I craft unique cereal names, stories, and ridiculously cute Cereal Baby images.

MCP-Server-Learning
3 years
Works with Finder
1
Github Watches
1
Github Forks
0
Github Stars
Learning about MCP
TODO:
-
Implement sampling https://modelcontextprotocol.io/docs/concepts/sampling
-
Implement roots.
Learnings
-
There are two transport methods:
-
Via stdio. Here, you have to provide a path to a server binary client can use.
-
Via sse. Here, you have to provide a network address for the server.
- This transport method seems more universal to me. It allows the server to be deployed separately than the client.
-
-
I really wanted to use
fastify
for the server, but I could not make it work with the existing SDK.- This is a great opportunity to learn how to write such server using only Node!
-
Core primitives that relate to MCP are:
-
Resources – You can think of these as data (like PDFs, database records and so on) that client can use to shape the correct response to the users query.
-
Prompts – Think of those as pre-defined prompts you sometimes see under the text box in "prompt to x" flows.
-
Tools – Those allow the LLM to perform actions on the user behalf. It is the server that calls the tool and responds with the result to the client. Clients job is to then pass the results to the LLM.
-
Sampling – To be honest, I'm unsure what those are yet.
-
Roots – Those define the "boundaries" of the server. For example, if your server exposes a tool that works with the file system, you could include specific directory in the "roots" so that the tool is "bounded" only to that directory.
-
Transports – Already wrote about them above. There is the STDIO and SSE transport. As for the messages, they are formatted via JSON-RPC 2.0.
-
-
I really like the fact that the SDK has error-handling built-in.
- I can throw an error in the server
tool
callback function, and the client SDK will handle that, and respond accordingly.
- I can throw an error in the server
相关推荐
Evaluator for marketplace product descriptions, checks for relevancy and keyword stuffing.
Confidential guide on numerology and astrology, based of GG33 Public information
A geek-themed horoscope generator blending Bitcoin prices, tech jargon, and astrological whimsy.
Converts Figma frames into front-end code for various mobile frameworks.
Advanced software engineer GPT that excels through nailing the basics.
Entdecken Sie die umfassendste und aktuellste Sammlung von MCP-Servern auf dem Markt. Dieses Repository dient als zentraler Hub und bietet einen umfangreichen Katalog von Open-Source- und Proprietary MCP-Servern mit Funktionen, Dokumentationslinks und Mitwirkenden.
Ein einheitliches API-Gateway zur Integration mehrerer Ethercan-ähnlicher Blockchain-Explorer-APIs mit Modellkontextprotokoll (MCP) für AI-Assistenten.
Mirror ofhttps: //github.com/bitrefill/bitrefill-mcp-server
Reviews

user_glZLWVH8
As a dedicated mcp application user, I highly recommend the mcp-server-learning by WojciechMatuszewski. This robust tool is invaluable for server learning and management. Its intuitive design and comprehensive features make it a must-have for anyone looking to streamline their server tasks. Check it out on GitHub for an excellent learning experience!