Knowledge-Guided Multi-Agent Framework for Application-Level Software Code Generation
By: Qian Xiong , Bo Yang , Weisong Sun and more
Potential Business Impact:
Builds complex computer programs automatically.
Automated code generation driven by Large Lan- guage Models (LLMs) has enhanced development efficiency, yet generating complex application-level software code remains challenging. Multi-agent frameworks show potential, but existing methods perform inadequately in large-scale application-level software code generation, failing to ensure reasonable orga- nizational structures of project code and making it difficult to maintain the code generation process. To address this, this paper envisions a Knowledge-Guided Application-Level Code Generation framework named KGACG, which aims to trans- form software requirements specification and architectural design document into executable code through a collaborative closed- loop of the Code Organization & Planning Agent (COPA), Coding Agent (CA), and Testing Agent (TA), combined with a feedback mechanism. We demonstrate the collaborative process of the agents in KGACG in a Java Tank Battle game case study while facing challenges. KGACG is dedicated to advancing the automation of application-level software development.
Similar Papers
A Survey on Code Generation with LLM-based Agents
Software Engineering
Computers write and fix computer programs themselves.
Multi-Agent Collaborative Framework For Math Problem Generation
Multiagent Systems
Creates math problems that are just right.
KG-MAS: Knowledge Graph-Enhanced Multi-Agent Infrastructure for coupling physical and digital robotic environments
Multiagent Systems
Connects machines and computers for smarter factories.