Decentralized Intent-Based Multi-Robot Task Planner with LLM Oracles on Hyperledger Fabric
Farhad Keramat, Salma Salimi, Tomi Westerlund

TL;DR
This paper introduces a decentralized multi-robot task planning system utilizing LLM oracles with a novel aggregation method on Hyperledger Fabric, enhancing trustworthiness and security in human-robot interaction.
Contribution
It proposes a new aggregation method for LLM outputs tailored for robotic task planning and a decentralized infrastructure on Hyperledger Fabric for multi-robot coordination.
Findings
The new aggregation method outperforms existing methods.
The architecture demonstrates feasibility through experiments.
The SkillChain-RTD benchmark supports evaluation.
Abstract
Large language models (LLMs) have opened new opportunities for transforming natural language user intents into executable actions. This capability enables embodied AI agents to perform complex tasks, without involvement of an expert, making human-robot interaction (HRI) more convenient. However these developments raise significant security and privacy challenges such as self-preferencing, where a single LLM service provider dominates the market and uses this power to promote their own preferences. LLM oracles have been recently proposed as a mechanism to decentralize LLMs by executing multiple LLMs from different vendors and aggregating their outputs to obtain a more reliable and trustworthy final result. However, the accuracy of these approaches highly depends on the aggregation method. The current aggregation methods mostly use semantic similarity between various LLM outputs, not…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Topic Modeling · Big Data and Digital Economy
