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debug_services.h 26 kB

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  1. /**
  2. * Copyright 2020-2022 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. #ifndef MINDSPORE_CCSRC_DEBUG_DEBUG_SERVICES_H_
  17. #define MINDSPORE_CCSRC_DEBUG_DEBUG_SERVICES_H_
  18. #ifndef OFFLINE_DBG_MODE
  19. #define ONLINE_DBG_MODE
  20. #endif
  21. #ifdef OFFLINE_DBG_MODE
  22. #include "base/float16.h"
  23. #endif
  24. #include <math.h>
  25. #include <vector>
  26. #include <future>
  27. #include <string>
  28. #include <memory>
  29. #include <tuple>
  30. #include <unordered_map>
  31. #include <set>
  32. #include <mutex>
  33. #include <map>
  34. #include <limits>
  35. #include <sstream>
  36. #include <utility>
  37. #include "debug/tensor_load.h"
  38. #include "debug/tensor_data.h"
  39. namespace mindspore {
  40. class DebugServices {
  41. public:
  42. DebugServices();
  43. DebugServices(const DebugServices &other);
  44. DebugServices &operator=(const DebugServices &other);
  45. ~DebugServices() = default;
  46. enum File_ATTR_MATCH { START_POS = 0, END_POS = 1, STR_POS = 2 };
  47. enum CONDITION_TYPE {
  48. HAS_NAN,
  49. HAS_INF,
  50. IS_OVERFLOW,
  51. MAX_GT,
  52. MAX_LT,
  53. MIN_GT,
  54. MIN_LT,
  55. MAX_MIN_GT,
  56. MAX_MIN_LT,
  57. MEAN_GT,
  58. MEAN_LT,
  59. SD_GT,
  60. SD_LT,
  61. GENERAL_OVERFLOW,
  62. INIT,
  63. TOO_LARGE,
  64. TOO_SMALL,
  65. ALL_ZERO,
  66. CHANGE_TOO_LARGE,
  67. CHANGE_TOO_SMALL,
  68. NOT_CHANGED,
  69. RANGE
  70. };
  71. struct condition_t {
  72. CONDITION_TYPE type;
  73. float parameter = 0;
  74. };
  75. struct parameter_t {
  76. std::string name;
  77. bool disabled;
  78. double_t value;
  79. bool hit;
  80. double_t actual_value;
  81. void Evaluate(double_t actualValue, std::string inequality_type) {
  82. if (std::isnan(actualValue)) {
  83. return;
  84. }
  85. actual_value = actualValue;
  86. // if cannot extract inequality type from watchpoint
  87. // try extract from parameter name
  88. if (inequality_type.empty()) {
  89. auto pos = name.find_last_of('_');
  90. if (pos != std::string::npos) {
  91. inequality_type = name.substr(pos + 1);
  92. }
  93. }
  94. std::map<std::string, bool> condition_check{{"gt", actual_value > value},
  95. {"lt", actual_value < value},
  96. {"ge", actual_value >= value},
  97. {"le", actual_value <= value}};
  98. hit = condition_check[inequality_type];
  99. }
  100. };
  101. struct MappedFiles {
  102. std::vector<std::string> bin_files;
  103. // key is op_name and value is the vector of matched npy files to that op name.
  104. std::map<std::string, std::vector<std::string>> npy_files;
  105. };
  106. struct DumpFileAttr {
  107. std::string file_path;
  108. // name_to_match is the op_name extracted from file name.
