from __future__ import annotations from typing import Any from datasets import Dataset from mteb.encoder_interface import Encoder, EncoderWithQueryCorpusEncode from mteb.MTEBResults import ScoresDict from ..evaluation.evaluators import RerankingEvaluator from .AbsTask import AbsTask class AbsTaskReranking(AbsTask): """Abstract class for re-ranking experiments. self.load_data() must generate a huggingface dataset with a split matching self.metadata_dict["eval_splits"], and assign it to self.dataset. It must contain the following columns: query: str positive: list[str] negative: list[str] """ def __init__(self, **kwargs): super().__init__(**kwargs) def _evaluate_subset( self, model: Encoder | EncoderWithQueryCorpusEncode, data_split: Dataset, **kwargs: Any, ) -> ScoresDict: evaluator = RerankingEvaluator(data_split, **kwargs) scores = evaluator(model) self._add_main_score(scores) return scores def _add_main_score(self, scores: ScoresDict) -> None: scores["main_score"] = scores[self.metadata.main_score]