Long-Horizon Planning for Multi-Agent Robots in Partially Observable Environments (2407.10031v1)
Abstract: The ability of LLMs (LMs) to understand natural language makes them a powerful tool for parsing human instructions into task plans for autonomous robots. Unlike traditional planning methods that rely on domain-specific knowledge and handcrafted rules, LMs generalize from diverse data and adapt to various tasks with minimal tuning, acting as a compressed knowledge base. However, LMs in their standard form face challenges with long-horizon tasks, particularly in partially observable multi-agent settings. We propose an LM-based Long-Horizon Planner for Multi-Agent Robotics (LLaMAR), a cognitive architecture for planning that achieves state-of-the-art results in long-horizon tasks within partially observable environments. LLaMAR employs a plan-act-correct-verify framework, allowing self-correction from action execution feedback without relying on oracles or simulators. Additionally, we present MAP-THOR, a comprehensive test suite encompassing household tasks of varying complexity within the AI2-THOR environment. Experiments show that LLaMAR achieves a 30% higher success rate compared to other state-of-the-art LM-based multi-agent planners.
- Siddharth Nayak (11 papers)
- Adelmo Morrison Orozco (1 paper)
- Marina Ten Have (3 papers)
- Vittal Thirumalai (1 paper)
- Jackson Zhang (1 paper)
- Darren Chen (2 papers)
- Aditya Kapoor (12 papers)
- Eric Robinson (2 papers)
- Karthik Gopalakrishnan (34 papers)
- James Harrison (44 papers)
- Brian Ichter (52 papers)
- Anuj Mahajan (18 papers)
- Hamsa Balakrishnan (12 papers)