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op_task.cc 35 kB

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  1. /**
  2. * Copyright 2019-2020 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 "single_op/task/op_task.h"
  17. #include <google/protobuf/extension_set.h>
  18. #include <chrono>
  19. #include <thread>
  20. #include "aicpu/common/aicpu_task_struct.h"
  21. #include "common/dump/dump_manager.h"
  22. #include "common/dump/dump_op.h"
  23. #include "common/formats/formats.h"
  24. #include "common/math/math_util.h"
  25. #include "framework/common/debug/log.h"
  26. #include "register/op_tiling.h"
  27. #include "runtime/rt.h"
  28. #include "build_task_utils.h"
  29. namespace ge {
  30. namespace {
  31. constexpr int kLaunchRetryTimes = 1000;
  32. constexpr int kSleepTime = 10;
  33. constexpr uint64_t kReleaseFlag = 1;
  34. constexpr int kCopyNum = 2;
  35. void FreeHbm(void *var) {
  36. if (var) {
  37. (void)rtFree(var);
  38. }
  39. }
  40. } // namespace
  41. Status OpTask::OpenDump(rtStream_t stream) {
  42. if (DumpManager::GetInstance().GetDumpProperties().IsSingleOpNeedDump()) {
  43. GELOGI("Dump is open in single op,start to set dump info");
  44. std::vector<uint64_t> input_addrs;
  45. std::vector<uint64_t> output_adds;
  46. auto input_size = op_desc_->GetInputsSize();
  47. auto output_size = op_desc_->GetOutputsSize();
  48. uintptr_t *arg_base = nullptr;
  49. size_t arg_num = 0;
  50. GetIoAddr(arg_base, arg_num);
  51. if (arg_num < input_size + output_size) {
  52. GELOGE(FAILED, "io_addrs_for_dump_ size %zu is not equal input and output size %zu",
  53. arg_num,
  54. input_size + output_size);
  55. return FAILED;
  56. }
  57. for (size_t i = 0; i < input_size; i++) {
  58. uint64_t input_addr = arg_base[i];
  59. input_addrs.emplace_back(input_addr);
  60. }
  61. for (size_t j = 0; j < output_size; j++) {
  62. uint64_t output_addr = arg_base[input_size + j];
  63. output_adds.emplace_back(output_addr);
  64. }
  65. dump_op_.SetDumpInfo(DumpManager::GetInstance().GetDumpProperties(), op_desc_, input_addrs, output_adds, stream);
  66. auto status = dump_op_.LaunchDumpOp();
  67. if (status != SUCCESS) {
  68. GELOGE(status, "Launch dump op failed in single op");
  69. return status;
  70. }
  71. return SUCCESS;
  72. }
  73. GELOGI("Dump is not open in single op");
  74. return SUCCESS;
  75. }
  76. void TbeOpTask::SetStubFunc(const std::string &name, const void *stub_func) {
  77. this->stub_name_ = name;
  78. this->stub_func_ = stub_func;
  79. }
  80. void TbeOpTask::SetKernelArgs(std::unique_ptr<uint8_t[]> &&args, size_t arg_size, uint32_t block_dim,
  81. const OpDescPtr &op_desc) {
  82. args_ = std::move(args);
  83. arg_size_ = arg_size;
  84. block_dim_ = block_dim;
  85. op_desc_ = op_desc;
  86. }
  87. void TbeOpTask::SetSmDesc(void *sm_desc) { sm_desc_ = sm_desc; }
  88. void OpTask::SetModelArgs(std::string model_name, uint32_t model_id) {
  89. model_name_ = model_name;
  90. model_id_ = model_id;
  91. }
  92. Status OpTask::GetProfilingArgs(std::string &model_name, std::string &op_name, uint32_t &model_id,
  93. uint32_t &block_dim) {
  94. model_name = model_name_;
  95. model_id = model_id_;
  96. block_dim = block_dim_;
  97. GE_CHECK_NOTNULL(op_desc_);
  98. op_name = op_desc_->GetName();
  99. return SUCCESS;
  100. }
  101. Status OpTask::UpdateRunInfo(const vector<GeTensorDesc> &input_desc, const vector<GeTensorDesc> &output_desc) {
  102. return UNSUPPORTED;
  103. }
  104. Status OpTask::UpdateArgTable(const SingleOpModelParam &param) {
  105. auto addresses = BuildTaskUtils::GetAddresses(op_desc_, param);
  106. auto all_addresses = BuildTaskUtils::JoinAddresses(addresses);
  107. uintptr_t *arg_base = nullptr;
  108. size_t arg_num = 0;
  109. GetIoAddr(arg_base, arg_num);
  110. if (arg_num != all_addresses.size()) {
  111. GELOGE(INTERNAL_ERROR, "[%s] arg number mismatches, expect = %zu, but got = %zu",
  112. op_desc_->GetName().c_str(),
  113. arg_num,
  114. all_addresses.size());
  115. return INTERNAL_ERROR;
  116. }
  117. for (void *addr : all_addresses) {
  118. *arg_base++ = reinterpret_cast<uintptr_t >(addr);
  119. }
  120. return SUCCESS;
  121. }
  122. Status OpTask::LaunchKernel(const vector<GeTensorDesc> &input_desc,
  123. const vector<DataBuffer> &input_buffers,
  124. vector<GeTensorDesc> &output_desc,
  125. vector<DataBuffer> &output_buffers,
