VideoMME w/o sub.

Video-MME is a comprehensive evaluation benchmark for multi-modal large language models in video analysis. It features 900 videos across 6 primary visual domains with 30 subfields, ranging from 11 seconds to 1 hour in duration, with 2,700 question-answer pairs. The benchmark evaluates MLLMs' capabilities in processing sequential visual data and multi-modal content including video frames, subtitles, and audio.

Qwen3.5-122B-A10B from Alibaba Cloud / Qwen Team currently leads the VideoMME w/o sub. leaderboard with a score of 0.839 across 10 evaluated AI models.

Paper

Alibaba Cloud / Qwen TeamQwen3.5-122B-A10B leads with 83.9%, followed by Alibaba Cloud / Qwen TeamQwen3.5-27B at 82.8% and Alibaba Cloud / Qwen TeamQwen3.6-35B-A3B at 82.5%.

Progress Over Time

Interactive timeline showing model performance evolution on VideoMME w/o sub.

State-of-the-art frontier
Open
Proprietary

VideoMME w/o sub. Leaderboard

10 models
ContextCostLicense
1
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
122B262K$0.40 / $3.20
2
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
27B262K$0.30 / $2.40
3
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
35B
3
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
35B262K$0.25 / $2.00
5
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
236B262K$0.30 / $1.49
6
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
236B262K$0.45 / $3.49
7
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
33B
8
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
72B
9
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
34B
10
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
8B
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FAQ

Common questions about VideoMME w/o sub..

What is the VideoMME w/o sub. benchmark?

Video-MME is a comprehensive evaluation benchmark for multi-modal large language models in video analysis. It features 900 videos across 6 primary visual domains with 30 subfields, ranging from 11 seconds to 1 hour in duration, with 2,700 question-answer pairs. The benchmark evaluates MLLMs' capabilities in processing sequential visual data and multi-modal content including video frames, subtitles, and audio.

What is the VideoMME w/o sub. leaderboard?

The VideoMME w/o sub. leaderboard ranks 10 AI models based on their performance on this benchmark. Currently, Qwen3.5-122B-A10B by Alibaba Cloud / Qwen Team leads with a score of 0.839. The average score across all models is 0.776.

What is the highest VideoMME w/o sub. score?

The highest VideoMME w/o sub. score is 0.839, achieved by Qwen3.5-122B-A10B from Alibaba Cloud / Qwen Team.

How many models are evaluated on VideoMME w/o sub.?

10 models have been evaluated on the VideoMME w/o sub. benchmark, with 0 verified results and 10 self-reported results.

Where can I find the VideoMME w/o sub. paper?

The VideoMME w/o sub. paper is available at https://arxiv.org/abs/2405.21075. The paper details the methodology, dataset construction, and evaluation criteria.

What categories does VideoMME w/o sub. cover?

VideoMME w/o sub. is categorized under multimodal, video, and vision. The benchmark evaluates multimodal models.

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