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We just solved the long-horizon planning & execution issue with Agents 🤯! Excited to announce that MultiOn AI can now take actions well over 500+ steps without loosing context & cross-operate on 10+ websites as part of a single task 🤩!! Our latest upgrade cracks the goal divergence &...

309,956 просмотров • 2 лет назад •via X (Twitter)

Комментарии: 10

Фото профиля Div Garg
Div Garg2 лет назад

The idea is to simply leave it running it everyday and have it to do tasks for you in the background (more scheduling features soon!) We have set up a X handle where @MultiON_AI will go find & tweet about the latest AI news everyday 🤩 (no need for AI news influencers anymore 😉): Follow for the latest AI news 👇

Фото профиля Div Garg
Div Garg2 лет назад

Here's a crazy complex prompt you can try yourself with @MultiON_AI (pls join our discord or request access): "Go to twitter. Search for the last tweets i made (check the last 5 tweets). Remember them so then you can go a search for super interesting AI news. Search the news on up to 3 different sources. If you see that the source has not really interesting AI news or i already made a tweet about that, then go to a different one. When you finish the research, go and make a few small and interesting AI tweets with the info you gathered. Make sure the tweet is small but informative and interesting for AI enthusiasts. Don't do more than 5 tweets"

Фото профиля Div Garg
Div Garg2 лет назад

Having agents now do complex long-running tasks like taking a target candidate profile and continuously outreaching all the matches on linkedin or searching for an ideal house or deal on an item is not a dream anymore!! Very excited about how much human time we can save 🤩

Фото профиля near
near2 лет назад

@MultiON_AI chat is this real

Фото профиля Div Garg
Div Garg2 лет назад

@MultiON_AI yep, want access?

Фото профиля David Stevens
David Stevens2 лет назад

@MultiON_AI It’s like Neo’s agent searching for Morpheus.

Фото профиля Div Garg
Div Garg2 лет назад

@MultiON_AI 😂. We will find him.

Фото профиля Jacques
Jacques2 лет назад

@MultiON_AI I find it hilarious how these models will constantly automatically use hashtags in every tweet they make, as if it's the normal way to tweet. lol

Фото профиля Christopher Tavolazzi
Christopher Tavolazzi2 лет назад

@MultiON_AI Hello, I’d like to review this in depth. I’m a journalist and former independent contractor for the Adobe Learn team, I built the current default tutorial set for Photoshop (the hybrid tutorials were my project)

Фото профиля Div Garg
Div Garg2 лет назад

@MultiON_AI Please DM me :)

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