Gauge Equivariant CNNs, Generative Models, and the Future of AI with Max Welling - TWiML Talk #267
Today we’re joined by Max Welling, research chair in machine learning at the University of Amsterdam, as well as VP of technologies at Qualcomm, and Fellow at the Canadian Institute for Advanced Research, or CIFAR. In our conversation, we discuss:
• Max’s research at Qualcomm AI Research and the University of Amsterdam, including his work on Bayesian deep learning, Graph CNNs and Gauge Equivariant CNNs, and in power efficiency for AI via compression, quantization, and compilation.
• Max’s thoughts on the future of the AI industry, in particular, the relative importance of models, data and compute.
The complete show notes for this episode can be found at twimlai.com/talk/267.
Thanks to Qualcomm for sponsoring today's episode! Check out what they're up to at twimlai.com/qualcomm.
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