In this hackathon, you'll take on the challenge of compiling legacy code to run efficiently on the Tenstorrent Wormhole, a modern tensor processors.
But you're not starting from scratch—we'll be building on top of dace/sdfglib, implementing stateful dataflow multigraphs (Ben-Nun et al., SC'19), and bringing in ideas from Tensorize (Brauckmann et al., CGO’25) to optimize code for AI-native execution models.
This is your chance to explore data-centric compilation and modern tensor chips.
Requirements
Participants will:
- Analyze and transform legacy codes using stateful dataflow multigraphs.
- Extend dace/sdfglib to support the lifting of tensor operations from loops, inspired by Tensorize.
- Target a state-of-the-art tensor processor, a Tenstorrent Wormhole
- Develop IR passes, scheduling strategies, or new representations that help legacy code embrace tensorized compute.
Prizes
Pizza, Drinks and Fun
Have fun and learn about compiler engineering with world-class engineers and researchers
Devpost Achievements
Submitting to this hackathon could earn you:
Judges
Alexandru Calotoiu
Tal Ben Nun
Judging Criteria
-
Performance
Questions? Email the hackathon manager
Tell your friends
This site is protected by reCAPTCHA and the Google Privacy Policy and Terms of Service apply.