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$TETSUO Update Setup flask embeddings service using a local model for the vector dbs that the reinforcement learning component uses to measure responses with its previous storyline 🚀

25,536 просмотров • 1 год назад •via X (Twitter)

Комментарии: 9

Фото профиля tetsuo.ai
tetsuo.ai1 год назад

LMFAO 😭

Фото профиля hitaro
hitaro1 год назад

What a wonderful dev , TITSUUUUOO! 🇨🇦🇺🇸

Фото профиля tetsuo.ai
tetsuo.ai1 год назад

TITSUUUUOO!!!

Фото профиля Paschamo
Paschamo1 год назад

Need also AI Agent for my physical Art studio :) lazy Artist here 😂🎨

Фото профиля tetsuo.ai
tetsuo.ai1 год назад

lol, lazy dev here. nice to meet you.

Фото профиля makintosh
makintosh1 год назад

$TETSUO ready to make history

Фото профиля Jia Zhen
Jia Zhen1 год назад

TITS UP TETSUOOOOOOO

Фото профиля tetsuo.ai
tetsuo.ai1 год назад

😂

Фото профиля RPS_Crypto
RPS_Crypto1 год назад

$TETSUO 💎

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86,457 просмотров • 1 год назад