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main.py 8.3 kB

2 years ago
2 years ago
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  1. import os
  2. import fire
  3. import copy
  4. import joblib
  5. import zipfile
  6. import numpy as np
  7. from sklearn import svm
  8. from sklearn.datasets import load_digits
  9. from sklearn.model_selection import train_test_split
  10. from shutil import copyfile, rmtree
  11. import learnware
  12. from learnware.market import EasyMarket, BaseUserInfo
  13. from learnware.reuse import JobSelectorReuser, AveragingReuser
  14. import learnware.specification as specification
  15. from learnware.utils import get_module_by_module_path
  16. curr_root = os.path.dirname(os.path.abspath(__file__))
  17. user_semantic = {
  18. "Data": {"Values": ["Table"], "Type": "Class"},
  19. "Task": {
  20. "Values": ["Classification"],
  21. "Type": "Class",
  22. },
  23. "Library": {"Values": ["Scikit-learn"], "Type": "Class"},
  24. "Scenario": {"Values": ["Education"], "Type": "Tag"},
  25. "Description": {"Values": "", "Type": "String"},
  26. "Name": {"Values": "", "Type": "String"},
  27. }
  28. class LearnwareMarketWorkflow:
  29. def _init_learnware_market(self):
  30. """initialize learnware market"""
  31. learnware.init()
  32. np.random.seed(2023)
  33. easy_market = EasyMarket(market_id="sklearn_digits", rebuild=True)
  34. return easy_market
  35. def prepare_learnware_randomly(self, learnware_num=5):
  36. self.zip_path_list = []
  37. X, y = load_digits(return_X_y=True)
  38. for i in range(learnware_num):
  39. dir_path = os.path.join(curr_root, "learnware_pool", "svm_%d" % (i))
  40. os.makedirs(dir_path, exist_ok=True)
  41. print("Preparing Learnware: %d" % (i))
  42. data_X, _, data_y, _ = train_test_split(X, y, test_size=0.3, shuffle=True)
  43. clf = svm.SVC(kernel="linear", probability=True)
  44. clf.fit(data_X, data_y)
  45. joblib.dump(clf, os.path.join(dir_path, "svm.pkl"))
  46. spec = specification.utils.generate_rkme_spec(X=data_X, gamma=0.1, cuda_idx=0)
  47. spec.save(os.path.join(dir_path, "svm.json"))
  48. init_file = os.path.join(dir_path, "__init__.py")
  49. copyfile(
  50. os.path.join(curr_root, "learnware_example/example_init.py"), init_file
  51. ) # cp example_init.py init_file
  52. yaml_file = os.path.join(dir_path, "learnware.yaml")
  53. copyfile(os.path.join(curr_root, "learnware_example/example.yaml"), yaml_file) # cp example.yaml yaml_file
  54. zip_file = dir_path + ".zip"
  55. # zip -q -r -j zip_file dir_path
  56. with zipfile.ZipFile(zip_file, "w") as zip_obj:
  57. for foldername, subfolders, filenames in os.walk(dir_path):
  58. for filename in filenames:
  59. file_path = os.path.join(foldername, filename)
  60. zip_info = zipfile.ZipInfo(filename)
  61. zip_info.compress_type = zipfile.ZIP_STORED
  62. with open(file_path, "rb") as file:
  63. zip_obj.writestr(zip_info, file.read())
  64. rmtree(dir_path) # rm -r dir_path
  65. self.zip_path_list.append(zip_file)
  66. def test_upload_delete_learnware(self, learnware_num=5, delete=False):
  67. easy_market = self._init_learnware_market()
  68. self.prepare_learnware_randomly(learnware_num)
  69. print("Total Item:", len(easy_market))
  70. for idx, zip_path in enumerate(self.zip_path_list):
  71. semantic_spec = copy.deepcopy(user_semantic)
  72. semantic_spec["Name"]["Values"] = "learnware_%d" % (idx)
  73. semantic_spec["Description"]["Values"] = "test_learnware_number_%d" % (idx)
  74. easy_market.add_learnware(zip_path, semantic_spec)
  75. print("Total Item:", len(easy_market))
  76. curr_inds = easy_market._get_ids()
  77. print("Available ids After Uploading Learnwares:", curr_inds)
  78. if delete:
  79. for learnware_id in curr_inds:
  80. easy_market.delete_learnware(learnware_id)
  81. curr_inds = easy_market._get_ids()
  82. print("Available ids After Deleting Learnwares:", curr_inds)
  83. return easy_market
  84. def test_search_semantics(self, learnware_num=5):
