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Built an open source MCP server for that allows Anthropic Claude to control the @PlayCanvas Editor. Just gave it the prompt "Build me a fun FPS level" and it just did it! This is a game-changer! 🤯

30,788 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Max M
Max M1 год назад

@AnthropicAI @playcanvas With use of Web Speech API (SpeechRecognition), you can control it with your voice!

Фото профиля Will Eastcott
Will Eastcott1 год назад

@AnthropicAI @playcanvas Especially cool for immersive.

Фото профиля RedDeer.Games
RedDeer.Games1 год назад

We can't spill the beans about the release date of Maki: Paw of Fury, but make no mistake, things are happening! 🫘😎 We remind you that the game is coming to #NintendoSwitch and #PC #Steam and you can play the demo on PC, here ⤵️ >>> Have a great day!

Фото профиля Victor Mustin
Victor Mustin1 год назад

@AnthropicAI @playcanvas neat!

Фото профиля I▲N CURTIS
I▲N CURTIS1 год назад

@AnthropicAI @playcanvas Yoooo

Фото профиля Kavii Suri
Kavii Suri1 год назад

@AnthropicAI @playcanvas This is amazing! is it open source?

Фото профиля Will Eastcott
Will Eastcott1 год назад

@AnthropicAI @playcanvas Of course!

Фото профиля jin
jin1 год назад

@AnthropicAI @playcanvas This is extra cool by how the Playcanvas editor also has real-time collaboration, there hasn't been many examples of ppl vibe coding stuff together in such a way - usually it's single player 😮

Фото профиля Will Eastcott
Will Eastcott1 год назад

@AnthropicAI @playcanvas I'm really excited to explore what this means for collaboration. Expect some follow up tweets from me on that... 🙂

Фото профиля Sebastian
Sebastian1 год назад

@AnthropicAI @playcanvas legend

Фото профиля Mohsen Rabieai
Mohsen Rabieai1 год назад

@AnthropicAI @playcanvas OMG, it's truly amazing!

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