KoMA: Knowledge-driven Multi-agent Framework for Autonomous Driving with Large Language Models
Kemou Jiang, Xuan Cai, Zhiyong Cui, Aoyong Li, Yilong Ren, Haiyang Yu,, Hao Yang, Daocheng Fu, Licheng Wen, and Pinlong Cai

TL;DR
KoMA is a multi-agent framework utilizing large language models to improve autonomous driving by enabling cooperative decision-making, scenario understanding, and behavior evaluation, leading to enhanced robustness and generalization in complex environments.
Contribution
This work introduces KoMA, a novel multi-agent LLM-based framework with modules for interaction, planning, shared memory, and reflection, advancing autonomous driving capabilities.
Findings
Outperforms traditional methods in complex driving scenarios
Enhances decision-making robustness and adaptability
Improves generalization across diverse environments
Abstract
Large language models (LLMs) as autonomous agents offer a novel avenue for tackling real-world challenges through a knowledge-driven manner. These LLM-enhanced methodologies excel in generalization and interpretability. However, the complexity of driving tasks often necessitates the collaboration of multiple, heterogeneous agents, underscoring the need for such LLM-driven agents to engage in cooperative knowledge sharing and cognitive synergy. Despite the promise of LLMs, current applications predominantly center around single agent scenarios. To broaden the horizons of knowledge-driven strategies and bolster the generalization capabilities of autonomous agents, we propose the KoMA framework consisting of multi-agent interaction, multi-step planning, shared-memory, and ranking-based reflection modules to enhance multi-agents' decision-making in complex driving scenarios. Based on the…
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Taxonomy
TopicsSemantic Web and Ontologies · Natural Language Processing Techniques · Topic Modeling
