# SPDX-FileCopyrightText: 2022-present deepset GmbH # # SPDX-License-Identifier: Apache-2.0 from enum import Enum from typing import Any, Dict, List, Union from haystack import component, default_to_dict from haystack.dataclasses import Document class RecallMode(Enum): """ Enum for the mode to use for calculating the recall score. """ # Score is based on whether any document is retrieved. SINGLE_HIT = "single_hit" # Score is based on how many documents were retrieved. MULTI_HIT = "multi_hit" def __str__(self): return self.value @staticmethod def from_str(string: str) -> "RecallMode": """ Convert a string to a RecallMode enum. """ enum_map = {e.value: e for e in RecallMode} mode = enum_map.get(string) if mode is None: msg = f"Unknown recall mode '{string}'. Supported modes are: {list(enum_map.keys())}" raise ValueError(msg) return mode @component class DocumentRecallEvaluator: """ Evaluator that calculates the Recall score for a list of documents. Returns both a list of scores for each question and the average. There can be multiple ground truth documents and multiple predicted documents as input. Usage example: ```python from haystack import Document from haystack.components.evaluators import DocumentRecallEvaluator evaluator = DocumentRecallEvaluator() result = evaluator.run( ground_truth_documents=[ [Document(content="France")], [Document(content="9th century"), Document(content="9th")], ], retrieved_documents=[ [Document(content="France")], [Document(content="9th century"), Document(content="10th century"), Document(content="9th")], ], ) print(result["individual_scores"]) # [1.0, 1.0] print(result["score"]) # 1.0 ``` """ def __init__(self, mode: Union[str, RecallMode] = RecallMode.SINGLE_HIT): """ Create a DocumentRecallEvaluator component. :param mode: Mode to use for calculating the recall score. """ if isinstance(mode, str): mode = RecallMode.from_str(mode) mode_functions = {RecallMode.SINGLE_HIT: self._recall_single_hit, RecallMode.MULTI_HIT: self._recall_multi_hit} self.mode_function = mode_functions[mode] self.mode = mode def _recall_single_hit(self, ground_truth_documents: List[Document], retrieved_documents: List[Document]) -> float: unique_truths = {g.content for g in ground_truth_documents} unique_retrievals = {p.content for p in retrieved_documents} retrieved_ground_truths = unique_truths.intersection(unique_retrievals) return float(len(retrieved_ground_truths) > 0) def _recall_multi_hit(self, ground_truth_documents: List[Document], retrieved_documents: List[Document]) -> float: unique_truths = {g.content for g in ground_truth_documents} unique_retrievals = {p.content for p in retrieved_documents} retrieved_ground_truths = unique_truths.intersection(unique_retrievals) return len(retrieved_ground_truths) / len(ground_truth_documents) @component.output_types(score=float, individual_scores=List[float]) def run( self, ground_truth_documents: List[List[Document]], retrieved_documents: List[List[Document]] ) -> Dict[str, Any]: """ Run the DocumentRecallEvaluator on the given inputs. `ground_truth_documents` and `retrieved_documents` must have the same length. :param ground_truth_documents: A list of expected documents for each question. :param retrieved_documents: A list of retrieved documents for each question. A dictionary with the following outputs: - `score` - The average of calculated scores. - `invididual_scores` - A list of numbers from 0.0 to 1.0 that represents the proportion of matching documents retrieved. If the mode is `single_hit`, the individual scores are 0 or 1. """ if len(ground_truth_documents) != len(retrieved_documents): msg = "The length of ground_truth_documents and retrieved_documents must be the same." raise ValueError(msg) scores = [] for ground_truth, retrieved in zip(ground_truth_documents, retrieved_documents): score = self.mode_function(ground_truth, retrieved) scores.append(score) return {"score": sum(scores) / len(retrieved_documents), "individual_scores": scores} def to_dict(self) -> Dict[str, Any]: """ Serializes the component to a dictionary. :returns: Dictionary with serialized data. """ return default_to_dict(self, mode=str(self.mode))