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transforms.cc 10 kB

5 years ago
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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 "minddata/dataset/include/dataset/transforms.h"
  17. #include <algorithm>
  18. #include "mindspore/ccsrc/minddata/dataset/core/type_id.h"
  19. #include "mindspore/core/ir/dtype/type_id.h"
  20. #include "minddata/dataset/core/type_id.h"
  21. #include "minddata/dataset/kernels/ir/data/transforms_ir.h"
  22. namespace mindspore {
  23. namespace dataset {
  24. // Transform operations for data.
  25. namespace transforms {
  26. // API CLASS FOR DATA TRANSFORM OPERATIONS
  27. // (In alphabetical order)
  28. // Constructor to Compose.
  29. struct Compose::Data {
  30. std::vector<std::shared_ptr<TensorOperation>> transforms_;
  31. };
  32. Compose::Compose(const std::vector<TensorTransform *> &transforms) : data_(std::make_shared<Data>()) {
  33. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  34. [](TensorTransform *const op) -> std::shared_ptr<TensorOperation> {
  35. return op != nullptr ? op->Parse() : nullptr;
  36. });
  37. }
  38. Compose::Compose(const std::vector<std::shared_ptr<TensorTransform>> &transforms) : data_(std::make_shared<Data>()) {
  39. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  40. [](std::shared_ptr<TensorTransform> op) -> std::shared_ptr<TensorOperation> {
  41. return op != nullptr ? op->Parse() : nullptr;
  42. });
  43. }
  44. Compose::Compose(const std::vector<std::reference_wrapper<TensorTransform>> &transforms)
  45. : data_(std::make_shared<Data>()) {
  46. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  47. [](TensorTransform &op) -> std::shared_ptr<TensorOperation> { return op.Parse(); });
  48. }
  49. std::shared_ptr<TensorOperation> Compose::Parse() { return std::make_shared<ComposeOperation>(data_->transforms_); }
  50. #ifndef ENABLE_ANDROID
  51. // Constructor to Concatenate
  52. struct Concatenate::Data {
  53. explicit Data(int8_t axis, const MSTensor &prepend, const MSTensor &append)
  54. : axis_(axis), prepend_(prepend), append_(append) {}
  55. int8_t axis_;
  56. MSTensor prepend_;
  57. MSTensor append_;
  58. };
  59. Concatenate::Concatenate(int8_t axis, const MSTensor &prepend, const MSTensor &append)
  60. : data_(std::make_shared<Data>(axis, prepend, append)) {}
  61. std::shared_ptr<TensorOperation> Concatenate::Parse() {
  62. std::shared_ptr<Tensor> out_prepend, out_append;
  63. Status rc = Tensor::CreateFromMSTensor(data_->prepend_, &out_prepend);
  64. if (rc.IsError()) {
  65. MS_LOG(ERROR) << "Error creating prepend constant tensor. " << rc;
  66. return nullptr;
  67. }
  68. rc = Tensor::CreateFromMSTensor(data_->append_, &out_append);
  69. if (rc.IsError()) {
  70. MS_LOG(ERROR) << "Error creating append constant tensor. " << rc;
  71. return nullptr;
  72. }
  73. return std::make_shared<ConcatenateOperation>(data_->axis_, out_prepend, out_append);
  74. }
  75. #endif // not ENABLE_ANDROID
  76. // Constructor to Duplicate
  77. Duplicate::Duplicate() {}