  109. std::string name_to_match;
  110. std::string time_stamp;
  111. uint64_t slot = 0;
  112. bool is_output{false};
  113. };
  114. struct ProtoDump {
  115. bool operator==(const ProtoDump obj) {
  116. return (origin_node_name == obj.origin_node_name && dump_name == obj.dump_name && is_output == obj.is_output);
  117. }
  118. // name_to_match is the op_name between first and second dot in file_name
  119. std::string origin_node_name;
  120. std::string dump_name;
  121. bool is_output{false};
  122. };
  123. typedef std::vector<std::vector<int>> partitioned_numbers;
  124. typedef std::vector<std::vector<std::string>> partitioned_names;
  125. typedef std::vector<std::vector<std::vector<parameter_t>>> partitioned_parameters;
  126. typedef std::vector<std::vector<int32_t>> partitioned_error_code;
  127. typedef std::vector<std::vector<unsigned int>> partitioned_id;
  128. typedef std::set<std::string> NPYFilePool;
  129. typedef std::map<std::string, std::vector<std::tuple<std::string, std::string>>> DirMap;
  130. // key is dump dir path and value is vector of bin files and map of npy files.
  131. typedef std::map<std::string, DebugServices::MappedFiles> DumpFileMap;
  132. typedef std::map<std::string, std::vector<DebugServices::DumpFileAttr>> ProcessedNPYFiles;
  133. // bool shows if preprocess was successful, and DumpFileMap is preprocessed file result
  134. typedef std::tuple<bool, DumpFileMap> AsyncPreProcessResult;
  135. struct watchpoint_t {
  136. unsigned int id;
  137. condition_t condition;
  138. std::vector<std::tuple<std::string, bool>> check_node_list;
  139. std::vector<std::tuple<std::string, std::vector<uint32_t>>> check_node_device_list;
  140. std::vector<std::tuple<std::string, std::vector<uint32_t>>> check_node_graph_list;
  141. std::vector<parameter_t> parameter_list;
  142. size_t location = 0;
  143. std::string FindQualifiedTensorName(const std::string &tensor_name, unsigned const int &tensor_device_id,
  144. unsigned const int &tensor_root_graph_id) const {
  145. size_t indx = 0;
  146. for (auto check_node : check_node_list) {
  147. std::string w_name = std::get<0>(check_node);
  148. bool w_type = std::get<1>(check_node);
  149. auto found = w_name.find_last_of('/');
  150. bool check_tensor_name = found != std::string::npos && w_name.substr(found + 1) == tensor_name;
  151. bool check_node_name =
  152. (w_type && (tensor_name == w_name || w_name == "*")) || (!w_type && tensor_name == w_name);
  153. if (check_tensor_name || check_node_name) {
  154. // online debugger only support single card
  155. if (check_node_device_list.empty()) {
  156. return w_name;
  157. }
  158. auto device_vec = std::get<1>(check_node_device_list[indx]);
  159. auto root_graph_vec = std::get<1>(check_node_graph_list[indx]);
  160. auto iter1 = std::find(device_vec.begin(), device_vec.end(), tensor_device_id);
  161. auto iter2 = std::find(root_graph_vec.begin(), root_graph_vec.end(), tensor_root_graph_id);
  162. if (iter1 != device_vec.end() && iter2 != root_graph_vec.end()) {
  163. return w_name;
  164. }
  165. }
  166. indx++;
  167. }
  168. return {};
  169. }
  170. bool is_gt_wp() const {
  171. return condition.type == MAX_GT || condition.type == MIN_GT || condition.type == MEAN_GT ||
  172. condition.type == SD_GT || condition.type == MAX_MIN_GT;
  173. }
  174. bool is_lt_wp() const {
  175. return condition.type == MAX_LT || condition.type == MIN_LT || condition.type == MEAN_LT ||
  176. condition.type == SD_LT || condition.type == MAX_MIN_LT;
  177. }
