Skip to content
View le-liang's full-sized avatar

Block or report le-liang

Report abuse

Contact GitHub support about this user’s behavior. Learn more about reporting abuse.

Report abuse
le-liang/README.md

Hi there, we're LLGroup

We are a research group at Southeast University, Nanjing, China, led by Professor Le Liang. We do research in the intersection of wireless communications and machine learning, aiming to develop intelligent wireless systems through studying fundamental theory, inventing new algorithms, and building prototypes. Currently, our research is organized around the following three themes:

  • Machine learning in communications and networking (e.g., LLM/GNN/MCMC/multi-agent RL + Wireless)
  • Connected autonomous driving (e.g., semantic communications for collaborative perception)
  • Wireless sensing (e.g., integrated sensing and communications)

For more information, please check out our research website: https://liang-seu.net/

We usually have 1-2 Ph.D. and 3-4 Master's opening each year. Please drop us an email (lliang@seu.edu.cn) if you're interested in working with us.

Pinned Loading

  1. wcmlbook wcmlbook Public

    Python code for the book 'Wireless Communications and Machine Learning' by Cambridge University Press 2025.

    Python 12 6

  2. Multimodal-Wireless Multimodal-Wireless Public

    Python scripts and assets related to Multimodal-Wireless dataset. The dataset can be found at

    Python 20

  3. Beam-prediction-LLM Beam-prediction-LLM Public

    Beam prediction based on large language models, IEEE Wireless Communications Letters

    Python 47 10

  4. MARLspectrumSharingV2X MARLspectrumSharingV2X Public

    Spectrum sharing in vehicular networks based on multi-agent reinforcement learning, IEEE Journal on Selected Areas in Communications

    Python 277 97

  5. ResourceAllocationV2X ResourceAllocationV2X Public

    Resource allocation for D2D-enabled vehicular communications, IEEE Transactions on Communications

    MATLAB 148 55

  6. HybridPrecodingMassiveMIMO HybridPrecodingMassiveMIMO Public

    Low-complexity hybrid precoding in massive mulituser MIMO systems, IEEE Wireless Communications Letters

    MATLAB 104 39