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python_bindings.cc 27 kB

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  1. /**
  2. * Copyright 2019 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 <exception>
  17. #include "dataset/api/de_pipeline.h"
  18. #include "dataset/kernels/no_op.h"
  19. #include "dataset/kernels/data/one_hot_op.h"
  20. #include "dataset/kernels/image/center_crop_op.h"
  21. #include "dataset/kernels/image/cut_out_op.h"
  22. #include "dataset/kernels/image/decode_op.h"
  23. #include "dataset/kernels/image/hwc_to_chw_op.h"
  24. #include "dataset/kernels/image/image_utils.h"
  25. #include "dataset/kernels/image/normalize_op.h"
  26. #include "dataset/kernels/image/pad_op.h"
  27. #include "dataset/kernels/image/random_color_adjust_op.h"
  28. #include "dataset/kernels/image/random_crop_decode_resize_op.h"
  29. #include "dataset/kernels/image/random_crop_and_resize_op.h"
  30. #include "dataset/kernels/image/random_crop_op.h"
  31. #include "dataset/kernels/image/random_horizontal_flip_op.h"
  32. #include "dataset/kernels/image/random_resize_op.h"
  33. #include "dataset/kernels/image/random_rotation_op.h"
  34. #include "dataset/kernels/image/random_vertical_flip_op.h"
  35. #include "dataset/kernels/image/rescale_op.h"
  36. #include "dataset/kernels/image/resize_bilinear_op.h"
  37. #include "dataset/kernels/image/resize_op.h"
  38. #include "dataset/kernels/image/uniform_aug_op.h"
  39. #include "dataset/kernels/data/type_cast_op.h"
  40. #include "dataset/engine/datasetops/source/cifar_op.h"
  41. #include "dataset/engine/datasetops/source/image_folder_op.h"
  42. #include "dataset/engine/datasetops/source/io_block.h"
  43. #include "dataset/engine/datasetops/source/mnist_op.h"
  44. #include "dataset/engine/datasetops/source/manifest_op.h"
  45. #include "dataset/engine/datasetops/source/mindrecord_op.h"
  46. #include "dataset/engine/datasetops/source/random_data_op.h"
  47. #include "dataset/engine/datasetops/source/sampler/distributed_sampler.h"
  48. #include "dataset/engine/datasetops/source/sampler/pk_sampler.h"
  49. #include "dataset/engine/datasetops/source/sampler/random_sampler.h"
  50. #include "dataset/engine/datasetops/source/sampler/sequential_sampler.h"
  51. #include "dataset/engine/datasetops/source/sampler/subset_random_sampler.h"
  52. #include "dataset/engine/datasetops/source/sampler/weighted_random_sampler.h"
  53. #include "dataset/engine/datasetops/source/sampler/python_sampler.h"
  54. #include "dataset/engine/datasetops/source/tf_reader_op.h"
  55. #include "dataset/engine/jagged_connector.h"
  56. #include "dataset/engine/datasetops/source/text_file_op.h"
  57. #include "dataset/engine/datasetops/source/voc_op.h"
  58. #include "dataset/kernels/data/to_float16_op.h"
  59. #include "dataset/util/random.h"
  60. #include "mindrecord/include/shard_operator.h"
  61. #include "mindrecord/include/shard_pk_sample.h"
  62. #include "mindrecord/include/shard_sample.h"
  63. #include "pybind11/pybind11.h"
  64. #include "pybind11/stl.h"
  65. #include "pybind11/stl_bind.h"
  66. namespace py = pybind11;
  67. namespace mindspore {
  68. namespace dataset {
  69. #define THROW_IF_ERROR(s) \
  70. do { \
  71. Status rc = std::move(s); \
  72. if (rc.IsError()) throw std::runtime_error(rc.ToString()); \
  73. } while (false)
  74. void bindDEPipeline(py::module *m) {
