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optimizer_info_builder.cc 12 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 "ps/optimizer_info_builder.h"
  17. #include <vector>
  18. #include <memory>
  19. #include <functional>
  20. #include "backend/kernel_compiler/cpu/ps/sparse_apply_ftrl_ps_kernel.h"
  21. namespace mindspore {
  22. namespace ps {
  23. using mindspore::kernel::ps::SparseApplyFtrlPSKernel;
  24. OptimizerInfo *OptimizerInfoBuilder::Build(const std::shared_ptr<PServerKernel> &pserver_kernel,
  25. const WeightPtr &weight, const Keys &keys, const Values &values,
  26. const Lengths &lens, const InputsShapePtr &inputs_shape, size_t worker_num,
  27. bool sharded) {
  28. MS_EXCEPTION_IF_NULL(pserver_kernel);
  29. MS_EXCEPTION_IF_NULL(weight);
  30. MS_EXCEPTION_IF_NULL(inputs_shape);
  31. OptimizerInfo *optim_info =
  32. BuildInputs(weight, keys, values, lens, inputs_shape, worker_num, pserver_kernel, sharded);
  33. MS_EXCEPTION_IF_NULL(optim_info);
  34. std::vector<size_t> ws_sizes = pserver_kernel->workspace_sizes();
  35. BuildWorkspaces(optim_info, ws_sizes, worker_num);
  36. BuildOutputs(optim_info, worker_num);
  37. return optim_info;
  38. }
  39. void OptimizerInfoBuilder::BuildWorkspaces(OptimizerInfo *info, const std::vector<size_t> &ws_sizes, size_t) {
  40. MS_EXCEPTION_IF_NULL(info);
  41. for (size_t i = 0; i < ws_sizes.size(); i++) {
  42. size_t size = ws_sizes[i];
  43. AddressPtr workspace = std::make_shared<kernel::Address>();
  44. MS_EXCEPTION_IF_NULL(workspace);
  45. workspace->addr = new float[size];
  46. MS_EXCEPTION_IF_NULL(workspace->addr);
  47. workspace->size = size;
  48. info->AddWorkspace(workspace);
  49. }
  50. }
  51. template <typename T>
  52. AddressPtr OptimizerInfoBuilder::GenInputAddrPtr(const std::string &optim_type, const std::string &input_name,
  53. void *ps_data, const Lengths &ps_lens,
  54. const InputsShapePtr &inputs_shape) {
  55. MS_EXCEPTION_IF_NULL(ps_data);
  56. // Take note of that the data type maybe inconsistent in ps_data.
  57. MS_LOG(INFO) << "Get input address pointer for optimizer:" << optim_type << ", input name:" << input_name;
  58. AddressPtr addr_ptr = std::make_shared<kernel::Address>();
  59. MS_EXCEPTION_IF_NULL(addr_ptr);
  60. if (kOptimToOriginIdx.count(optim_type) == 0 || kOptimToPSSendIdx.count(optim_type) == 0) {
  61. MS_LOG(EXCEPTION) << "Optimizer type " << optim_type << " in not supported.";
  62. }
  63. const OptimOriginIdx &origin_input_map = kOptimToOriginIdx.at(optim_type);
  64. const OptimPSSendIdx &ps_send_index_map = kOptimToPSSendIdx.at(optim_type);
  65. if (ps_send_index_map.count(input_name) == 0 || origin_input_map.count(input_name) == 0) {
  66. MS_LOG(EXCEPTION) << "Optimizer " << optim_type << " has no input for " << input_name;
  67. }
  68. size_t ps_index = ps_send_index_map.at(input_name);
  69. if (ps_index == INDEX_NOT_SEND) {
  70. MS_LOG(EXCEPTION) << "Input " << input_name << " is not supposed to be sent to PS.";
  71. }
  72. size_t addr_data_size, addr_data_offset;
  73. if (inputs_shape != nullptr) {
  74. // addr_data_size should be calculated by inputs_shape if it's passed.
  75. size_t origin_index = origin_input_map.at(input_name);
  76. EXC_IF_VEC_IDX_OOB((*inputs_shape), origin_index);
  77. MS_EXCEPTION_IF_NULL((*inputs_shape)[origin_index]);
  78. auto shape = *((*inputs_shape)[origin_index]);
  79. addr_data_size = std::accumulate(shape.begin(), shape.end(), worker_num_, std::multiplies<size_t>());
  80. } else {
  81. EXC_IF_VEC_IDX_OOB(ps_lens, ps_index);
  82. addr_data_size = IntToSize(ps_lens[ps_index]);
  83. }
  84. addr_data_offset =
  85. IntToSize(std::accumulate(ps_lens.begin(), ps_lens.begin() + SizeToInt(ps_index), 0, std::plus<int>()));
  86. // The size in ps_lens instead of addr_data_size is the size of real data.