  178. // mean or sd related condition set
  179. bool mean_sd_enabled() const {
  180. return condition.type == MEAN_LT || condition.type == MEAN_GT || condition.type == SD_LT ||
  181. condition.type == SD_GT || (condition.type == TOO_LARGE && !parameter_list[3].disabled) ||
  182. (condition.type == TOO_SMALL && !parameter_list[3].disabled);
  183. }
  184. bool abs_mean_enabled() const {
  185. return (condition.type == TOO_LARGE && !parameter_list[0].disabled) ||
  186. (condition.type == TOO_SMALL && !parameter_list[0].disabled);
  187. }
  188. bool tensor_update_ratio_mean_enabled() const {
  189. return condition.type == CHANGE_TOO_LARGE || condition.type == CHANGE_TOO_SMALL;
  190. }
  191. bool allclose_enabled() const { return condition.type == NOT_CHANGED; }
  192. bool range_enabled() const {
  193. return condition.type == RANGE && (!parameter_list[0].disabled || !parameter_list[1].disabled);
  194. }
  195. bool change_condition() const {
  196. return condition.type == CHANGE_TOO_LARGE || condition.type == CHANGE_TOO_SMALL || condition.type == NOT_CHANGED;
  197. }
  198. };
  199. struct TensorBase {
  200. TensorBase(uint64_t data_size, int dtype, const std::vector<int64_t> &shape)
  201. : data_size(data_size), dtype(dtype), shape(shape) {}
  202. TensorBase() = default;
  203. uint64_t data_size = 0;
  204. int dtype = 0;
  205. std::vector<int64_t> shape;
  206. };
  207. struct TensorStat {
  208. TensorStat(uint64_t data_size, int dtype, const std::vector<int64_t> &shape, bool is_bool, double max_value,
  209. double min_value, double avg_value, uint64_t count, uint64_t neg_zero_count, uint64_t pos_zero_count,
  210. uint64_t nan_count, uint64_t neg_inf_count, uint64_t pos_inf_count, uint64_t zero_count)
  211. : data_size(data_size),
  212. dtype(dtype),
  213. shape(shape),
  214. is_bool(is_bool),
  215. max_value(max_value),
  216. min_value(min_value),
  217. avg_value(avg_value),
  218. count(count),
  219. neg_zero_count(neg_zero_count),
  220. pos_zero_count(pos_zero_count),
  221. nan_count(nan_count),
  222. neg_inf_count(neg_inf_count),
  223. pos_inf_count(pos_inf_count),
  224. zero_count(zero_count) {}
  225. TensorStat() = default;
  226. uint64_t data_size = 0;
  227. int dtype = 0;
  228. std::vector<int64_t> shape;
  229. bool is_bool = false;
  230. double max_value = std::numeric_limits<double>::lowest();
  231. double min_value = std::numeric_limits<double>::max();
  232. double avg_value = 0.0;
  233. uint64_t count = 0;
  234. uint64_t neg_zero_count = 0;
  235. uint64_t pos_zero_count = 0;
  236. uint64_t nan_count = 0;
  237. uint64_t neg_inf_count = 0;
  238. uint64_t pos_inf_count = 0;
  239. uint64_t zero_count = 0;
  240. };
  241. static TensorStat GetTensorStatistics(const std::shared_ptr<TensorData> &tensor);
  242. void AddWatchpoint(
  243. int id, int watch_condition, float parameter, const std::vector<std::tuple<std::string, bool>> &check_node_list,
  244. const std::vector<parameter_t> &parameter_list,
  245. const std::vector<std::tuple<std::string, std::vector<uint32_t>>> *check_node_device_list = nullptr,
  246. const std::vector<std::tuple<std::string, std::vector<uint32_t>>> *check_node_graph_list = nullptr);
  247. void RemoveWatchpoint(unsigned int id);
  248. #ifdef OFFLINE_DBG_MODE
  249. void CheckOutofMemoryandNoValue(
  250. const bool no_mem_to_read, const bool error_on_no_value, const std::vector<watchpoint_t> watchpoints_to_check,
  251. const int chunk_id, partitioned_names *const chunk_names, partitioned_names *const chunk_slots,
