MMAU-Pro: A Challenging and Comprehensive Benchmark for Holistic Evaluation of Audio General Intelligence

Authors

  • Sonal Kumar University of Maryland, College Park
  • Šimon Sedláček Brno University of Technology
  • Vaibhavi Lokegaonkar University of Maryland, College Park
  • Fernando López Universidad Autónoma de Madrid Telefónica
  • Wenyi Yu Tsinghua University, Tsinghua University
  • Nishit Anand University of Maryland, College Park
  • Hyeonggon Ryu KAIST
  • Lichang Chen Department of Computer Science, University of Maryland, College Park
  • Maxim Plička Brno University of Technology
  • Miroslav Hlaváček Phonexia
  • William Fineas Ellingwood Middlebury College
  • Sathvik Udupa Brno University of Technology
  • Siyuan Hou Tsinghua University, Tsinghua University
  • Allison Ferner Tufts University
  • Sara Barahona Universidad Autónoma de Madrid
  • Cecilia Bolaños Computer Science Department, Universidad de Buenos Aires
  • Satish Rahi Indian Institute of Technology Bombay, Indian Institute of Technology, Bombay
  • Laura Herrera-Alarcón Universidad Autónoma de Madrid
  • Satvik Dixit Carnegie Mellon University
  • Siddhi Patil Department of Computer Science, University of Maryland, College Park
  • Soham Deshmukh Microsoft
  • Lasha Koroshinadze University of Maryland, College Park
  • Yao Liu Universiti Sains Malaysia
  • Leibny Paola Garcia Perera Johns Hopkins University
  • Eleni Zanou Athens University of Economics and Business
  • Themos Stafylakis Athens University of Economics and Business
  • Joon Son Chung KAIST
  • David Harwath University of Texas, Austin
  • Chao Zhang Shanghai Artificial Intelligence Laboratory Tsinghua University
  • Dinesh Manocha University of Maryland, College Park
  • Alicia Lozano-Diez Universidad Autónoma de Madrid
  • Santosh Kesiraju Brno University of Technology
  • Sreyan Ghosh University of Maryland, College Park
  • Ramani Duraiswami University of Maryland, College Park

DOI:

https://doi.org/10.1609/aaai.v40i27.39430

Abstract

Audio comprehension—including speech, non-speech sounds, and music—is essential for achieving human-level intelligence. Consequently, AI agents must demonstrate holistic audio understanding to qualify as generally intelligent. However, evaluating auditory intelligence comprehensively remains challenging. To address this gap, we introduce MMAU-Pro, the most comprehensive and rigorously curated benchmark for assessing audio intelligence in AI systems. MMAU-Pro contains 5,305 instances, where each instance has one or more audios paired with human expert-generated question-answer pairs, spanning speech, sound, music, and their combinations. Unlike existing benchmarks, MMAU-Pro evaluates auditory intelligence across 49 unique skills and multiple complex dimensions, including long-form audio comprehension, spatial audio reasoning, multi-audio understanding, among others. All questions are meticulously designed to require deliberate multi-hop reasoning, including both multiple-choice and open-ended response formats. Importantly, audio data is sourced directly ``from the wild" rather than from existing datasets with known distributions. We evaluate 22 leading open-source and proprietary multimodal AI models, revealing significant limitations: even state-of-the-art models such as Gemini 2.5 Flash and Audio Flamingo 3 achieve only 57.33% and 45.9% accuracy, respectively, approaching random performance in multiple categories. Our extensive analysis highlights specific shortcomings and provides novel insights, offering actionable perspectives for the community to enhance future AI systems' progression toward audio general intelligence.

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Published

2026-03-14

How to Cite

Kumar, S., Sedláček, Šimon, Lokegaonkar, V., López, F., Yu, W., Anand, N., Ryu, H., Chen, L., Plička, M., Hlaváček, M., Ellingwood, W. F., Udupa, S., Hou, S., Ferner, A., Barahona, S., Bolaños, C., Rahi, S., Herrera-Alarcón, L., Dixit, S., Patil, S., Deshmukh, S., Koroshinadze, L., Liu, Y., Garcia Perera, L. P., Zanou, E., Stafylakis, T., Chung, J. S., Harwath, D., Zhang, C., Manocha, D., Lozano-Diez, A., Kesiraju, S., Ghosh, S., & Duraiswami, R. (2026). MMAU-Pro: A Challenging and Comprehensive Benchmark for Holistic Evaluation of Audio General Intelligence. Proceedings of the AAAI Conference on Artificial Intelligence, 40(27), 22688-22697. https://doi.org/10.1609/aaai.v40i27.39430

Issue

Section

AAAI Technical Track on Machine Learning IV