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Seminars

Machine Learning in Physics

  • Read more about Machine Learning in Physics

A Quiet Revolution in Robotics

  • Read more about A Quiet Revolution in Robotics

Globally Synchronizing Graphs

  • Read more about Globally Synchronizing Graphs

Responsible Machine Learning through the Lens of Causal Inference

  • Read more about Responsible Machine Learning through the Lens of Causal Inference

Aligning Machine Learning, Law, and Policy for Responsible Real-World Deployments

  • Read more about Aligning Machine Learning, Law, and Policy for Responsible Real-World Deployments

The Societal Impact of Foundation Models

  • Read more about The Societal Impact of Foundation Models

Physics-Guided AI for Learning Spatiotemporal Dynamics

  • Read more about Physics-Guided AI for Learning Spatiotemporal Dynamics

Machine learning for discovery: deciphering RNA splicing logic

  • Read more about Machine learning for discovery: deciphering RNA splicing logic

Agile Design of Domain-Specific Accelerators and Compilers

  • Read more about Agile Design of Domain-Specific Accelerators and Compilers

CITP Distinguished Lecture Series: Lorrie Cranor – Designing Usable and Useful Privacy Choice Interfaces

  • Read more about CITP Distinguished Lecture Series: Lorrie Cranor – Designing Usable and Useful Privacy Choice Interfaces

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