  75. (void)py::class_<DEPipeline>(*m, "DEPipeline")
  76. .def(py::init<>())
  77. .def(
  78. "AddNodeToTree",
  79. [](DEPipeline &de, const OpName &op_name, const py::dict &args) {
  80. DsOpPtr op;
  81. THROW_IF_ERROR(de.AddNodeToTree(op_name, args, &op));
  82. return op;
  83. },
  84. py::return_value_policy::reference)
  85. .def_static("AddChildToParentNode",
  86. [](const DsOpPtr &child_op, const DsOpPtr &parent_op) {
  87. THROW_IF_ERROR(DEPipeline::AddChildToParentNode(child_op, parent_op));
  88. })
  89. .def("AssignRootNode",
  90. [](DEPipeline &de, const DsOpPtr &dataset_op) { THROW_IF_ERROR(de.AssignRootNode(dataset_op)); })
  91. .def("SetBatchParameters",
  92. [](DEPipeline &de, const py::dict &args) { THROW_IF_ERROR(de.SetBatchParameters(args)); })
  93. .def("LaunchTreeExec", [](DEPipeline &de) { THROW_IF_ERROR(de.LaunchTreeExec()); })
  94. .def("GetNextAsMap",
  95. [](DEPipeline &de) {
  96. py::dict out;
  97. THROW_IF_ERROR(de.GetNextAsMap(&out));
  98. return out;
  99. })
  100. .def("GetNextAsList",
  101. [](DEPipeline &de) {
  102. py::list out;
  103. THROW_IF_ERROR(de.GetNextAsList(&out));
  104. return out;
  105. })
  106. .def("GetOutputShapes",
  107. [](DEPipeline &de) {
  108. py::list out;
  109. THROW_IF_ERROR(de.GetOutputShapes(&out));
  110. return out;
  111. })
  112. .def("GetOutputTypes",
  113. [](DEPipeline &de) {
  114. py::list out;
  115. THROW_IF_ERROR(de.GetOutputTypes(&out));
  116. return out;
  117. })
  118. .def("GetDatasetSize", &DEPipeline::GetDatasetSize)
  119. .def("GetBatchSize", &DEPipeline::GetBatchSize)
  120. .def("GetNumClasses", &DEPipeline::GetNumClasses)
  121. .def("GetRepeatCount", &DEPipeline::GetRepeatCount);
  122. }
  123. void bindDatasetOps(py::module *m) {
  124. (void)py::class_<TFReaderOp, DatasetOp, std::shared_ptr<TFReaderOp>>(*m, "TFReaderOp")
  125. .def_static("get_num_rows", [](const py::list &files, int64_t numParallelWorkers, bool estimate = false) {
  126. int64_t count = 0;
  127. std::vector<std::string> filenames;
  128. for (auto l : files) {
  129. !l.is_none() ? filenames.push_back(py::str(l)) : (void)filenames.emplace_back("");
  130. }
  131. THROW_IF_ERROR(TFReaderOp::CountTotalRows(&count, filenames, numParallelWorkers, estimate));
  132. return count;
  133. });
  134. (void)py::class_<CifarOp, DatasetOp, std::shared_ptr<CifarOp>>(*m, "CifarOp")
  135. .def_static("get_num_rows", [](const std::string &dir, int64_t numSamples, bool isCifar10) {
  136. int64_t count = 0;
  137. THROW_IF_ERROR(CifarOp::CountTotalRows(dir, numSamples, isCifar10, &count));
  138. return count;
  139. });
  140. (void)py::class_<ImageFolderOp, DatasetOp, std::shared_ptr<ImageFolderOp>>(*m, "ImageFolderOp")
  141. .def_static("get_num_rows_and_classes", [](const std::string &path, int64_t numSamples) {
  142. int64_t count = 0, num_classes = 0;
  143. THROW_IF_ERROR(
  144. ImageFolderOp::CountRowsAndClasses(path, numSamples, std::set<std::string>{}, &count, &num_classes));
  145. return py::make_tuple(count, num_classes);
  146. });
  147. (void)py::class_<MindRecordOp, DatasetOp, std::shared_ptr<MindRecordOp>>(*m, "MindRecordOp")
  148. .def_static("get_num_rows",
  149. [](const std::vector<std::string> &paths, bool load_dataset, const py::object &sampler) {
  150. int64_t count = 0;
  151. std::shared_ptr<mindrecord::ShardOperator> op;