  87. T *buffer = new T[addr_data_size];
  88. addr_ptr->size = IntToSize(ps_lens[ps_index]) * sizeof(T);
  89. addr_ptr->addr = buffer;
  90. size_t dst_size = addr_ptr->size;
  91. size_t src_size = addr_ptr->size;
  92. void *dst_data = addr_ptr->addr;
  93. void *src_data = reinterpret_cast<T *>(ps_data) + addr_data_offset;
  94. MS_EXCEPTION_IF_NULL(dst_data);
  95. MS_EXCEPTION_IF_NULL(src_data);
  96. int64_t ret = memcpy_s(dst_data, dst_size, src_data, src_size);
  97. if (ret != 0) {
  98. MS_LOG(EXCEPTION) << "memcpy_s error, errorno(" << ret << ")";
  99. delete[] buffer;
  100. buffer = nullptr;
  101. return nullptr;
  102. }
  103. return addr_ptr;
  104. }
  105. OptimizerInfo *MomentumOptimInfoBuilder::BuildInputs(const WeightPtr &weight, const Keys &, const Values &values,
  106. const Lengths &lens, const InputsShapePtr &, size_t,
  107. const std::shared_ptr<PServerKernel> &, bool) {
  108. MS_EXCEPTION_IF_NULL(weight);
  109. AddressPtr weight_addr = std::make_shared<kernel::Address>();
  110. MS_EXCEPTION_IF_NULL(weight_addr);
  111. weight_addr->addr = weight->data();
  112. weight_addr->size = weight->size() * sizeof(float);
  113. AddressPtr accumulate = std::make_shared<kernel::Address>();
  114. MS_EXCEPTION_IF_NULL(accumulate);
  115. accumulate->addr = new float[weight->size()];
  116. MS_EXCEPTION_IF_NULL(accumulate->addr);
  117. accumulate->size = sizeof(float) * weight->size();
  118. int64_t ret = memset_s(accumulate->addr, accumulate->size, 0x00, accumulate->size);
  119. if (ret != 0) {
  120. MS_LOG(EXCEPTION) << "memset_s error, errorno(" << ret << ")";
  121. delete[] reinterpret_cast<float *>(accumulate->addr);
  122. accumulate->addr = nullptr;
  123. return nullptr;
  124. }
  125. AddressPtr learning_rate = GenInputAddrPtr<float>(kApplyMomentum, "lr", const_cast<float *>(values.data()), lens);
  126. MS_EXCEPTION_IF_NULL(learning_rate);
  127. AddressPtr gradient = GenInputAddrPtr<float>(kApplyMomentum, "grad", const_cast<float *>(values.data()), lens);
  128. MS_EXCEPTION_IF_NULL(gradient);
  129. AddressPtr momentum = GenInputAddrPtr<float>(kApplyMomentum, "momentum", const_cast<float *>(values.data()), lens);
  130. MS_EXCEPTION_IF_NULL(momentum);
  131. return new MomentumOptimInfo(weight_addr, accumulate, learning_rate, gradient, momentum);
  132. }
  133. OptimizerInfo *SparseAdamOptimInfoBuilder::BuildInputs(const WeightPtr &weight, const Keys &, const Values &values,
  134. const Lengths &lens, const InputsShapePtr &inputs_shape, size_t,
  135. const std::shared_ptr<PServerKernel> &, bool sharded) {
  136. AddressPtr weight_addr = std::make_shared<kernel::Address>();
  137. MS_EXCEPTION_IF_NULL(weight_addr);
  138. weight_addr->addr = weight->data();
  139. weight_addr->size = weight->size() * sizeof(float);
  140. AddressPtr m = std::make_shared<kernel::Address>();
  141. MS_EXCEPTION_IF_NULL(m);
  142. m->addr = new float[weight->size()];
  143. MS_EXCEPTION_IF_NULL(m->addr);
  144. m->size = weight->size() * sizeof(float);
  145. int64_t ret = memset_s(m->addr, m->size, 0x00, m->size);
  146. if (ret != 0) {
  147. MS_LOG(EXCEPTION) << "memset_s error, errorno(" << ret << ")";
  148. delete[] reinterpret_cast<float *>(m->addr);
  149. m->addr = nullptr;
  150. return nullptr;
  151. }
  152. AddressPtr v = std::make_shared<kernel::Address>();
  153. MS_EXCEPTION_IF_NULL(v);
  154. v->addr = new float[weight->size()];
  155. MS_EXCEPTION_IF_NULL(v->addr);
  156. v->size = weight->size() * sizeof(float);
  157. ret = memset_s(v->addr, v->size, 0x00, v->size);
  158. if (ret != 0) {
  159. MS_LOG(EXCEPTION) << "memset_s error, errorno(" << ret << ")";
