CodeScout-1.7B / README.md
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---
library_name: transformers
license: apache-2.0
language:
- en
base_model: Qwen/Qwen3-1.7B
pipeline_tag: text-generation
tags:
- code-search
- code-localization
- reinforcement-learning
- agent
- software-engineering
- GSPO
- OpenHands
- SWE-Bench
datasets:
- OpenHands/SWE-smith-py-code-search
- OpenHands/SWE-Gym-code-search
- OpenHands/CodeScout_Training_Rollouts
---
# CodeScout-1.7B
[πŸ“„ Paper](https://arxiv.org/abs/2603.17829) β€’ [πŸ’» Code](https://github.com/OpenHands/codescout) β€’ [πŸ€— Collection](https://huggingface.co/collections/OpenHands/codescout-69b9a6adcf21f348f4db937f)
**Compact yet powerful β€” outperforms 8Γ— larger Qwen3-14B using only a Unix terminal.**
<p align="center">
<img src="codescout_overview.png" alt="CodeScout Overview" width="100%">
</p>
CodeScout-1.7B 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* β€” no static analysis, no repository graphs, no language-specific tooling.
## Key Highlights
- Outperforms **8Γ— larger Qwen3-14B** with absolute F1 gains of 11–18% for files and 10–15% for functions
- Competitive with **18Γ— larger Qwen3-32B (Thinking)**, surpassing it by 3–6% in function F1
- Matches RepoNavigator-7B performance while being **4Γ— smaller**
- Demonstrates that RL + distillation can compress strong code search into a 1.7B model
## Results
Performance on SWE-Bench code localization (instance-averaged F1 scores):
| Benchmark | CodeScout-1.7B | CodeScout-4B | CodeScout-14B |
|---|---|---|---|
| **SWE-Bench Verified** β€” File F1 | 55.46 | 68.52 | **68.57** |
| **SWE-Bench Verified** β€” Func F1 | 28.22 | 36.78 | **40.32** |
| **SWE-Bench Pro** β€” File F1 | 40.96 | 51.77 | **53.63** |
| **SWE-Bench Pro** β€” Func F1 | 18.24 | **29.03** | 28.74 |
| **SWE-Bench Lite** β€” File F1 | 56.57 | 67.03 | **71.84** |
| **SWE-Bench Lite** β€” Func F1 | 27.07 | 39.87 | **44.43** |
<p align="center">
<img src="f1_vs_params_file.png" alt="File-level F1 vs Model Size" width="48%">
<img src="f1_vs_params_function.png" alt="Function-level F1 vs Model Size" width="48%">
</p>
<p align="center"><em>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.</em></p>
## Training
CodeScout-1.7B is trained in two stages:
**Stage 1 β€” Rejection Fine-Tuning (RFT):** `Qwen3-1.7B` is warm-started via supervised fine-tuning on 4K perfect-score trajectories (F1 = 1.0 at all granularities) sampled from CodeScout-14B, yielding the [CodeScout-1.7B-RFT](https://huggingface.co/OpenHands/CodeScout-1.7B-RFT) checkpoint.
**Stage 2 β€” RL Training:** CodeScout-1.7B-RFT is further trained with GSPO reinforcement learning.
- **Training data (RL):** 800 instances (disjoint from RFT data)
- **RL steps:** 100
- **Batch size:** 8, with 8 rollouts per instance
- **Max context length:** 32K tokens
- **Max turns per episode:** 4
- **Reward:** Multi-level F1 (file + module + function)
- **Hardware:** 8Γ—H100 GPUs
- **Learning rate:** 1e-6 (constant)
## How It Works
CodeScout uses the **OpenHands-Bash** scaffold β€” 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 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
```bibtex
@misc{sutawika2026codescouteffectiverecipereinforcement,
title={CodeScout: An Effective Recipe for Reinforcement Learning of Code Search Agents},
author={Lintang Sutawika and Aditya Bharat Soni and Bharath Sriraam R R and Apurva Gandhi and Taha Yassine and Sanidhya Vijayvargiya and Yuchen Li and Xuhui Zhou and Yilin Zhang and Leander Melroy Maben and Graham Neubig},
year={2026},
eprint={2603.17829},
archivePrefix={arXiv},
primaryClass={cs.SE},
url={https://arxiv.org/abs/2603.17829},
}
```