https://huggingface.co/Qwen/Qwen3-Coder-480B-A35B-Instruct - SWE-Bench Verified
SWE-Bench Verified resolved rate 69.6
View sourceQwen
Qwen2.5-VL-32B is a multimodal vision-language model fine-tuned through reinforcement learning for enhanced mathematical reasoning, structured outputs, and visual problem-solving capabilities. It excels at visual analysis tasks, including object recognition, textual...
Running this yourself: likely needs a rented cloud gpu.
36.6
Quality Score
1120
Arena ELO
32B
Parameters
128K
Context
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Mar 2025
Released
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4
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SWE-Bench Verified resolved rate 69.6
View sourceSWE-Bench Verified resolved rate 69.6
View sourceMMMU_VAL: 68.9 | MathVista: 72.8 | OCRBench: 85.6 | MMBench_TEST_EN_V11: 84.7 | AI2D: 85.4 | MMStar: 70.3 | HallusionBench: 58.4
View sourceGAIA score 4.7 from rft-2
View sourceQwen2.5 VL 32B Instruct is now available through local Ollama runtime. 32K context window listed. Qwen2.5 models are pretrained on Alibaba's latest large-scale dataset, encompassing up to 18 trillion tokens. The model supports up to 128K tokens and has multilingual support.
View sourceDense image captioning is critical for cross-modal alignment in vision-language pretraining and text-to-image generation, but scaling expert-quality annotations is prohibitively expensive. While synthetic captioning via strong vision-language models (VLMs) is a practical alternative, supervised distillation often yields limited output diversity and weak generalization. Reinforcement learning (RL) could overcome these limitations, but its successes have so far been concentrated in verifiable domains that rely on deterministic checkers -- a luxury not available in open-ended captioning. We address this bottleneck with RubiCap, a novel RL framework that derives fine-grained, sample-specific reward signals from LLM-written rubrics. RubiCap first assembles a diverse committee of candidate captions, then employs an LLM rubric writer to extract consensus strengths and diagnose deficiencies in the current policy. These insights are converted into explicit evaluation criteria, enabling an LLM judge to decompose holistic quality assessment and replace coarse scalar rewards with structured, multi-faceted evaluations. Across extensive benchmarks, RubiCap achieves the highest win rates on CapArena, outperforming supervised distillation, prior RL methods, human-expert annotations, and GPT-4V-augmented outputs. On CaptionQA, it demonstrates superior word efficiency: our 7B model matches Qwen2.5-VL-32B-Instruct, and our 3B model surpasses its 7B counterpart. Remarkably, using the compact RubiCap-3B as a captioner produces stronger pretrained VLMs than those trained on captions from proprietary models.
Qwen2.5 VL 32B Instruct is now available through local Ollama runtime. 32K context window listed. Qwen2.5 models are pretrained on Alibaba's latest large-scale dataset, encompassing up to 18 trillion tokens. The model supports up to 128K tokens and has multilingual support.
SWE-Bench Verified resolved rate 69.6
SWE-Bench Verified resolved rate 69.6
MMMU_VAL: 68.9 | MathVista: 72.8 | OCRBench: 85.6 | MMBench_TEST_EN_V11: 84.7 | AI2D: 85.4 | MMStar: 70.3 | HallusionBench: 58.4