MCP Development with Gemini CLI, Python, and Azure…
    Neura MarketNeura Market/Grok
    ChatGPTChatGPTClaudeClaudeGeminiGeminiCursorCursorGrokGrokPerplexityPerplexityDeepSeekDeepSeek
    CoPilotCoPilotStable DiffusionStable DiffusionMidjourneyMidjourney
    View All Directories
    OverviewRulesPromptsMCPsAgentsGamesBlogVideosGuidesCoursesCommunityTrending
    GrokBlogMCP Development with Gemini CLI, Python, and Azure Functions
    Back to Blog
    MCP Development with Gemini CLI, Python, and Azure Functions
    googlecloudplatform

    MCP Development with Gemini CLI, Python, and Azure Functions

    xbill March 22, 2026
    0 views

    Leveraging Gemini CLI and the underlying Gemini LLM to build Model Context Protocol (MCP) AI...


    title: MCP Development with Gemini CLI, Python, and Azure Functions published: true series: Azure date: 2026-03-21 16:16:03 UTC tags: googlecloudplatform,geminicli,mcpserver,azure canonical_url: https://xbill999.medium.com/mcp-development-with-gemini-cli-python-and-azure-functions-619c8deaa12a

    Leveraging Gemini CLI and the underlying Gemini LLM to build Model Context Protocol (MCP) AI applications with Python with a local development environment deployed to the Azure Functions serverless deployment.

    What is Gemini CLI?

    The Gemini CLI is an open-source, terminal-based AI agent from Google that allows developers to interact directly with Gemini models, such as Gemini 2.5 Pro, for coding, content creation, and workflow automation. It supports file operations, shell commands, and connects to external tools via the Model Context Protocol (MCP).

    The full details on Gemini CLI are available here:

    Build, debug & deploy with AI

    Azure Functions

    Azure Functions is a serverless compute service on Microsoft Azure that allows you to run small, event-driven blocks of code (“functions”) without having to provision or manage the underlying infrastructure. You only pay for the actual compute time your code consumes.

    More details are here:

    Azure Functions Ignite 2025 Update | Microsoft Community Hub

    Why would I want Gemini CLI with Azure? Isn’t that a Google Thing?

    Yes- Gemini CLI leverages the Google Cloud console and Gemini models but it is also open source and platform agnostic. Many applications are already cross-cloud so this enables familiar tools to be run natively on Microsoft Azure.

    Node Version Management

    Gemini CLI needs a consistent, up to date version of Node. The nvm command can be used to get a standard Node environment:

    GitHub - nvm-sh/nvm: Node Version Manager - POSIX-compliant bash script to manage multiple active node.js versions

    Gemini CLI Installation

    You can then download the Gemini CLI :

    npm install -g @google/gemini-cli
    

    You will see the log messages:

    azureuser@azure-new:~/gemini-cli-azure$ npm install -g @google/gemini-cli
    npm warn deprecated [email protected]: No longer maintained. Please contact the author of the relevant native addon; alternatives are available.
    npm warn deprecated [email protected]: Use your platform's native DOMException instead
    npm warn deprecated [email protected]: Old versions of glob are not supported, and contain widely publicized security vulnerabilities, which have been fixed in the current version. Please update. Support for old versions may be purchased (at exorbitant rates) by contacting [email protected]
    

    Testing the Gemini CLI Environment

    Once you have all the tools and the correct Node.js version in place- you can test the startup of Gemini CLI. You will need to authenticate with a Key or your Google Account:

    gemini
    

    Authentication

    Several authentication options are available. To use an existing Code Assist licence — authenticate with a Google Account:

    > /auth                                                                                                                                                        
    ▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄▄
    ╭──────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╮
    │ │
    │ ? Get started │
    │ │
    │ How would you like to authenticate for this project? │
    │ │
    │ ● 1. Login with Google │
    │ 2. Use Gemini API Key │
    │ 3. Vertex AI │
    │ │
    │ (Use Enter to select) │
    │ │
    │ Terms of Services and Privacy Notice for Gemini CLI │
    │ │
    │ https://geminicli.com/docs/resources/tos-privacy/ │
    │ │
    ╰──────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╯
    

    Then set the GOOGLE_CLOUD_PROJECT to a valid project setup on the Google Cloud console:

    ~ $ export GOOGLE_CLOUD_PROJECT=comglitn
    ~ $
    

    Other options include Google Cloud API Key that can be generated directly from the Google Cloud Console.

