
What we’re about
Tenstorrent hardware is designed with AI in mind. From individual chips that run on your machine, to desktop workstations, to high-density scalable compute, there's a solution for every AI practitioner. Tenstorrent's software stack is open source down to bare metal, allowing you to fully customize to suit your processing needs.
The Tenstorrent developer group hosts events for developers of all stack levels who are interested in using their open source software, whether you're a low-level kernel developer or an AI engineer looking to accelerate training and inference. You don't need to own any Tenstorrent hardware to get started.
View the Tenstorrent GitHub org --> https://github.com/tenstorrent
Visit our website --> https://tenstorrent.com
Join the Tenstorrent Discord --> https://bit.ly/TT-Discord
Upcoming events (3)
See all- Tenstorrent at Generative AI Summit Silicon ValleySanta Clara Convention Center, Santa Clara, CA 95054, Santa Clara, CA
Tenstorrent will be present at the AI Accelerator Institute Generative AI Summit Silicon Valley! Come find us at our expo booth and chat with members of the Tenstorrent team.
Get the details and sign up for the summit here.
- Hackathon: Legacy Code Meets Tensor ComputeNeeds location
This hackathon is in-person at Daisytuner Headquarters, Darmstadt, Germany
View details and join hackathon --> https://compilers-and-processors.devpost.com/
Hosted by Daisytuner
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.
- Analyze and transform legacy codes using stateful dataflow multigraphs.