  152. if (py::hasattr(sampler, "_create_for_minddataset")) {
  153. auto create = sampler.attr("_create_for_minddataset");
  154. op = create().cast<std::shared_ptr<mindrecord::ShardOperator>>();
  155. }
  156. THROW_IF_ERROR(MindRecordOp::CountTotalRows(paths, load_dataset, op, &count));
  157. return count;
  158. });
  159. (void)py::class_<ManifestOp, DatasetOp, std::shared_ptr<ManifestOp>>(*m, "ManifestOp")
  160. .def_static("get_num_rows_and_classes",
  161. [](const std::string &file, int64_t numSamples, const py::dict &dict, const std::string &usage) {
  162. int64_t count = 0, num_classes = 0;
  163. THROW_IF_ERROR(ManifestOp::CountTotalRows(file, numSamples, dict, usage, &count, &num_classes));
  164. return py::make_tuple(count, num_classes);
  165. })
  166. .def_static("get_class_indexing",
  167. [](const std::string &file, int64_t numSamples, const py::dict &dict, const std::string &usage) {
  168. std::map<std::string, int32_t> output_class_indexing;
  169. THROW_IF_ERROR(ManifestOp::GetClassIndexing(file, numSamples, dict, usage, &output_class_indexing));
  170. return output_class_indexing;
  171. });
  172. (void)py::class_<MnistOp, DatasetOp, std::shared_ptr<MnistOp>>(*m, "MnistOp")
  173. .def_static("get_num_rows", [](const std::string &dir, int64_t numSamples) {
  174. int64_t count = 0;
  175. THROW_IF_ERROR(MnistOp::CountTotalRows(dir, numSamples, &count));
  176. return count;
  177. });
  178. (void)py::class_<TextFileOp, DatasetOp, std::shared_ptr<TextFileOp>>(*m, "TextFileOp")
  179. .def_static("get_num_rows", [](const py::list &files) {
  180. int64_t count = 0;
  181. std::vector<std::string> filenames;
  182. for (auto file : files) {
  183. !file.is_none() ? filenames.push_back(py::str(file)) : (void)filenames.emplace_back("");
  184. }
  185. THROW_IF_ERROR(TextFileOp::CountAllFileRows(filenames, &count));
  186. return count;
  187. });
  188. (void)py::class_<VOCOp, DatasetOp, std::shared_ptr<VOCOp>>(*m, "VOCOp")
  189. .def_static("get_class_indexing", [](const std::string &dir, const std::string &task_type,
  190. const std::string &task_mode, const py::dict &dict, int64_t numSamples) {
  191. std::map<std::string, int32_t> output_class_indexing;
  192. THROW_IF_ERROR(VOCOp::GetClassIndexing(dir, task_type, task_mode, dict, numSamples, &output_class_indexing));
  193. return output_class_indexing;
  194. });
  195. }
  196. void bindTensor(py::module *m) {
  197. (void)py::class_<GlobalContext>(*m, "GlobalContext")
  198. .def_static("config_manager", &GlobalContext::config_manager, py::return_value_policy::reference);
  199. (void)py::class_<ConfigManager, std::shared_ptr<ConfigManager>>(*m, "ConfigManager")
  200. .def("__str__", &ConfigManager::ToString)
  201. .def("set_rows_per_buffer", &ConfigManager::set_rows_per_buffer)
  202. .def("set_num_parallel_workers", &ConfigManager::set_num_parallel_workers)
  203. .def("set_worker_connector_size", &ConfigManager::set_worker_connector_size)
  204. .def("set_op_connector_size", &ConfigManager::set_op_connector_size)
  205. .def("set_seed", &ConfigManager::set_seed)
  206. .def("get_rows_per_buffer", &ConfigManager::rows_per_buffer)
  207. .def("get_num_parallel_workers", &ConfigManager::num_parallel_workers)
  208. .def("get_worker_connector_size", &ConfigManager::worker_connector_size)
  209. .def("get_op_connector_size", &ConfigManager::op_connector_size)
