@rohanpaul_ai: The big problem with AI agents is that they still need custom integration work before they can do anything useful, and …
Summary
Membrane offers a single skill that connects AI agents to over 100,000 APIs, eliminating the need for custom integration work.
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Cached at: 05/19/26, 02:49 PM
The big problem with AI agents is that they still need custom integration work before they can do anything useful, and Membrane is trying to collapse that work into a single skill for 100,000+ APIs that an agent can call from one command.
So Claude Code, ChatGPT, Cursor, Replit, and other agents can call external APIs without every team rebuilding the same integration logic.
Membrane (@membrane_ai): We built one skill that connects any agent to any API.
Stripe. NASA Mars Rover. The ISS tracker. The Evil Insult Generator. All connected instantly.
Drop the most niche API you can find in the replies. We’ll pick the surprising ones, show them working – and give you $25 in free
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