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I'm a professor in the Stanford AI Lab (SAIL), the center for research on foundation models (CRFM), and the Machine Learning Group (bio). Our lab works on the foundations of the next generation of AI systems. While we're very proud of our research ideas and their impact, the lab's real goal is to help students become professors, entrepreneurs, and researchers. To that end, over a dozen members of our group have started their own professorships. With students and collaborators, I've been fortunate enough to cofound a number of companies and investment firms. For transparency, I try to list companies I advise or invest in here and our research sponsors here. My students run the ML Sys Podcast.
- We released ThunderKittens (quick blog|paper|repo) for our opinionated take on building AI kernels. Now with ParallelKittens (paper) for multi-GPU and HipKittens (paper) for AMD. MegaKernels. More soon! we're delighted with all the use in industry and research, please feel free to contribute.
- Intelligence per Watt (paper|repo) measuring efficiency of AI and foundation models. Building on minions and recent work analyzing how to use hybrid systems of cloud and on-device. See Jon and team's OpenJarvis.
- Evo led by Brian Hie and the Arc Institute. Evo selected for the cover of Science. Evo 2 extends to all domains of life in Nature. From our work Hyena using ideas from signal processing, and its application to HyenaDNA.
- Neurips23 Keynote (pptx|pdf|video) about building blocks for foundation models. GitHub for SysAI building blocks.
- Some resources for a budding community in Data-Centric AI and a blog post about it.
- SIGMOD keynote on Data-centric AI, Declarative ML, and Foundation Models in data slides (YouTube)
- SIGMOD panel on Service, Science and Startups changing research
- Software 2.0 Overview at HAI
- Thanks, NeurIPS! Our Test-of-time Award talk for Hogwild! is on YouTube
- A quick overview of video our work on Hidden Stratification.
- MLSys 20 keynote talk (pdf|pptx) or WWW BIG. More articles on new group website also see github.
We're interested in improving the foundations of foundation models.
Some Talks and resources
A messy, incomplete log of old updates is here.
