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Cline can now create and add tools to himself using MCP! Try asking him to “add a tool that pulls the latest npm docs” - Cline handles everything from creating the MCP server to installing it *into himself*, ready for future tasks. Servers are saved in ~/Documents/Cline/MCP so you...

61,730 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Matthew Sabia
Matthew Sabia1 год назад

The king has returned 👑

Фото профиля glueckkanja
glueckkanja4 лет назад

Are you searching for a simple way to deploy device certificates with #Intune? Check out SCEPman at

Фото профиля David Govea
David Govea1 год назад

We gotta get Cline on the clients list!

Фото профиля Noledge
Noledge1 год назад

Awesome! And please add the whole rollback (file changes + messages rollback) functionality! Thanks

Фото профиля ヘブン
ヘブン1 год назад

That’s an incredible feature! What a fantastic abstraction of MCP!

Фото профиля Charlie Q.🙃
Charlie Q.🙃1 год назад

Hope you were able to assemble a good team around you. Claude Desktop ssh'ing (via custom MCP server created by Cline) through to my Wordpress files would be incredible. Now i'm using Github as a middleman and that's pretty good as is

Фото профиля Victor
Victor1 год назад

Thank you for new update has this been released on github? Are you still active on the Discord channel?

Фото профиля Philip Fung
Philip Fung1 год назад

Sick demo

Фото профиля dazeb
dazeb1 год назад

This is insane lol

Фото профиля Matt
Matt1 год назад

Incredible! Amazing update!

Фото профиля Jarad DeLorenzo
Jarad DeLorenzo1 год назад

wtffff! No doubt, we have won the Time-To-Be-Alive lottery. When I see another "is this AI bubble about to burst?!" headline I will patiently explain to myself that we live in clownworld, populated by clowns. The sad ones, not the fun ones.

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142,010 просмотров • 1 год назад