You can not select more than 25 topics Topics must start with a chinese character,a letter or number, can include dashes ('-') and can be up to 35 characters long.

ir_callback_test.cc 14 kB

123456789101112131415161718192021222324252627282930313233343536373839404142434445464748495051525354555657585960616263646566676869707172737475767778798081828384858687888990919293949596979899100101102103104105106107108109110111112113114115116117118119120121122123124125126127128129130131132133134135136137138139140141142143144145146147148149150151152153154155156157158159160161162163164165166167168169170171172173174175176177178179180181182183184185186187188189190191192193194195196197198199200201202203204205206207208209210211212213214215216217218219220221222223224225226227228229230231232233234235236237238239240241242243244245246247248249250251252253254255256257258259260261262263264265266267268269270271272273274275276277278279280281282283284285286287288289290291292293294295296297298299300301302303304305306307308309310311312313314315316317318319320321322323324325326327328329330331332333334335336337338339340341342343344345346347348349350351352353354355356357358359360
  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 <memory>
  17. #include <list>
  18. #include "common/common.h"
  19. #include "minddata/dataset/callback/ds_callback.h"
  20. #include "minddata/dataset/core/client.h"
  21. #include "minddata/dataset/engine/datasetops/epoch_ctrl_op.h"
  22. #include "minddata/dataset/engine/datasetops/source/random_data_op.h"
  23. #include "minddata/dataset/engine/tree_adapter.h"
  24. #include "minddata/dataset/include/dataset/datasets.h"
  25. #include "minddata/dataset/include/dataset/transforms.h"
  26. #include "minddata/dataset/kernels/data/no_op.h"
  27. #include "utils/log_adapter.h"
  28. using namespace mindspore::dataset;
  29. using mindspore::LogStream;
  30. using mindspore::MsLogLevel::INFO;
  31. namespace mindspore {
  32. namespace dataset {
  33. namespace test {
  34. class TestCallback : public DSCallback {
  35. public:
  36. TestCallback(int32_t step_size)
  37. : DSCallback(step_size),
  38. begin_(true),
  39. epoch_begin_(true),
  40. step_begin_(true),
  41. end_(false),
  42. epoch_end_(true),
  43. step_end_(true) {
  44. all_names_.reserve(32);
  45. all_step_nums_.reserve(32);
  46. all_ep_nums_.reserve(32);
  47. }
  48. Status DSBegin(const CallbackParam &cb_param) override {
  49. all_names_.push_back("BGN");
  50. all_step_nums_.push_back(cb_param.cur_step_num_);
  51. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  52. return Status::OK();
  53. }
  54. Status DSEpochBegin(const CallbackParam &cb_param) override {
  55. all_names_.push_back("EPBGN");
  56. all_step_nums_.push_back(cb_param.cur_step_num_);
  57. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  58. return Status::OK();
  59. }
  60. Status DSNStepBegin(const CallbackParam &cb_param) override {
  61. all_names_.push_back("SPBGN");
  62. all_step_nums_.push_back(cb_param.cur_step_num_);
  63. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  64. return Status::OK();
  65. }
  66. Status DSEnd(const CallbackParam &cb_param) override {
  67. all_names_.push_back("END");
  68. all_step_nums_.push_back(cb_param.cur_step_num_);
