AIROOct 14, 2025

EmboMatrix: A Scalable Training-Ground for Embodied Decision-Making

arXiv:2510.12072v14 citationsh-index: 5
Originality Highly original
AI Analysis

It addresses the limitation of LLMs in physical environments for building general-purpose embodied intelligence, representing a novel infrastructure approach.

The paper tackles the problem of large language models lacking embodied understanding by proposing EmboMatrix, a training ground for embodied decision-making, and shows that the resulting EmboBrain-7B model surpasses a 671B baseline by 9.5% on benchmarks.

Embodied decision-making enables agents to translate high-level goals into executable actions through continuous interactions within the physical world, forming a cornerstone of general-purpose embodied intelligence. Large language models (LLMs), with their general decision-making capabilities, offer a promising path to realize this potential; however, LLMs trained solely on language lack exposure to physical environments, limiting their true embodied understanding. To bridge this gap, we propose the concept of a training ground: a comprehensive infrastructure that provides task and scene simulation, embodied interaction, and feedback signals, offering a one-stop solution for LLM acquire genuine embodied decision-making skills. In this work, we present EmboMatrix, the first training ground of its kind, providing massive and diverse tasks with efficient simulation and precise rewards. EmboMatrix incorporates a series of novel techniques: a multi-agent data engine for large-scale task and scene generation, a distributed heterogeneous-hardware system for scalable simulation, and a multi-level reward architecture for precise supervision. Leveraging EmboMatrix, we cultivate EmboBrain, an LLM whose embodied decision-making abilities emerge from extensive embodied interactions. Experiments show that EmboBrain-7B surpasses the 671B DeepSeek-R1 baseline by 9.5\% on two challenging embodied decision-making benchmarks, demonstrating the power of interactive, environment-grounded learning for building truly intelligent embodied agents.

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