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Hybrid-Gym: Training Coding Agents to Generalize Across Tasks

arXiv:2602.16819v11 citationsh-index: 10Has Code
Originality Incremental advance
AI Analysis

This addresses the need for more versatile coding agents in software engineering, though it is incremental as it builds on existing benchmarks and methods.

The paper tackles the problem of training coding agents to generalize across diverse real-world tasks by designing a synthetic training environment, Hybrid-Gym, which improves a base model by 25.4% on SWE-Bench Verified and shows gains on other benchmarks.

When assessing the quality of coding agents, predominant benchmarks focus on solving single issues on GitHub, such as SWE-Bench. In contrast, in real use, these agents solve more various and complex tasks that involve other skills such as exploring codebases, testing software, and designing architecture. In this paper, we first characterize some transferable skills that are shared across diverse tasks by decomposing trajectories into fine-grained components, and derive a set of principles for designing auxiliary training tasks to teach language models these skills. Guided by these principles, we propose a training environment, Hybrid-Gym, consisting of a set of scalable synthetic tasks, such as function localization and dependency search. Experiments show that agents trained on our synthetic tasks effectively generalize to diverse real-world tasks that are not present in training, improving a base model by 25.4% absolute gain on SWE-Bench Verified, 7.9% on SWT-Bench Verified, and 5.1% on Commit-0 Lite. Hybrid-Gym also complements datasets built for the downstream tasks (e.g., improving SWE-Play by 4.9% on SWT-Bench Verified). Code available at: https://github.com/yiqingxyq/Hybrid-Gym.

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