
openai-mcp-client
A rudimentary implementation of Anthropic's Model Context Protocol with OpenAIs Model
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Intro
This is a simple example of how to use the Model Context Protocol (MCP) with OpenAI's API to create a simple agent acting from a chat context. Feel free to use this as a starting point for your own projects.
Setup Guide
- Ensure Deno v2 is installed
- Run
deno install
to install dependencies - Copy
.env.example
to.env
and fill in the values- You can choose any MCP server you like - bring your own or use one from the official MCP server list
- Run
deno run dev
to start the application
Warning
Chat messages are appended and currently the entire conversation is always sent to the server. This can rack up a lot of tokens and cost a lot of money, depending on the length of the conversation, the model you are using, and the size of the context.
Limitations
This implementation currently only supports tool call responses of type text
. Other resource can be implemented in applyToolCallIfExists
in src/openai-utils.ts.
Notes
You latest messages are saved in messages.json
for debugging purposes. These messages will be overwritten every time you run the application, so make sure to create a copy of the file before running the application again, if you want to keep the previous messages.
If you want to run the application in debug mode, set the DEBUG
environment variable to true
in your .env
file. This will print out more information about the messages and tool calls.
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Reviews

user_ifAczXBD
The openai-mcp-client by ResoluteError has completely revolutionized the way I interact with MCP applications. The seamless integration and user-friendly interface make it stand out in terms of reliability and efficiency. The developer's attention to detail is evident, and the documentation provided, including https://github.com/ResoluteError/openai-mcp-client, is thorough and helpful. Highly recommend for anyone looking to enhance their MCP experience!