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README.md
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## π₯ Updates
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* **[2025.
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## π Quick Start
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## β€οΈ Acknowledgement
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Our work builds upon the foundations laid by many excellent projects in the field. We would like to thank the authors of [MAR](https://github.com/LTH14/mar). We also drew inspiration from the methodologies presented in [FlowMo](https://github.com/kylesargent/FlowMo/), [InternVideo2](https://github.com/OpenGVLab/InternVideo/tree/main). We are grateful for their contributions to the community.
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## π₯ Updates
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* **[2025.10.01]** π π π We are excited to release **UniFlow**, a powerful unified tokenizer featuring our novel **Layer-wise Adaptative Distillation** and a **Patch-wise Pixel Flow Decoder**. Code and pretrained models are now available!
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## π Quick Start
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## β€οΈ Acknowledgement
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Our work builds upon the foundations laid by many excellent projects in the field. We would like to thank the authors of [MAR](https://github.com/LTH14/mar). We also drew inspiration from the methodologies presented in [FlowMo](https://github.com/kylesargent/FlowMo/), [InternVideo2](https://github.com/OpenGVLab/InternVideo/tree/main). We are grateful for their contributions to the community.
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