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An MCP server to create 20+ data visualizations (open-source):

85,157 просмотров • 11 месяцев назад •via X (Twitter)

Комментарии: 8

Фото профиля Akshay 🚀
Akshay 🚀11 месяцев назад

This is super helpful! Thanks for sharing Avi! 🙌

Фото профиля Avi Chawla
Avi Chawla11 месяцев назад

Yeah, super helpful. Here's the repo:

Фото профиля TheAICoder
TheAICoder11 месяцев назад

Looks promising for building AI agents that need to show data.

Фото профиля Saad Ali
Saad Ali11 месяцев назад

who is using cursor human or ai agent

Фото профиля Saïd Aitmbarek
Saïd Aitmbarek11 месяцев назад

wow awesome idea, tons of applications visuals look like d3 would be a pleasure having you launch it on btw

Фото профиля PETER d/acc
PETER d/acc11 месяцев назад

That’s cool

Фото профиля Troy Assoignon
Troy Assoignon11 месяцев назад

Holy shit dude this is incredible.

Фото профиля Kingsley Uyi Idehen
Kingsley Uyi Idehen11 месяцев назад

Cool! Is that a stdio or remote mcp server? Do you have a link?

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