| from sentence_transformers import SentenceTransformer |
| from mteb import MTEB |
| from mteb.abstasks.AbsTaskRetrieval import AbsTaskRetrieval |
| from datasets import DatasetDict |
| from collections import defaultdict |
| import pandas as pd |
| def load_dataset(path): |
| df = pd.read_parquet(path, engine="pyarrow") |
| return df |
|
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| def load_retrieval_data(path): |
| eval_split = 'dev' |
|
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| corpus = {e['cid']: {'text': e['text']} for i, e in load_dataset(path + r'\data\corpus.parquet.gz').iterrows()} |
| queries = {e['qid']: e['text'] for i, e in load_dataset(path + r'\data\queries.parquet.gz').iterrows()} |
| relevant_docs = defaultdict(dict) |
| for i, e in load_dataset(path + r'\data\qrels.parquet.gz').iterrows(): |
| relevant_docs[e['qid']][e['cid']] = e['score'] |
|
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| corpus = DatasetDict({eval_split: corpus}) |
| queries = DatasetDict({eval_split: queries}) |
| relevant_docs = DatasetDict({eval_split: relevant_docs}) |
| return corpus, queries, relevant_docs |
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| model = SentenceTransformer(r'D:\models\Dmeta', device='cuda:0') |
|
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| texts1 = ["胡子长得太快怎么办?", "在香港哪里买手表好"] |
| texts2 = ["胡子长得快怎么办?", "怎样使胡子不浓密!", "香港买手表哪里好", "在杭州手机到哪里买"] |
| embs1 = model.encode(texts1, normalize_embeddings=True) |
| embs2 = model.encode(texts2, normalize_embeddings=True) |
| similarity = embs1 @ embs2.T |
| print(similarity) |
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| class H2Retrieval(AbsTaskRetrieval): |
| @property |
| def description(self): |
| return { |
| 'name': 'H2Retrieval', |
| 'hf_hub_name': 'Limour/H2Retrieval', |
| 'reference': 'https://huggingface.co/datasets/a686d380/h-corpus-2023', |
| 'description': 'h-corpus 领域的 Retrieval 评价数据集。', |
| 'type': 'Retrieval', |
| 'category': 's2p', |
| 'eval_splits': ['dev'], |
| 'eval_langs': ['zh'], |
| 'main_score': 'ndcg_at_10' |
| } |
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| def load_data(self, **kwargs): |
| if self.data_loaded: |
| return |
|
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| self.corpus, self.queries, self.relevant_docs = load_retrieval_data(r'D:\datasets\H2Retrieval') |
| self.data_loaded = True |
|
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| evaluation = MTEB(tasks=[H2Retrieval()]) |
| evaluation.run(model) |
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