  210. .def("get_seed", &ConfigManager::seed)
  211. .def("load", [](ConfigManager &c, std::string s) { (void)c.LoadFile(s); });
  212. (void)py::class_<Tensor, std::shared_ptr<Tensor>>(*m, "Tensor", py::buffer_protocol())
  213. .def(py::init([](py::array arr) {
  214. std::shared_ptr<Tensor> out;
  215. THROW_IF_ERROR(Tensor::CreateTensor(&out, arr));
  216. return out;
  217. }))
  218. .def_buffer([](Tensor &tensor) {
  219. py::buffer_info info;
  220. THROW_IF_ERROR(Tensor::GetBufferInfo(tensor, &info));
  221. return info;
  222. })
  223. .def("__str__", &Tensor::ToString)
  224. .def("shape", &Tensor::shape)
  225. .def("type", &Tensor::type)
  226. .def("as_array", [](py::object &t) {
  227. auto &tensor = py::cast<Tensor &>(t);
  228. py::buffer_info info;
  229. THROW_IF_ERROR(Tensor::GetBufferInfo(tensor, &info));
  230. return py::array(pybind11::dtype(info), info.shape, info.strides, info.ptr, t);
  231. });
  232. (void)py::class_<TensorShape>(*m, "TensorShape")
  233. .def(py::init<py::list>())
  234. .def("__str__", &TensorShape::ToString)
  235. .def("as_list", &TensorShape::AsPyList)
  236. .def("is_known", &TensorShape::known);
  237. (void)py::class_<DataType>(*m, "DataType")
  238. .def(py::init<std::string>())
  239. .def(py::self == py::self)
  240. .def("__str__", &DataType::ToString)
  241. .def("__deepcopy__", [](py::object &t, py::dict memo) { return t; });
  242. }
  243. void bindTensorOps1(py::module *m) {
  244. (void)py::class_<TensorOp, std::shared_ptr<TensorOp>>(*m, "TensorOp")
  245. .def("__deepcopy__", [](py::object &t, py::dict memo) { return t; });
  246. (void)py::class_<NormalizeOp, TensorOp, std::shared_ptr<NormalizeOp>>(
  247. *m, "NormalizeOp", "Tensor operation to normalize an image. Takes mean and std.")
  248. .def(py::init<float, float, float, float, float, float>(), py::arg("meanR"), py::arg("meanG"), py::arg("meanB"),
  249. py::arg("stdR"), py::arg("stdG"), py::arg("stdB"));
  250. (void)py::class_<RescaleOp, TensorOp, std::shared_ptr<RescaleOp>>(
  251. *m, "RescaleOp", "Tensor operation to rescale an image. Takes scale and shift.")
  252. .def(py::init<float, float>(), py::arg("rescale"), py::arg("shift"));
  253. (void)py::class_<CenterCropOp, TensorOp, std::shared_ptr<CenterCropOp>>(
  254. *m, "CenterCropOp", "Tensor operation to crop and image in the middle. Takes height and width (optional)")
  255. .def(py::init<int32_t, int32_t>(), py::arg("height"), py::arg("width") = CenterCropOp::kDefWidth);
  256. (void)py::class_<ResizeOp, TensorOp, std::shared_ptr<ResizeOp>>(
  257. *m, "ResizeOp", "Tensor operation to resize an image. Takes height, width and mode")
  258. .def(py::init<int32_t, int32_t, InterpolationMode>(), py::arg("targetHeight"),
  259. py::arg("targetWidth") = ResizeOp::kDefWidth, py::arg("interpolation") = ResizeOp::kDefInterpolation);
  260. (void)py::class_<UniformAugOp, TensorOp, std::shared_ptr<UniformAugOp>>(
  261. *m, "UniformAugOp", "Tensor operation to apply random augmentation(s).")
  262. .def(py::init<py::list, int32_t>(), py::arg("operations"), py::arg("NumOps") = UniformAugOp::kDefNumOps);
  263. (void)py::class_<ResizeBilinearOp, TensorOp, std::shared_ptr<ResizeBilinearOp>>(
  264. *m, "ResizeBilinearOp",
  265. "Tensor operation to resize an image using "
  266. "Bilinear mode. Takes height and width.")
