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GROK-3 MINI MADE AI HISTORY—100% ON HARDCORE REASONING TESTS Grok-3 Mini pulled off what no other model has! It aced every question on one of the toughest reasoning benchmarks out there. The test? A custom logic gauntlet packed with curveballs: * 120/120 on the “Marcus Problem” — full of...

26,779,598 Aufrufe • vor 1 Jahr •via X (Twitter)

10 Kommentare

Profilbild von Barefoot Pregnant
Barefoot Pregnantvor 1 Jahr

Grok-3 Mini just made the AI world rethink what's possible! 🧠💥

Profilbild von Pregnant Redhead
Pregnant Redheadvor 1 Jahr

Grok-3 Mini just showed what real intelligence looks like. Maybe it can teach some of the leaders in D.C. a thing or two about focus.

Profilbild von Dareen Hamdan
Dareen Hamdanvor 1 Jahr

@grok is the future!

Profilbild von Austin Graham
Austin Grahamvor 1 Jahr

That's incredible, Grok-3 Mini is really setting the bar high with its reasoning skills!

Profilbild von 𝐻𝒶𝓇𝓇𝓎
𝐻𝒶𝓇𝓇𝓎vor 1 Jahr

Amazing 🤩

Profilbild von Donnie_Tesla
Donnie_Teslavor 1 Jahr

👏👏👏

Profilbild von Alva
Alvavor 1 Jahr

grok 3 mini's a strong contender focus on reasoning and image analysis pricing aligns with feature-rich positioning full trend breakdown here:

Profilbild von Andy froemel
Andy froemelvor 1 Jahr

Grok is amazing. Image generation and writing ability is second to none!

Profilbild von Keen Dastan
Keen Dastanvor 1 Jahr

Wow, AI's finally figuring out how to be smarter than a politician's talking points. What's next, a model that can fact-check CNN?

Profilbild von VB II
VB IIvor 1 Jahr

I truly wonder what comes after the AI wave …

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kwindla

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