  126. rtStream_t stream) {
  127. return UNSUPPORTED;
  128. }
  129. TbeOpTask::~TbeOpTask() {
  130. if (sm_desc_ != nullptr) {
  131. (void)rtMemFreeManaged(sm_desc_);
  132. }
  133. if (tiling_buffer_ != nullptr) {
  134. (void)rtFree(tiling_buffer_);
  135. }
  136. }
  137. const void *TbeOpTask::GetArgs() const { return args_.get(); }
  138. size_t TbeOpTask::GetArgSize() const { return arg_size_; }
  139. const std::string &TbeOpTask::GetStubName() const { return stub_name_; }
  140. Status TbeOpTask::LaunchKernel(rtStream_t stream) {
  141. GELOGD("To invoke rtKernelLaunch. task = %s, block_dim = %u", this->stub_name_.c_str(), block_dim_);
  142. auto *sm_desc = reinterpret_cast<rtSmDesc_t *>(sm_desc_);
  143. auto ret = rtKernelLaunch(stub_func_, block_dim_, args_.get(), static_cast<uint32_t>(arg_size_), sm_desc, stream);
  144. int retry_times = 0;
  145. while (ret != RT_ERROR_NONE && retry_times < kLaunchRetryTimes) {
  146. retry_times++;
  147. GELOGW("Retry after %d ms, retry_times: %d", kSleepTime, retry_times);
  148. std::this_thread::sleep_for(std::chrono::milliseconds(kSleepTime));
  149. ret = rtKernelLaunch(stub_func_, block_dim_, args_.get(), arg_size_, sm_desc, stream);
  150. }
  151. if (ret != RT_ERROR_NONE) {
  152. GELOGE(RT_FAILED, "Invoke rtKernelLaunch failed. ret = %d, task = %s", ret, this->stub_name_.c_str());
  153. return RT_FAILED;
  154. }
  155. GELOGI("[TASK_INFO] %s", this->stub_name_.c_str());
  156. auto status = OpenDump(stream);
  157. if (status != SUCCESS) {
  158. GELOGE(status, "Open dump failed in the tbe single op %s", this->stub_name_.c_str());
  159. return status;
  160. }
  161. return SUCCESS;
  162. }
  163. Status TbeOpTask::UpdateRunInfo(const vector<GeTensorDesc> &input_desc, const vector<GeTensorDesc> &output_desc) {
  164. GE_CHK_STATUS_RET_NOLOG(UpdateNodeByShape(input_desc, output_desc));
  165. // invoke OpParaCalculate
  166. GELOGD("Start to invoke OpParaCalculate.");
  167. optiling::OpRunInfo run_info;
  168. run_info.block_dim = 0;
  169. auto ret = optiling::OpParaCalculate(*node_, run_info);
  170. if (ret != GRAPH_SUCCESS) {
  171. GELOGE(FAILED, "Failed to invoke OpParaCalculate. ret = %u", ret);
  172. return FAILED;
  173. }
  174. block_dim_ = run_info.block_dim;
  175. tiling_data_ = run_info.tiling_data.str();
  176. GELOGD("Done invoking OpParaCalculate successfully. block_dim = %u, tiling size = %zu", block_dim_,
  177. tiling_data_.size());
  178. GE_CHK_STATUS_RET(AllocateWorkspaces(run_info.workspaces), "Failed to allocate workspaces");
  179. return SUCCESS;
  180. }
  181. Status TbeOpTask::UpdateTensorDesc(const GeTensorDesc &src_tensor, GeTensorDesc &dst_tensor) {
  182. int64_t storage_format_val = static_cast<Format>(FORMAT_RESERVED);
  183. (void)AttrUtils::GetInt(src_tensor, ge::ATTR_NAME_STORAGE_FORMAT, storage_format_val);
  184. auto storage_format = static_cast<Format>(storage_format_val);
  185. if (storage_format == FORMAT_RESERVED) {
  186. GELOGD("Storage format not set. update shape to [%s], and original shape to [%s]",
  187. src_tensor.GetShape().ToString().c_str(), src_tensor.GetOriginShape().ToString().c_str());
  188. dst_tensor.SetShape(src_tensor.GetShape());
  189. dst_tensor.SetOriginShape(src_tensor.GetOriginShape());
  190. } else {
  191. std::vector<int64_t> storage_shape;
  192. if (!AttrUtils::GetListInt(src_tensor, ge::ATTR_NAME_STORAGE_SHAPE, storage_shape)) {
  193. GELOGE(PARAM_INVALID, "Failed to get storage_shape while storage_format was set");
  194. return PARAM_INVALID;
  195. }
  196. GELOGD("Storage format set. update shape to [%s], and original shape to [%s]",
  197. GeShape(storage_shape).ToString().c_str(), src_tensor.GetShape().ToString().c_str());
  198. dst_tensor.SetShape(GeShape(std::move(storage_shape)));
  199. dst_tensor.SetOriginShape(src_tensor.GetShape());
  200. }
  201. return SUCCESS;
  202. }
  203. Status TbeOpTask::UpdateNodeByShape(const vector<GeTensorDesc> &input_desc, const vector<GeTensorDesc> &output_desc) {
  204. auto op_desc = node_->GetOpDesc();
  205. GE_CHECK_NOTNULL(op_desc);
  206. // Set runtime shape to node
  207. for (size_t i = 0; i < input_desc.size(); ++i) {
  208. auto tensor_desc = op_desc->MutableInputDesc(i);
  209. auto &runtime_tensor_desc = input_desc[i];
  210. GE_CHECK_NOTNULL(tensor_desc);
  211. GE_CHK_STATUS_RET(UpdateTensorDesc(runtime_tensor_desc, *tensor_desc));
