**超要約:**LLMでコード修正を爆速化!単一ツールで高性能を実現!
🌟 ギャル的キラキラポイント✨ ● 複数ツールはもう古い!単一ツールでスマートに解決😎 ● 強化学習(きょうかがくしゅう)で賢く学習!まさに天才👏 ● 7Bモデルでも最強クラス!コスパ最強ってこと💖
詳細解説いくよ~!
● 背景 LLM(大規模言語モデル)ってすごいけど、コード修正とかには色んなツール使わないとダメだったんだよねー😭 でも、ツールいっぱいだとモデルが複雑になっちゃう問題が…🌀
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Locating the files and functions requiring modification in large open-source software (OSS) repositories is challenging due to their scale and structural complexity. Existing large language model (LLM)-based methods typically treat this as a repository-level retrieval task and rely on multiple auxiliary tools, which overlook code execution logic and complicate model control. We propose RepoNavigator, an LLM agent equipped with a single execution-aware tool-jumping to the definition of an invoked symbol. This unified design reflects the actual flow of code execution while simplifying tool manipulation. RepoNavigator is trained end-to-end via Reinforcement Learning (RL) directly from a pretrained model, without any closed-source distillation. Experiments demonstrate that RL-trained RepoNavigator achieves state-of-the-art performance, with the 7B model outperforming 14B baselines, the 14B model surpassing 32B competitors, and even the 32B model exceeding closed-source models such as Claude-3.7. These results confirm that integrating a single, structurally grounded tool with RL training provides an efficient and scalable solution for repository-level issue localization.