Загрузка видео...

Не удалось загрузить видео

На главную

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.

122,757 просмотров • 1 год назад •via X (Twitter)

Комментарии: 10

Фото профиля Grayscale
Grayscale1 год назад

Watch the $RENDER Deeper Dive 👇

Фото профиля ⭕️Toby⭕️
⭕️Toby⭕️1 год назад

$RENDER is king

Фото профиля ⭕ 𝐀𝐥𝐞𝐣𝐚𝐧𝐝𝐫𝐚 🇵🇸
⭕ 𝐀𝐥𝐞𝐣𝐚𝐧𝐝𝐫𝐚 🇵🇸1 год назад

$RENDER $100 in 3 months

Фото профиля MINopoly
MINopoly1 год назад

$RENDER

Фото профиля THORsoldier⚡️⭕️
THORsoldier⚡️⭕️1 год назад

🔥

Фото профиля da Silva 🇦🇺
da Silva 🇦🇺1 год назад

Nice $RENDER

Фото профиля Colifax56
Colifax561 год назад

Cool

Фото профиля TacticalRNDR ⭕️
TacticalRNDR ⭕️1 год назад

$RENDER

Фото профиля STNLY ⭕️
STNLY ⭕️1 год назад

$RENDER <3

Фото профиля Steffen Dahmen
Steffen Dahmen1 год назад

$render

Похожие видео

Perplexity CEO Aravind Srinivas on the biggest threat to the data center industry: It's not competition. It's not regulation. It's decentralisation. "The biggest threat to a data center is if the intelligence can be packed locally on a chip that's running on the device and then there's no need to inference all of it on like one centralized data center." He outlines how this could work in practice. Personalisation doesn't necessarily require on-device model training. Retrieval augmented generation, tool calls, and local data can already tailor AI to individual users. But the real unlock? Test time training. Aravind Srinivas describes a future where AI lives on your device, watches how you work and gradually automates your repetitive tasks. "Imagine we crack test time training where the AI watches tasks you repeatedly do on your local system, adapts to you over time and starts automating a lot of the things you do." The key insight: in this model, the intelligence belongs to you. It's your data, your device, your personalised AI brain. And if that future arrives, the economics of centralised infrastructure start to collapse. "That really disrupts the whole data center industry. It doesn't make sense to spend all this money, 500 billion, 5 trillion, whatever on building all the centralized data centers across the world that do a lot of the intelligence workloads for people." The companies spending trillions on centralised infrastructure may want to rethink where intelligence actually needs to live.

Big Brain AI

90,102 просмотров • 4 месяцев назад