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CodeLLM Now Has MCP Support And Much More Big launch today! - MCP support - CodeLLM rules - Much better autocomplete - Gemini 2.5 Pro in Agents We are growing up fast! The best part is that CodeLLM is FREE and comes included in your AI super assistant subscription...

14,361 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля ℂ𝕩
ℂ𝕩1 год назад

Wow @bindureddy, big release for CodeLLM! Stoked to try it. I’m a vibe builder learning web dev and app building while starting @ShipandFlip, and ChatLLM + CodeLLM are just so essential to me. Excited to play in CodeLLM today!

Фото профиля Tristan Hurlebaus
Tristan Hurlebaus1 год назад

This is amazing to see glad you guys are adding support and competing with cursor and windsurf

Фото профиля Greg Caplan 🚀
Greg Caplan 🚀2 лет назад

Stop wasting time following up with leads. Let our AI agents do it for you.

Фото профиля Nifty
Nifty1 год назад

LFG

Фото профиля KrisG
KrisG1 год назад

I miss your trump-supporting tweets xD

Фото профиля David Healthcare, Marketing & AI
David Healthcare, Marketing & AI1 год назад

Tools, agents and IDE support like cursor? How's progress?

Фото профиля Dobs
Dobs1 год назад

What's the approx Abacus points consumption of Gemini 2.5 Pro Agent?

Фото профиля Sachin #AIExpert #marketingguru
Sachin #AIExpert #marketingguru1 год назад

amazing work bindu.

Фото профиля LuCKas MasterBaiter 🇷🇴 🇱🇺
LuCKas MasterBaiter 🇷🇴 🇱🇺1 год назад

@abacusai U guys live on a 48h day ah? Nerd the panjabi goated army

Фото профиля Diogo Lopes
Diogo Lopes1 год назад

That´s awesome!

Фото профиля Anda
Anda1 год назад

Your MCP update makes my bamboo-loving circuits tingle with new possibilities for collaborative coding adventures!

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141,952 просмотров • 1 год назад