  252. partitioned_numbers *const chunk_conditions, partitioned_id *const chunk_watchpoint_id,
  253. partitioned_parameters *const chunk_parameters, partitioned_error_code *const chunk_error_codes,
  254. partitioned_numbers *const chunk_exec_orders, partitioned_names *const chunk_time_stamp,
  255. partitioned_id *const chunk_device_id, partitioned_id *const chunk_root_graph_id,
  256. std::vector<unsigned int> *const device_id, std::vector<unsigned int> *const root_graph_id, const int exec_order,
  257. const std::string time_stamp, const std::string &qualified_tensor_name, const std::string &tensor_slot,
  258. const unsigned int device_id_val, const unsigned int root_graph_id_val,
  259. const std::vector<parameter_t> &parameter_list);
  260. #endif
  261. const void *PreparePrevTensor(uint64_t *prev_num_elements, const std::string &tensor_name);
  262. void CheckHistoryErrorCode(int *error_code, bool history_not_found);
  263. void CheckWatchpointsForTensor(partitioned_names *chunk_names, partitioned_names *chunk_slots,
  264. partitioned_numbers *chunk_conditions, partitioned_id *const chunk_watchpoint_id,
  265. partitioned_parameters *chunk_parameters, partitioned_error_code *chunk_error_codes,
  266. const std::vector<std::string> &op_overflows,
  267. ProcessedNPYFiles *const processed_npy_files, partitioned_numbers *chunk_exec_orders,
  268. std::vector<std::shared_ptr<TensorData>> *tensor_list, int begin, int end,
  269. int chunk_id, const bool init_dbg_suspend, const bool step_end, const bool recheck,
  270. partitioned_id *chunk_device_id, partitioned_id *chunk_root_graph_id,
  271. std::vector<uint64_t> *chunk_tensor_byte_size, partitioned_names *chunk_time_stamp,
  272. std::vector<unsigned int> *device_id, std::vector<unsigned int> *root_graph_id,
  273. bool error_on_no_value = false);
  274. void AddOpOverflowOpNames(const std::string &overflow_bin_path, std::vector<std::string> *op_names);
  275. void CheckWatchpoints(std::vector<std::string> *name, std::vector<std::string> *slot, std::vector<int> *condition,
  276. std::vector<unsigned int> *const watchpoint_id,
  277. std::vector<std::vector<parameter_t>> *parameters, std::vector<int32_t> *error_code,
  278. const std::vector<std::string> &op_overflows, ProcessedNPYFiles *const processed_npy_files,
  279. std::vector<std::shared_ptr<TensorData>> *tensor_list, bool init_dbg_suspend,
  280. const bool step_end, const bool recheck, std::vector<unsigned int> *device_id = nullptr,
  281. std::vector<unsigned int> *root_graph_id = nullptr, bool error_on_no_value = false);
  282. void SortWatchpointsInfo(std::vector<std::future<void>> *tensor_future_vec, std::vector<int> *exec_order,
  283. std::vector<std::string> *time_stamps, uint64_t *tensor_list_byte_size,
  284. std::vector<std::string> *name, std::vector<std::string> *slot, std::vector<int> *condition,
  285. std::vector<unsigned int> *const watchpoint_id,
  286. std::vector<std::vector<parameter_t>> *parameters, std::vector<int32_t> *error_codes,
  287. partitioned_names *chunk_names, partitioned_names *chunk_slots,
  288. partitioned_numbers *chunk_conditions, partitioned_id *chunk_watchpoint_id,
  289. partitioned_parameters *chunk_parameters, partitioned_error_code *chunk_error_codes,
  290. partitioned_numbers *chunk_exec_orders, partitioned_names *chunk_time_stamp,
  291. std::vector<uint64_t> *chunk_tensor_byte_size, partitioned_id *chunk_device_id,
  292. partitioned_id *chunk_root_graph_id, std::vector<unsigned int> *device_id,
