@KeisukeKamahori: Very excited to share that our team at @UWSyFi won multiple prizes at the FlashInfer AI Kernel Generation Contest in #M…
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University of Washington SyFI team won multiple prizes at the FlashInfer AI Kernel Generation Contest held during MLSys2026, with support from NVIDIA and Modal.
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Cached at: 05/22/26, 11:55 PM
Very excited to share that our team at @UWSyFi won multiple prizes at the FlashInfer AI Kernel Generation Contest in #MLSys2026!
Huge thanks for organizing an amazing contest @ye_combinator @yi_xin_dong @charles_irl
Baris Kasikci (@bariskasikci): Super stoked that UW SyFI (https://t.co/EN2BsLv7e6) members won a number of prizes at the MLSys’26 competition, NVIDIA Track. Hugre congrats to @KeisukeKamahori , @sudopowr , Yile Gu, Wei Shen, Steven Gao! Thanks to @nvidia , @modal , and the Flashinfer team for the support.
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