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arxiv:2402.10524

LLM Comparator: Visual Analytics for Side-by-Side Evaluation of Large Language Models

Published on Feb 16
· Submitted by akhaliq on Feb 19
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Abstract

Automatic side-by-side evaluation has emerged as a promising approach to evaluating the quality of responses from large language models (LLMs). However, analyzing the results from this evaluation approach raises scalability and interpretability challenges. In this paper, we present LLM Comparator, a novel visual analytics tool for interactively analyzing results from automatic side-by-side evaluation. The tool supports interactive workflows for users to understand when and why a model performs better or worse than a baseline model, and how the responses from two models are qualitatively different. We iteratively designed and developed the tool by closely working with researchers and engineers at a large technology company. This paper details the user challenges we identified, the design and development of the tool, and an observational study with participants who regularly evaluate their models.

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Will (some of) this tool be released/open-sourced?

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We are thinking about it - would love to know how you would like to use it if we do... ?

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