  293. std::vector<unsigned int> *root_graph_id);
  294. #ifdef OFFLINE_DBG_MODE
  295. void SetTensorToNotInUse(const std::shared_ptr<TensorData> &tensor, const void *previous_tensor_ptr);
  296. #endif
  297. void AddWatchPointsToCheck(bool init_dbg_suspend, bool step_end, bool recheck,
  298. const std::shared_ptr<TensorData> &tensor, bool *previous_iter_tensor_needed,
  299. std::string *qualified_tensor_name, std::vector<watchpoint_t> *watchpoints_to_check);
  300. void SetCheckWatchpointsResult(const int chunk_id, partitioned_names *chunk_names, partitioned_names *chunk_slots,
  301. partitioned_numbers *chunk_conditions, partitioned_id *chunk_watchpoint_id,
  302. partitioned_parameters *chunk_parameters, partitioned_error_code *chunk_error_codes,
  303. partitioned_numbers *chunk_exec_orders, partitioned_names *chunk_time_stamp,
  304. partitioned_id *chunk_device_id, partitioned_id *chunk_root_graph_id,
  305. std::vector<unsigned int> *device_id, std::vector<unsigned int> *root_graph_id,
  306. const int exec_order, const std::string time_stamp,
  307. const std::string &qualified_tensor_name, const std::string &tensor_slot,
  308. const watchpoint_t &wp, const unsigned int device_id_val,
  309. const unsigned int root_graph_id_val, const std::vector<parameter_t> &parameter_list,
  310. const int32_t error_code);
  311. #ifdef OFFLINE_DBG_MODE
  312. void AddToTensorData(const std::string &backend_name, const std::string &time_stamp, const std::size_t slot,
  313. const unsigned int iteration, const unsigned int device_id, const unsigned int root_graph_id,
  314. const bool is_output, const std::size_t data_size, const std::string &type_name,
  315. const std::vector<int64_t> &shape, std::vector<char> *buffer,
  316. std::vector<std::shared_ptr<TensorData>> *const result_list);
  317. void SetPrefixToCheck(std::string *const prefix_dump_file_name, std::string *const slot_string_to_check,
  318. std::string *const dump_style_kernel_name, size_t slot, bool is_output);
  319. void ReadDumpedTensor(std::vector<std::string> backend_name, std::vector<size_t> slot,
  320. std::vector<unsigned int> device_id, std::vector<unsigned int> iteration,
  321. std::vector<unsigned int> root_graph_id, const std::vector<bool> &is_output,
  322. ProcessedNPYFiles *const processed_npy_files,
  323. std::vector<std::shared_ptr<TensorData>> *const result_list, bool *no_mem_to_read = nullptr);
  324. void ProcessTensorDataSync(const std::vector<ProtoDump> &proto_to_dump, const std::string &specific_dump_dir,
  325. ProcessedNPYFiles processed_npy_files, unsigned int iteration, unsigned int device_id,
  326. unsigned int root_graph_id, std::vector<std::shared_ptr<TensorData>> *const tensor_list,
  327. bool error_on_no_value = false);
  328. void ReadFileAndAddToTensor(const bool found, const std::vector<std::string> &matched_paths,
  329. const std::vector<std::string> &matched_time_stamps, const std::string &backend_name,
  330. const unsigned int device_id, const unsigned int root_graph_id, bool is_output,
  331. size_t slot, bool *no_mem_to_read, unsigned int iteration,
  332. std::vector<std::shared_ptr<TensorData>> *result_list);
  333. void ReadDumpedTensorSync(const std::string &prefix_dump_file_name, const std::string &specific_dump_dir,
  334. const std::string &backend_name, size_t slot, unsigned int device_id,
  335. unsigned int iteration, unsigned int root_graph_id, const bool &is_output,
  336. std::vector<std::shared_ptr<TensorData>> *result_list, bool *no_mem_to_read);
