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Bring Bitcoin and Lightning Network capabilities to your favorite LLM client through the new ZBD ZBD MCP Server 🎉 Useful for creating all kinds of workflows and automations with your favorite MCP-compatible hosts such as Anthropic's Claude or Cursor Check the comment below on how to set it up...

12,766 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля André Neves
André Neves1 год назад

To set up the ZBD MCP Server to allow Claude and @cursor_ai to leverage it and make Bitcoin and Lightning payments just follow the video below:

Фото профиля André Neves
André Neves1 год назад

PRs, ideas, and contributions are welcome. An MCP server is just the start of @zebedeeio ZBD bringing Bitcoin and Payment Processing powers to LLMs Stay tuned for more updates. Feedback welcome!

Фото профиля MailerSend
MailerSend1 год назад

Send important transactional emails with confidence knowing you'll reach customers' inboxes. Easy for devs to integrate with intuitive features that enable the rest of the team to collaborate. Try it out—no CC needed!

Фото профиля James Viggiano 🇳🇿
James Viggiano 🇳🇿1 год назад

@zebedeeio @AnthropicAI @cursor_ai Letting an AI spend sats feels a bit unnerving, but the possibilities are exciting! This opens the door to some seriously creative use cases. Looking forward to seeing what people build with it!

Фото профиля André Neves
André Neves1 год назад

@zebedeeio @AnthropicAI @cursor_ai 100% with you. It's wild we live in this timeline. I would definitely recommend a separate ZBD project and wallet / API key to test and work on any of this.

Фото профиля João Almeida — ₿/acc
João Almeida — ₿/acc1 год назад

@zebedeeio @AnthropicAI @cursor_ai We need Auth + SSE for this to be viable first

Фото профиля André Neves
André Neves1 год назад

@zebedeeio @AnthropicAI @cursor_ai Yup agree. Trying to work on this, uses SSE but its not fault proof. Still fun as a local internal-use tool.

Фото профиля Christian Moss
Christian Moss1 год назад

@zebedeeio @AnthropicAI @cursor_ai Wondered what I came 10th place in lol

Фото профиля zach
zach1 год назад

@zebedeeio @AnthropicAI @cursor_ai sick

Фото профиля BtcPins
BtcPins1 год назад

@zebedeeio @AnthropicAI @cursor_ai

Фото профиля EVERYTHING⚡
EVERYTHING⚡1 год назад

@zebedeeio @AnthropicAI @cursor_ai Nice!! When ZBD nostr Data Vending Machine?

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