  212. }
  213. for (size_t i = 0; i < output_desc.size(); ++i) {
  214. auto tensor_desc = op_desc->MutableOutputDesc(i);
  215. auto &runtime_tensor_desc = output_desc[i];
  216. GE_CHECK_NOTNULL(tensor_desc);
  217. GE_CHK_STATUS_RET(UpdateTensorDesc(runtime_tensor_desc, *tensor_desc));
  218. }
  219. return SUCCESS;
  220. }
  221. void TbeOpTask::EnableDynamicSupport(const NodePtr &node, void *tiling_buffer, size_t max_tiling_size) {
  222. node_ = node;
  223. tiling_buffer_ = tiling_buffer;
  224. max_tiling_size_ = max_tiling_size;
  225. }
  226. Status TbeOpTask::AllocateWorkspaces(const vector<int64_t> &workspace_sizes) {
  227. static const std::string kPurpose("malloc workspace memory for dynamic op.");
  228. if (workspace_sizes.empty()) {
  229. GELOGD("No need to allocate workspace.");
  230. return SUCCESS;
  231. }
  232. int64_t total_size = 0;
  233. std::vector<int64_t> ws_offsets;
  234. for (auto ws_size : workspace_sizes) {
  235. // alignment and padding should be done in OpParaCalculate
  236. GE_CHK_STATUS_RET_NOLOG(CheckInt64AddOverflow(total_size, ws_size));
  237. ws_offsets.emplace_back(total_size);
  238. total_size += ws_size;
  239. }
  240. GELOGD("Total workspace size is %ld", total_size);
  241. GE_CHECK_NOTNULL(stream_resource_);
  242. auto ws_base = stream_resource_->MallocMemory(kPurpose, static_cast<size_t>(total_size));
  243. if (ws_base == nullptr) {
  244. GELOGE(ACL_ERROR_GE_MEMORY_ALLOCATION, "Failed to allocate memory of size: %ld", total_size);
  245. return ACL_ERROR_GE_MEMORY_ALLOCATION;
  246. }
  247. GELOGD("Done allocating workspace memory successfully.");
  248. for (auto ws_offset : ws_offsets) {
  249. workspaces_.emplace_back(ws_base + ws_offset);
  250. }
  251. return SUCCESS;
  252. }
  253. Status TbeOpTask::LaunchKernel(const vector<GeTensorDesc> &input_desc,
  254. const vector<DataBuffer> &input_buffers,
  255. vector<GeTensorDesc> &output_desc,
  256. vector<DataBuffer> &output_buffers,
  257. rtStream_t stream) {
  258. GE_CHK_STATUS_RET_NOLOG(UpdateRunInfo(input_desc, output_desc));
  259. GELOGD("[%s] Start to launch kernel", node_->GetName().c_str());
  260. std::vector<void *> args;
  261. for (auto &buffer : input_buffers) {
  262. args.emplace_back(buffer.data);
  263. }
  264. for (auto &buffer : output_buffers) {
  265. args.emplace_back(buffer.data);
  266. }
  267. for (auto &buffer : workspaces_) {
  268. args.emplace_back(buffer);
  269. }
  270. if (tiling_buffer_ != nullptr) {
  271. GELOGD("[%s] Start to copy tiling info. size = %zu", node_->GetName().c_str(), tiling_data_.size());
  272. GE_CHK_RT_RET(rtMemcpyAsync(tiling_buffer_, max_tiling_size_, tiling_data_.data(), tiling_data_.size(),
  273. RT_MEMCPY_HOST_TO_DEVICE_EX, stream));
  274. args.emplace_back(tiling_buffer_);
  275. }
  276. if (memcpy_s(args_.get(), arg_size_, args.data(), args.size() * sizeof(void *)) != EOK) {
  277. GELOGE(INTERNAL_ERROR, "[%s] Failed to update kernel args.", node_->GetName().c_str());
  278. return INTERNAL_ERROR;
  279. }
  280. GELOGD("[%s] Start to invoke rtKernelLaunch", node_->GetName().c_str());
  281. GE_CHK_RT_RET(rtKernelLaunch(stub_func_, block_dim_, args_.get(), arg_size_, nullptr, stream));
  282. GELOGD("[%s] Done invoking rtKernelLaunch successfully", node_->GetName().c_str());
  283. return SUCCESS;
  284. }
  285. void TbeOpTask::GetIoAddr(uintptr_t *&arg_base, size_t &arg_count) {
  286. arg_base = reinterpret_cast<uintptr_t *>(args_.get());
  287. arg_count = arg_size_ / sizeof(void *);
  288. if (tiling_buffer_ != nullptr) {
  289. --arg_count;
  290. }
  291. }
  292. AiCpuBaseTask::~AiCpuBaseTask() {
  293. if (ext_info_addr_dev_ != nullptr) {
  294. (void)rtFree(ext_info_addr_dev_);
  295. }
  296. }
  297. Status AiCpuBaseTask::SetExtInfoAndType(const std::string &kernel_ext_info, uint64_t kernel_id) {
  298. if (kernel_ext_info.empty()) {
  299. GELOGI("Kernel_ext_info is empty, no need copy to device.");
  300. return SUCCESS;
  301. }
  302. int32_t unknown_shape_type_val = 0;
  303. (void) AttrUtils::GetInt(op_desc_, ::ge::ATTR_NAME_UNKNOWN_SHAPE_TYPE, unknown_shape_type_val);
  304. GELOGD("Get unknown_type is %d.", unknown_shape_type_val);
  305. unknown_type_ = static_cast<UnknowShapeOpType>(unknown_shape_type_val);
  306. aicpu_ext_handle_.reset(new(std::nothrow) ::ge::hybrid::AicpuExtInfoHandler(op_desc_->GetName(),