  337. void ReadDumpedTensorUtils(const std::string &specific_dump_dir, const std::string &prefix_dump_to_check,
  338. const std::string &backend_name, size_t slot, unsigned int device_id,
  339. unsigned int iteration, unsigned int root_graph_id, bool is_output,
  340. const ProcessedNPYFiles &processed_npy_files,
  341. std::vector<std::shared_ptr<TensorData>> *result_list, bool *no_mem_to_read);
  342. std::vector<std::shared_ptr<TensorData>> ReadNeededDumpedTensors(unsigned int iteration,
  343. ProcessedNPYFiles *const processed_npy_files,
  344. bool error_on_no_value = false);
  345. const void *GetPrevTensor(const std::shared_ptr<TensorData> &tensor, bool previous_iter_tensor_needed,
  346. uint64_t *prev_num_elements, bool *history_not_found);
  347. void ReadTensorFromNpy(const std::string &tensor_name, const std::string &file_name, std::string *const tensor_type,
  348. std::size_t *const size, std::vector<int64_t> *const shape,
  349. std::vector<char> **const data_buffer, bool *no_mem_to_read);
  350. AsyncPreProcessResult PreProcessDumpDirAsync(const std::string &specific_dump_dir);
  351. DebugServices::NPYFilePool PreProcessDumpDirSync(const std::string &specific_dump_dir);
  352. ProcessedNPYFiles ProcessNPYFilePool(const NPYFilePool &npy_file_pool);
  353. void ConvertToHostFormat(const DirMap &dir_to_files_map, NPYFilePool *const result_list);
  354. void ProcessConvertToHostFormat(const std::vector<std::string> &files_after_convert_in_dir,
  355. const std::string &dump_key, NPYFilePool *const result_list);
  356. void ConvertReadTensors(std::vector<std::string> backend_name, std::vector<size_t> slot,
  357. std::vector<unsigned int> device_id, std::vector<unsigned int> iteration,
  358. std::vector<unsigned int> root_graph_id, NPYFilePool *const result_list);
  359. void ConvertWatchPointNodes(const DumpFileMap &dump_dir_mapped_files, const std::vector<ProtoDump> &proto_dump,
  360. const std::string &specific_dump_dir, NPYFilePool *const result_list);
  361. void ProcessConvertList(const DumpFileMap &dump_dir_mapped_files, const std::string &prefix_dump_file_name,
  362. const std::string &specific_dump_dir, DirMap *dir_to_files_map,
  363. NPYFilePool *const result_list);
  364. void GetTensorDataInfoAsync(const std::vector<ProtoDump> &proto_dump, const std::string &specific_dump_dir,
  365. uint32_t iteration, uint32_t device_id, uint32_t root_graph_id,
  366. const ProcessedNPYFiles &processed_async_files,
  367. std::vector<std::shared_ptr<TensorData>> *const tensor_list);
  368. void SetGraphsHistory();
  369. std::vector<uint32_t> GetDumpRankIdList();
  370. void CheckDumpGraphIdList(std::vector<uint32_t> rank_id_list);
  371. void ReadGraphsHistory(uint32_t rank_id, uint32_t root_graph_id);
  372. std::map<std::tuple<uint32_t, uint32_t>, std::vector<std::tuple<std::string, bool>>> GetAllWpNodes();
  373. void ReadGraphRunIter(std::string file_path, std::tuple<uint32_t, uint32_t> rank_and_graph);
  374. std::string IterationString(unsigned int iteration);
  375. #endif
  376. void ReadNodesTensors(const std::vector<std::string> &name, std::vector<std::string> *ret_name,
  377. std::vector<const char *> *data_ptr, std::vector<ssize_t> *data_size,
  378. std::vector<unsigned int> *dtype, std::vector<std::vector<int64_t>> *const shape);
  379. void SearchNodesTensors(const std::vector<std::string> &name,
  380. std::vector<std::tuple<std::string, std::shared_ptr<TensorData>>> *result_list);
  381. #ifdef ONLINE_DBG_MODE
  382. bool IsWatchPoint(const std::string &kernel_name, const CNodePtr &kernel = nullptr) const;