  267. .def(py::init<int32_t, int32_t>(), py::arg("targetHeight"), py::arg("targetWidth") = ResizeBilinearOp::kDefWidth);
  268. (void)py::class_<DecodeOp, TensorOp, std::shared_ptr<DecodeOp>>(*m, "DecodeOp",
  269. "Tensor operation to decode a jpg image")
  270. .def(py::init<>())
  271. .def(py::init<bool>(), py::arg("rgb_format") = DecodeOp::kDefRgbFormat);
  272. (void)py::class_<RandomHorizontalFlipOp, TensorOp, std::shared_ptr<RandomHorizontalFlipOp>>(
  273. *m, "RandomHorizontalFlipOp", "Tensor operation to randomly flip an image horizontally.")
  274. .def(py::init<float>(), py::arg("probability") = RandomHorizontalFlipOp::kDefProbability);
  275. }
  276. void bindTensorOps2(py::module *m) {
  277. (void)py::class_<RandomVerticalFlipOp, TensorOp, std::shared_ptr<RandomVerticalFlipOp>>(
  278. *m, "RandomVerticalFlipOp", "Tensor operation to randomly flip an image vertically.")
  279. .def(py::init<float>(), py::arg("probability") = RandomVerticalFlipOp::kDefProbability);
  280. (void)py::class_<RandomCropOp, TensorOp, std::shared_ptr<RandomCropOp>>(*m, "RandomCropOp",
  281. "Gives random crop of specified size "
  282. "Takes crop size")
  283. .def(py::init<int32_t, int32_t, int32_t, int32_t, int32_t, int32_t, BorderType, bool, uint8_t, uint8_t, uint8_t>(),
  284. py::arg("cropHeight"), py::arg("cropWidth"), py::arg("padTop") = RandomCropOp::kDefPadTop,
  285. py::arg("padBottom") = RandomCropOp::kDefPadBottom, py::arg("padLeft") = RandomCropOp::kDefPadLeft,
  286. py::arg("padRight") = RandomCropOp::kDefPadRight, py::arg("borderType") = RandomCropOp::kDefBorderType,
  287. py::arg("padIfNeeded") = RandomCropOp::kDefPadIfNeeded, py::arg("fillR") = RandomCropOp::kDefFillR,
  288. py::arg("fillG") = RandomCropOp::kDefFillG, py::arg("fillB") = RandomCropOp::kDefFillB);
  289. (void)py::class_<HwcToChwOp, TensorOp, std::shared_ptr<HwcToChwOp>>(*m, "ChannelSwapOp").def(py::init<>());
  290. (void)py::class_<OneHotOp, TensorOp, std::shared_ptr<OneHotOp>>(
  291. *m, "OneHotOp", "Tensor operation to apply one hot encoding. Takes number of classes.")
  292. .def(py::init<int32_t>());
  293. (void)py::class_<RandomRotationOp, TensorOp, std::shared_ptr<RandomRotationOp>>(
  294. *m, "RandomRotationOp",
  295. "Tensor operation to apply RandomRotation."
  296. "Takes a range for degrees and "
  297. "optional parameters for rotation center and image expand")
  298. .def(py::init<float, float, float, float, InterpolationMode, bool, uint8_t, uint8_t, uint8_t>(),
  299. py::arg("startDegree"), py::arg("endDegree"), py::arg("centerX") = RandomRotationOp::kDefCenterX,
  300. py::arg("centerY") = RandomRotationOp::kDefCenterY,
  301. py::arg("interpolation") = RandomRotationOp::kDefInterpolation,
  302. py::arg("expand") = RandomRotationOp::kDefExpand, py::arg("fillR") = RandomRotationOp::kDefFillR,
  303. py::arg("fillG") = RandomRotationOp::kDefFillG, py::arg("fillB") = RandomRotationOp::kDefFillB);
  304. }
  305. void bindTensorOps3(py::module *m) {
  306. (void)py::class_<RandomCropAndResizeOp, TensorOp, std::shared_ptr<RandomCropAndResizeOp>>(
  307. *m, "RandomCropAndResizeOp",
  308. "Tensor operation to randomly crop an image and resize to a given size."
