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Main Authors: Goel, Arushi, Ghosh, Sreyan, Agarwal, Vatsal, Anand, Nishit, Jayakumar, Kaousheik, Koroshinadze, Lasha, Xu, Yao, Lyons, Katie, Case, James, Sapra, Karan, Shih, Kevin J., Gururani, Siddharth, Shrivastava, Abhinav, Duraiswami, Ramani, Manocha, Dinesh, Tao, Andrew, Catanzaro, Bryan, Shoeybi, Mohammad, Ping, Wei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.14145
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author Goel, Arushi
Ghosh, Sreyan
Agarwal, Vatsal
Anand, Nishit
Jayakumar, Kaousheik
Koroshinadze, Lasha
Xu, Yao
Lyons, Katie
Case, James
Sapra, Karan
Shih, Kevin J.
Gururani, Siddharth
Shrivastava, Abhinav
Duraiswami, Ramani
Manocha, Dinesh
Tao, Andrew
Catanzaro, Bryan
Shoeybi, Mohammad
Ping, Wei
author_facet Goel, Arushi
Ghosh, Sreyan
Agarwal, Vatsal
Anand, Nishit
Jayakumar, Kaousheik
Koroshinadze, Lasha
Xu, Yao
Lyons, Katie
Case, James
Sapra, Karan
Shih, Kevin J.
Gururani, Siddharth
Shrivastava, Abhinav
Duraiswami, Ramani
Manocha, Dinesh
Tao, Andrew
Catanzaro, Bryan
Shoeybi, Mohammad
Ping, Wei
contents Multimodal Large Language Models (MLLMs) have shown strong performance in visual and audio understanding when evaluated in isolation. However, their ability to jointly reason over omni-modal (visual, audio, and textual) signals in long and complex videos remains largely unexplored. We introduce MMOU, a new benchmark designed to systematically evaluate multimodal understanding and reasoning under these challenging, real-world conditions. MMOU consists of 15,000 carefully curated questions paired with 9038 web-collected videos of varying length, spanning diverse domains and exhibiting rich, tightly coupled audio-visual content. The benchmark covers 13 fundamental skill categories, all of which require integrating evidence across modalities and time. All questions are manually annotated across multiple turns by professional annotators, ensuring high quality and reasoning fidelity. We evaluate 20+ state-of-the-art open-source and proprietary multimodal models on MMOU. The results expose substantial performance gaps: the best closed-source model achieves only 64.2% accuracy, while the strongest open-source model reaches just 46.8%. Our results highlight the challenges of long-form omni-modal understanding, revealing that current models frequently fail to apply even fundamental skills in long videos. Through detailed analysis, we further identify systematic failure modes and provide insights into where and why current models break.
format Preprint
id arxiv_https___arxiv_org_abs_2603_14145
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle MMOU: A Massive Multi-Task Omni Understanding and Reasoning Benchmark for Long and Complex Real-World Videos
Goel, Arushi
Ghosh, Sreyan
Agarwal, Vatsal
Anand, Nishit
Jayakumar, Kaousheik
Koroshinadze, Lasha
Xu, Yao
Lyons, Katie
Case, James
Sapra, Karan
Shih, Kevin J.
Gururani, Siddharth
Shrivastava, Abhinav
Duraiswami, Ramani
Manocha, Dinesh
Tao, Andrew
Catanzaro, Bryan
Shoeybi, Mohammad
Ping, Wei
Computation and Language
Computer Vision and Pattern Recognition
Multimodal Large Language Models (MLLMs) have shown strong performance in visual and audio understanding when evaluated in isolation. However, their ability to jointly reason over omni-modal (visual, audio, and textual) signals in long and complex videos remains largely unexplored. We introduce MMOU, a new benchmark designed to systematically evaluate multimodal understanding and reasoning under these challenging, real-world conditions. MMOU consists of 15,000 carefully curated questions paired with 9038 web-collected videos of varying length, spanning diverse domains and exhibiting rich, tightly coupled audio-visual content. The benchmark covers 13 fundamental skill categories, all of which require integrating evidence across modalities and time. All questions are manually annotated across multiple turns by professional annotators, ensuring high quality and reasoning fidelity. We evaluate 20+ state-of-the-art open-source and proprietary multimodal models on MMOU. The results expose substantial performance gaps: the best closed-source model achieves only 64.2% accuracy, while the strongest open-source model reaches just 46.8%. Our results highlight the challenges of long-form omni-modal understanding, revealing that current models frequently fail to apply even fundamental skills in long videos. Through detailed analysis, we further identify systematic failure modes and provide insights into where and why current models break.
title MMOU: A Massive Multi-Task Omni Understanding and Reasoning Benchmark for Long and Complex Real-World Videos
topic Computation and Language
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2603.14145