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tensor_summary.cc 12 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 <cmath>
  17. #include <algorithm>
  18. #include <limits>
  19. #include <memory>
  20. #include <bitset>
  21. #include <tuple>
  22. #include <type_traits>
  23. #include "debug/debugger/tensor_summary.h"
  24. #ifdef OFFLINE_DBG_MODE
  25. #include "base/float16.h"
  26. #include "offline_debug/offline_logger.h"
  27. #endif
  28. #ifdef ONLINE_DBG_MODE
  29. namespace mindspore {
  30. #endif
  31. using CONDITION_TYPE = DebugServices::CONDITION_TYPE;
  32. RangeCountCalculator::RangeCountCalculator()
  33. : range_start_inclusive(-std::numeric_limits<double>::infinity()),
  34. range_end_inclusive(std::numeric_limits<double>::infinity()),
  35. count(0),
  36. total(0) {}
  37. void RangeCountCalculator::ProcessElement(double element) {
  38. count += (element >= range_start_inclusive && element <= range_end_inclusive);
  39. total += 1;
  40. }
  41. double RangeCountCalculator::GetPercentInRange() const {
  42. if (total == 0) {
  43. return 0.0;
  44. }
  45. const double factor = 100.0;
  46. return factor * count / total;
  47. }
  48. AllCloseCalculator::AllCloseCalculator() : atol(1.0e-8), rtol(1.0e-5), result(true) {}
  49. void AllCloseCalculator::ProcessElement(double current, double previous) {
  50. result = result && (std::abs(current - previous) <= (atol + rtol * std::abs(previous)));
  51. }
  52. bool AllCloseCalculator::IsAllClose() const { return result; }
  53. MeanCalculator::MeanCalculator() : mean(0.0), count(0) {}
  54. void MeanCalculator::ProcessElement(double value) {
  55. count += 1;
  56. double delta = value - mean;
  57. mean += delta / count;
  58. }
  59. double MeanCalculator::GetMean() const { return mean; }
  60. VarianceAndMeanCalculator::VarianceAndMeanCalculator() : mean(0.0), count(0), m2(0.0) {}
  61. void VarianceAndMeanCalculator::ProcessElement(double value) {
  62. count += 1;
  63. double delta = value - mean;
  64. mean += delta / count;
  65. m2 += delta * (value - mean);
  66. }
  67. double VarianceAndMeanCalculator::GetMean() const { return mean; }
  68. double VarianceAndMeanCalculator::GetVariance() const {
  69. if (count > 1) {
  70. return m2 / (count - 1);
  71. } else {
  72. return 0.0;
  73. }
  74. }
  75. double VarianceAndMeanCalculator::GetStandardDeviation() { return sqrt(GetVariance()); }
  76. template <typename T>
  77. TensorSummary<T>::TensorSummary(void *current_tensor_ptr, void *const previous_tensor_ptr, uint32_t num_elements)
  78. : current_tensor_ptr_(reinterpret_cast<T *>(current_tensor_ptr)),
  79. prev_tensor_ptr_(reinterpret_cast<T *>(previous_tensor_ptr)),
  80. num_elements_(num_elements),
  81. min_(std::numeric_limits<double>::max()),
  82. max_(std::numeric_limits<double>::lowest()),
  83. avg_(0.0),
  84. is_bool_(false),
  85. neg_zero_count_(0),
  86. pos_zero_count_(0),
  87. pos_inf_count_(0),
  88. neg_inf_count_(0),
  89. inf_count_(0),
  90. nan_count_(0),
  91. zero_count_(0),
  92. epsilon_(1.0e-9),
  93. mean_sd_cal_enabled_(false) {}
  94. template <typename T>
  95. void TensorSummary<T>::SummarizeTensor(const std::vector<DebugServices::watchpoint_t> &wps) {
  96. InitCalculators(wps);
  97. for (size_t i = 0; i < num_elements_; ++i) {
  98. auto current_value = static_cast<double>(current_tensor_ptr_[i]);
  99. double previous_value =
  100. prev_tensor_ptr_ ? static_cast<double>(prev_tensor_ptr_[i]) : std::numeric_limits<double>::quiet_NaN();
  101. inf_count_ += std::isinf(current_value);
  102. nan_count_ += std::isnan(current_value);
  103. zero_count_ += (current_value == 0);
  104. max_ = std::max(max_, current_value);
  105. min_ = std::min(min_, current_value);
  106. if (mean_sd_cal_enabled_) {
  107. current_mean_variance_.ProcessElement(current_value);
  108. }
  109. for (auto &it : all_close_) {
  110. it.second->ProcessElement(current_value, previous_value);
  111. }
  112. for (auto &range_count : range_counts_) {
  113. range_count.second->ProcessElement(current_value);
  114. }
