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The vision language model in this video is 0.5B and can take in image, video and 3D! 🤯 Llava-NeXT-Interleave is a new vision language model trained on interleaved image, video and 3D data keep reading ⥥⥥

This model comes with 0.5B, 7B and 7B-DPO variants, all can be used with Transformers 😍
[Collection of models](https://t.co/sZsaglSXa3) | [Demo](https://t.co/FbpaMWJY8k)
See how to use below 👇🏻

Authors of this paper have explored training Llava-NeXT on interleaved data where the data consists of multiple modalities, including image(s), video, 3D 📚
They have discovered that interleaved data increases results across all benchmarks!

The model can do task transfer from single image tasks to multiple images 🤯 The authors have trained the model on single images and code yet the model can solve coding with multiple images.

Same applies to other modalities, see below for video:

The model also has document understanding capabilities and many real-world application areas

This release also comes with the dataset this model was fine-tuned on 📖 [M4-Instruct-Data](https://t.co/rutXMtNC0I)

> [!TIP]
Ressources:
[LLaVA-NeXT: Tackling Multi-image, Video, and 3D in Large Multimodal Models](https://llava-vl.github.io/blog/2024-06-16-llava-next-interleave/)
by Feng Li, Renrui Zhang*, Hao Zhang, Yuanhan Zhang, Bo Li, Wei Li, Zejun Ma, Chunyuan Li (2024)
[GitHub](https://github.com/LLaVA-VL/LLaVA-NeXT/blob/inference/docs/LLaVA-NeXT-Interleave.md)
> [!NOTE]
[Original tweet](https://twitter.com/mervenoyann/status/1813560292397203630) (July 17, 2024) |