Molmo 7B-D
Molmo is a family of open vision-language models developed by the Allen Institute for AI. Molmo models are trained on PixMo, a dataset of 1 million, highly-curated image-text pairs. It has state-of-the-art performance among multimodal models with a similar size while being fully open-source. You can find all models in the Molmo family here. Learn more about the Molmo family in our announcement blog post.
Molmo 7B-D is based on Qwen2-7B and uses OpenAI CLIP as vision backbone. It performs comfortably between GPT-4V and GPT-4o on both academic benchmarks and human evaluation. It powers the Molmo demo at molmo.allenai.org.
This checkpoint is a preview of the Molmo release. All artifacts used in creating Molmo (PixMo dataset, training code, evaluations, intermediate checkpoints) will be made available at a later date, furthering our commitment to open-source AI development and reproducibility.
Sign up here to be the first to know when artifacts are released.
Quick links: - 💬 Demo - 📂 All Models - 📃 Paper - 🎥 Blog with Videos
Evaluations
Model | Average Score on 11 Academic Benchmarks | Human Preference Elo Rating |
---|---|---|
Molmo 72B | 81.2 | 1077 |
Molmo 7B-D (this model) | 77.3 | 1056 |
Molmo 7B-O | 74.6 | 1051 |
MolmoE 1B | 68.6 | 1032 |
GPT-4o | 78.5 | 1079 |
GPT-4V | 71.1 | 1041 |
Gemini 1.5 Pro | 78.3 | 1074 |
Gemini 1.5 Flash | 75.1 | 1054 |
Claude 3.5 Sonnet | 76.7 | 1069 |
Claude 3 Opus | 66.4 | 971 |
Claude 3 Haiku | 65.3 | 999 |
Qwen VL2 72B | 79.4 | 1037 |
Qwen VL2 7B | 73.7 | 1025 |
Intern VL2 LLAMA 76B | 77.1 | 1018 |
Intern VL2 8B | 69.4 | 953 |
Pixtral 12B | 69.5 | 1016 |
Phi3.5-Vision 4B | 59.7 | 982 |
PaliGemma 3B | 50.0 | 937 |
LLAVA OneVision 72B | 76.6 | 1051 |
LLAVA OneVision 7B | 72.0 | 1024 |
Cambrian-1 34B | 66.8 | 953 |
Cambrian-1 8B | 63.4 | 952 |
xGen - MM - Interleave 4B | 59.5 | 979 |
LLAVA-1.5 13B | 43.9 | 960 |
LLAVA-1.5 7B | 40.7 | 951 |
Benchmarks: AI2D test, ChartQA test, VQA v2.0 test, DocQA test, InfographicVQA test, TextVQA val, RealWorldQA, MMMU val, MathVista testmini, CountBenchQA, Flickr Count (we collected this new dataset that is significantly harder than CountBenchQA).
FAQs
Molmo doesn’t work great with transparent images!
We received reports that Molmo models might struggle with transparent images. For the time being, we recommend adding a white or dark background to your images before passing them to the model.
License and Use
This model is licensed under Apache 2.0. It is intended for research and educational use. For more information, please see our Responsible Use Guidelines.