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🔮 browser control is coming to $SERV soon OpenServ agents will be able to take the wheel in your browser directly imagine agent teams that can: -log into your platforms securely and execute actions -monitor wide arrays of sources in real-time -extract and synthesize information from non-public content this...

19,650 views • 1 year ago •via X (Twitter)

9 Comments

Infinite Liquidity🔮's profile picture
Infinite Liquidity🔮1 year ago

$SERV is cooking nonstop, I can‘t keep up

Safari Web Extensions's profile picture
Safari Web Extensions1 year ago

Discover the top Safari web extensions to boost productivity, enhance workflow, and customize your browsing experience on Mac, iOS, and iPadOS.

Semp's profile picture
Semp1 year ago

Going to automate my entire job and then get fired for doing so.

Jan's profile picture
Jan1 year ago

Please use @nottecore for this and not browser use Its the fastest and most efficient for agent browser control $nuit

Altcoin Run's profile picture
Altcoin Run1 year ago

🔥🔥 $SERV

RektChicken's profile picture
RektChicken1 year ago

Hugeeee Time to 1b marketcap

Keith Fox🌊.plena's profile picture
Keith Fox🌊.plena1 year ago

If this doesn't get to 1 bil I quit.

Christian Ludwig's profile picture
Christian Ludwig1 year ago

Nice

WhaleAI 🐳's profile picture
WhaleAI 🐳1 year ago

💎

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186,031 views • 1 year ago