  383. bool IsWatchPointNodeInput(const std::string &w_name, const CNodePtr &kernel) const;
  384. bool CompareCurrentRootGraph(uint32_t id);
  385. #endif
  386. std::vector<std::shared_ptr<TensorData>> GetTensor() const;
  387. std::shared_ptr<TensorData> GetTensor(const std::string &tensor_name) const;
  388. void AddAnalyzedTensorToCache(const bool recheck, const unsigned int id, const std::string &tensor_name);
  389. void EmptyCurrentTensor();
  390. #ifdef ONLINE_DBG_MODE
  391. bool DumpTensorToFile(const std::string &filepath, bool trans_flag, const std::string &host_fmt,
  392. const std::string &addr_format, const std::string &tensor_name, size_t slot,
  393. const std::vector<int64_t> &host_shape, TypeId host_type) const;
  394. #endif
  395. bool LoadNewTensor(const std::shared_ptr<TensorData> &tensor, bool keep_prev);
  396. uint32_t GetPrevIteration(const std::shared_ptr<TensorData> &tensor);
  397. void ResetLoadedTensors();
  398. #ifdef ONLINE_DBG_MODE
  399. std::vector<std::shared_ptr<TensorData>> GetNodeTensor(const CNodePtr &kernel);
  400. #endif
  401. // Find if any operation overflow happened on a particular node name
  402. bool CheckOpOverflow(std::string node_name_to_find, unsigned int device_id = 0, unsigned int root_graph_id = 0,
  403. unsigned int iteration = 0);
  404. std::string RemoveKernelGraphPrefix(std::string node_name_to_find);
  405. bool GetTaskIdStreamId(std::string file_name, std::string overflow_file_prefix, uint64_t *task_id,
  406. uint64_t *stream_id);
  407. bool GetAttrsFromFilename(const std::string &file_name, std::string *const node_name, uint64_t *task_id,
  408. uint64_t *stream_id);
  409. std::string RealPath(const std::string &input_path);
  410. uint64_t BytestoUInt64(const std::vector<char> &buffer);
  411. bool TensorExistsInCurrent(const std::string &tensor_name);
  412. void MoveTensorCurrentToPrev(const std::string &tensor_name);
  413. void AppendToCacheEvictQueue(const std::string &tensor_name);
  414. void SetNetName(std::string net_name);
  415. std::string GetNetName();
  416. void SetDumpDir(std::string dump_dir);
  417. std::string GetDumpDir();
  418. void SetSyncMode(bool is_sync_mode);
  419. bool GetSyncMode();
  420. void SetMemLimit(uint64_t max_mem_size);
  421. void CheckWatchpointProgress(size_t tensor_list_size);
  422. size_t GetProcessedTensorCount() const { return tensor_processed_count_; }
  423. private:
  424. std::mutex lock_;
  425. std::mutex wp_lock_;
  426. std::mutex overflow_wp_lock_;
  427. // to keep track of watchpoints that have been checked already for a tensor in current step
  428. std::unordered_map<std::string, std::set<int32_t>> wp_id_cache_;
  429. std::unordered_map<unsigned int, watchpoint_t> watchpoint_table_;
  430. // key is the iteration path, value is vector of op_names which have overflowed
  431. std::unordered_map<std::string, std::vector<std::string>> overflow_ops_;
  432. std::string net_name_;
  433. std::string dump_dir_;
  434. // store history of graphs that have been run (rank_id, graph_id)
  435. std::map<std::tuple<uint32_t, uint32_t>, std::vector<uint32_t>> graphs_run_history_;
  436. bool is_sync_mode_{false};
  437. // processed tensors in checkwatchpoint function
  438. std::atomic<size_t> tensor_processed_count_{0};
  439. bool wp_progress_enabled_{false};
  440. std::unique_ptr<std::thread> wp_progress_thread_;
  441. std::shared_ptr<TensorLoader> tensor_loader_;
  442. };
  443. } // namespace mindspore
  444. #endif // MINDSPORE_CCSRC_DEBUG_DEBUG_SERVICES_H_