    Installing Google Cloud Tools

    To simplify working with Google Cloud — install the Google Cloud Tools:

    https://docs.cloud.google.com/sdk/docs/install-sdk
    

    Once the installation is completed — you can verify the setup:

    william@Azure:~$ gcloud auth list
      Credentialed Accounts
    ACTIVE ACCOUNT
    * [email protected]
    

    Installing Azure Customized GEMINI.md

    A sample GitHub repo contains tools for working with Gemini CLI on Azure. This repo is available here:

    git clone https://gitHub.com/xbill9/gemini-cli-azure
    

    A sample GEMINI.md customized for the Azure environment is provided in the repo:

    This is a multi linux git repo hosted at:
    github.com/xbill9/gemini-cli-azure
    
    You are a cross platform developer working with 
    Microsoft Azure and Google Cloud
    You can use the Azure CLI :
    https://learn.microsoft.com/en-us/cli/azure/install-azure-cli
    https://learn.microsoft.com/en-us/cli/azure/
    https://learn.microsoft.com/en-us/cli/azure/reference
    https://learn.microsoft.com/en-us/cli/azure/install-azure-cli-linux?view=azure-cli-latest&pivots=apt
    ## Azure CLI Tools
    You can use the Azure CLI to manage resources across Azure Storage, Virtual Machines, and other services.
    - **List Resource Groups** : `az group list -o table`
    - **List Storage Accounts** : `az storage account list -o table`
    - **List Virtual Machines** : `az vm list -d -o table`
    ### Azure Update Script
    - `azure-update`: This script is specifically for Azure Linux environments. It updates all packages and ensures necessary libraries are installed.
    ## Automation Scripts
    This repository contains scripts for updating various Linux environments and tools:
    - `linux-update`: Detects OS (Debian/Ubuntu/Azure Linux) and runs the corresponding update scripts.
    - `azure-update`: Updates Azure Linux packages and installs necessary dependencies.
    - `debian-update`: Updates Debian/Ubuntu packages and installs `git`.
    - `gemini-update`: Updates the `@google/gemini-cli` via npm and checks versions of Node.js and Gemini.
    - `nvm-update`: Installs NVM (Node Version Manager) and Node.js version 25.
    

    Python MCP Documentation

    The official GitHub Repo provides samples and documentation for getting started:

    GitHub - modelcontextprotocol/python-sdk: The official Python SDK for Model Context Protocol servers and clients

    The most common MCP Python deployment path uses the FASTMCP library:

    Welcome to FastMCP - FastMCP

    Where do I start?

    The strategy for starting MCP development is a incremental step by step approach.

    First, the basic development environment is setup with the required system variables, and a working Gemini CLI configuration.

    Then, a minimal Hello World Style Python MCP Server was built with stdio transport. This server was validated with Gemini CLI in the local environment.

    This current setup validates the connection from Gemini CLI to the local process via MCP. The MCP client (Gemini CLI) and the Python MCP server both run in the same local environment.

    Next- the basic MCP server is extended with Gemini CLI to add several new tools in standard Python code.

    Setup the Basic Environment

    At this point you should have a working Python interpreter and a working Gemini CLI installation. The next step is to clone the GitHub samples repository with support scripts:

    cd ~
    git clone https://github.com/xbill9/gemini-cli-azure
    

    Then run init.sh from the cloned directory.

    The script will attempt to determine your shell environment and set the correct variables:

    cd gemini-cli-azure
    source init.sh
    

    If your session times out or you need to re-authenticate- you can run the set_env.sh script to reset your environment variables:

    cd gemini-cli-azure
    source set_env.sh
    

    Variables like PROJECT_ID need to be setup for use in the various build scripts- so the set_env script can be used to reset the environment if you time-out.