  309. "Takes output height and width and"
  310. "optional parameters for lower and upper bound for aspect ratio (h/w) and scale,"
  311. "interpolation mode, and max attempts to crop")
  312. .def(py::init<int32_t, int32_t, float, float, float, float, InterpolationMode, int32_t>(), py::arg("targetHeight"),
  313. py::arg("targetWidth"), py::arg("scaleLb") = RandomCropAndResizeOp::kDefScaleLb,
  314. py::arg("scaleUb") = RandomCropAndResizeOp::kDefScaleUb,
  315. py::arg("aspectLb") = RandomCropAndResizeOp::kDefAspectLb,
  316. py::arg("aspectUb") = RandomCropAndResizeOp::kDefAspectUb,
  317. py::arg("interpolation") = RandomCropAndResizeOp::kDefInterpolation,
  318. py::arg("maxIter") = RandomCropAndResizeOp::kDefMaxIter);
  319. (void)py::class_<RandomColorAdjustOp, TensorOp, std::shared_ptr<RandomColorAdjustOp>>(
  320. *m, "RandomColorAdjustOp",
  321. "Tensor operation to adjust an image's color randomly."
  322. "Takes range for brightness, contrast, saturation, hue and")
  323. .def(py::init<float, float, float, float, float, float, float, float>(), py::arg("bright_factor_start"),
  324. py::arg("bright_factor_end"), py::arg("contrast_factor_start"), py::arg("contrast_factor_end"),
  325. py::arg("saturation_factor_start"), py::arg("saturation_factor_end"), py::arg("hue_factor_start"),
  326. py::arg("hue_factor_end"));
  327. (void)py::class_<RandomResizeOp, TensorOp, std::shared_ptr<RandomResizeOp>>(
  328. *m, "RandomResizeOp",
  329. "Tensor operation to resize an image using a randomly selected interpolation. Takes height and width.")
  330. .def(py::init<int32_t, int32_t>(), py::arg("targetHeight"),
  331. py::arg("targetWidth") = RandomResizeOp::kDefTargetWidth);
  332. (void)py::class_<CutOutOp, TensorOp, std::shared_ptr<CutOutOp>>(
  333. *m, "CutOutOp", "Tensor operation to randomly erase a portion of the image. Takes height and width.")
  334. .def(py::init<int32_t, int32_t, int32_t, bool, uint8_t, uint8_t, uint8_t>(), py::arg("boxHeight"),
  335. py::arg("boxWidth"), py::arg("numPatches"), py::arg("randomColor") = CutOutOp::kDefRandomColor,
  336. py::arg("fillR") = CutOutOp::kDefFillR, py::arg("fillG") = CutOutOp::kDefFillG,
  337. py::arg("fillB") = CutOutOp::kDefFillB);
  338. }
  339. void bindTensorOps4(py::module *m) {
  340. (void)py::class_<TypeCastOp, TensorOp, std::shared_ptr<TypeCastOp>>(
  341. *m, "TypeCastOp", "Tensor operator to type cast data to a specified type.")
  342. .def(py::init<DataType>(), py::arg("data_type"))
  343. .def(py::init<std::string>(), py::arg("data_type"));
  344. (void)py::class_<NoOp, TensorOp, std::shared_ptr<NoOp>>(*m, "NoOp",
  345. "TensorOp that does nothing, for testing purposes only.")
  346. .def(py::init<>());
  347. (void)py::class_<ToFloat16Op, TensorOp, std::shared_ptr<ToFloat16Op>>(
  348. *m, "ToFloat16Op", py::dynamic_attr(), "Tensor operator to type cast float32 data to a float16 type.")
