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Tether Data, AI model training platform preview. This PaaS will be available to any company interested in (pre-)training own models. Bonus, at the core of this platform we're leveraging Holepunch's tech for all data-structures to make training and models highly-resilient and unstoppable. Soon available via Northern Data Group ,...

28,092 Aufrufe • vor 1 Jahr •via X (Twitter)

8 Kommentare

Profilbild von Revive ꧁IP꧂
Revive ꧁IP꧂vor 1 Jahr

Did u just launched a pumpfun token?

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ARK Electronicsvor 1 Jahr

Excited about the latest tech for your drone product? Our NDAA-compliant, US-made flight controllers are designed to accelerate your path to market and provide a solid platform for developing your autonomous software. Check them out! #Drones #UAV #UAS #Robotics #MadeInUSA

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Luminvor 1 Jahr

Tether’s AI Play – The Next Great Decentralization Move? 🧵 1/ Tether is stepping into AI model training. Not just any AI—unstoppable, decentralized, and highly resilient. This isn’t just about AI. This is about who owns intelligence in the next era.

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Eleftheriosvor 1 Jahr

we should talk about some of the things we have in the works with @radicle for local first code collaboration and agent development. there is a good synergy.

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AldoBalto | AB marketingvor 1 Jahr

Unstoppable for real! 👏🏻👏🏻 Should we start expecting a new product every month? 😁

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rufus.vor 1 Jahr

hey @paoloardoino follow to dm 🫡

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Adam TechGrowthvor 1 Jahr

Will Tether Data's use of Holepunch's tech lead to significant improvements in model resilience?

Profilbild von Dontspam Dontjunk
Dontspam Dontjunkvor 1 Jahr

Thank you! PS. I really enjoyed the Bitcoin Lugano a few months back! Great show! Great speech!

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