  78. std::shared_ptr<TensorOperation> Duplicate::Parse() { return std::make_shared<DuplicateOperation>(); }
  79. #ifndef ENABLE_ANDROID
  80. // Constructor to Fill
  81. struct Fill::Data {
  82. explicit Data(const MSTensor &fill_value) : fill_value_(fill_value) {}
  83. MSTensor fill_value_;
  84. };
  85. Fill::Fill(const MSTensor &fill_value) : data_(std::make_shared<Data>(fill_value)) {}
  86. std::shared_ptr<TensorOperation> Fill::Parse() {
  87. std::shared_ptr<Tensor> out_fill_value;
  88. Status rc = Tensor::CreateFromMSTensor(data_->fill_value_, &out_fill_value);
  89. if (rc.IsError()) {
  90. MS_LOG(ERROR) << "Error creating fill value tensor. " << rc;
  91. return nullptr;
  92. }
  93. return std::make_shared<FillOperation>(out_fill_value);
  94. }
  95. // Constructor to Mask
  96. struct Mask::Data {
  97. explicit Data(RelationalOp op, const MSTensor &constant, mindspore::DataType ms_type)
  98. : op_(op), constant_(constant), ms_type_(ms_type) {}
  99. RelationalOp op_;
  100. MSTensor constant_;
  101. mindspore::DataType ms_type_;
  102. };
  103. Mask::Mask(RelationalOp op, const MSTensor &constant, mindspore::DataType ms_type)
  104. : data_(std::make_shared<Data>(op, constant, ms_type)) {}
  105. std::shared_ptr<TensorOperation> Mask::Parse() {
  106. std::shared_ptr<Tensor> out_constant;
  107. Status rc = Tensor::CreateFromMSTensor(data_->constant_, &out_constant);
  108. if (rc.IsError()) {
  109. MS_LOG(ERROR) << "Error creating constant tensor. " << rc;
  110. return nullptr;
  111. }
  112. DataType de_type = dataset::MSTypeToDEType(static_cast<TypeId>(data_->ms_type_));
  113. return std::make_shared<MaskOperation>(data_->op_, out_constant, de_type);
  114. }
  115. #endif // not ENABLE_ANDROID
  116. // Constructor to OneHot
  117. struct OneHot::Data {
  118. explicit Data(int32_t num_classes) : num_classes_(num_classes) {}
  119. int32_t num_classes_;
  120. };
  121. OneHot::OneHot(int32_t num_classes) : data_(std::make_shared<Data>(num_classes)) {}
  122. std::shared_ptr<TensorOperation> OneHot::Parse() { return std::make_shared<OneHotOperation>(data_->num_classes_); }
  123. #ifndef ENABLE_ANDROID
  124. // Constructor to PadEnd
  125. struct PadEnd::Data {
  126. explicit Data(const std::vector<dsize_t> &pad_shape, const MSTensor &pad_value)
  127. : pad_shape_(pad_shape), pad_value_(pad_value) {}
  128. std::vector<dsize_t> pad_shape_;
  129. MSTensor pad_value_;
  130. };
  131. PadEnd::PadEnd(const std::vector<dsize_t> &pad_shape, const MSTensor &pad_value)
  132. : data_(std::make_shared<Data>(pad_shape, pad_value)) {}
  133. std::shared_ptr<TensorOperation> PadEnd::Parse() {
  134. std::shared_ptr<Tensor> pad_value;
  135. Status rc = Tensor::CreateFromMSTensor(data_->pad_value_, &pad_value);
  136. if (rc.IsError()) {
  137. MS_LOG(ERROR) << "Error creating value constant tensor. " << rc;
  138. return nullptr;
  139. }
  140. return std::make_shared<PadEndOperation>(TensorShape(data_->pad_shape_), pad_value);
  141. }
  142. #endif // not ENABLE_ANDROID
  143. // Constructor to RandomApply.
