CodeScout-1.7B-RFT

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Pre-RL checkpoint — rejection fine-tuned on expert trajectories from CodeScout-14B.

CodeScout Overview

CodeScout-1.7B-RFT is part of the CodeScout family of open-source RL-trained code search agents. CodeScout models achieve state-of-the-art repository-level code localization using nothing more than a standard Unix terminal — no static analysis, no repository graphs, no language-specific tooling.

Key Highlights

  • Warm-start checkpoint for CodeScout-1.7B RL training
  • Distilled from CodeScout-14B expert trajectories with rejection sampling
  • Useful for researchers studying the effect of RFT vs. RL in agent training pipelines
  • Can be used as a base for custom RL experiments on code search

Results

Performance on SWE-Bench code localization (instance-averaged F1 scores):

Benchmark CodeScout-1.7B CodeScout-4B CodeScout-14B
SWE-Bench Verified — File F1 55.46 68.52 68.57
SWE-Bench Verified — Func F1 28.22 36.78 40.32
SWE-Bench Pro — File F1 40.96 51.77 53.63
SWE-Bench Pro — Func F1 18.24 29.03 28.74
SWE-Bench Lite — File F1 56.57 67.03 71.84
SWE-Bench Lite — Func F1 27.07 39.87 44.43

File-level F1 vs Model Size Function-level F1 vs Model Size

Code localization performance on SWE-Bench Verified. CodeScout (⭐) achieves superior or competitive results over larger open-source LLMs and narrows the gap with closed-source frontier models.

Training

CodeScout-1.7B-RFT is the intermediate checkpoint produced by rejection fine-tuning (RFT) Qwen3-1.7B on expert trajectories from CodeScout-14B, before the final RL stage.

  • Teacher model: CodeScout-14B
  • Source trajectories: Rollouts from CodeScout-14B on 7,700 training instances
  • Filtered data: 4K trajectories with perfect scores (F1 = 1.0 at file, module, and function level)
  • SFT epochs: 1
  • Learning rate: 5e-5 with cosine scheduler (warmup ratio 0.1)
  • Batch size: 8
  • Optimizer: AdamW
  • Framework: veRL

This checkpoint serves as the starting point for RL training of CodeScout-1.7B.

How It Works

CodeScout uses the OpenHands-Bash scaffold — an agent equipped with only a Terminal tool (supporting standard Unix commands like rg, find, grep, ls) and a LocalizationFinish tool for structured output submission. The agent iteratively navigates the repository to identify relevant files, classes, and functions related to a given issue.

The model is trained with GSPO (Group Sequence Policy Optimization) using multi-level F1 rewards at the file, module, and function level.

Intended Use

CodeScout-1.7B-RFT is designed for repository-level code localization: given a GitHub issue description and a code repository, it identifies the relevant files, classes, and functions that need to be modified. It is intended to be used as a localization subagent within larger coding agent pipelines.

Limitations

  • Trained and evaluated exclusively on Python repositories
  • Designed for code localization, not code editing or issue resolution
  • Performance may vary on repositories significantly different from the training distribution
  • Requires the OpenHands-Bash scaffold for optimal performance

Citation

@article{sutawika2025codescout,
  title={CodeScout: An Effective Recipe for Reinforcement Learning of Code Search Agents},
  author={Sutawika, Lintang and Soni, Aditya Bharat and R R, Bharath Sriraam and Gandhi, Apurva and Yassine, Taha and Vijayvargiya, Sanidhya and Li, Yuchen and Zhou, Xuhui and Zhang, Yilin and Maben, Leander Melroy and Neubig, Graham},
  journal={arXiv preprint arXiv:XXXX.XXXXX},
  year={2025}
}
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