  69. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  70. return Status::OK();
  71. }
  72. Status DSEpochEnd(const CallbackParam &cb_param) override {
  73. all_names_.push_back("EPEND");
  74. all_step_nums_.push_back(cb_param.cur_step_num_);
  75. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  76. return Status::OK();
  77. }
  78. Status DSNStepEnd(const CallbackParam &cb_param) override {
  79. all_names_.push_back("SPEND");
  80. all_step_nums_.push_back(cb_param.cur_step_num_);
  81. all_ep_nums_.push_back(cb_param.cur_epoch_num_);
  82. return Status::OK();
  83. }
  84. bool IsBeginNeeded() override { return begin_; }
  85. bool IsEpochBeginNeeded() override { return epoch_begin_; }
  86. bool IsNStepBeginNeeded() override { return step_begin_; }
  87. bool IsEndNeeded() override { return end_; }
  88. bool IsEpochEndNeeded() override { return epoch_end_; }
  89. bool IsNStepEndNeeded() override { return step_end_; }
  90. std::vector<std::string> all_names(size_t len) {
  91. return std::vector<std::string>(all_names_.begin(), all_names_.begin() + len);
  92. }
  93. std::vector<int64_t> all_step_nums(size_t len) {
  94. return std::vector<int64_t>(all_step_nums_.begin(), all_step_nums_.begin() + len);
  95. }
  96. std::vector<int64_t> all_ep_nums(size_t len) {
  97. return std::vector<int64_t>(all_ep_nums_.begin(), all_ep_nums_.begin() + len);
  98. }
  99. // flag for turning callback on and off
  100. bool begin_, epoch_begin_, step_begin_, end_, epoch_end_, step_end_;
  101. // name of the callback function in sequence, BGN, EPBGN, SPB, END, EPEND, SPEND
  102. std::vector<std::string> all_names_;
  103. std::vector<int64_t> all_step_nums_, all_ep_nums_;
  104. };
  105. } // namespace test
  106. } // namespace dataset
  107. } // namespace mindspore
  108. class MindDataTestCallback : public UT::DatasetOpTesting {
  109. public:
  110. void SetUp() override {
  111. DatasetOpTesting::SetUp();
  112. GlobalInit();
  113. }
  114. };
  115. TEST_F(MindDataTestCallback, TestBasicCallback) {
  116. MS_LOG(INFO) << "Doing: MindDataTestCallback-TestBasicCallback";
  117. // config callback
  118. Status rc;
  119. std::shared_ptr<test::TestCallback> tst_cb = std::make_shared<test::TestCallback>(64);
  120. std::shared_ptr<DSCallback> cb1 = tst_cb;
  121. // config leaf_op, use random_data to avoid I/O
  122. std::unique_ptr<DataSchema> schema = std::make_unique<DataSchema>();
  123. TensorShape shape({}); // empty shape is a 1-value scalar Tensor
  124. ColDescriptor col("label", DataType(DataType::DE_UINT32), TensorImpl::kFlexible, 0, &shape);
  125. ASSERT_OK(schema->AddColumn(col));
  126. std::shared_ptr<ConfigManager> config_manager = GlobalContext::config_manager();
  127. int32_t op_connector_size = config_manager->op_connector_size();
  128. int32_t num_workers = config_manager->num_parallel_workers();
  129. std::shared_ptr<RandomDataOp> leaf =
  130. std::make_shared<RandomDataOp>(num_workers, op_connector_size, 44, std::move(schema));
  131. // config mapOp
  132. std::vector<std::string> input_columns = {"label"};
  133. std::vector<std::string> output_columns = {};
  134. std::vector<std::shared_ptr<TensorOp>> op_list;
