An Evaluation of Role-Based Multi-Agent Code Generation on Repository-Scale Problems
Abstract
Role-based multiagent code generation aims to make LLMs more effective on repository-scale problems, moving beyond small programming tasks. We evaluate this approach on 12 Java repositories, finding greater similarity to developer code than single LLMs, but a persistent gap from human implementations.
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