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Welcome to the Safe AI and Robot Learning (SAIL) Lab! 👋


 

What We Do

  • 🔭 We focus on the theory and practice of machine learning, with applications to foundation models and robotics. Our goal is to develop safe, reliable, and efficient systems that address pressing real-world challenges and drive impactful applications across diverse domains.

  • 🌱 We host workshops and seminars on safe AI and robot learning. Researchers and students interested in safe AI and robot learning are welcome to join! Recordings are available on the AI Agent Research YouTube Channel. For more information, visit the Agentic AI Frontier Seminar, the Safe RL Seminar Homepage, and the Safe RL Workshop Homepage.

  • 📖 Our lab is guided by the principle of pursuing the essence of intelligence and bringing it into the real world.

Recent News

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  1. Safe-MARL-in-Autonomous-Driving Safe-MARL-in-Autonomous-Driving Public

    [IEEE TAI] Safe Multi-Agent Reinforcement Learning to Make decisions in Autonomous Driving.

    Jupyter Notebook 94 12

  2. Robust-Gymnasium Robust-Gymnasium Public

    [ICLR 2025] Robust Gymnasium: A Unified Modular Benchmark for Robust Reinforcement Learning.

    Python 85 7

  3. agentic-web agentic-web Public

    Agentic Web: Weaving the Next Web with AI Agents.

    417 37

  4. BenchNetRL BenchNetRL Public

    🔥Benchmarking of Neural Network Architectures in Reinforcement Learning.

    Python 34 3

  5. data-uniformity data-uniformity Public

    Data Uniformity Improves Training Efficiency and More, with a Convergence Framework Beyond the NTK Regime

    Python 6

  6. AgenticPay AgenticPay Public

    AgenticPay: A Multi-Agent LLM Negotiation System for Buyer–Seller Transactions

    Python 11 3

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