DailyOmni
DailyOmni evaluates multimodal models on daily-life video understanding tasks.
MiMo-V2.5 from Xiaomi currently leads the DailyOmni leaderboard with a score of 0.835 across 1 evaluated AI models.
What DailyOmni measures
DailyOmni is a multimodal benchmark that evaluates large language models on video, multimodal, and reasoning tasks. LLM Stats tracks 1 model on this benchmark, with a maximum possible score of 1. Current average across reported models is 0.8, with the leader reaching 0.8.
Compare leaders on the best AI for video, best AI for multimodal and best AI for reasoning leaderboards.
MiMo-V2.5 leads with 83.5%.
Progress Over Time
Interactive timeline showing model performance evolution on DailyOmni
DailyOmni Leaderboard
| Context | Cost | License | ||||
|---|---|---|---|---|---|---|
| 1 | Xiaomi | 311B | 1.0M | $0.17 / $0.34 |
FAQ
Common questions about DailyOmni.
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