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is now both MCP server creator and MCP server tester (client). You can now immediately test the generated MCP server from within MCPify itself. Using Cloudflare Developers agents-sdk to do this automatically.

27,747 views • 1 year ago •via X (Twitter)

5 Comments

justboulatbek's profile picture
justboulatbek1 year ago

@CloudflareDev how do you calculate progress bar changes? does fetch stream percentage of work done or time left?

Bhanu Teja P's profile picture
Bhanu Teja P1 year ago

@CloudflareDev Progress bar is a simulation, not real.

RTTS's profile picture
RTTS1 year ago

API testing of interfaces is critical to determine if they meet requirements for functionality, reliability, performance, and security. Check out RTTS - the automated testing experts since 1996. #API #testautomation #integrationtest

Herman's profile picture
Herman1 year ago

@CloudflareDev Is there a way to manually edit the tools after they've been generated? Or you have to use the AI chat to make changes?

Bhanu Teja P's profile picture
Bhanu Teja P1 year ago

@CloudflareDev Right now, the only way is to chat with AI.

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