  115. for (auto &mean : means_) {
  116. if (mean.first == "curr_prev_diff_mean") {
  117. mean.second->ProcessElement(std::abs(current_value - previous_value));
  118. } else if (mean.first == "abs_prev_mean") {
  119. mean.second->ProcessElement(std::abs(previous_value));
  120. } else if (mean.first == "abs_current_mean") {
  121. mean.second->ProcessElement(std::abs(current_value));
  122. }
  123. }
  124. }
  125. }
  126. template <typename T>
  127. void TensorSummary<T>::TensorStatistics(DbgDataType dtype_value) {
  128. if (dtype_value == DT_BOOL) {
  129. is_bool_ = true;
  130. }
  131. double sum_elements = 0.0;
  132. for (size_t i = 0; i < num_elements_; ++i) {
  133. auto current_value = static_cast<double>(current_tensor_ptr_[i]);
  134. if (std::isinf(current_value)) {
  135. if (current_value > 0) {
  136. pos_inf_count_ += 1;
  137. } else {
  138. neg_inf_count_ += 1;
  139. }
  140. }
  141. zero_count_ += (current_value == 0);
  142. nan_count_ += std::isnan(current_value);
  143. if (!(std::isnan(current_value) || std::isinf(current_value))) {
  144. // only considering tensor elements with value
  145. if (std::signbit(current_value) && !(current_value == 0)) {
  146. neg_zero_count_ += 1;
  147. } else if (!(current_value == 0)) {
  148. pos_zero_count_ += 1;
  149. }
  150. max_ = std::max(max_, current_value);
  151. min_ = std::min(min_, current_value);
  152. sum_elements += current_value;
  153. }
  154. }
  155. int value_count = zero_count_ + neg_zero_count_ + pos_zero_count_;
  156. avg_ = sum_elements / value_count;
  157. }
  158. template <typename T>
  159. std::tuple<bool, int, std::vector<DebugServices::parameter_t>> TensorSummary<T>::IsWatchpointHit(
  160. DebugServices::watchpoint_t wp) {
  161. auto parameter_list = wp.parameter_list;
  162. bool hit = false;
  163. const uint8_t bit_size = 32;
  164. std::bitset<bit_size> error_code;
  165. CONDITION_TYPE type = wp.condition.type;
  166. // bit 0 denotes presence of nan
  167. error_code.set(0, nan_count_ > 0);
  168. // bit 1 denotes presence of inf
  169. error_code.set(1, inf_count_ > 0);
  170. if (type == CONDITION_TYPE::HAS_NAN) {
  171. error_code.reset();
  172. hit = nan_count_ > 0;
  173. } else if (type == CONDITION_TYPE::HAS_INF) {
  174. error_code.reset();
  175. hit = inf_count_ > 0;
  176. } else if (type == CONDITION_TYPE::GENERAL_OVERFLOW) {
  177. error_code.reset();
  178. hit = (nan_count_ + inf_count_) > 0;
  179. } else if (type == CONDITION_TYPE::NOT_CHANGED && prev_tensor_ptr_ && error_code.none()) {
  180. hit = all_close_[wp.id]->IsAllClose();
  181. } else if ((type == CONDITION_TYPE::NOT_CHANGED || type == CONDITION_TYPE::CHANGE_TOO_LARGE ||
  182. type == CONDITION_TYPE::CHANGE_TOO_SMALL) &&
  183. !prev_tensor_ptr_) {
  184. // bit 2 denotes absence of previous tensor
  185. error_code.set(2, true);
  186. }
  187. if (error_code.none()) {
  188. for (auto &parameter : parameter_list) {
  189. if (parameter.disabled || error_code.any()) {
  190. continue;
  191. }
  192. // extract inequality type from watchpoint for backward compatibility
  193. std::string inequality_type;
  194. if (wp.is_gt_wp()) {
  195. inequality_type = "gt";
  196. } else if (wp.is_lt_wp()) {
  197. inequality_type = "lt";
  198. }
  199. parameter.Evaluate(StatLookup(parameter.name, wp), inequality_type);
  200. hit = hit || parameter.hit;
  201. }
  202. }
  203. return std::make_tuple(hit, static_cast<int32_t>(error_code.to_ulong()), parameter_list);
  204. }
  205. template <typename T>
  206. double_t TensorSummary<T>::StatLookup(const std::string &parameter_name, const DebugServices::watchpoint_t &wp) {
  207. if (parameter_name == "param") return StatLookup(wp);
  208. std::string param_type;
  209. auto pos = parameter_name.find_last_of('_');
  210. if (pos != std::string::npos) {
  211. param_type = parameter_name.substr(0, pos);
  212. }
  213. if (param_type == "max") {
  214. return max_;
  215. } else if (param_type == "min") {
  216. return min_;
  217. } else if (param_type == "max_min") {
  218. return max_ - min_;
