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cifar_op_test.cc 5.6 kB

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  1. /**
  2. * Copyright 2019-2021 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 <fstream>
  17. #include <iostream>
  18. #include <memory>
  19. #include <string>
  20. #include "common/common.h"
  21. #include "utils/ms_utils.h"
  22. #include "minddata/dataset/core/client.h"
  23. #include "minddata/dataset/core/global_context.h"
  24. #include "minddata/dataset/engine/datasetops/source/cifar_op.h"
  25. #include "minddata/dataset/engine/datasetops/source/sampler/sampler.h"
  26. #include "minddata/dataset/engine/datasetops/source/sampler/random_sampler.h"
  27. #include "minddata/dataset/engine/datasetops/source/sampler/subset_random_sampler.h"
  28. #include "minddata/dataset/util/path.h"
  29. #include "minddata/dataset/util/status.h"
  30. #include "gtest/gtest.h"
  31. #include "utils/log_adapter.h"
  32. #include "securec.h"
  33. namespace common = mindspore::common;
  34. using namespace mindspore::dataset;
  35. using mindspore::MsLogLevel::ERROR;
  36. using mindspore::ExceptionType::NoExceptionType;
  37. using mindspore::LogStream;
  38. std::shared_ptr<ExecutionTree> Build(std::vector<std::shared_ptr<DatasetOp>> ops);
  39. std::shared_ptr<CifarOp> Cifarop(uint64_t num_works, uint64_t rows, uint64_t conns, std::string path,
  40. std::shared_ptr<SamplerRT> sampler = nullptr, bool cifar10 = true) {
  41. std::shared_ptr<CifarOp> so;
  42. CifarOp::Builder builder;
  43. Status rc = builder.SetNumWorkers(num_works)
  44. .SetCifarDir(path)
  45. .SetOpConnectorSize(conns)
  46. .SetSampler(std::move(sampler))
  47. .SetCifarType(cifar10)
  48. .Build(&so);
  49. return so;
  50. }
  51. class MindDataTestCifarOp : public UT::DatasetOpTesting {
  52. protected:
  53. };
  54. TEST_F(MindDataTestCifarOp, TestSequentialSamplerCifar10) {
  55. //Note: CIFAR and Mnist datasets are not included
  56. //as part of the build tree.
  57. //Download datasets and rebuild if data doesn't
  58. //appear in this dataset
  59. //Example: python tests/dataset/data/prep_data.py
  60. std::string folder_path = datasets_root_path_ + "/testCifar10Data/";
  61. auto tree = Build({Cifarop(16, 2, 32, folder_path, nullptr)});
  62. tree->Prepare();
  63. Status rc = tree->Launch();
  64. if (rc.IsError()) {
  65. MS_LOG(ERROR) << "Return code error detected during tree launch: " << common::SafeCStr(rc.ToString()) << ".";
  66. EXPECT_TRUE(false);
  67. } else {
  68. DatasetIterator di(tree);
  69. TensorMap tensor_map;
  70. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  71. EXPECT_TRUE(rc.IsOk());
  72. uint64_t i = 0;
  73. uint32_t label = 0;
  74. // Note: only iterating first 100 rows then break out.
  75. while (tensor_map.size() != 0 && i < 100) {
  76. tensor_map["label"]->GetItemAt<uint32_t>(&label, {});
  77. MS_LOG(DEBUG) << "row: " << i << "\t" << tensor_map["image"]->shape() << "label:" << label << "\n";
  78. i++;
  79. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  80. }
  81. EXPECT_TRUE(i == 100);
  82. }
  83. }
  84. TEST_F(MindDataTestCifarOp, TestRandomSamplerCifar10) {
  85. uint32_t original_seed = GlobalContext::config_manager()->seed();
  86. GlobalContext::config_manager()->set_seed(0);
  87. std::shared_ptr<SamplerRT> sampler = std::make_unique<RandomSamplerRT>(12, true, true);
  88. std::string folder_path = datasets_root_path_ + "/testCifar10Data/";
  89. auto tree = Build({Cifarop(16, 2, 32, folder_path, std::move(sampler))});
  90. tree->Prepare();
  91. Status rc = tree->Launch();
  92. if (rc.IsError()) {
  93. MS_LOG(ERROR) << "Return code error detected during tree launch: " << common::SafeCStr(rc.ToString()) << ".";
  94. EXPECT_TRUE(false);
  95. } else {
  96. DatasetIterator di(tree);
  97. TensorMap tensor_map;
  98. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  99. EXPECT_TRUE(rc.IsOk());
  100. uint64_t i = 0;
  101. uint32_t label = 0;
  102. while (tensor_map.size() != 0) {
  103. tensor_map["label"]->GetItemAt<uint32_t>(&label, {});
  104. MS_LOG(DEBUG) << "row: " << i << "\t" << tensor_map["image"]->shape() << "label:" << label << "\n";
  105. i++;
  106. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  107. }
  108. EXPECT_TRUE(i == 12);
  109. }
  110. GlobalContext::config_manager()->set_seed(original_seed);
  111. }
  112. TEST_F(MindDataTestCifarOp, TestSequentialSamplerCifar100) {
  113. std::string folder_path = datasets_root_path_ + "/testCifar100Data/";
  114. auto tree = Build({Cifarop(16, 2, 32, folder_path, nullptr, false)});
  115. tree->Prepare();
  116. Status rc = tree->Launch();
  117. if (rc.IsError()) {
  118. MS_LOG(ERROR) << "Return code error detected during tree launch: " << common::SafeCStr(rc.ToString()) << ".";
  119. EXPECT_TRUE(false);
  120. } else {
  121. DatasetIterator di(tree);
  122. TensorMap tensor_map;
  123. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  124. EXPECT_TRUE(rc.IsOk());
  125. uint64_t i = 0;
  126. uint32_t coarse = 0;
  127. uint32_t fine = 0;
  128. // only iterate to 100 then break out of loop
  129. while (tensor_map.size() != 0 && i < 100) {
  130. tensor_map["coarse_label"]->GetItemAt<uint32_t>(&coarse, {});
  131. tensor_map["fine_label"]->GetItemAt<uint32_t>(&fine, {});
  132. MS_LOG(DEBUG) << "row: " << i << "\t" << tensor_map["image"]->shape() << " coarse:"
  133. << coarse << " fine:" << fine << "\n";
  134. i++;
  135. ASSERT_OK(di.GetNextAsMap(&tensor_map));
  136. }
  137. EXPECT_TRUE(i == 100);
  138. }
  139. }