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Introducing the official Supabase MCP Server! Supabase MCP Server allows you to read and write to your database, create new projects, apply migrations, and more, right from your favorite AI tools! You can start using them in Cursor or Windsurf today!

193,141 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Supabase
Supabase1 год назад

Blog post: YouTube:

Фото профиля Supabase
Supabase1 год назад

Join us to talk about it with @ggrdson @kiwicopple @CraigCannon @yuricodesbot

Фото профиля Netwrix
Netwrix3 лет назад

Get your hands on this free Powershell ebook and take the first step towards automating your daily tasks! Learn the basics, common administrative tasks, and scheduling scripts with ease. May the PowerShell be with you!

Фото профиля Tristan Rhodes
Tristan Rhodes1 год назад

You did it! You exceeded my expectations and saved the most important feature for last. Thank you for this.

Фото профиля idan.eth
idan.eth1 год назад

Prediction vibe coders will create tons of resources without understanding it cost.

Фото профиля Shen Sean Chen
Shen Sean Chen1 год назад

Super cool! Right now I'm asking Cursor to help me write down a sql to create the table I want with the RLS rules I need, and then I copy paste that to Supabase's script editor and run. I'd love to see this entire flow to be replaced by one prompt in Cursor and use Supabase MCP server to run the sql file automatically. Also, if we can query data directly and check sample data from Supabase via Cursor, that'd also save so much time.

Фото профиля CtrlAltDev
CtrlAltDev1 год назад

@cline wen ?

Фото профиля Daniel Nguyen ⚡
Daniel Nguyen ⚡1 год назад

Nice. @Bolt__AI will support Supabase MCP servers soon!

Фото профиля Alexander Zuev
Alexander Zuev1 год назад

Huge unlock! :)

Фото профиля Dani Passos
Dani Passos1 год назад

lfggggggg

Фото профиля Juan Luis
Juan Luis1 год назад

there is no excuse for not using supabase anymore 😂

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142,010 просмотров • 1 год назад