Tiny-Align: Bridging Automatic Speech Recognition and Large Language Model on the Edge
Ruiyang Qin, Dancheng Liu, Gelei Xu, Zheyu Yan, Chenhui Xu, Yuting Hu, Shaocong Wang, X. Sharon Hu, Jinjun Xiong, Yiyu Shi

TL;DR
This paper introduces Tiny-Align, a resource-efficient framework that enables effective cross-modal alignment of ASR and LLM models on edge devices, facilitating personalized audio interactions with significantly reduced training time.
Contribution
The work presents the first resource-efficient approach for aligning ASR and LLM models on edge devices, achieving substantial speedup and improved alignment quality.
Findings
50x training time speedup on NVIDIA Jetson Orin
Over 50% improvement in alignment quality
First study on efficient ASR-LLM alignment on resource-constrained devices
Abstract
The combination of Large Language Models (LLM) and Automatic Speech Recognition (ASR), when deployed on edge devices (called edge ASR-LLM), can serve as a powerful personalized assistant to enable audio-based interaction for users. Compared to text-based interaction, edge ASR-LLM allows accessible and natural audio interactions. Unfortunately, existing ASR-LLM models are mainly trained in high-performance computing environments and produce substantial model weights, making them difficult to deploy on edge devices. More importantly, to better serve users' personalized needs, the ASR-LLM must be able to learn from each distinct user, given that audio input often contains highly personalized characteristics that necessitate personalized on-device training. Since individually fine-tuning the ASR or LLM often leads to suboptimal results due to modality-specific limitations, end-to-end…
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Taxonomy
TopicsSpeech Recognition and Synthesis