  219. } else if (param_type == "mean") {
  220. return current_mean_variance_.GetMean();
  221. } else if (param_type == "sd") {
  222. return current_mean_variance_.GetStandardDeviation();
  223. } else if (param_type == "abs_mean") {
  224. if (means_.find("abs_current_mean") != means_.end()) {
  225. return means_["abs_current_mean"]->GetMean();
  226. }
  227. } else if (param_type == "abs_mean_update_ratio" && prev_tensor_ptr_) {
  228. if (means_.find("curr_prev_diff_mean") != means_.end() && means_.find("abs_prev_mean") != means_.end()) {
  229. return means_["curr_prev_diff_mean"]->GetMean() / (means_["abs_prev_mean"]->GetMean() + epsilon_);
  230. }
  231. } else if (param_type == "range_percentage") {
  232. if (range_counts_.find(wp.id) != range_counts_.end()) {
  233. return range_counts_[wp.id]->GetPercentInRange();
  234. }
  235. } else if (param_type == "zero_percentage") {
  236. return GetZeroValPercent();
  237. }
  238. return std::numeric_limits<double_t>::quiet_NaN();
  239. }
  240. template <typename T>
  241. double_t TensorSummary<T>::StatLookup(const DebugServices::watchpoint_t &wp) {
  242. CONDITION_TYPE type = wp.condition.type;
  243. if (type == CONDITION_TYPE::MAX_LT || type == CONDITION_TYPE::MAX_GT) {
  244. return max_;
  245. } else if (type == CONDITION_TYPE::MIN_LT || type == CONDITION_TYPE::MIN_GT) {
  246. return min_;
  247. } else if (type == CONDITION_TYPE::MEAN_LT || type == CONDITION_TYPE::MEAN_GT) {
  248. return current_mean_variance_.GetMean();
  249. } else if (type == CONDITION_TYPE::SD_LT || type == CONDITION_TYPE::SD_GT) {
  250. return current_mean_variance_.GetStandardDeviation();
  251. } else if (type == CONDITION_TYPE::MAX_MIN_GT || type == CONDITION_TYPE::MAX_MIN_LT) {
  252. return max_ - min_;
  253. }
  254. return std::numeric_limits<double_t>::quiet_NaN();
  255. }
  256. template <typename T>
  257. double_t TensorSummary<T>::GetZeroValPercent() {
  258. if (num_elements_ == 0) {
  259. return 0;
  260. }
  261. return (zero_count_ * 100.0) / num_elements_;
  262. }
  263. template <typename T>
  264. void TensorSummary<T>::InitCalculators(const std::vector<DebugServices::watchpoint_t> &wps) {
  265. for (auto &wp : wps) {
  266. auto wp_id = wp.id;
  267. mean_sd_cal_enabled_ = mean_sd_cal_enabled_ || wp.mean_sd_enabled();
  268. if (wp.allclose_enabled() && prev_tensor_ptr_) {
  269. all_close_[wp_id] = std::make_unique<AllCloseCalculator>();
  270. if (!wp.parameter_list[0].disabled) {
  271. all_close_[wp_id]->set_atol(wp.parameter_list[0].value);
  272. }
  273. if (!wp.parameter_list[1].disabled) {
  274. all_close_[wp_id]->set_rtol(wp.parameter_list[1].value);
  275. }
  276. } else if (wp.range_enabled()) {
  277. range_counts_[wp_id] = std::make_unique<RangeCountCalculator>();
  278. if (!wp.parameter_list[0].disabled) {
  279. range_counts_[wp_id]->set_range_start_inclusive(wp.parameter_list[0].value);
  280. }
  281. if (!wp.parameter_list[1].disabled) {
  282. range_counts_[wp_id]->set_range_end_inclusive(wp.parameter_list[1].value);
  283. }
  284. } else if (wp.tensor_update_ratio_mean_enabled() && prev_tensor_ptr_) {
  285. means_.insert({"curr_prev_diff_mean", std::make_unique<MeanCalculator>()});
  286. means_.insert({"abs_prev_mean", std::make_unique<MeanCalculator>()});
  287. } else if (wp.abs_mean_enabled()) {
  288. means_.insert({"abs_current_mean", std::make_unique<MeanCalculator>()});
  289. }
  290. }
  291. }
  292. template class TensorSummary<uint8_t>;
  293. template class TensorSummary<int8_t>;
  294. template class TensorSummary<uint16_t>;
  295. template class TensorSummary<int16_t>;
  296. template class TensorSummary<uint32_t>;
  297. template class TensorSummary<int32_t>;
  298. template class TensorSummary<uint64_t>;
  299. template class TensorSummary<int64_t>;
  300. template class TensorSummary<float16>;
  301. template class TensorSummary<float>;
  302. template class TensorSummary<double>;
  303. template class TensorSummary<bool>;
  304. #ifdef ONLINE_DBG_MODE
  305. } // namespace mindspore
  306. #endif