from __future__ import annotations import datasets from mteb.abstasks.TaskMetadata import TaskMetadata from ....abstasks.AbsTaskRetrieval import AbsTaskRetrieval class GermanDPR(AbsTaskRetrieval): _EVAL_SPLIT = "test" metadata = TaskMetadata( name="GermanDPR", description="GermanDPR is a German Question Answering dataset for open-domain QA. It associates questions with a textual context containing the answer", reference="https://huggingface.co/datasets/deepset/germandpr", dataset={ "path": "deepset/germandpr", "revision": "5129d02422a66be600ac89cd3e8531b4f97d347d", }, type="Retrieval", category="s2p", eval_splits=[_EVAL_SPLIT], eval_langs=["deu-Latn"], main_score="ndcg_at_10", 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, ) @staticmethod def _format_documents(docs, id_prefix="", existing_docs=None): if existing_docs is None: existing_docs = dict() result = {} for i, (title, content) in enumerate(zip(docs["title"], docs["text"])): formatted_content = content.split("==\n")[-1].replace("\n", " ").lstrip() if formatted_content in existing_docs: id_value = existing_docs[formatted_content] else: id_value = f"{id_prefix}{i}" existing_docs[formatted_content] = id_value result[id_value] = {"title": title, "text": formatted_content} return result def load_data(self, **kwargs): if self.data_loaded: return data = datasets.load_dataset( split=self._EVAL_SPLIT, **self.metadata_dict["dataset"], ) corpus = dict() queries = dict() relevant_docs = dict() all_docs = dict() for i, row in enumerate(data): q_id = f"q_{i}" queries[q_id] = row["question"] pos_docs = self._format_documents( row["positive_ctxs"], id_prefix=f"doc_{i}_p_", existing_docs=all_docs ) corpus.update(pos_docs) neg_docs = self._format_documents( row["hard_negative_ctxs"], id_prefix=f"doc_{i}_n_", existing_docs=all_docs, ) corpus.update(neg_docs) relevant_docs[q_id] = {k: 1 for k in pos_docs} self.queries = {self._EVAL_SPLIT: queries} self.corpus = {self._EVAL_SPLIT: corpus} self.relevant_docs = {self._EVAL_SPLIT: relevant_docs} self.data_loaded = True