MCP Azure Storage Sample

Created By
MSFT-Innovation-Hub-Indiaa year ago
This repository implements an MCP (Model Context Protocol) server that exposes various functionalities on an Azure Blob Storage account. It is based on the MCP SDK from Anthropic, which can be found at:
Overview

what is MCP Azure Storage Sample?

MCP Azure Storage Sample is a project that demonstrates the implementation of the Model Context Protocol (MCP) server, which exposes various functionalities on an Azure Blob Storage account.

how to use MCP Azure Storage Sample?

To use this project, set up the MCP server and client as per the instructions in the respective README files. The server handles Azure Blob Storage operations, while the client provides an AI-powered chat interface for interaction.

key features of MCP Azure Storage Sample?

  • Implements an MCP server for Azure Blob Storage operations (list, create, delete containers/blobs, upload/download blobs).
  • Uses Microsoft Entra Managed Identity or Azure CLI for authentication.
  • Includes an AI-powered client that allows natural language interaction with Azure Blob Storage.

use cases of MCP Azure Storage Sample?

  1. Managing Azure Blob Storage containers and blobs through a server interface.
  2. Interacting with Azure Blob Storage using natural language queries via the AI client.
  3. Integrating with MCP-compatible applications for enhanced storage management.

FAQ from MCP Azure Storage Sample?

  • What is the Model Context Protocol (MCP)?

MCP is a protocol designed for managing context in applications, allowing for better integration and interaction with various services.

  • How do I authenticate with the MCP server?

You can authenticate using Microsoft Entra Managed Identity or Azure CLI.

  • Is there a client available for interacting with the MCP server?

Yes, there is an MCP Client AI Assistant that provides a chat interface for easy interaction with Azure Blob Storage.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
MSFT-Innovation-Hub-India
Star
1
Language
Python
License
-

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