    Hello World with HTTP Transport

    One of the key features that the standard MCP libraries provide is abstracting various transport methods.

    The high level MCP tool implementation is the same no matter what low level transport channel/method that the MCP Client uses to connect to a MCP Server.

    The simplest transport that the SDK supports is the stdio (stdio/stdout) transport — which connects a locally running process. Both the MCP client and MCP Server must be running in the same environment.

    The HTTP transport allows the MCP Client and Server to be in the same environment or distributed over the Internet.

    The connection over HTTP will look similar to this:

    mcp.run(
            transport="http",
            host="0.0.0.0",
            port=port,
        )
    

    Running the Python Code

    First- switch the directory with the Python MCP sample code:

    xbill@penguin:~/gemini-cli-azure/mcp-functions-python-azure$ make
    pip install -r requirements.txt
    

    You can validate the final result by checking the messages:

    [03/16/26 15:55:34] INFO Starting MCP server 'hello-world-server' with transport 'http' on http://0.0.0.0:8080/mcp server.py:2618
    INFO: Started server process [24332]
    INFO: Waiting for application startup.
    {"message": "Starting worker 'penguin#24332' with the following tasks:"}
    {"message": "* trace(message: str, ...)"}
    {"message": "* fail(message: str, ...)"}
    {"message": "* sleep(seconds: float, ...)"}
    {"message": "StreamableHTTP session manager started"}
    INFO: Application startup complete.
    INFO: Uvicorn running on http://0.0.0.0:8080 (Press CTRL+C to quit)
    

    Once you have validated the server can run locally — exit with control-c.

    Then run a deployment to Azure App Service:

    xbill@penguin:~/gemini-cli-azure/mcp-appservice-python-azure$ make deploy
    Building the Docker image...
    
    Deployment complete. Visit: http://mcp-app-penguin.azurewebsites.net
    xbill@penguin:~/gemini-cli-azure/mcp-appservice-python-azure
    

    Gemini CLI settings.json

    The default Gemini CLI settings.json has an entry for the Python source:

    {
      "mcpServers": {
        "azure-appservice-python": {
          "httpUrl": "https://mcp-app-penguin.azurewebsites.net/mcp"
        }
      }
    }
    

    Validation with Gemini CLI

    Leaver the MCP server window running. Start a new shell. Gemini CLI is restarted and the MCP connection over HTTP to the Python Code is validated, The full Gemini CLI Session will start:

    xbill@penguin:~/gemini-cli-azure/mcp-functions-python-azure$ gemini
    
      ▝▜▄ Gemini CLI v0.33.2
        ▝▜▄
       ▗▟▀ Logged in with Google /auth
      ▝▀ Gemini Code Assist Standard /upgrade
    
                                                                                                                                  ? for shortcuts 
    ──────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────
     shift+tab to accept edits 4 GEMINI.md files | 2 MCP servers
    ──────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────
     > /mcp list
    
    Configured MCP servers:
    
    🟢 azure-functions-python - Ready (1 tool)
      Tools:
      - mcp_azure-functions-python_greet ? for shortcuts
    

    And you can then connect to the MCP Server over HTTP:

    > greet Azure Functions!
    
    ✦ I will call the greet tool with "Azure Functions!" as the parameter.
    
    ╭────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╮
    │ Action Required │
    │ │
    │ ? greet (azure-functions-python MCP Server) {"param":"Azure Functions!"} │
    │ │
    │ MCP Server: azure-functions-python │
    │ Tool: greet │
    │ │
    │ MCP Tool Details: │
    │ (press Ctrl+O to expand MCP tool details) │
    │ Allow execution of MCP tool "greet" from server "azure-functions-python"? │
    │ │
    │ 1. Allow once │
    │ 2. Allow tool for this session │
    │ 3. Allow all server tools for this session │
    │ ● 4. Allow tool for all future sessions │
    │ 5. No, suggest changes (esc) │
    │ │
    ╰────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╯
    ╭────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╮
    │ ✓ greet (azure-functions-python MCP Server) {"param":"Azure functions!"} │
    │ │
    │ Hello, Azure functions!! │
    ╰────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────────╯
    ✦ The server returned the following greeting:
    
      "Hello, Azure functions!!"
    
