Autonomous Workflow For Multimodal Fine-grained Training Assistants Towards Mixed Reality · The Large Language Model Bible Contribute to LLM-Bible

Autonomous Workflow For Multimodal Fine-grained Training Assistants Towards Mixed Reality

Pei Jiahuan, Viola Irene, Huang Haochen, Wang Junxiao, Ahsan Moonisa, Ye Fanghua, Yiming Jiang, Sai Yao, Wang Di, Chen Zhumin, Ren Pengjie, Cesar Pablo. Arxiv 2024

[Paper]    
Agentic Applications Fine Tuning Multimodal Models Pretraining Methods Reinforcement Learning Tools Training Techniques

Autonomous artificial intelligence (AI) agents have emerged as promising protocols for automatically understanding the language-based environment, particularly with the exponential development of large language models (LLMs). However, a fine-grained, comprehensive understanding of multimodal environments remains under-explored. This work designs an autonomous workflow tailored for integrating AI agents seamlessly into extended reality (XR) applications for fine-grained training. We present a demonstration of a multimodal fine-grained training assistant for LEGO brick assembly in a pilot XR environment. Specifically, we design a cerebral language agent that integrates LLM with memory, planning, and interaction with XR tools and a vision-language agent, enabling agents to decide their actions based on past experiences. Furthermore, we introduce LEGO-MRTA, a multimodal fine-grained assembly dialogue dataset synthesized automatically in the workflow served by a commercial LLM. This dataset comprises multimodal instruction manuals, conversations, XR responses, and vision question answering. Last, we present several prevailing open-resource LLMs as benchmarks, assessing their performance with and without fine-tuning on the proposed dataset. We anticipate that the broader impact of this workflow will advance the development of smarter assistants for seamless user interaction in XR environments, fostering research in both AI and HCI communities.

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