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Implementation:Open compass VLMEvalKit VLRewardBench

From Leeroopedia
Field Value
source VLMEvalKit
domain Vision, Benchmarking, Reward Model Evaluation

Overview

Benchmark dataset implementation for VL-RewardBench evaluation in VLMEvalKit.

Description

VLRewardBench inherits from ImageBaseDataset and implements the VL-RewardBench benchmark for evaluating visual-language reward models. The TYPE field is set to 'VQA'. It handles multi-image prompts and evaluates model preference judgments.

Usage

Registered in vlmeval/dataset/__init__.py and invoked through build_dataset() by benchmark name.

Code Reference

  • Source: vlmeval/dataset/vl_rewardbench.py, Lines: L1-173
  • Import: from vlmeval.dataset.vl_rewardbench import VLRewardBench

Signature:

class VLRewardBench(ImageBaseDataset):
    TYPE = 'VQA'
    DATASET_URL = {...}
    DATASET_MD5 = {...}
    ...

I/O Contract

Direction Description
Inputs TSV dataset file with image/video paths and questions
Outputs Evaluation results DataFrame with scores per category

Usage Examples

from vlmeval.dataset import build_dataset
dataset = build_dataset('VL-RewardBench')

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Principle
Implementation
Heuristic
Environment