๐ง Awesome Trustworthy Audio-LLMs
๐ง Awesome Trustworthy Audio-LLMs

A curated and continuously evolving collection of research papers, benchmarks, datasets, and open resources on Trustworthy Audio Large Language Models, covering the full spectrum of safety, robustness, and reliability in audio large models. The collection also includes representative works on audio large models beyond the safety domain.
๐Introduction
With the rapid developmenst of Audio Large Language Models (Audio-LLMs), ensuring their trustworthiness and safety has become an essential research frontier.
This repository(TALLM) serves as a comprehensive and community-driven hub for tracking progress in the field of trustworthy audio intelligence.
It highlights research on:
- ๐ก๏ธ Safety
- โ๏ธ Fairness
- ๐ฎ Hallucination
- ๐ Privacy
- โ๏ธ Robustness
- ๐ก Interpretability
- ๐ป Security
- โฆ
Together, these works aim toward a future where Audio-LLMs are not only capable of understanding voices โ but also worthy of being trusted.
๐ Table of Content
- ๐งญ Research Collections
- ๐Good Papers
- ๐๏ธ Recent News
- ๐ค How to Contribute
- ๐ฌ LLM Safety Discussion
- ๐ Rising Stars
- ๐Acknowledgement
๐งญ Research Collections
- Paper
- A. Safety
- B. Security
- C. Privacy
- D. Interpretability
- E. Fairness
- F Hallucination
- G Robustness
In addition to the above-mentioned ones:
If you want to learn more about Audio Large Language Models, you can take a look at the following.
- ๐ Survey
- ๐ Technical Report for Audio Large Language Models
- ๐ Toolkit
- ๐ Benchmark
- ๐ Capability
- ๐ TTS
- ๐ General Papers in Audio
- ๐ Traditional Models
๐ Good Papers
- ๐ ChronosAudio: A Comprehensive Long-Audio Benchmark for Evaluating Audio-Large Language Models
- ๐ ViSAudio: End-to-End Video-Driven Binaural Spatial Audio Generation
- ๐ Attackerโs Noise Can Manipulate Your Audio-based LLM in the Real World
- ๐ Speech-Audio Compositional Attacks on Multimodal LLMs and Their Mitigation with SALMONN-Guard
- ๐ AHa-Bench: Benchmarking Audio Hallucinations in Large Audio-Language Models
- ๐ Hidden in the Noise: Unveiling Backdoors in Audio LLMs Alignment through Latent Acoustic Pattern Triggers
๐๏ธ Recent News
- [2025.11.12] ๐ฃTALLM is released!!!
- [2025.11.25] โฐ๏ธVersion1 is open to everyone!!!
- [2025.11.26] ๐ TALLM has posted on xhs!!!
- [2025.12.01] ๐General capabilities have been collected!!!
- [2025.12.08] ๐ดTTS and Other in Audio have been collected!!!
- [2025.12.11] ๐TALLM has 100+ Stars!!!
- [2025.12.29] ๐2025.12 papers are collected!!!
- [2026.03.18] ๐2026.01 - 2026.03 papers are collected!!!
- [2026.04.14] ๐2026.04 papers are collected!!!
- [2026.04.25] ๐ถVersion2 is open to everyone!!!
- [2026.05.21] ๐Survey Paper is uploaded!!!
๐ค How to Contribute
We welcome contributions from researchers and practitioners! If youโd like to submit a piece of writing, please write an email to kaiwenluo74@gmail.com or write your paper link in issues part. Then we can add the article in.
๐ฌ LLM Safety Discussion
๐ Rising Stars
๐ Acknowledgement
- Organizers: Kevin Luo, Zhenhong Zhou, Liang Lin, Yuting Ruan, Yuanhe Zhang, Tianyu Shao
- Thank you to all those who have followed this project.