             
    
    

    Project Review

    Finally — you can use Gemini CLI to review the project:

    ✦ My review of the mcp-functions-python-azure project is complete. This Python-based MCP server is well-architected for Azure Functions,
      utilizing FastMCP for efficient tool and resource definition and func.AsgiFunctionApp for seamless platform integration.
    
      I've highlighted several strengths:
       * Dual-Transport Support: It intelligently handles both HTTP (for Azure) and stdio (for local CLI use).
       * Robust Logging: JSON-formatted logs to stderr ensure compatibility with both Azure and MCP clients.
       * Comprehensive Automation: The Makefile effectively manages the entire lifecycle, from local linting to full Azure deployment.
    
      Overall, the project provides a solid, professional foundation for an Azure-hosted MCP server.
    
    

    Summary

    The strategy for using Python for MCP development with Gemini CLI was validated with a incremental step by step approach.

    A minimal HTTP transport MCP Server was started from Python source code and validated with Gemini CLI running as a MCP client in the same local environment. Then this solution was deployed remotely to the Azure App Service and validated with the local installation of Gemini CLI.

    This approach can be extended to more complex deployments using other MCP transports and Cloud based options.

    Tags

    googlecloudplatformgeminimcpserverazure

    Comments

    More Blog

    View all
    Skills Are the New CLIai

    Skills Are the New CLI

    Every developer tool follows the same pattern: parse flags, run logic, print output. git commit -m...

    H
    Helder Burato Berto
    Duct tape enough services together and you can cache APT packagesdocker

    Duct tape enough services together and you can cache APT packages

    APT repositories are just HTTP file servers, doesn't seem like something that should require a custom piece of software.

    D
    Devin H
    How We Use AWS CDK to Deploy OpenClaw for Enterprise Teams — API Key Management Without the Chaosopensource

    How We Use AWS CDK to Deploy OpenClaw for Enterprise Teams — API Key Management Without the Chaos

    We wanted every employee in the company to use OpenClaw — not just engineers. Product managers...

    C
    C.K.Sun
    MCP Development with Python, and Azure Fabricazurefabric

    MCP Development with Python, and Azure Fabric

    Leveraging Gemini CLI and the underlying Gemini LLM to build Model Context Protocol (MCP) AI...

    X
    xbill
    MCP Development with Python, and the Azure Container Instanceiac

    MCP Development with Python, and the Azure Container Instance

    Leveraging Gemini CLI and the underlying Gemini LLM to build Model Context Protocol (MCP) AI...

    X
    xbill
    Confident and Wrongai

    Confident and Wrong

    For a long time, I have been seeing AI in coding as something that enables me, amplifies my...

    M
    Max

    Stay up to date

    Get the latest Grok prompts, rules, and resources delivered to your inbox weekly.

    Neura Market LogoNeura Market

    Discover the best AI prompts, plugins, and resources for Grok and more.

    Content Types

    • Rules
    • Prompts
    • MCPs
    • Agents
    • Guides

    Platforms

    • ChatGPT Directory
    • Claude Directory
    • Gemini Directory
    • Cursor Directory
    • Grok Directory
    • Perplexity Directory
    • DeepSeek Directory
    • CoPilot Directory
    • Stable Diffusion Directory
    • Midjourney Directory
    • All Directories

    Resources

    • Blog
    • Documentation
    • Help Center
    • Marketplace

    Legal

    • Privacy Policy
    • Terms of Service

    © 2026 Neura Market. All rights reserved.

    |

    Not affiliated with any AI platform vendors.

    Ready-made automations for this

    Workflows from the Neura Market marketplace related to this Grok resource

    • Automate RSS Feed Creation with Datetime Functions and Webhooksn8n · $10.35 · Related topic
    • Automate Your Website Development with AI-Powered Chat Workflown8n · $6.3 · Related topic
    • Build MCP Server with Google Calendar & Custom Functionsn8n · $19.99 · Related topic
    • AI Agent Blueprint for Streamlined Website Developmentn8n · $19.99 · Related topic
    Browse all workflows