from __future__ import annotations from collections import defaultdict from datasets import DatasetDict, load_dataset from mteb.abstasks.TaskMetadata import TaskMetadata from ....abstasks.AbsTaskRetrieval import AbsTaskRetrieval def load_retrieval_data(dataset_path, eval_splits): eval_split = eval_splits[0] corpus_dataset = load_dataset(dataset_path, "corpus") queries_dataset = load_dataset(dataset_path, "queries") qrels = load_dataset(dataset_path + "-qrels")[eval_split] corpus = {e["_id"]: {"text": e["text"]} for e in corpus_dataset["corpus"]} queries = {e["_id"]: e["text"] for e in queries_dataset["queries"]} relevant_docs = defaultdict(dict) for e in qrels: relevant_docs[e["query-id"]][e["corpus-id"]] = e["score"] corpus = DatasetDict({eval_split: corpus}) queries = DatasetDict({eval_split: queries}) relevant_docs = DatasetDict({eval_split: relevant_docs}) return corpus, queries, relevant_docs class GermanQuADRetrieval(AbsTaskRetrieval): metadata = TaskMetadata( name="GermanQuAD-Retrieval", description="Context Retrieval for German Question Answering", reference="https://www.kaggle.com/datasets/GermanQuAD", dataset={ "path": "mteb/germanquad-retrieval", "revision": "f5c87ae5a2e7a5106606314eef45255f03151bb3", }, type="Retrieval", category="s2p", eval_splits=["test"], eval_langs=["deu-Latn"], main_score="mrr_at_5", date=None, form=None, domains=None, task_subtypes=None, license=None, socioeconomic_status=None, annotations_creators=None, dialect=None, text_creation=None, bibtex_citation=None, n_samples=None, avg_character_length=None, ) def load_data(self, **kwargs): if self.data_loaded: return self.corpus, self.queries, self.relevant_docs = load_retrieval_data( self.metadata_dict["dataset"]["path"], self.metadata_dict["eval_splits"] ) self.data_loaded = True