  307. num_inputs_,
  308. num_outputs_,
  309. unknown_type_));
  310. GE_CHK_BOOL_RET_STATUS(aicpu_ext_handle_ != nullptr, FAILED, "Malloc aicpu_ext_handle mem failed!");
  311. Status ret = aicpu_ext_handle_->Parse(kernel_ext_info);
  312. if (ret != SUCCESS) {
  313. GELOGE(ret, "Parse kernel ext info failed, kernel_ext_info_size=%zu.", kernel_ext_info.size());
  314. return ret;
  315. }
  316. GE_CHK_STATUS_RET(aicpu_ext_handle_->UpdateSessionInfo(ULLONG_MAX, kernel_id, false),
  317. "UpdateSessionInfo failed.");
  318. GE_CHK_RT_RET(rtMalloc(&ext_info_addr_dev_, aicpu_ext_handle_->GetExtInfoLen(), RT_MEMORY_HBM));
  319. GE_CHK_RT_RET(rtMemcpy(ext_info_addr_dev_, aicpu_ext_handle_->GetExtInfoLen(),
  320. aicpu_ext_handle_->GetExtInfo(), aicpu_ext_handle_->GetExtInfoLen(),
  321. RT_MEMCPY_HOST_TO_DEVICE));
  322. return SUCCESS;
  323. }
  324. Status AiCpuBaseTask::SetInputConst() {
  325. input_is_const_.clear();
  326. const vector<bool> v_is_input_const = op_desc_->GetIsInputConst();
  327. for (size_t i = 0; i < op_desc_->GetAllInputsSize(); ++i) {
  328. const GeTensorDescPtr tensor_desc = op_desc_->MutableInputDesc(static_cast<uint32_t>(i));
  329. if (tensor_desc == nullptr) {
  330. GELOGD("SingleOp: %s, Index: %zu, has no input", op_desc_->GetName().c_str(), i);
  331. continue;
  332. }
  333. if (i < v_is_input_const.size() && v_is_input_const[i]) {
  334. GELOGD("SingleOp: %s, Index: %zu, input is const", op_desc_->GetName().c_str(), i);
  335. input_is_const_.push_back(true);
  336. continue;
  337. }
  338. input_is_const_.push_back(false);
  339. }
  340. return SUCCESS;
  341. }
  342. Status AiCpuBaseTask::UpdateExtInfo(const std::vector<GeTensorDesc> &input_desc,
  343. std::vector<GeTensorDesc> &output_desc,
  344. rtStream_t stream) {
  345. GELOGI("Update ext info begin, unknown_type=%d.", unknown_type_);
  346. if (num_inputs_ == 0 && num_outputs_ == 0) {
  347. GELOGI("No input and output, no need update ext info.");
  348. return SUCCESS;
  349. }
  350. GE_CHECK_NOTNULL(aicpu_ext_handle_);
  351. size_t non_const_index = 0;
  352. for (size_t input_index = 0; input_index < num_inputs_; input_index++) {
  353. if (input_index < input_is_const_.size() && input_is_const_[input_index]) {
  354. // get input_desc from op_desc if const input, num_inputs_ is op_desc_ input_size
  355. auto const_input_desc = op_desc_->MutableInputDesc(static_cast<uint32_t>(input_index));
  356. GE_CHECK_NOTNULL(const_input_desc);
  357. GE_CHK_STATUS_RET(aicpu_ext_handle_->UpdateInputShapeAndType(input_index, *const_input_desc),
  358. "Input[%zu] update input shape failed.", input_index);
  359. continue;
  360. }
  361. GE_CHK_BOOL_RET_STATUS(non_const_index < input_desc.size(), PARAM_INVALID,
  362. "Input_desc size is %zu, but get non_const_index is %zu",
  363. input_desc.size(), non_const_index);
  364. GE_CHK_STATUS_RET(aicpu_ext_handle_->UpdateInputShapeAndType(input_index, input_desc[non_const_index]),
  365. "Input[%zu] update input shape failed.", input_index);
  366. non_const_index++;
  367. }
  368. if (unknown_type_ != DEPEND_COMPUTE) {
  369. for (size_t j = 0; j < num_outputs_; ++j) {
  370. GE_CHK_STATUS_RET(aicpu_ext_handle_->UpdateOutputShapeAndType(j, output_desc[j]),
  371. "Output[%zu] UpdateOutputShapeAndType failed.", j);
  372. }
  373. }
  374. GE_CHK_RT_RET(rtMemcpyAsync(ext_info_addr_dev_,
  375. aicpu_ext_handle_->GetExtInfoLen(), // check size
  376. aicpu_ext_handle_->GetExtInfo(),
  377. aicpu_ext_handle_->GetExtInfoLen(),
  378. RT_MEMCPY_HOST_TO_DEVICE_EX,
  379. stream));
  380. GELOGI("Update ext info end.");
  381. return SUCCESS;
  382. }
  383. Status AiCpuBaseTask::UpdateOutputShape(vector<GeTensorDesc> &output_desc) {
  384. if (num_outputs_ == 0) {
  385. GELOGD("AiCpuBaseTask output_num is 0, no need update output shape.");
  386. return SUCCESS;
  387. }
  388. GELOGD("Start to update DEPEND_SHAPE_RANGE AiCpuBaseTask outputshape.");
  389. GE_CHK_RT_RET(rtMemcpy(aicpu_ext_handle_->GetExtInfo(),
  390. aicpu_ext_handle_->GetExtInfoLen(),
  391. ext_info_addr_dev_,
  392. aicpu_ext_handle_->GetExtInfoLen(),
  393. RT_MEMCPY_DEVICE_TO_HOST));
  394. for (size_t i = 0; i < num_outputs_; ++i) {
  395. GeShape shape;
  396. DataType data_type;
  397. aicpu_ext_handle_->GetOutputShapeAndType(i, shape, data_type);
  398. GE_CHK_STATUS_RET(UpdateShapeToOutputDesc(shape, output_desc[i]),
