Azure OpenAI MCP Example
This project showcases how to use the MCP protocol with Azure OpenAI. It provides a simple example to interact with OpenAI's API seamlessly via an MCP server and client.
manekinekko
README
Azure OpenAI MCP Example
This project showcases how to use the MCP protocol with OpenAI. It provides a simple example to interact with OpenAI's API seamlessly via an MCP server and client.
Getting Started
To get started with this project, follow the steps below:
Prerequisites
- Node.js (version 22 or higher)
- npm
- An OpenAI compatible endpoint:
- An OpenAI API key
- Or, if you are using Azure OpenAI, you need to have an Azure OpenAI resource and the corresponding endpoint.
Installation
-
Clone the repository:
git clone https://github.com/manekinekko/openai-mcp-example.git cd openai-mcp-example
-
Install the dependencies:
npm install
Configuration
Azure OpenAI (Keyless Authentication)
In order to use Keyless authentication, you can use the AZURE_OPENAI_ENDPOINT
environment variable in the .env
file:
AZURE_OPENAI_ENDPOINT="https://<ai-foundry-openai-project>.openai.azure.com"
OpenAI API Key
To use the OpenAI API, you need to set your OpenAI API key in the .env
file:
OPENAI_API_KEY=your_openai_api_key
Usage
-
(Optional) If you are using Azure OpenAI, please log in first using the Azure CLI command:
az login
-
Run the MCP server:
npm run start:server
-
Run the MCP client:
npm run start:client
You should see a response like the following:
{
choices: [
{
content_filter_results: [Object],
finish_reason: 'stop',
index: 0,
logprobs: null,
message: [Object]
}
],
created: 1744274007,
id: 'chatcmpl-BKhdf8LcWBezaWxDr2WDPi1uZDfZl',
model: 'gpt-4o-2024-11-20',
object: 'chat.completion',
prompt_filter_results: [ { prompt_index: 0, content_filter_results: [Object] } ],
system_fingerprint: 'fp_ee1d74bde0',
usage: {
completion_tokens: 14,
completion_tokens_details: {
accepted_prediction_tokens: 0,
audio_tokens: 0,
reasoning_tokens: 0,
rejected_prediction_tokens: 0
},
prompt_tokens: 18,
prompt_tokens_details: { audio_tokens: 0, cached_tokens: 0 },
total_tokens: 32
}
}
Final result: [Calling tool calculate_sum with args "{\"a\":2,\"b\":3}"]
The sum of 2 and 3 is **5**.
License
This project is licensed under the MIT License. See the LICENSE file for details.
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