QwenSVG

QwenSVG is Qwen's internal SVG generation benchmark for evaluating front-end and visual code generation. Scores are reported as BT/Elo ratings from auto-rendered outputs judged by a multimodal evaluator.

Qwen3.7 Max from Alibaba Cloud / Qwen Team currently leads the QwenSVG leaderboard with a score of 1608.000 across 1 evaluated AI models.

Alibaba Cloud / Qwen TeamQwen3.7 Max leads with 1608.000.

Progress Over Time

Interactive timeline showing model performance evolution on QwenSVG

State-of-the-art frontier
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QwenSVG Leaderboard

1 models
ContextCostLicense
1
Alibaba Cloud / Qwen Team
Alibaba Cloud / Qwen Team
1.0M$1.25 / $3.75
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FAQ

Common questions about QwenSVG.

What is the QwenSVG benchmark?

QwenSVG is Qwen's internal SVG generation benchmark for evaluating front-end and visual code generation. Scores are reported as BT/Elo ratings from auto-rendered outputs judged by a multimodal evaluator.

What is the QwenSVG leaderboard?

The QwenSVG leaderboard ranks 1 AI models based on their performance on this benchmark. Currently, Qwen3.7 Max by Alibaba Cloud / Qwen Team leads with a score of 1608.000. The average score across all models is 1608.000.

What is the highest QwenSVG score?

The highest QwenSVG score is 1608.000, achieved by Qwen3.7 Max from Alibaba Cloud / Qwen Team.

How many models are evaluated on QwenSVG?

1 models have been evaluated on the QwenSVG benchmark, with 0 verified results and 1 self-reported results.

What categories does QwenSVG cover?

QwenSVG is categorized under agents, coding, and multimodal. The benchmark evaluates multimodal models with multilingual support.

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