from __future__ import annotations import datasets from mteb.abstasks.TaskMetadata import TaskMetadata from ....abstasks.AbsTaskRetrieval import AbsTaskRetrieval class SadeemQuestionRetrieval(AbsTaskRetrieval): _EVAL_SPLIT = "test" metadata = TaskMetadata( name="SadeemQuestionRetrieval", dataset={ "path": "sadeem-ai/sadeem-ar-eval-retrieval-questions", "revision": "3cb0752b182e5d5d740df547748b06663c8e0bd9", "name": "test", }, reference="https://huggingface.co/datasets/sadeem-ai/sadeem-ar-eval-retrieval-questions", description="SadeemQuestion: A Benchmark Data Set for Community Question-Retrieval Research", type="Retrieval", category="s2p", eval_splits=[_EVAL_SPLIT], eval_langs=["ara-Arab"], main_score="ndcg_at_10", date=("2024-01-01", "2024-04-01"), form=["written"], domains=["written"], task_subtypes=["Article retrieval"], license="Not specified", socioeconomic_status="medium", annotations_creators="derived", dialect=[], text_creation="found", bibtex_citation=""" @inproceedings{sadeem-2024-ar-retrieval-questions, title = "SadeemQuestionRetrieval: A New Benchmark for Arabic questions-based Articles Searching.", author = "abubakr.soliman@sadeem.app" } """, n_samples={_EVAL_SPLIT: 22979}, avg_character_length={_EVAL_SPLIT: 500.0}, ) def load_data(self, **kwargs): if self.data_loaded: return query_list = datasets.load_dataset(**self.metadata_dict["dataset"])["queries"] queries = {row["query-id"]: row["text"] for row in query_list} corpus_list = datasets.load_dataset(**self.metadata_dict["dataset"])["corpus"] corpus = {row["corpus-id"]: {"text": row["text"]} for row in corpus_list} qrels_list = datasets.load_dataset(**self.metadata_dict["dataset"])["qrels"] qrels = {row["query-id"]: {row["corpus-id"]: 1} for row in qrels_list} self.corpus = {self._EVAL_SPLIT: corpus} self.queries = {self._EVAL_SPLIT: queries} self.relevant_docs = {self._EVAL_SPLIT: qrels} self.data_loaded = True