  399. "AiCpuCCTask Update [%zu]th output shape failed.", i);
  400. }
  401. GELOGD("Update DEPEND_SHAPE_RANGE AiCpuBaseTask outputshape finished.");
  402. return SUCCESS;
  403. }
  404. Status AiCpuBaseTask::UpdateShapeToOutputDesc(const GeShape &shape_new, GeTensorDesc &output_desc) {
  405. auto shape_old = output_desc.GetShape();
  406. output_desc.SetShape(shape_new);
  407. GELOGD("Update AiCpuBaseTask shape from %s to %s", shape_old.ToString().c_str(), shape_new.ToString().c_str());
  408. auto origin_shape_old = output_desc.GetOriginShape();
  409. auto origin_format = output_desc.GetOriginFormat();
  410. auto format = output_desc.GetFormat();
  411. if (origin_format == format) {
  412. output_desc.SetOriginShape(shape_new);
  413. return SUCCESS;
  414. }
  415. std::vector<int64_t> origin_dims_new;
  416. auto trans_ret = formats::TransShape(format, shape_new.GetDims(),
  417. output_desc.GetDataType(), origin_format, origin_dims_new);
  418. GE_CHK_STATUS_RET(trans_ret,
  419. "AiCpuTask originFormat[%d] is not same as format[%d], but TransShape failed, shape=%s.",
  420. origin_format, format, shape_new.ToString().c_str());
  421. auto origin_shape_new = GeShape(origin_dims_new);
  422. output_desc.SetOriginShape(origin_shape_new);
  423. GELOGD("AiCpuTask originFormat[%d] is not same as format[%d], need update from %s ro %s.",
  424. origin_format, format, origin_shape_old.ToString().c_str(), origin_shape_new.ToString().c_str());
  425. return SUCCESS;
  426. }
  427. Status AiCpuBaseTask::UpdateIoAddr(const vector<DataBuffer> &inputs, const vector<DataBuffer> &outputs) {
  428. uintptr_t *arg_base = nullptr;
  429. size_t arg_num = 0;
  430. GetIoAddr(arg_base, arg_num);
  431. // input number and output number was check in ValidateParams
  432. size_t non_const_index = 0;
  433. for (size_t input_index = 0; input_index < num_inputs_; input_index++) {
  434. if (input_index < input_is_const_.size() && input_is_const_[input_index]) {
  435. // const input no need update addr
  436. GE_CHECK_NOTNULL(arg_base);
  437. GELOGD("AICpuTask input[%zu] addr = %u", input_index, *arg_base);
  438. arg_base++;
  439. continue;
  440. }
  441. GE_CHK_BOOL_RET_STATUS(non_const_index < inputs.size(), PARAM_INVALID,
  442. "Input size is %zu, but get non_const_index is %zu",
  443. inputs.size(), non_const_index);
  444. auto addr = inputs[non_const_index].data;
  445. GE_CHECK_NOTNULL(addr);
  446. GELOGD("AICpuTask input[%zu] addr = %p", input_index, addr);
  447. *arg_base++ = reinterpret_cast<uintptr_t>(addr);
  448. non_const_index++;
  449. }
  450. for (size_t i = 0; i < outputs.size(); ++i) {
  451. auto addr = outputs[i].data;
  452. GE_CHECK_NOTNULL(addr);
  453. GELOGD("AICpuTask output[%zu] addr = %p", i, addr);
  454. *arg_base++ = reinterpret_cast<uintptr_t>(addr);
  455. }
  456. return SUCCESS;
  457. }
  458. AiCpuTask::~AiCpuTask() {
  459. FreeHbm(args_);
  460. FreeHbm(io_addr_);
  461. if (dynamic_flag_) {
  462. FreeHbm(workspace_addr_);
  463. }
  464. FreeHbm(copy_workspace_buf_);
  465. FreeHbm(copy_ioaddr_dev_);
  466. FreeHbm(copy_input_release_flag_dev_);
  467. FreeHbm(copy_input_data_size_dev_);
  468. FreeHbm(copy_input_src_dev_);
  469. FreeHbm(copy_input_dst_dev_);
  470. FreeHbm(copy_task_args_buf_);
  471. for (auto summary : output_summary_) {
  472. FreeHbm(summary);
  473. }
  474. for (auto out_shape : out_shape_hbm_) {
  475. FreeHbm(out_shape);
  476. }
  477. }
  478. Status AiCpuTask::LaunchKernel(rtStream_t stream) {
  479. GELOGD("Start to launch kernel. task = %s", this->op_type_.c_str());
  480. auto ret = rtMemcpyAsync(io_addr_,
  481. io_addr_size_,
  482. io_addr_host_.data(),
  483. io_addr_host_.size() * sizeof(void *),
  484. RT_MEMCPY_HOST_TO_DEVICE_EX,
  485. stream);
  486. if (ret != RT_ERROR_NONE) {
  487. GELOGE(RT_FAILED, "rtMemcpyAsync workspace data failed. ret = %d, task = %s", ret, this->op_type_.c_str());
  488. return RT_FAILED;
  489. }
  490. GELOGI("To invoke rtKernelLaunchEx. task = %s", this->op_type_.c_str());
  491. ret = rtKernelLaunchEx(args_, arg_size_, 0, stream);
  492. if (ret != RT_ERROR_NONE) {
  493. GELOGE(RT_FAILED, "Invoke rtKernelLaunch failed. ret = %d, task = %s", ret, this->op_type_.c_str());
  494. return RT_FAILED;
  495. }
  496. GELOGI("[TASK_INFO] %s/%s", std::to_string(kernel_id_).c_str(), op_type_.c_str());
  497. auto status = OpenDump(stream);
