Eureka-Audio: Triggering Audio Intelligence in Compact Language Models
Abstract
We present Eureka-Audio, a compact yet high-performance audio language model that achieves competitive performance against models that are 4 to 18 times larger across a broad range of audio understanding benchmarks. Despite containing only 1.7B parameters, Eureka-Audio demonstrates strong performance on automatic speech recognition (ASR), audio understanding, and dense audio captioning, matching or surpassing multiple 7B to 30B audio and omni-modal baselines. The model adopts a unified end-to-end architecture composed of a lightweight language backbone, a Whisper-based audio encoder, and a sparsely activated Mixture-of-Experts (MoE) adapter that explicitly accounts for audio heterogeneity and alleviates cross-modal optimization conflicts under limited capacity. To further enhance paralinguistic reasoning, we introduce DataFlux, a closed loop audio instruction data synthesis and verification pipeline that constructs high quality, logically consistent supervision from raw audio. Extensive evaluations across ASR, knowledge reasoning, safety, instruction following, and paralinguistic benchmarks, demonstrate that Eureka-Audio achieves an efficient balance between computational cost and performance. These results establish Eureka Audio as a strong and practical baseline for lightweight audio understanding models.
Cite
@article{arxiv.2602.13954,
title = {Eureka-Audio: Triggering Audio Intelligence in Compact Language Models},
author = {Dan Zhang and Yishu Lei and Jing Hu and Shuwei He and Songhe Deng and Xianlong Luo and Danxiang Zhu and Shikun Feng and Rui Liu and Jingzhou He and Yu Sun and Hua Wu and Haifeng Wang},
journal= {arXiv preprint arXiv:2602.13954},
year = {2026}
}
Comments
23 pages, 4 figures