AI-Powered Bug Fixing: A Collaborative Approach

AI-Powered Bug Fixing: A Collaborative Approach

Enhancing LLMs with programmer intent and collaborative behavior simulation

PATCH is a novel framework that transforms automated bug fixing by simulating real-world collaborative programming practices with LLMs.

Key innovations:

  • Introduces programmer-intent guidance to understand bug context beyond just code snippets
  • Implements a multi-agent collaborative system that mimics real-world debugging workflows
  • Achieves superior bug fixing performance through specialized agent roles working together
  • Demonstrates 35% improvement over existing approaches in complex bug scenarios

This research bridges critical gaps in automated software maintenance by incorporating human-like collaborative problem-solving, potentially reducing debugging costs and improving software reliability for engineering teams.

PATCH: Empowering Large Language Model with Programmer-Intent Guidance and Collaborative-Behavior Simulation for Automatic Bug Fixing

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