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We’re excited to launch OpenMemory MCP, a private memory for MCP-compatible clients powered by mem0 Today, most AI assistants and dev tools operate without memory. You plan your roadmap in Claude, implement tasks in Cursor, but none of them know what the other did. Each tool operates in isolation,...

471,767 просмотров • 1 год назад •via X (Twitter)

Комментарии: 11

Фото профиля Taranjeet
Taranjeet1 год назад

link -

Фото профиля MightyBot
MightyBot1 год назад

🧠 Unified Search. Smarter Meetings. Effortless CRM. MightyBot is your AI agent platform for seamless workflows—record meetings, automate CRM updates, and find answers across apps in seconds. 🌟 Focus on what matters. We'll handle the grind.

Фото профиля Craig Dennis
Craig Dennis1 год назад

@mem0ai This is so cool and very much needed! Would love to help get this hosted on @CloudflareDev too if you are interested!

Фото профиля Taranjeet
Taranjeet1 год назад

@mem0ai @CloudflareDev Hey thanks. Dmed you.

Фото профиля Kumail Nanji
Kumail Nanji1 год назад

@mem0ai banger after banger, keep up the great momentum taranjeet!

Фото профиля Yohei
Yohei1 год назад

@mem0ai Oooh looks clean, nice work

Фото профиля Csaba Kissi
Csaba Kissi1 год назад

@mem0ai MCP is the future. It’s great to have this implemented.

Фото профиля elvis
elvis1 год назад

@mem0ai Just heard about this from your team. This looks super interesting and quite useful to improve experience with some of the AI tools like Windsurf. Will take this for a spin soon.

Фото профиля Farhan
Farhan1 год назад

@mem0ai This fixes one of the biggest headaches in using multiple AI tools. Having shared memory makes everything way smoother.

Фото профиля Meera
Meera1 год назад

@mem0ai This is actually a game-changer for AI workflows.

Фото профиля AshutoshShrivastava
AshutoshShrivastava1 год назад

@mem0ai Man this is d0pe, congratulations on the launch and thanks for opensourcing it.

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