  135. std::shared_ptr<TensorOp> my_no_op = std::make_shared<NoOp>();
  136. op_list.push_back(my_no_op);
  137. std::shared_ptr<MapOp> map_op =
  138. std::make_shared<MapOp>(input_columns, output_columns, std::move(op_list), num_workers, op_connector_size);
  139. std::vector<std::shared_ptr<DSCallback>> cbs = {};
  140. cbs.push_back(cb1);
  141. map_op->AddCallbacks(std::move(cbs));
  142. // config RepeatOp
  143. std::shared_ptr<RepeatOp> repeat_op = std::make_shared<RepeatOp>(2);
  144. // start build then launch tree
  145. leaf->set_total_repeats(2);
  146. leaf->set_num_repeats_per_epoch(2);
  147. map_op->set_total_repeats(2);
  148. map_op->set_num_repeats_per_epoch(2);
  149. std::shared_ptr<ExecutionTree> tree = Build({leaf, map_op, repeat_op});
  150. rc = tree->Prepare();
  151. EXPECT_TRUE(rc.IsOk());
  152. rc = tree->Launch();
  153. EXPECT_TRUE(rc.IsOk());
  154. // Start the loop of reading tensors from our pipeline
  155. DatasetIterator di(tree);
  156. TensorMap tensor_map;
  157. rc = di.GetNextAsMap(&tensor_map);
  158. EXPECT_TRUE(rc.IsOk());
  159. while (!tensor_map.empty()) {
  160. rc = di.GetNextAsMap(&tensor_map);
  161. EXPECT_TRUE(rc.IsOk());
  162. }
  163. std::vector<std::string> callback_names = {"BGN", "EPBGN", "SPBGN", "SPEND", "SPBGN", "SPEND", "EPEND"};
  164. std::vector<int64_t> all_steps = {0, 0, 1, 1, 65, 65, 88};
  165. std::vector<int64_t> all_epochs = {0, 1, 1, 1, 1, 1, 1};
  166. // doing resize to make sure no unexpected epoch_end or extra epoch_begin is called
  167. size_t len = 7;
  168. EXPECT_EQ(tst_cb->all_names(len), callback_names);
  169. EXPECT_EQ(tst_cb->all_step_nums(len), all_steps);
  170. EXPECT_EQ(tst_cb->all_ep_nums(len), all_epochs);
  171. }
  172. TEST_F(MindDataTestCallback, TestMultiEpochCallback) {
  173. MS_LOG(INFO) << "Doing: MindDataTestCallback-TestMultiEpochCallback";
  174. // config callback
  175. Status rc;
  176. std::shared_ptr<test::TestCallback> tst_cb = std::make_shared<test::TestCallback>(4);
  177. std::shared_ptr<DSCallback> cb1 = tst_cb;
  178. // config leaf_op, use random_data to avoid I/O
  179. std::shared_ptr<ConfigManager> config_manager = GlobalContext::config_manager();
  180. int32_t op_connector_size = config_manager->op_connector_size();
  181. int32_t num_workers = config_manager->num_parallel_workers();
  182. std::unique_ptr<DataSchema> schema = std::make_unique<DataSchema>();
  183. TensorShape shape({}); // empty shape is a 1-value scalar Tensor
  184. ColDescriptor col("label", DataType(DataType::DE_UINT32), TensorImpl::kFlexible, 0, &shape);
  185. ASSERT_OK(schema->AddColumn(col));
  186. std::shared_ptr<RandomDataOp> leaf = std::make_shared<RandomDataOp>(4, op_connector_size, 4, std::move(schema));
  187. // config mapOp
  188. std::vector<std::string> input_columns = {"label"};
  189. std::vector<std::string> output_columns = {};
  190. std::vector<std::shared_ptr<TensorOp>> op_list;
  191. std::shared_ptr<TensorOp> my_no_op = std::make_shared<NoOp>();
  192. op_list.push_back(my_no_op);
  193. std::shared_ptr<MapOp> map_op =
  194. std::make_shared<MapOp>(input_columns, output_columns, std::move(op_list), num_workers, op_connector_size);
  195. std::vector<std::shared_ptr<DSCallback>> cbs = {};
