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Coffee-Gym: An Environment for Evaluating and Improving Natural Language Feedback on Erroneous Code

29 September 2024
Hyungjoo Chae
Taeyoon Kwon
Seungjun Moon
Yongho Song
Dongjin Kang
Kai Tzu-iunn Ong
Beong-woo Kwak
SeongHyeon Bae
Seung-won Hwang
Jinyoung Yeo
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Abstract

This paper presents Coffee-Gym, a comprehensive RL environment for training models that provide feedback on code editing. Coffee-Gym includes two major components: (1) Coffee, a dataset containing humans' code edit traces for coding questions and machine-written feedback for editing erroneous code; (2) CoffeeEval, a reward function that faithfully reflects the helpfulness of feedback by assessing the performance of the revised code in unit tests. With them, Coffee-Gym addresses the unavailability of high-quality datasets for training feedback models with RL, and provides more accurate rewards than the SOTA reward model (i.e., GPT-4). By applying Coffee-Gym, we elicit feedback models that outperform baselines in enhancing open-source code LLMs' code editing, making them comparable with closed-source LLMs. We make the dataset and the model checkpoint publicly available.

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