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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 просмотров • 1 год назад •via X (Twitter)

Комментарии: 8

Фото профиля Revive ꧁IP꧂
Revive ꧁IP꧂1 год назад

Did u just launched a pumpfun token?

Фото профиля ARK Electronics
ARK Electronics2 лет назад

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

Фото профиля Lumin
Lumin1 год назад

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.

Фото профиля Eleftherios
Eleftherios1 год назад

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.

Фото профиля AldoBalto | AB marketing
AldoBalto | AB marketing1 год назад

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

Фото профиля rufus.
rufus.1 год назад

hey @paoloardoino follow to dm 🫡

Фото профиля Adam TechGrowth
Adam TechGrowth1 год назад

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

Фото профиля Dontspam Dontjunk
Dontspam Dontjunk1 год назад

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

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