  196. cbs.push_back(cb1);
  197. map_op->AddCallbacks(std::move(cbs));
  198. EXPECT_TRUE(rc.IsOk());
  199. // config RepeatOp
  200. std::shared_ptr<RepeatOp> repeat_op = std::make_shared<RepeatOp>(2);
  201. // config EpochCtrlOp
  202. std::shared_ptr<EpochCtrlOp> epoch_ctrl_op = std::make_shared<EpochCtrlOp>(-1);
  203. // start build then launch tree
  204. leaf->set_total_repeats(-2);
  205. leaf->set_num_repeats_per_epoch(2);
  206. map_op->set_total_repeats(-2);
  207. map_op->set_num_repeats_per_epoch(2);
  208. std::shared_ptr<ExecutionTree> tree = Build({leaf, map_op, repeat_op, epoch_ctrl_op});
  209. rc = tree->Prepare();
  210. EXPECT_TRUE(rc.IsOk());
  211. rc = tree->Launch();
  212. EXPECT_TRUE(rc.IsOk());
  213. // Start the loop of reading tensors from our pipeline
  214. DatasetIterator di(tree);
  215. TensorMap tensor_map;
  216. size_t num_epochs = 2;
  217. for (int ep_num = 0; ep_num < num_epochs; ++ep_num) {
  218. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  219. EXPECT_TRUE(rc.IsOk());
  220. while (tensor_map.size() != 0) {
  221. rc = di.GetNextAsMap(&tensor_map);
  222. EXPECT_TRUE(rc.IsOk());
  223. }
  224. }
  225. std::vector<std::string> callback_names = {"BGN", "EPBGN", "SPBGN", "SPEND", "SPBGN", "SPEND", "EPEND",
  226. "EPBGN", "SPBGN", "SPEND", "SPBGN", "SPEND", "EPEND"};
  227. std::vector<int64_t> all_steps = {0, 0, 1, 1, 5, 5, 8, 8, 9, 9, 13, 13, 16};
  228. std::vector<int64_t> all_epochs = {0, 1, 1, 1, 1, 1, 1, 2, 2, 2, 2, 2, 2};
  229. size_t len = 13;
  230. EXPECT_EQ(tst_cb->all_names(len), callback_names);
  231. EXPECT_EQ(tst_cb->all_ep_nums(len), all_epochs);
  232. EXPECT_EQ(tst_cb->all_step_nums(len), all_steps);
  233. }
  234. TEST_F(MindDataTestCallback, TestSelectedCallback) {
  235. MS_LOG(INFO) << "Doing: MindDataTestCallback-TestSelectedCallback";
  236. // config callback
  237. Status rc;
  238. std::shared_ptr<test::TestCallback> tst_cb = std::make_shared<test::TestCallback>(4);
  239. std::shared_ptr<DSCallback> cb1 = tst_cb;
  240. // turn off the epochs
  241. tst_cb->epoch_begin_ = false;
  242. tst_cb->epoch_end_ = false;
  243. // config leaf_op, use random_data to avoid I/O
  244. std::shared_ptr<ConfigManager> config_manager = GlobalContext::config_manager();
  245. int32_t op_connector_size = config_manager->op_connector_size();
  246. int32_t num_workers = config_manager->num_parallel_workers();
  247. std::unique_ptr<DataSchema> schema = std::make_unique<DataSchema>();
  248. TensorShape shape({}); // empty shape is a 1-value scalar Tensor
  249. ColDescriptor col("label", DataType(DataType::DE_UINT32), TensorImpl::kFlexible, 0, &shape);
  250. ASSERT_OK(schema->AddColumn(col));
  251. std::shared_ptr<RandomDataOp> leaf = std::make_shared<RandomDataOp>(4, op_connector_size, 4, std::move(schema));
  252. // config mapOp
  253. std::vector<std::string> input_columns = {"label"};
  254. std::vector<std::string> output_columns = {};
  255. std::vector<std::shared_ptr<TensorOp>> op_list;
  256. std::shared_ptr<TensorOp> my_no_op = std::make_shared<NoOp>();
  257. op_list.push_back(my_no_op);
  258. std::shared_ptr<MapOp> map_op =
  259. std::make_shared<MapOp>(input_columns, output_columns, std::move(op_list), num_workers, op_connector_size);