  498. if (status != SUCCESS) {
  499. GELOGE(status, "Open dump failed in aicpu single op %s", this->op_type_.c_str());
  500. return status;
  501. }
  502. GELOGD("Done launch kernel successfully. task = %s", this->op_type_.c_str());
  503. return SUCCESS;
  504. }
  505. Status AiCpuTask::PrepareCopyInputs(vector<DataBuffer> &outputs) {
  506. std::vector<uint64_t> copy_input_release_flag;
  507. std::vector<uint64_t> copy_input_data_size;
  508. std::vector<uint64_t> copy_input_src;
  509. std::vector<uint64_t> copy_input_dst;
  510. for (size_t i = 0; i < num_outputs_; ++i) {
  511. const auto &summary = output_summary_host_[i];
  512. GELOGI("Node out[%zu] summary, shape data=0x%lx, shape data size=%lu, raw data=0x%lx, raw data size=%lu.",
  513. i, summary.shape_data_ptr, summary.shape_data_size,
  514. summary.raw_data_ptr, summary.raw_data_size);
  515. auto output = outputs[i];
  516. copy_input_release_flag.emplace_back(kReleaseFlag);
  517. if (summary.raw_data_size > 0) {
  518. copy_input_data_size.emplace_back(output.length);
  519. } else {
  520. copy_input_data_size.emplace_back(summary.raw_data_size);
  521. }
  522. copy_input_src.emplace_back(summary.raw_data_ptr);
  523. copy_input_dst.emplace_back(reinterpret_cast<uintptr_t>(output.data));
  524. const auto &shape_buffer = out_shape_hbm_[i];
  525. copy_input_release_flag.emplace_back(kReleaseFlag);
  526. copy_input_data_size.emplace_back(summary.shape_data_size);
  527. copy_input_src.emplace_back(summary.shape_data_ptr);
  528. copy_input_dst.emplace_back(reinterpret_cast<uintptr_t>(shape_buffer));
  529. }
  530. const size_t copy_input_buf_len = num_outputs_ * kCopyNum * sizeof(uint64_t);
  531. GE_CHK_RT_RET(rtMemcpy(copy_input_release_flag_dev_, copy_input_buf_len,
  532. copy_input_release_flag.data(), copy_input_buf_len, RT_MEMCPY_HOST_TO_DEVICE));
  533. GE_CHK_RT_RET(rtMemcpy(copy_input_data_size_dev_, copy_input_buf_len,
  534. copy_input_data_size.data(), copy_input_buf_len, RT_MEMCPY_HOST_TO_DEVICE));
  535. GE_CHK_RT_RET(rtMemcpy(copy_input_src_dev_, copy_input_buf_len,
  536. copy_input_src.data(), copy_input_buf_len, RT_MEMCPY_HOST_TO_DEVICE));
  537. GE_CHK_RT_RET(rtMemcpy(copy_input_dst_dev_, copy_input_buf_len,
  538. copy_input_dst.data(), copy_input_buf_len, RT_MEMCPY_HOST_TO_DEVICE));
  539. return SUCCESS;
  540. }
  541. Status AiCpuTask::ReadResultSummaryAndPrepareMemory() {
  542. for (size_t i = 0; i < num_outputs_; ++i) {
  543. auto &result_summary = output_summary_host_[i];
  544. GE_CHK_RT_RET(rtMemcpy(&result_summary, sizeof(aicpu::FWKAdapter::ResultSummary),
  545. output_summary_[i], sizeof(aicpu::FWKAdapter::ResultSummary),
  546. RT_MEMCPY_DEVICE_TO_HOST));
  547. auto shape_data_size = result_summary.shape_data_size;
  548. void *shape_buffer = nullptr;
  549. if (shape_data_size > 0) {
  550. GE_CHK_RT_RET(rtMalloc(&shape_buffer, shape_data_size, RT_MEMORY_HBM));
  551. }
  552. out_shape_hbm_.emplace_back(shape_buffer);
  553. }
  554. return SUCCESS;
  555. }
  556. Status AiCpuTask::CopyDataToHbm(vector<DataBuffer> &outputs,
  557. rtStream_t stream) {
  558. GE_CHK_STATUS_RET_NOLOG(PrepareCopyInputs(outputs));
  559. GE_CHK_RT_RET(rtKernelLaunchEx(copy_task_args_buf_, sizeof(STR_FWK_OP_KERNEL),
  560. RT_KERNEL_DEFAULT, stream));
  561. GE_CHK_RT_RET(rtStreamSynchronize(stream));
  562. return SUCCESS;
  563. }
  564. Status AiCpuTask::UpdateShapeByHbmBuffer(vector<GeTensorDesc> &output_desc) {
  565. for (size_t i = 0; i < num_outputs_; ++i) {
  566. const auto &result_summary = output_summary_host_[i];
  567. std::vector<int64_t> shape_dims;
  568. if (result_summary.shape_data_size > 0) {
  569. const auto &shape_hbm = out_shape_hbm_[i];
  570. uint32_t dim_num = result_summary.shape_data_size / sizeof(int64_t);
  571. std::unique_ptr<int64_t[]> shape_addr(new(std::nothrow) int64_t[dim_num]());
  572. GE_CHECK_NOTNULL(shape_addr);
  573. GE_CHK_RT_RET(rtMemcpy(shape_addr.get(), result_summary.shape_data_size,
  574. shape_hbm, result_summary.shape_data_size, RT_MEMCPY_DEVICE_TO_HOST));
  575. for (uint32_t dim_idx = 0; dim_idx < dim_num; ++dim_idx) {
  576. shape_dims.emplace_back(shape_addr[dim_idx]);
  577. GELOGD("Node [%zu]th output dim[%u]=%ld.", i, dim_idx, shape_addr[dim_idx]);
  578. }
  579. }
  580. GE_CHK_STATUS_RET(UpdateShapeToOutputDesc(GeShape(shape_dims), output_desc[i]),