  85. easy_market = self.test_upload_delete_learnware(learnware_num, delete=False)
  86. print("Total Item:", len(easy_market))
  87. test_folder = os.path.join(curr_root, "test_semantics")
  88. # unzip -o -q zip_path -d unzip_dir
  89. if os.path.exists(test_folder):
  90. rmtree(test_folder)
  91. os.makedirs(test_folder, exist_ok=True)
  92. with zipfile.ZipFile(self.zip_path_list[0], "r") as zip_obj:
  93. zip_obj.extractall(path=test_folder)
  94. semantic_spec = copy.deepcopy(user_semantic)
  95. semantic_spec["Name"]["Values"] = f"learnware_{learnware_num - 1}"
  96. semantic_spec["Description"]["Values"] = f"test_learnware_number_{learnware_num - 1}"
  97. user_info = BaseUserInfo(semantic_spec=semantic_spec)
  98. _, single_learnware_list, _, _ = easy_market.search_learnware(user_info)
  99. print("User info:", user_info.get_semantic_spec())
  100. print(f"Search result:")
  101. for learnware in single_learnware_list:
  102. print("Choose learnware:", learnware.id, learnware.get_specification().get_semantic_spec())
  103. rmtree(test_folder) # rm -r test_folder
  104. def test_stat_search(self, learnware_num=5):
  105. easy_market = self.test_upload_delete_learnware(learnware_num, delete=False)
  106. print("Total Item:", len(easy_market))
  107. test_folder = os.path.join(curr_root, "test_stat")
  108. for idx, zip_path in enumerate(self.zip_path_list):
  109. unzip_dir = os.path.join(test_folder, f"{idx}")
  110. # unzip -o -q zip_path -d unzip_dir
  111. if os.path.exists(unzip_dir):
  112. rmtree(unzip_dir)
  113. os.makedirs(unzip_dir, exist_ok=True)
  114. with zipfile.ZipFile(zip_path, "r") as zip_obj:
  115. zip_obj.extractall(path=unzip_dir)
  116. user_spec = specification.RKMETableSpecification()
  117. user_spec.load(os.path.join(unzip_dir, "svm.json"))
  118. user_info = BaseUserInfo(semantic_spec=user_semantic, stat_info={"RKMETableSpecification": user_spec})
  119. (
  120. sorted_score_list,
  121. single_learnware_list,
  122. mixture_score,
  123. mixture_learnware_list,
  124. ) = easy_market.search_learnware(user_info)
  125. print(f"search result of user{idx}:")
  126. for score, learnware in zip(sorted_score_list, single_learnware_list):
  127. print(f"score: {score}, learnware_id: {learnware.id}")
  128. print(f"mixture_score: {mixture_score}\n")
  129. mixture_id = " ".join([learnware.id for learnware in mixture_learnware_list])
  130. print(f"mixture_learnware: {mixture_id}\n")
  131. rmtree(test_folder) # rm -r test_folder
  132. def test_learnware_reuse(self, learnware_num=5):
  133. easy_market = self.test_upload_delete_learnware(learnware_num, delete=False)
  134. print("Total Item:", len(easy_market))
  135. X, y = load_digits(return_X_y=True)
  136. _, data_X, _, data_y = train_test_split(X, y, test_size=0.3, shuffle=True)
  137. stat_spec = specification.utils.generate_rkme_spec(X=data_X, gamma=0.1, cuda_idx=0)
  138. user_info = BaseUserInfo(semantic_spec=user_semantic, stat_info={"RKMETableSpecification": stat_spec})
  139. _, _, _, mixture_learnware_list = easy_market.search_learnware(user_info)
  140. # print("Mixture Learnware:", mixture_learnware_list)
  141. # Based on user information, the learnware market returns a list of learnwares (learnware_list)
  142. # Use jobselector reuser to reuse the searched learnwares to make prediction
  143. reuse_job_selector = JobSelectorReuser(learnware_list=mixture_learnware_list)
  144. job_selector_predict_y = reuse_job_selector.predict(user_data=data_X)
  145. # Use averaging ensemble reuser to reuse the searched learnwares to make prediction
  146. reuse_ensemble = AveragingReuser(learnware_list=mixture_learnware_list)
  147. ensemble_predict_y = reuse_ensemble.predict(user_data=data_X)
  148. print("Job Selector Acc:", np.sum(np.argmax(job_selector_predict_y, axis=1) == data_y) / len(data_y))
  149. print("Averaging Selector Acc:", np.sum(np.argmax(ensemble_predict_y, axis=1) == data_y) / len(data_y))
  150. if __name__ == "__main__":
  151. fire.Fire(LearnwareMarketWorkflow)