  260. map_op->AddCallbacks({cb1});
  261. // config RepeatOp
  262. std::shared_ptr<RepeatOp> repeat_op = std::make_shared<RepeatOp>(2);
  263. // config EpochCtrlOp
  264. std::shared_ptr<EpochCtrlOp> epoch_ctrl_op = std::make_shared<EpochCtrlOp>(-1);
  265. // start build then launch tree
  266. leaf->set_total_repeats(-2);
  267. leaf->set_num_repeats_per_epoch(2);
  268. map_op->set_total_repeats(-2);
  269. map_op->set_num_repeats_per_epoch(2);
  270. std::shared_ptr<ExecutionTree> tree = Build({leaf, map_op, repeat_op, epoch_ctrl_op});
  271. rc = tree->Prepare();
  272. EXPECT_TRUE(rc.IsOk());
  273. rc = tree->Launch();
  274. EXPECT_TRUE(rc.IsOk());
  275. // Start the loop of reading tensors from our pipeline
  276. DatasetIterator di(tree);
  277. TensorMap tensor_map;
  278. size_t num_epochs = 2;
  279. for (int ep_num = 0; ep_num < num_epochs; ++ep_num) {
  280. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  281. EXPECT_TRUE(rc.IsOk());
  282. while (tensor_map.size() != 0) {
  283. rc = di.GetNextAsMap(&tensor_map);
  284. EXPECT_TRUE(rc.IsOk());
  285. }
  286. }
  287. std::vector<std::string> callback_names = {"BGN", "SPBGN", "SPEND", "SPBGN", "SPEND",
  288. "SPBGN", "SPEND", "SPBGN", "SPEND"};
  289. std::vector<int64_t> all_steps = {0, 1, 1, 5, 5, 9, 9, 13, 13};
  290. std::vector<int64_t> all_epochs = {0, 1, 1, 1, 1, 2, 2, 2, 2};
  291. size_t len = 9;
  292. EXPECT_EQ(tst_cb->all_names(len), callback_names);
  293. EXPECT_EQ(tst_cb->all_ep_nums(len), all_epochs);
  294. EXPECT_EQ(tst_cb->all_step_nums(len), all_steps);
  295. }
  296. TEST_F(MindDataTestCallback, TestCAPICallback) {
  297. MS_LOG(INFO) << "Doing: MindDataTestCallback-TestCAPICallback";
  298. // config callback
  299. std::shared_ptr<test::TestCallback> tst_cb = std::make_shared<test::TestCallback>(64);
  300. std::shared_ptr<DSCallback> cb1 = tst_cb;
  301. // Create a RandomDataset. Use random_data to avoid I/O
  302. std::shared_ptr<SchemaObj> schema = Schema();
  303. ASSERT_OK(schema->add_column("label", mindspore::DataType::kNumberTypeUInt32, {}));
  304. std::shared_ptr<Dataset> ds = RandomData(44, schema);
  305. ASSERT_NE(ds, nullptr);
  306. ds = ds->Map({std::make_shared<transforms::TypeCast>(mindspore::DataType::kNumberTypeUInt64)}, {"label"}, {}, {},
  307. nullptr, {cb1});
  308. ASSERT_NE(ds, nullptr);
  309. ds = ds->Repeat(2);
  310. ASSERT_NE(ds, nullptr);
  311. TreeAdapter tree_adapter;
  312. // using tree_adapter to set num_epoch = 1
  313. ASSERT_OK(tree_adapter.Compile(ds->IRNode(), 1));
  314. TensorRow row;
  315. ASSERT_OK(tree_adapter.GetNext(&row));
  316. while (!row.empty()) {
  317. ASSERT_OK(tree_adapter.GetNext(&row));
  318. }
  319. std::vector<std::string> callback_names = {"BGN", "EPBGN", "SPBGN", "SPEND", "SPBGN", "SPEND", "EPEND"};
  320. std::vector<int64_t> all_steps = {0, 0, 1, 1, 65, 65, 88};
  321. std::vector<int64_t> all_epochs = {0, 1, 1, 1, 1, 1, 1};
  322. // doing resize to make sure no unexpected epoch_end or extra epoch_begin is called
  323. size_t len = 7;
  324. EXPECT_EQ(tst_cb->all_names(len), callback_names);
  325. EXPECT_EQ(tst_cb->all_step_nums(len), all_steps);
  326. EXPECT_EQ(tst_cb->all_ep_nums(len), all_epochs);
  327. }