  581. "AiCpuTask update [%zu]th output shape failed.", i);
  582. }
  583. return SUCCESS;
  584. }
  585. Status AiCpuTask::UpdateShapeAndDataByResultSummary(vector<GeTensorDesc> &output_desc,
  586. vector<DataBuffer> &outputs,
  587. rtStream_t stream) {
  588. if (num_outputs_ == 0) {
  589. GELOGI("Output num is 0, there is no need to update the output and size.");
  590. return SUCCESS;
  591. }
  592. GELOGI("Update shape and data by result summary begin.");
  593. for (auto out_shape : out_shape_hbm_) {
  594. FreeHbm(out_shape);
  595. }
  596. out_shape_hbm_.clear();
  597. GE_CHK_STATUS_RET(ReadResultSummaryAndPrepareMemory(),
  598. "Read ResultSummary and update output shape failed.");
  599. GE_CHK_STATUS_RET(CopyDataToHbm(outputs, stream),
  600. "Copy data to output failed.");
  601. GE_CHK_STATUS_RET(UpdateShapeByHbmBuffer(output_desc),
  602. "Update shape by hbm buffer failed.");
  603. for (auto out_shape : out_shape_hbm_) {
  604. FreeHbm(out_shape);
  605. }
  606. out_shape_hbm_.clear();
  607. GELOGI("Update shape and data by result summary end.");
  608. return SUCCESS;
  609. }
  610. Status AiCpuTask::InitForSummaryAndCopy() {
  611. if (unknown_type_ != DEPEND_COMPUTE || num_outputs_ == 0) {
  612. GELOGI("Unknown_type is %d, output num is %d.", unknown_type_, num_outputs_);
  613. return SUCCESS;
  614. }
  615. output_summary_.resize(num_outputs_);
  616. constexpr auto result_summary_size = sizeof(aicpu::FWKAdapter::ResultSummary);
  617. for (size_t i = 0; i < num_outputs_; ++i) {
  618. GE_CHK_RT_RET(rtMalloc(&output_summary_[i], result_summary_size, RT_MEMORY_HBM));
  619. }
  620. output_summary_host_.resize(num_outputs_);
  621. const size_t copy_input_buf_len = num_outputs_ * kCopyNum * sizeof(uint64_t);
  622. GE_CHK_RT_RET(rtMalloc(&copy_input_release_flag_dev_, copy_input_buf_len, RT_MEMORY_HBM));
  623. GE_CHK_RT_RET(rtMalloc(&copy_input_data_size_dev_, copy_input_buf_len, RT_MEMORY_HBM));
  624. GE_CHK_RT_RET(rtMalloc(&copy_input_src_dev_, copy_input_buf_len, RT_MEMORY_HBM));
  625. GE_CHK_RT_RET(rtMalloc(&copy_input_dst_dev_, copy_input_buf_len, RT_MEMORY_HBM));
  626. GE_CHK_RT_RET(rtMalloc(&copy_task_args_buf_, sizeof(STR_FWK_OP_KERNEL), RT_MEMORY_HBM));
  627. std::vector<uint64_t> copy_io_addr;
  628. copy_io_addr.emplace_back(reinterpret_cast<uintptr_t>(copy_input_release_flag_dev_));
  629. copy_io_addr.emplace_back(reinterpret_cast<uintptr_t>(copy_input_data_size_dev_));
  630. copy_io_addr.emplace_back(reinterpret_cast<uintptr_t>(copy_input_src_dev_));
  631. copy_io_addr.emplace_back(reinterpret_cast<uintptr_t>(copy_input_dst_dev_));
  632. const auto copy_io_addr_size = sizeof(uint64_t) * copy_io_addr.size();
  633. GE_CHK_RT_RET(rtMalloc(&copy_ioaddr_dev_, copy_io_addr_size, RT_MEMORY_HBM));
  634. GE_CHK_RT_RET(rtMemcpy(copy_ioaddr_dev_, copy_io_addr_size,
  635. copy_io_addr.data(), copy_io_addr_size, RT_MEMCPY_HOST_TO_DEVICE));
  636. return SUCCESS;
  637. }
  638. Status AiCpuTask::SetMemCopyTask(const domi::KernelExDef &kernel_def) {
  639. if (kernel_def.args_size() > sizeof(STR_FWK_OP_KERNEL)) {
  640. GELOGE(PARAM_INVALID, "sizeof STR_FWK_OP_KERNEL is: %lu, but args_size is: %d",
  641. sizeof(STR_FWK_OP_KERNEL), kernel_def.args_size());
  642. return PARAM_INVALID;
  643. }
  644. GE_CHK_RT_RET(rtMalloc(&copy_workspace_buf_, kernel_def.task_info_size(), RT_MEMORY_HBM));
  645. GE_CHK_RT_RET(rtMemcpy(copy_workspace_buf_, kernel_def.task_info_size(),
  646. kernel_def.task_info().data(), kernel_def.task_info_size(), RT_MEMCPY_HOST_TO_DEVICE));
  647. STR_FWK_OP_KERNEL aicpu_task = {0};
  648. auto sec_ret = memcpy_s(&aicpu_task, sizeof(STR_FWK_OP_KERNEL),
  649. kernel_def.args().data(), kernel_def.args().size());
  650. if (sec_ret != EOK) {
  651. GELOGE(FAILED, "memcpy failed, ret: %d", sec_ret);
  652. return FAILED;
  653. }
  654. aicpu_task.fwkKernelBase.fwk_kernel.inputOutputAddr = reinterpret_cast<uintptr_t>(copy_ioaddr_dev_);
  655. aicpu_task.fwkKernelBase.fwk_kernel.workspaceBaseAddr = reinterpret_cast<uintptr_t>(copy_workspace_buf_);
  656. aicpu_task.fwkKernelBase.fwk_kernel.extInfoAddr = 0;
  657. aicpu_task.fwkKernelBase.fwk_kernel.extInfoLen = 0;
  658. GE_CHK_RT_RET(rtMemcpy(copy_task_args_buf_, sizeof(STR_FWK_OP_KERNEL),
  659. &aicpu_task, sizeof(STR_FWK_OP_KERNEL), RT_MEMCPY_HOST_TO_DEVICE));
  660. return SUCCESS;
  661. }
  662. Status AiCpuTask::LaunchKernel(const std::vector<GeTensorDesc> &input_desc,
