AI Agents

SWE-Pruner: Self-Adaptive Context Pruning for Coding Agents

YYuhang WangYYuling ShiMMo YangRRongrui ZhangSShilin HeHHeng LianYYuting ChenSSiyu YeKKai CaiXXiaodong Gu
Published
January 23, 2026
Authors
10
Word Count
12,254
Code
Includes code

Efficient context pruning for coding agents.

Abstract

LLM agents have demonstrated remarkable capabilities in software development, but their performance is hampered by long interaction contexts, which incur high API costs and latency. While various context compression approaches such as LongLLMLingua have emerged to tackle this challenge, they typically rely on fixed metrics such as PPL, ignoring the task-specific nature of code understanding. As a result, they frequently disrupt syntactic and logical structure and fail to retain critical implementation details. In this paper, we propose SWE-Pruner, a self-adaptive context pruning framework tailored for coding agents. Drawing inspiration from how human programmers "selectively skim" source code during development and debugging, SWE-Pruner performs task-aware adaptive pruning for long contexts. Given the current task, the agent formulates an explicit goal (e.g., "focus on error handling") as a hint to guide the pruning targets. A lightweight neural skimmer (0.6B parameters) is trained to dynamically select relevant lines from the surrounding context given the goal. Evaluations across four benchmarks and multiple models validate SWE-Pruner's effectiveness in various scenarios, achieving 23-54% token reduction on agent tasks like SWE-Bench Verified and up to 14.84x compression on single-turn tasks like LongCodeQA with minimal performance impact.

Key Takeaways

  • 1

    Reduces token usage by up to 54%.

  • 2

    Maintains nearly identical success rates.

  • 3

    Decreases interaction rounds by 18-26%.

Limitations

  • Introduces marginal latency overhead.

  • Currently focuses on Python repositories.

Keywords

context compressionLongLLMLinguaPPLcode understandingtask-aware adaptive pruningneural skimmertoken reductionSWE-Bench VerifiedLongCodeQA

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