  349. .def(py::init<>());
  350. (void)py::class_<RandomCropDecodeResizeOp, TensorOp, std::shared_ptr<RandomCropDecodeResizeOp>>(
  351. *m, "RandomCropDecodeResizeOp", "equivalent to RandomCropAndResize but crops before decoding")
  352. .def(py::init<int32_t, int32_t, float, float, float, float, InterpolationMode, int32_t>(), py::arg("targetHeight"),
  353. py::arg("targetWidth"), py::arg("scaleLb") = RandomCropDecodeResizeOp::kDefScaleLb,
  354. py::arg("scaleUb") = RandomCropDecodeResizeOp::kDefScaleUb,
  355. py::arg("aspectLb") = RandomCropDecodeResizeOp::kDefAspectLb,
  356. py::arg("aspectUb") = RandomCropDecodeResizeOp::kDefAspectUb,
  357. py::arg("interpolation") = RandomCropDecodeResizeOp::kDefInterpolation,
  358. py::arg("maxIter") = RandomCropDecodeResizeOp::kDefMaxIter);
  359. (void)py::class_<PadOp, TensorOp, std::shared_ptr<PadOp>>(
  360. *m, "PadOp",
  361. "Pads image with specified color, default black, "
  362. "Takes amount to pad for top, bottom, left, right of image, boarder type and color")
  363. .def(py::init<int32_t, int32_t, int32_t, int32_t, BorderType, uint8_t, uint8_t, uint8_t>(), py::arg("padTop"),
  364. py::arg("padBottom"), py::arg("padLeft"), py::arg("padRight"), py::arg("borderTypes") = PadOp::kDefBorderType,
  365. py::arg("fillR") = PadOp::kDefFillR, py::arg("fillG") = PadOp::kDefFillG, py::arg("fillB") = PadOp::kDefFillB);
  366. }
  367. void bindSamplerOps(py::module *m) {
  368. (void)py::class_<Sampler, std::shared_ptr<Sampler>>(*m, "Sampler")
  369. .def("set_num_rows", [](Sampler &self, int64_t rows) { THROW_IF_ERROR(self.SetNumRowsInDataset(rows)); })
  370. .def("set_num_samples", [](Sampler &self, int64_t samples) { THROW_IF_ERROR(self.SetNumSamples(samples)); })
  371. .def("initialize", [](Sampler &self) { THROW_IF_ERROR(self.InitSampler()); })
  372. .def("get_indices", [](Sampler &self) {
  373. py::array ret;
  374. THROW_IF_ERROR(self.GetAllIdsThenReset(&ret));
  375. return ret;
  376. });
  377. (void)py::class_<mindrecord::ShardOperator, std::shared_ptr<mindrecord::ShardOperator>>(*m, "ShardOperator");
  378. (void)py::class_<DistributedSampler, Sampler, std::shared_ptr<DistributedSampler>>(*m, "DistributedSampler")
  379. .def(py::init<int64_t, int64_t, bool, uint32_t>(), py::arg("numDev"), py::arg("devId"), py::arg("shuffle"),
  380. py::arg("seed"));
  381. (void)py::class_<PKSampler, Sampler, std::shared_ptr<PKSampler>>(*m, "PKSampler")
  382. .def(py::init<int64_t, bool>(), py::arg("kVal"), py::arg("shuffle"));
  383. (void)py::class_<RandomSampler, Sampler, std::shared_ptr<RandomSampler>>(*m, "RandomSampler")
  384. .def(py::init<bool, int64_t>(), py::arg("replacement"), py::arg("numSamples"))
  385. .def(py::init<bool>(), py::arg("replacement"));
  386. (void)py::class_<SequentialSampler, Sampler, std::shared_ptr<SequentialSampler>>(*m, "SequentialSampler")
  387. .def(py::init<>());
  388. (void)py::class_<SubsetRandomSampler, Sampler, std::shared_ptr<SubsetRandomSampler>>(*m, "SubsetRandomSampler")
  389. .def(py::init<std::vector<int64_t>>(), py::arg("indices"));
  390. (void)py::class_<mindrecord::ShardSample, mindrecord::ShardOperator, std::shared_ptr<mindrecord::ShardSample>>(
  391. *m, "MindrecordSubsetRandomSampler")
  392. .def(py::init<std::vector<int64_t>, uint32_t>(), py::arg("indices"), py::arg("seed") = GetSeed());
  393. (void)py::class_<mindrecord::ShardPkSample, mindrecord::ShardOperator, std::shared_ptr<mindrecord::ShardPkSample>>(
  394. *m, "MindrecordPkSampler")
