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fuvty/README.md

Hi 👋

I’m Tianyu Fu (傅天予), a Ph.D. student supervised by Prof. Yu Wang. I’m a member of NICS-EFC Lab. My research interest lies in efficient large language models and graph neural networks.

Welcome to new friends, please don’t hesitate to reach out 🤗

Want to know more about me? Check out my recent events and profile

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  1. thu-nics/R2R thu-nics/R2R Public

    The official code implementation for paper "R2R: Efficiently Navigating Divergent Reasoning Paths with Small-Large Model Token Routing"

    Python 39 4

  2. thu-nics/FrameFusion thu-nics/FrameFusion Public

    [ICCV'25] The official code implementation of paper "Combining Similarity and Importance for Video Token Reduction on Large Visual Language Models"

    Python 47 1

  3. thu-nics/MoA thu-nics/MoA Public

    [CoLM'25] The official implementation of the paper <MoA: Mixture of Sparse Attention for Automatic Large Language Model Compression>

    Python 139 8

  4. DeSCo DeSCo Public

    [WSDM'24 Oral] The official implementation of paper <DeSCo: Towards Generalizable and Scalable Deep Subgraph Counting>

    Python 22

  5. thu-nics/CLAP-triangle-counting thu-nics/CLAP-triangle-counting Public

    [DATE'23] The official code for paper <CLAP: Locality Aware and Parallel Triangle Counting with Content Addressable Memory>

    C++ 23

  6. dgSPARSE/dgSPARSE-Lib dgSPARSE/dgSPARSE-Lib Public

    PyTorch-Based Fast and Efficient Processing for Various Machine Learning Applications with Diverse Sparsity

    Cuda 112 28