr &default_input,
  41. bool requires_grad, bool layerwise_parallel);
  42. bool IsTraversable(const AnfNodePtr &node) {
  43. if (node == nullptr) {
  44. return false;
  45. }
  46. if (node->isa<CNode>() || node->isa<Parameter>()) {
  47. return true;
  48. }
  49. if (IsValueNode<FuncGraph>(node) || IsValueNode<RefKey>(node)) {
  50. return true;
  51. }
  52. return false;
  53. }
  54. AnfNodePtr BuildPrimitive(const PatternPtr &pattern) {
  55. // Build up AnfNode from primitive
  56. auto prim_pattern = pattern->cast<PrimPtr>();
  57. MS_EXCEPTION_IF_NULL(prim_pattern);
  58. PrimitivePyPtr prim = prim_pattern->matched_primitive();
  59. MS_EXCEPTION_IF_NULL(prim);
  60. // Make value node out of primitives
  61. return std::make_shared<ValueNode>(prim);
  62. }
  63. AnfNodePtr BuildNewTensor(const PatternPtr &pattern) {
  64. // Build a ValueNode from TensorPtr
  65. auto new_tensor_pattern = pattern->cast<NewTensorPtr>();
  66. MS_EXCEPTION_IF_NULL(new_tensor_pattern);
  67. auto input_tensor = new_tensor_pattern->input_tensor();
  68. MS_EXCEPTION_IF_NULL(input_tensor);
  69. return std::make_shared<ValueNode>(input_tensor);
  70. }
  71. AnfNodePtr BuildPrimitiveValueNode(const PatternPtr &pattern, const MatchResultPtr &res, const FuncGraphPtr &fg,
  72. const FuncGraphPtr &top_graph) {
  73. auto call_pattern = pattern->cast<CallPtr>();
  74. MS_EXCEPTION_IF_NULL(call_pattern);
  75. auto prim = call_pattern->prim_value();
  76. if (prim != nullptr) {
  77. return std::make_shared<ValueNode>(prim);
  78. }
  79. auto prim_pattern = call_pattern->prim_pattern();
  80. MS_EXCEPTION_IF_NULL(prim_pattern);
  81. return ProcessSinglePattern(prim_pattern, res, fg, top_graph);
  82. }
  83. AnfNodePtr BuildNewParameter(const PatternPtr &pattern, const MatchResultPtr &res, const FuncGraphPtr &top_graph) {
  84. auto new_para_pattern = pattern->cast<NewParameterPtr>();
  85. MS_EXCEPTION_IF_NULL(new_para_pattern);
  86. if (!new_para_pattern->built()) {
  87. static int64_t parameter_id = 0;
  88. auto para_name = new_para_pattern->para_name() + new_para_pattern->unique_name() + std::to_string(parameter_id++);
  89. auto para_node = std::make_shared<Parameter>(top_graph);
  90. MS_EXCEPTION_IF_NULL(para_node);
  91. para_node->set_name(para_name);
  92. // Set function graph
  93. para_node->set_func_graph(top_graph);
  94. // Set Debug Info
  95. auto debug_info = std::make_shared<NodeDebugInfo>(para_name);
  96. para_node->set_debug_info(debug_info);
  97. // Set abstract
  98. auto default_value = new_para_pattern->default_tensor();
  99. MS_EXCEPTION_IF_NULL(default_value);
  100. para_node->set_abstract(default_value->ToAbstract()->Broaden());
  101. res->add_entry(pattern, para_node);
  102. top_graph->add_parameter(para_node);
  103. // Reflect back to Cell._params
  104. internal::ReflectParamBackToPython(para_node, para_name, default_value, new_para_pattern->requires_grad(),
  105. new_para_pattern->layerwise_parallel());
  106. MS_LOG(WARNING) << "Adding parameter: " + para_node->ToString() + " parameter name:" + para_node->name();
  107. new_para_pattern->set_built(true);
  108. return para_node;
  109. } else {
  110. // Built, fetch the node
  111. auto para_node = res->get_node(pattern);
  112. MS_EXCEPTION_IF_NULL(para_node);
  113. return para_node;
  114. }
  115. }
  116. AnfNodePtr BuildImmNode(const PatternPtr &pattern) {
  117. auto imm_pattern = pattern->cast<ImmPtr>();
  118. MS_EXCEPTION_IF_NULL(imm_pattern);
  119. auto value = imm_pattern->value();
  120. auto scalar_value_ptr = std::make_shared<Int64Imm>(value);
  121. return std::make_shared<ValueNode>(scalar_value_ptr);
  122. }
  123. AnfNodePtr ProcessSinglePattern(const PatternPtr &pattern, const MatchResultPtr &res, const FuncGraphPtr &func_graph,
  124. const FuncGraphPtr &top_graph) {