  395. .def(py::init([](int64_t kVal, std::string kColumn, bool shuffle) {
  396. if (shuffle == true) {
  397. return std::make_shared<mindrecord::ShardPkSample>(kColumn, kVal, std::numeric_limits<int64_t>::max(),
  398. GetSeed());
  399. } else {
  400. return std::make_shared<mindrecord::ShardPkSample>(kColumn, kVal);
  401. }
  402. }));
  403. (void)py::class_<WeightedRandomSampler, Sampler, std::shared_ptr<WeightedRandomSampler>>(*m, "WeightedRandomSampler")
  404. .def(py::init<std::vector<double>, int64_t, bool>(), py::arg("weights"), py::arg("numSamples"),
  405. py::arg("replacement"));
  406. (void)py::class_<PythonSampler, Sampler, std::shared_ptr<PythonSampler>>(*m, "PythonSampler")
  407. .def(py::init<py::object>(), py::arg("pySampler"));
  408. }
  409. void bindInfoObjects(py::module *m) {
  410. (void)py::class_<BatchOp::CBatchInfo>(*m, "CBatchInfo")
  411. .def(py::init<int64_t, int64_t, int64_t>())
  412. .def("get_epoch_num", &BatchOp::CBatchInfo::get_epoch_num)
  413. .def("get_batch_num", &BatchOp::CBatchInfo::get_batch_num);
  414. }
  415. // This is where we externalize the C logic as python modules
  416. PYBIND11_MODULE(_c_dataengine, m) {
  417. m.doc() = "pybind11 for _c_dataengine";
  418. (void)py::class_<DatasetOp, std::shared_ptr<DatasetOp>>(m, "DatasetOp");
  419. (void)py::enum_<OpName>(m, "OpName", py::arithmetic())
  420. .value("STORAGE", OpName::kStorage)
  421. .value("SHUFFLE", OpName::kShuffle)
  422. .value("BATCH", OpName::kBatch)
  423. .value("BARRIER", OpName::kBarrier)
  424. .value("MINDRECORD", OpName::kMindrecord)
  425. .value("CACHE", OpName::kCache)
  426. .value("REPEAT", OpName::kRepeat)
  427. .value("SKIP", OpName::kSkip)
  428. .value("TAKE", OpName::kTake)
  429. .value("ZIP", OpName::kZip)
  430. .value("CONCAT", OpName::kConcat)
  431. .value("MAP", OpName::kMap)
  432. .value("FILTER", OpName::kFilter)
  433. .value("DEVICEQUEUE", OpName::kDeviceQueue)
  434. .value("GENERATOR", OpName::kGenerator)
  435. .export_values()
  436. .value("RENAME", OpName::kRename)
  437. .value("TFREADER", OpName::kTfReader)
  438. .value("PROJECT", OpName::kProject)
  439. .value("IMAGEFOLDER", OpName::kImageFolder)
  440. .value("MNIST", OpName::kMnist)
  441. .value("MANIFEST", OpName::kManifest)
  442. .value("VOC", OpName::kVoc)
  443. .value("CIFAR10", OpName::kCifar10)
  444. .value("CIFAR100", OpName::kCifar100)
  445. .value("RANDOMDATA", OpName::kRandomData)
  446. .value("CELEBA", OpName::kCelebA)
  447. .value("TEXTFILE", OpName::kTextFile);
  448. (void)py::enum_<InterpolationMode>(m, "InterpolationMode", py::arithmetic())
  449. .value("DE_INTER_LINEAR", InterpolationMode::kLinear)
  450. .value("DE_INTER_CUBIC", InterpolationMode::kCubic)
  451. .value("DE_INTER_AREA", InterpolationMode::kArea)
  452. .value("DE_INTER_NEAREST_NEIGHBOUR", InterpolationMode::kNearestNeighbour)
  453. .export_values();
  454. (void)py::enum_<BorderType>(m, "BorderType", py::arithmetic())
  455. .value("DE_BORDER_CONSTANT", BorderType::kConstant)
  456. .value("DE_BORDER_EDGE", BorderType::kEdge)
  457. .value("DE_BORDER_REFLECT", BorderType::kReflect)
  458. .value("DE_BORDER_SYMMETRIC", BorderType::kSymmetric)
  459. .export_values();
  460. bindDEPipeline(&m);
  461. bindTensor(&m);
  462. bindTensorOps1(&m);
  463. bindTensorOps2(&m);
  464. bindTensorOps3(&m);
  465. bindTensorOps4(&m);
  466. bindSamplerOps(&m);
  467. bindDatasetOps(&m);
  468. bindInfoObjects(&m);
  469. }
  470. } // namespace dataset
  471. } // namespace mindspore