2022-10-26 14:52:22 +08:00
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# Copyright (c) Alibaba, Inc. and its affiliates.
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import unittest
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from modelscope.hub.snapshot_download import snapshot_download
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from modelscope.models import Model
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from modelscope.models.nlp import (LSTMCRFForNamedEntityRecognition,
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TransformerCRFForNamedEntityRecognition)
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from modelscope.pipelines import pipeline
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from modelscope.pipelines.nlp import (NamedEntityRecognitionThaiPipeline,
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NamedEntityRecognitionVietPipeline)
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from modelscope.preprocessors import NERPreprocessorThai, NERPreprocessorViet
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from modelscope.utils.constant import Tasks
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from modelscope.utils.demo_utils import DemoCompatibilityCheck
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from modelscope.utils.test_utils import test_level
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class MultilingualNamedEntityRecognitionTest(unittest.TestCase,
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DemoCompatibilityCheck):
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def setUp(self) -> None:
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self.task = Tasks.named_entity_recognition
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self.model_id = 'damo/nlp_xlmr_named-entity-recognition_thai-ecommerce-title'
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thai_tcrf_model_id = 'damo/nlp_xlmr_named-entity-recognition_thai-ecommerce-title'
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thai_sentence = 'เครื่องชั่งดิจิตอลแบบตั้งพื้น150kg.'
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viet_tcrf_model_id = 'damo/nlp_xlmr_named-entity-recognition_viet-ecommerce-title'
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viet_sentence = 'Nón vành dễ thương cho bé gái'
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2022-11-08 15:42:08 +08:00
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multilingual_model_id = 'damo/nlp_raner_named-entity-recognition_multilingual-large-generic'
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ml_stc = 'সমস্ত বেতন নিলামের সাধারণ ব্যবহারিক উদাহরণ বিভিন্ন পেনি নিলাম / বিডিং ফি নিলাম ওয়েবসাইটে পাওয়া যাবে।'
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2022-10-26 14:52:22 +08:00
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@unittest.skipUnless(test_level() >= 2, 'skip test in current test level')
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def test_run_tcrf_by_direct_model_download_thai(self):
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cache_path = snapshot_download(self.thai_tcrf_model_id)
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tokenizer = NERPreprocessorThai(cache_path)
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model = TransformerCRFForNamedEntityRecognition(
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cache_path, tokenizer=tokenizer)
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pipeline1 = NamedEntityRecognitionThaiPipeline(
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model, preprocessor=tokenizer)
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pipeline2 = pipeline(
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Tasks.named_entity_recognition,
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model=model,
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preprocessor=tokenizer)
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print(f'thai_sentence: {self.thai_sentence}\n'
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f'pipeline1:{pipeline1(input=self.thai_sentence)}')
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print()
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print(f'pipeline2: {pipeline2(input=self.thai_sentence)}')
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@unittest.skipUnless(test_level() >= 1, 'skip test in current test level')
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def test_run_tcrf_with_model_from_modelhub_thai(self):
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model = Model.from_pretrained(self.thai_tcrf_model_id)
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tokenizer = NERPreprocessorThai(model.model_dir)
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pipeline_ins = pipeline(
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task=Tasks.named_entity_recognition,
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model=model,
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preprocessor=tokenizer)
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print(pipeline_ins(input=self.thai_sentence))
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@unittest.skipUnless(test_level() >= 0, 'skip test in current test level')
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def test_run_tcrf_with_model_name_thai(self):
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pipeline_ins = pipeline(
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task=Tasks.named_entity_recognition, model=self.thai_tcrf_model_id)
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print(pipeline_ins(input=self.thai_sentence))
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2022-11-08 15:42:08 +08:00
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@unittest.skipUnless(test_level() >= 2, 'skip test in current test level')
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def test_run_tcrf_with_model_name_multilingual(self):
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pipeline_ins = pipeline(
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task=Tasks.named_entity_recognition,
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model=self.multilingual_model_id)
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print(pipeline_ins(input=self.ml_stc))
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2022-10-26 14:52:22 +08:00
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@unittest.skipUnless(test_level() >= 2, 'skip test in current test level')
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def test_run_tcrf_by_direct_model_download_viet(self):
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cache_path = snapshot_download(self.viet_tcrf_model_id)
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tokenizer = NERPreprocessorViet(cache_path)
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model = TransformerCRFForNamedEntityRecognition(
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cache_path, tokenizer=tokenizer)
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pipeline1 = NamedEntityRecognitionVietPipeline(
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model, preprocessor=tokenizer)
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pipeline2 = pipeline(
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Tasks.named_entity_recognition,
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model=model,
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preprocessor=tokenizer)
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print(f'viet_sentence: {self.viet_sentence}\n'
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f'pipeline1:{pipeline1(input=self.viet_sentence)}')
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print()
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print(f'pipeline2: {pipeline2(input=self.viet_sentence)}')
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@unittest.skipUnless(test_level() >= 1, 'skip test in current test level')
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def test_run_tcrf_with_model_from_modelhub_viet(self):
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model = Model.from_pretrained(self.viet_tcrf_model_id)
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tokenizer = NERPreprocessorViet(model.model_dir)
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pipeline_ins = pipeline(
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task=Tasks.named_entity_recognition,
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model=model,
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preprocessor=tokenizer)
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print(pipeline_ins(input=self.viet_sentence))
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@unittest.skipUnless(test_level() >= 0, 'skip test in current test level')
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def test_run_tcrf_with_model_name_viet(self):
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pipeline_ins = pipeline(
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task=Tasks.named_entity_recognition, model=self.viet_tcrf_model_id)
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print(pipeline_ins(input=self.viet_sentence))
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@unittest.skip('demo compatibility test is only enabled on a needed-basis')
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def test_demo_compatibility(self):
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self.compatibility_check()
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if __name__ == '__main__':
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unittest.main()
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