  125. auto target_node = res->get_node(pattern);
  126. if (target_node != nullptr) {
  127. // If pattern is NewParameter, check whether it shouldn't last and is not built
  128. auto new_para = pattern->cast<NewParameterPtr>();
  129. if (new_para == nullptr || new_para->should_last() || new_para->built()) {
  130. return target_node;
  131. }
  132. }
  133. // Build up new node from pattern
  134. if (pattern->isa<Prim>()) {
  135. return BuildPrimitive(pattern);
  136. } else if (pattern->isa<NewTensor>()) {
  137. return BuildNewTensor(pattern);
  138. } else if (pattern->isa<Call>()) {
  139. return BuildPrimitiveValueNode(pattern, res, func_graph, top_graph);
  140. } else if (pattern->isa<NewParameter>()) {
  141. // Add new parameter to top graph instead of current graph
  142. return BuildNewParameter(pattern, res, top_graph);
  143. } else if (pattern->isa<Imm>()) {
  144. return BuildImmNode(pattern);
  145. }
  146. MS_LOG(EXCEPTION) << "Cannot find or build target node, pattern: " + pattern->unique_name() + "\n";
  147. }
  148. AnfNodePtr ProcessComplexPatternFirstInput(const PatternPtr &pattern, const MatchResultPtr &res,
  149. const FuncGraphPtr &func_graph, const FuncGraphPtr &top_graph) {
  150. if (pattern->isa<Call>()) {
  151. return BuildPrimitiveValueNode(pattern, res, func_graph, top_graph);
  152. }
  153. return nullptr;
  154. }
  155. AnfNodePtr BuildTarget(const PatternPtr &pattern, const FuncGraphPtr &func_graph, const FuncGraphPtr &top_graph,
  156. const MatchResultPtr &res) {
  157. auto target_inputs = pattern->inputs();
  158. if (target_inputs.size() == 0) {
  159. auto new_anf_node = ProcessSinglePattern(pattern, res, func_graph, top_graph);
  160. if (new_anf_node != nullptr) {
  161. res->add_entry(pattern, new_anf_node);
  162. }
  163. return new_anf_node;
  164. }
  165. // Build up the AnfNode in a recursive manner
  166. std::vector<AnfNodePtr> new_inputs;
  167. auto prim_value_node = ProcessComplexPatternFirstInput(pattern, res, func_graph, top_graph);
  168. MS_EXCEPTION_IF_NULL(prim_value_node);
  169. new_inputs.push_back(prim_value_node);
  170. for (auto &iter : target_inputs) {
  171. if (iter == pattern) {
  172. MS_LOG(EXCEPTION) << "Circle references. Got pattern: " + pattern->unique_name() + "\n";
  173. }
  174. auto input_node = BuildTarget(iter, func_graph, top_graph, res);
  175. if (input_node == nullptr) {
  176. MS_LOG(EXCEPTION) << "Failed to build input node for pattern : " + iter->unique_name() + "\n";
  177. }
  178. new_inputs.push_back(input_node);
  179. }
  180. auto new_c_node = func_graph->NewCNode(new_inputs);
  181. res->add_entry(pattern, new_c_node);
  182. return new_c_node;
  183. }
  184. void ReflectParamBackToPython(const AnfNodePtr &param, const string &param_name, const tensor::TensorPtr &default_input,
  185. bool requires_grad, bool layerwise_parallel) {
  186. // 1. Get current cell object
  187. auto ppm = opt::python_pass::PyPassManager::GetInstance();
  188. auto resource = ppm->GetResource();
  189. py::object top_cell = resource->source_input();
  190. if (py::isinstance<py::none>(top_cell)) {
  191. MS_LOG(EXCEPTION) << "Failed to get top cell from resource.";
  192. }
  193. // 2. Clone default_input tensor
  194. MS_EXCEPTION_IF_NULL(default_input);
  195. auto default_tensor = std::make_shared<tensor::Tensor>(default_input->data_type(), default_input->shape_c(),
  196. default_input->data_c(), (size_t)default_input->Size());
  197. // 3. New a Parameter object with the above-specified args
  198. py::object parameter_class = py::module::import(PARAMETER_MODULE).attr(PARAMETER_CLASS);
  199. py::object new_parameter = parameter_class(default_tensor, param_name, requires_grad, layerwise_parallel);
  200. // 4. Add the new python Parameter object to Cell's _params attributes
  201. top_cell.attr(SET_PARAM)(param_name, new_parameter);