  160. delete[] reinterpret_cast<float *>(v->addr);
  161. v->addr = nullptr;
  162. delete[] reinterpret_cast<float *>(m->addr);
  163. m->addr = nullptr;
  164. return nullptr;
  165. }
  166. AddressPtr beta1_power = GenInputAddrPtr<float>(kSparseAdam, "beta1_power", const_cast<float *>(values.data()), lens);
  167. MS_EXCEPTION_IF_NULL(beta1_power);
  168. AddressPtr beta2_power = GenInputAddrPtr<float>(kSparseAdam, "beta2_power", const_cast<float *>(values.data()), lens);
  169. MS_EXCEPTION_IF_NULL(beta2_power);
  170. AddressPtr learning_rate = GenInputAddrPtr<float>(kSparseAdam, "lr", const_cast<float *>(values.data()), lens);
  171. MS_EXCEPTION_IF_NULL(learning_rate);
  172. AddressPtr beta1 = GenInputAddrPtr<float>(kSparseAdam, "beta1", const_cast<float *>(values.data()), lens);
  173. MS_EXCEPTION_IF_NULL(beta1);
  174. AddressPtr beta2 = GenInputAddrPtr<float>(kSparseAdam, "beta2", const_cast<float *>(values.data()), lens);
  175. MS_EXCEPTION_IF_NULL(beta2);
  176. AddressPtr epsilon = GenInputAddrPtr<float>(kSparseAdam, "eps", const_cast<float *>(values.data()), lens);
  177. MS_EXCEPTION_IF_NULL(epsilon);
  178. AddressPtr grad = GenInputAddrPtr<float>(kSparseAdam, "grad", const_cast<float *>(values.data()), lens, inputs_shape);
  179. MS_EXCEPTION_IF_NULL(grad);
  180. AddressPtr indices =
  181. GenInputAddrPtr<float>(kSparseAdam, "indices", const_cast<float *>(values.data()), lens, inputs_shape);
  182. MS_EXCEPTION_IF_NULL(indices);
  183. return new SparseAdamOptimInfo(weight_addr, m, v, beta1_power, beta2_power, learning_rate, beta1, beta2, epsilon,
  184. grad, indices, sharded);
  185. }
  186. OptimizerInfo *SparseFtrlOptimInfoBuilder::BuildInputs(const WeightPtr &weight, const Keys &, const Values &values,
  187. const Lengths &lens, const InputsShapePtr &inputs_shape, size_t,
  188. const std::shared_ptr<PServerKernel> &pserver_kernel,
  189. bool sharded) {
  190. MS_EXCEPTION_IF_NULL(inputs_shape);
  191. AddressPtr weight_addr = std::make_shared<kernel::Address>();
  192. MS_EXCEPTION_IF_NULL(weight_addr);
  193. weight_addr->addr = weight->data();
  194. weight_addr->size = weight->size() * sizeof(float);
  195. AddressPtr accum = std::make_shared<kernel::Address>();
  196. MS_EXCEPTION_IF_NULL(accum);
  197. accum->addr = new float[weight->size()];
  198. MS_EXCEPTION_IF_NULL(accum->addr);
  199. accum->size = weight->size() * sizeof(float);
  200. for (size_t i = 0; i < weight->size(); i++) {
  201. float *tmp = reinterpret_cast<float *>(accum->addr);
  202. tmp[i] = std::dynamic_pointer_cast<SparseApplyFtrlPSKernel>(pserver_kernel)->init_accum();
  203. }
  204. AddressPtr linear = std::make_shared<kernel::Address>();
  205. MS_EXCEPTION_IF_NULL(linear);
  206. linear->addr = new float[weight->size()];
  207. MS_EXCEPTION_IF_NULL(linear->addr);
  208. linear->size = weight->size() * sizeof(float);
  209. int64_t ret = memset_s(linear->addr, weight->size() * sizeof(float), 0x00, weight->size() * sizeof(float));
  210. if (ret != 0) {
  211. MS_LOG(EXCEPTION) << "memset_s error, errorno(" << ret << ")";
  212. delete[] reinterpret_cast<float *>(linear->addr);
  213. linear->addr = nullptr;
  214. return nullptr;
  215. }
  216. AddressPtr grad = GenInputAddrPtr<float>(kSparseFtrl, "grad", const_cast<float *>(values.data()), lens, inputs_shape);
  217. MS_EXCEPTION_IF_NULL(grad);
  218. AddressPtr indices =
  219. GenInputAddrPtr<float>(kSparseFtrl, "indices", const_cast<float *>(values.data()), lens, inputs_shape);
  220. MS_EXCEPTION_IF_NULL(indices);
  221. return new SparseFtrlOptimInfo(weight_addr, accum, linear, grad, indices, sharded);
  222. }
  223. } // namespace ps
  224. } // namespace mindspore