ZEROBench-Sub
ZEROBench-Sub is a subset of the ZEROBench benchmark.
Qwen3.5-122B-A10B from Alibaba Cloud / Qwen Team currently leads the ZEROBench-Sub leaderboard with a score of 0.362 across 5 evaluated AI models.
What ZEROBench-Sub measures
ZEROBench-Sub is a image benchmark that evaluates large language models on multimodal, reasoning, and vision tasks. LLM Stats tracks 5 models on this benchmark, with a maximum possible score of 100. Current average across reported models is 0.3, with the leader reaching 0.4.
Compare leaders on the best AI for multimodal, best AI for reasoning and best AI for vision leaderboards.
Qwen3.5-122B-A10B leads with 0.4%, followed by
Qwen3.5-27B at 0.4% and
Qwen3.6-35B-A3B at 0.3%.
Progress Over Time
Interactive timeline showing model performance evolution on ZEROBench-Sub
ZEROBench-Sub Leaderboard
| Context | Cost | License | ||||
|---|---|---|---|---|---|---|
| 1 | Alibaba Cloud / Qwen Team | 122B | 262K | $0.40 / $3.20 | ||
| 1 | Alibaba Cloud / Qwen Team | 27B | 262K | $0.30 / $2.40 | ||
| 3 | Alibaba Cloud / Qwen Team | 35B | — | — | ||
| 4 | Alibaba Cloud / Qwen Team | 35B | 262K | $0.25 / $2.00 | ||
| 5 | Alibaba Cloud / Qwen Team | 236B | — | — |
FAQ
Common questions about ZEROBench-Sub.
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