LGAICLJun 9

AuRA: Internalizing Audio Understanding into LLMs as LoRA

Bo Cheng, Lei Shi, Zhanyu Ma, Yuan Wu, Jun Xu, Jiuchong Gao, Jinghua Hao, Renqing He
arXiv:2606.11033v19.6
Predicted impact top 70% in LG · last 90 daysOriginality Incremental advance
AI Analysis

For speech-language AI researchers, AuRA offers a lightweight method to internalize speech into LLMs without costly multimodal training, achieving strong results.

AuRA distills audio encoding into LLMs via LoRA, enabling tight speech-language joint modeling and efficient parallel inference. It outperforms cascaded and adaptation baselines on multiple benchmarks in both effectiveness and efficiency.

Recent efforts to extend large language models (LLMs) to speech inputs typically rely on cascaded ASR-LLM pipelines, end-to-end speech-language models, or bridge/distillation-based adaptation. While these routes respectively reuse strong pretrained components, enable native speech-language interaction, or offer lightweight adaptation, they often suffer from transcript-interface latency, costly multimodal training, or sequential speech-language coupling. To address these limitations, we present AuRA, a method that distills audio encoding capability into the LLM. Specifically, AuRA feeds the same speech input to an ASR encoder (as a teacher) and a LoRA-adapted LLM (as a student) through a lightweight audio embedding layer, and uses layer-wise distillation to align the student's hidden states with corresponding teacher representations, thereby internalizing speech representations into lightweight LLM-side adaptations. Compared with cascaded and serial bridge methods, AuRA enables tighter speech-language joint modeling and efficient parallel end-to-end inference, while also reusing pretrained speech and language models rather than requiring large-scale multimodal training. On multiple speech-language benchmarks, AuRA consistently outperforms cascaded systems, speech-to-LLM adaptation baselines, and large-scale speech-language and multimodal models in both effectiveness and efficiency.

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