English

Multi-Task Instruction Tuning via Data Scheduling for Low-Resource Arabic AudioLLMs

Sound 2026-03-24 v2 Artificial Intelligence Computation and Language Audio and Speech Processing

Abstract

Audio large language models (LLMs) enable unified speech understanding and generation, but adapting them to linguistically complex and dialect-rich settings such as Arabic-English remains challenging. We present a controlled study of multi-task instruction tuning for an Arabic-centric audio LLM across generative tasks including ASR and speech and text summarization, and discriminative tasks including dialect and emotion recognition, in a resource-constrained setting. To support end-to-end Arabic speech summarization, we introduce AraMega-SSum, a first speech summarization resource for training and benchmarking Arabic-centric Audio-LLMs. We compare four training strategies (i) Uniform Task Mixing, (ii) Task-Progressive Curriculum (TPC), (iiii) Aligner-Based Diverse Sampling (ADS) for training-time batch construction, and (iv) A two-stage TPC->ADS strategy. Our results show a clear efficiency-robustness trade-off. ADS speeds up early convergence and improves paralinguistic performance, however, it hurts other tasks. A two-stage TPC-> ADS strategy gives the most reliable overall balance across tasks, offering practical guidance for adapting omni audio LLMs to low-resource, dialect-rich environments. We will make AraMega-SSum and all experimental resources publicly available to the community.

Keywords

Cite

@article{arxiv.2601.12494,
  title  = {Multi-Task Instruction Tuning via Data Scheduling for Low-Resource Arabic AudioLLMs},
  author = {Hunzalah Hassan Bhatti and Firoj Alam and Shammur Absar Chowdhury},
  journal= {arXiv preprint arXiv:2601.12494},
  year   = {2026}
}

Comments

Foundation Models, Large Language Models, Native, Speech Models, Arabic

R2 v1 2026-07-01T09:09:38.750Z