from __future__ import annotations from typing import List import numpy as np from mteb.evaluation.evaluators import ClusteringEvaluator class TestClusteringEvaluator: def test_clustering_v_measure(self): class Model: def encode(self, sentences: List[str], batch_size=32) -> np.ndarray: return np.eye(len(sentences)) model = Model() sentences = ["dog walked home", "cat walked home", "robot walked to the park"] clusterer = ClusteringEvaluator(sentences=sentences, labels=[1, 2, 3]) result = clusterer(model) assert result == {"v_measure": 1.0}