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When DeepSeek V4 and R2? (sh.itjust.works)
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[-] Eyekaytee@aussie.zone 1 points 1 day ago

The most surprising thing about this image is that Grok is on it, they started way behind the 8ball and have caught up

[-] pepperfree@sh.itjust.works 1 points 1 day ago
[-] Eyekaytee@aussie.zone 0 points 1 day ago

yeah i hate musk but the fact grok was launched in nov 2023 years behind the competition and has caught up is shocking

[-] pepperfree@sh.itjust.works 3 points 1 day ago

They got the whole Twitter database. It's kinda the same with Gemini. But somehow Meta isn't catching up, maybe their llama 4 architecture isn't that stable to train.

[-] veroxii@aussie.zone 5 points 1 day ago

Or maybe Facebook data is even worse than Twitter?

[-] pepperfree@sh.itjust.works 0 points 1 day ago

Llama 3.3 was good, tho. For the multimodal, llama 4 also use llama3.2 approach where the image and text is made into single model instead using CLIP or siglip.

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this post was submitted on 10 Aug 2025
174 points (96.8% liked)

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