  202. // 5. Set default_param for param_node
  203. ValuePtr param_value = nullptr;
  204. bool converted = parse::ConvertData(new_parameter, &param_value, false);
  205. if (!converted) {
  206. MS_LOG(EXCEPTION) << "Failed to convert new parameter to ValuePtr.";
  207. }
  208. MS_EXCEPTION_IF_NULL(param);
  209. auto param_node = param->cast<ParameterPtr>();
  210. MS_EXCEPTION_IF_NULL(param_node);
  211. param_node->set_default_param(param_value);
  212. }
  213. void Reset(const PatternPtr &pattern) {
  214. if (pattern->isa<Prim>()) {
  215. auto prim_pattern = pattern->cast<PrimPtr>();
  216. prim_pattern->reset();
  217. } else if (pattern->isa<NewParameter>()) {
  218. auto new_param_pattern = pattern->cast<NewParameterPtr>();
  219. new_param_pattern->reset();
  220. } else if (pattern->isa<Call>()) {
  221. auto call_with_pattern = pattern->cast<CallPtr>();
  222. for (const auto &sub_pattern : call_with_pattern->inputs()) {
  223. Reset(sub_pattern);
  224. }
  225. }
  226. }
  227. } // namespace internal
  228. AnfNodePtr PythonPass::Run(const FuncGraphPtr &func_graph, const FuncGraphPtr &top_graph, const AnfNodePtr &node,
  229. const MatchResultPtr &res) {
  230. auto match_res = src_pattern_->match(node);
  231. if (match_res != nullptr) {
  232. res->merge(match_res);
  233. auto new_node = internal::BuildTarget(dst_pattern_, func_graph, top_graph, res);
  234. internal::Reset(dst_pattern());
  235. return new_node;
  236. }
  237. internal::Reset(src_pattern());
  238. return nullptr;
  239. }
  240. bool PythonPass::Run(const FuncGraphPtr &func_graph, const MatchResultPtr &res) {
  241. MS_EXCEPTION_IF_NULL(func_graph);
  242. MS_EXCEPTION_IF_NULL(dst_pattern_);
  243. if (src_pattern_ == nullptr) {
  244. // Add NewParameter
  245. auto new_para_pattern = dst_pattern_->cast<NewParameterPtr>();
  246. if (new_para_pattern == nullptr) {
  247. MS_LOG(EXCEPTION) << "Expect NewParameter pattern for target if src pattern is null.";
  248. }
  249. auto para_name = new_para_pattern->para_name() + new_para_pattern->unique_name();
  250. auto para_node = std::make_shared<Parameter>(func_graph);
  251. MS_EXCEPTION_IF_NULL(para_node);
  252. para_node->set_name(para_name);
  253. // Set function graph
  254. para_node->set_func_graph(func_graph);
  255. // Set Debug Info
  256. auto debug_info = std::make_shared<NodeDebugInfo>(para_name);
  257. para_node->set_debug_info(debug_info);
  258. // Set abstract
  259. auto default_value = new_para_pattern->default_tensor();
  260. MS_EXCEPTION_IF_NULL(default_value);
  261. para_node->set_abstract(default_value->ToAbstract()->Broaden());
  262. res->add_entry(dst_pattern_, para_node);
  263. func_graph->add_parameter(para_node);
  264. // Reflect back to Cell._params
  265. internal::ReflectParamBackToPython(para_node, para_name, default_value, new_para_pattern->requires_grad(),
  266. new_para_pattern->layerwise_parallel());
  267. MS_LOG(WARNING) << "[Gen]Adding parameter: " + para_node->ToString() + " parameter name:" + para_node->name();
  268. return true;
  269. }
  270. FuncGraphManagerPtr manager = func_graph->manager();
  271. MS_EXCEPTION_IF_NULL(manager);
  272. auto func_graphs = manager->func_graphs();
  273. bool changes = false;
  274. for (auto &fg : func_graphs) {
  275. manager->AddFuncGraph(fg);
  276. auto graph_nodes_sorted = TopoSort(fg->output());
  277. // Traverse once
  278. for (auto &node : graph_nodes_sorted) {
  279. AnfNodePtr new_node = Run(fg, func_graph, node, res);
  280. if (new_node != nullptr && new_node != node) {
  281. MS_LOG(WARNING) << "Matched";
  282. (void)manager->Replace(node, new_node);
  283. changes = true;
  284. }
  285. }
  286. }
  287. return changes;
  288. }
  289. } // namespace python_pass
  290. } // namespace opt
  291. } // namespace mindspore