  663. const std::vector<DataBuffer> &input_buffers,
  664. std::vector<GeTensorDesc> &output_desc,
  665. std::vector<DataBuffer> &output_buffers,
  666. rtStream_t stream) {
  667. GE_CHK_STATUS_RET_NOLOG(UpdateExtInfo(input_desc, output_desc, stream));
  668. if (unknown_type_ == DEPEND_COMPUTE) {
  669. std::vector<DataBuffer> summary_buffers;
  670. for (size_t i = 0; i < num_outputs_; ++i) {
  671. summary_buffers.emplace_back(output_summary_[i], sizeof(aicpu::FWKAdapter::ResultSummary), false);
  672. }
  673. GE_CHK_STATUS_RET_NOLOG(UpdateIoAddr(input_buffers, summary_buffers));
  674. } else {
  675. GE_CHK_STATUS_RET_NOLOG(UpdateIoAddr(input_buffers, output_buffers));
  676. }
  677. GE_CHK_STATUS_RET_NOLOG(LaunchKernel(stream));
  678. if (unknown_type_ == DEPEND_SHAPE_RANGE) {
  679. GE_CHK_RT_RET(rtStreamSynchronize(stream));
  680. GE_CHK_STATUS_RET_NOLOG(UpdateOutputShape(output_desc));
  681. } else if (unknown_type_ == DEPEND_COMPUTE) {
  682. GE_CHK_RT_RET(rtStreamSynchronize(stream));
  683. GE_CHK_STATUS_RET_NOLOG(UpdateShapeAndDataByResultSummary(output_desc, output_buffers, stream));
  684. }
  685. return SUCCESS;
  686. }
  687. Status AiCpuTask::UpdateArgTable(const SingleOpModelParam &param) {
  688. auto addresses = BuildTaskUtils::GetAddresses(op_desc_, param, false);
  689. io_addr_host_ = BuildTaskUtils::JoinAddresses(addresses);
  690. return SUCCESS;
  691. }
  692. void AiCpuTask::GetIoAddr(uintptr_t *&arg_base, size_t &arg_count) {
  693. arg_base = reinterpret_cast<uintptr_t *>(io_addr_host_.data());
  694. arg_count = io_addr_host_.size();
  695. }
  696. void AiCpuCCTask::SetKernelArgs(std::unique_ptr<uint8_t[]> args, size_t arg_size) {
  697. args_ = std::move(args);
  698. arg_size_ = arg_size;
  699. // The blockdim value is defult "1" for rtCpuKernelLaunch
  700. block_dim_ = 1;
  701. }
  702. void AiCpuCCTask::SetSoName(const std::string &so_name) { so_name_ = so_name; }
  703. void AiCpuCCTask::SetkernelName(const std::string &kernel_Name) { kernel_name_ = kernel_Name; }
  704. void AiCpuCCTask::SetIoAddr(uintptr_t *io_addr) { io_addr_ = io_addr; }
  705. const void *AiCpuCCTask::GetArgs() const { return args_.get(); }
  706. size_t AiCpuCCTask::GetArgSize() const { return arg_size_; }
  707. AiCpuCCTask::~AiCpuCCTask() {
  708. }
  709. Status AiCpuCCTask::LaunchKernel(rtStream_t stream) {
  710. GELOGI("To invoke rtCpuKernelLaunch. block_dim = %u, so_name is %s, kernel_name is %s", block_dim_, so_name_.data(),
  711. kernel_name_.data());
  712. // sm_desc is nullptr, because l2 buffer does not support
  713. auto *sm_desc = reinterpret_cast<rtSmDesc_t *>(sm_desc_);
  714. auto ret = rtCpuKernelLaunchWithFlag(static_cast<const void *>(so_name_.data()),
  715. static_cast<const void *>(kernel_name_.data()),
  716. block_dim_, args_.get(), static_cast<uint32_t>(arg_size_),
  717. sm_desc, stream, dump_flag_);
  718. if (ret != RT_ERROR_NONE) {
  719. GELOGE(ret, "Invoke rtCpuKernelLaunch failed. ret = %d", ret);
  720. return ret;
  721. }
  722. GELOGD("Invoke rtCpuKernelLaunch succeeded");
  723. auto status = OpenDump(stream);
  724. if (status != SUCCESS) {
  725. GELOGE(status, "Open dump failed in the aicpucc single op %s", this->kernel_name_.c_str());
  726. return status;
  727. }
  728. return SUCCESS;
  729. }
  730. Status AiCpuCCTask::LaunchKernel(const std::vector<GeTensorDesc> &input_desc,
  731. const std::vector<DataBuffer> &input_buffers,
  732. std::vector<GeTensorDesc> &output_desc,
  733. std::vector<DataBuffer> &output_buffers,
  734. rtStream_t stream) {
  735. GE_CHK_STATUS_RET_NOLOG(UpdateExtInfo(input_desc, output_desc, stream));
  736. GE_CHK_STATUS_RET_NOLOG(UpdateIoAddr(input_buffers, output_buffers));
  737. GE_CHK_STATUS_RET_NOLOG(LaunchKernel(stream));
  738. if (unknown_type_ == DEPEND_SHAPE_RANGE) {
  739. GE_CHK_RT_RET(rtStreamSynchronize(stream));
  740. GE_CHK_STATUS_RET_NOLOG(UpdateOutputShape(output_desc));
  741. }
  742. return SUCCESS;
  743. }
  744. void AiCpuCCTask::GetIoAddr(uintptr_t *&arg_base, size_t &arg_count) {
  745. arg_base = io_addr_;
  746. arg_count = io_addr_num_;
  747. }
  748. } // namespace ge

图引擎模块(GE)是MindSpore的一个子模块,其代码由C++实现,位于前端模块ME和底层硬件之间,起到承接作用。图引擎模块以ME下发的图作为输入,然后进行一系列的深度图优化操作,最后输出一张可以在底层硬件上高效运行的图。GE针对昇腾AI处理器的硬件结构特点,做了特定的优化工作,以此来充分发挥出昇腾AI处理器的强大算力。在进行模型训练/推理时,GE会被自动调用而用户并不感知。GE主要由GE API和GE Core两部分组成,详细的架构图如下所示