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Most #AI training happens on centralized infrastructure, but $RENDER Network offers a different path. Its offline rendering model supports tasks that don't require real-time results, paving the way for new AI inference and training possibilities.

122,725 次观看 • 1 年前 •via X (Twitter)

10 条评论

Grayscale 的头像
Grayscale1 年前

Watch the $RENDER Deeper Dive 👇

⭕️Toby⭕️ 的头像
⭕️Toby⭕️1 年前

$RENDER is king

⭕ 𝐀𝐥𝐞𝐣𝐚𝐧𝐝𝐫𝐚 🇵🇸 的头像
⭕ 𝐀𝐥𝐞𝐣𝐚𝐧𝐝𝐫𝐚 🇵🇸1 年前

$RENDER $100 in 3 months

MINopoly 的头像
MINopoly1 年前

$RENDER

THORsoldier⚡️⭕️ 的头像
THORsoldier⚡️⭕️1 年前

🔥

da Silva 🇦🇺 的头像
da Silva 🇦🇺1 年前

Nice $RENDER

Colifax56 的头像
Colifax561 年前

Cool

TacticalRNDR ⭕️ 的头像
TacticalRNDR ⭕️1 年前

$RENDER

STNLY ⭕️ 的头像
STNLY ⭕️1 年前

$RENDER <3

Steffen Dahmen 的头像
Steffen Dahmen1 年前

$render

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