  144. struct RandomApply::Data {
  145. std::vector<std::shared_ptr<TensorOperation>> transforms_;
  146. double prob_;
  147. };
  148. RandomApply::RandomApply(const std::vector<TensorTransform *> &transforms, double prob)
  149. : data_(std::make_shared<Data>()) {
  150. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  151. [](TensorTransform *const op) -> std::shared_ptr<TensorOperation> {
  152. return op != nullptr ? op->Parse() : nullptr;
  153. });
  154. data_->prob_ = prob;
  155. }
  156. RandomApply::RandomApply(const std::vector<std::shared_ptr<TensorTransform>> &transforms, double prob)
  157. : data_(std::make_shared<Data>()) {
  158. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  159. [](std::shared_ptr<TensorTransform> op) -> std::shared_ptr<TensorOperation> {
  160. return op != nullptr ? op->Parse() : nullptr;
  161. });
  162. data_->prob_ = prob;
  163. }
  164. RandomApply::RandomApply(const std::vector<std::reference_wrapper<TensorTransform>> &transforms, double prob)
  165. : data_(std::make_shared<Data>()) {
  166. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  167. [](TensorTransform &op) -> std::shared_ptr<TensorOperation> { return op.Parse(); });
  168. data_->prob_ = prob;
  169. }
  170. std::shared_ptr<TensorOperation> RandomApply::Parse() {
  171. return std::make_shared<RandomApplyOperation>(data_->transforms_, data_->prob_);
  172. }
  173. // Constructor to RandomChoice.
  174. struct RandomChoice::Data {
  175. std::vector<std::shared_ptr<TensorOperation>> transforms_;
  176. };
  177. RandomChoice::RandomChoice(const std::vector<TensorTransform *> &transforms) : data_(std::make_shared<Data>()) {
  178. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  179. [](TensorTransform *const op) -> std::shared_ptr<TensorOperation> {
  180. return op != nullptr ? op->Parse() : nullptr;
  181. });
  182. }
  183. RandomChoice::RandomChoice(const std::vector<std::shared_ptr<TensorTransform>> &transforms)
  184. : data_(std::make_shared<Data>()) {
  185. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  186. [](const std::shared_ptr<TensorTransform> op) -> std::shared_ptr<TensorOperation> {
  187. return op != nullptr ? op->Parse() : nullptr;
  188. });
  189. }
  190. RandomChoice::RandomChoice(const std::vector<std::reference_wrapper<TensorTransform>> &transforms)
  191. : data_(std::make_shared<Data>()) {
  192. (void)std::transform(transforms.begin(), transforms.end(), std::back_inserter(data_->transforms_),
  193. [](TensorTransform &op) -> std::shared_ptr<TensorOperation> { return op.Parse(); });
  194. }
  195. std::shared_ptr<TensorOperation> RandomChoice::Parse() {
  196. return std::make_shared<RandomChoiceOperation>(data_->transforms_);
  197. }
  198. #ifndef ENABLE_ANDROID
  199. // Constructor to Slice
  200. struct Slice::Data {
  201. explicit Data(const std::vector<SliceOption> &slice_input) : slice_input_(slice_input) {}
  202. std::vector<SliceOption> slice_input_;
  203. };
  204. Slice::Slice(const std::vector<SliceOption> &slice_input) : data_(std::make_shared<Data>(slice_input)) {}
  205. std::shared_ptr<TensorOperation> Slice::Parse() { return std::make_shared<SliceOperation>(data_->slice_input_); }
  206. #endif // not ENABLE_ANDROID
  207. // Constructor to TypeCast
  208. struct TypeCast::Data {
  209. dataset::DataType data_type_;
  210. };
  211. TypeCast::TypeCast(mindspore::DataType data_type) : data_(std::make_shared<Data>()) {
  212. data_->data_type_ = dataset::MSTypeToDEType(static_cast<TypeId>(data_type));
  213. }
  214. std::shared_ptr<TensorOperation> TypeCast::Parse() { return std::make_shared<TypeCastOperation>(data_->data_type_); }
  215. // Constructor to Unique
  216. Unique::Unique() {}
  217. #ifndef ENABLE_ANDROID
  218. std::shared_ptr<TensorOperation> Unique::Parse() { return std::make_shared<UniqueOperation>(); }
  219. #else
  220. std::shared_ptr<TensorOperation> Unique::Parse() {
  221. MS_LOG(ERROR) << "Unique op is not supported for Android.";
  222. return nullptr;
  223. }
  224. #endif
  225. } // namespace transforms
  226. } // namespace dataset
  227. } // namespace mindspore