Skip to main content
Glama
wickedseer

ShipSmart MCP Server

by wickedseer

🚚 ShipSmart MCP Server

ShipSmart is a sample Logistics AI Backend that demonstrates how to expose an existing FastAPI application as an MCP (Model Context Protocol) Server.

The project simulates a logistics company that manages customer orders, shipments, warehouses, and package tracking. A FastAPI backend exposes REST APIs, while an MCP server wraps those APIs so AI assistants (such as Claude Desktop, Cursor, or MCP Inspector) can interact with the logistics system using standardized MCP tools.

This project demonstrates how to build AI-ready applications without modifying existing business logic.

🏗️ Architecture

Architecture diagram

The MCP server does not access the database directly. Instead, it communicates with the FastAPI backend over HTTP, demonstrating how existing applications can be made AI-accessible without changing their internal architecture.

✨ Features

  • FastAPI REST backend

  • SQLite database using SQLAlchemy ORM

  • MCP Server built using FastMCP

  • AI-accessible logistics operations

  • Sample logistics dataset

  • Layered architecture (API → Services → Database)

  • MCP Tools

  • MCP Resources

  • MCP Prompt

📁 Project Structure

logistics-mcp-server/
│
├── app/
│ ├── api/                      # FastAPI routes
│ ├── database/                 # Database connection, models and seed script
│ ├── mcp_server/
│ │ ├── api_client.py           # Calls FastAPI endpoints
│ │ ├── server_v1.py            # MCP Server using official MCP SDK
│ │ └── server_v2.py            # MCP Server using FastMCP package
│ ├── schemas/                  # Pydantic models
│ └── services/                 # Business logic
│
├── client/
│ └── streamlit_app.py          # Streamlit client application connecting to MCP Server
│
├── requirements.txt
├── .env
└── README.md

🛠 MCP Tools

The following tools are exposed through the MCP Server.

Tool

Description

get_order_details

Retrieve complete order information

search_orders

Search orders by customer, city or status

track_package

Retrieve shipment tracking details

cancel_order

Cancel an order

reschedule_delivery

Update the estimated delivery date

find_warehouse

Find warehouse serving a city

📄 MCP Resources

The project also exposes static resources.

Resource

Description

company://shipping-policy

Company shipping policy

company://supported-couriers

Supported courier partners

company://warehouse-locations

Warehouse locations

💬 MCP Prompt

Prompt

Description

summarize_tracking

Generates a professional customer-friendly shipment update from tracking information

🗄 Database

The project uses SQLite for simplicity.

Main entities:

  • Customer

  • Order

  • OrderItem

  • Shipment

  • TrackingHistory

  • Warehouse

🚀 Running the Project

1. Clone the repository

git clone <repository-url>
cd logistics-mcp-server

Related MCP server: Logistics AI MCP

2. Create a virtual environment

Windows

python -m venv .venv
.venv\Scripts\activate

Linux / macOS

python3 -m venv .venv
source .venv/bin/activate

3. Install dependencies

pip install -r requirements.txt

4. Create the database

python -m app.database.create_db

5. Seed sample data

python -m app.database.seed

This populates the database with sample:

  • Customers

  • Orders

  • Shipments

  • Tracking history

  • Warehouses

6. Start the FastAPI server

uvicorn app.api.main:app --reload

Swagger UI

http://localhost:8000/docs

7. Start the MCP Server

ShipSmart MCP Server contains two implementations:

MCP Server Implementations

File

Implementation

Import Used

Usage

server_v1.py

Official MCP SDK FastMCP

from mcp.server.fastmcp import FastMCP

Basic MCP server implementation

server_v2.py

FastMCP package

from fastmcp import FastMCP

Used with the Streamlit + Gemini client

The Streamlit application connects to server_v2.py.

Running servers

To start the MCP server:

python -m app.mcp_server.server_v1
#OR
python -m app.mcp_server.server_v2

Testing MCP Tools

You can test the MCP servers independently using the MCP Inspector:

mcp dev app/mcp_server/sever_v1.py
#OR
fastmcp dev inspector app/mcp_server/server_v2.py

The MCP Inspector allows you to test the available tools and verify that the server is exposing the expected MCP functionality.

8. Start the Streamlit Client

The Streamlit application acts as an MCP client and connects to server_v2.py.

Run:

streamlit run client/streamlit_app.py

💡 Example Questions for an AI Assistant

Once connected to the MCP Server, an AI assistant can answer questions like:

  • Where is my order ORD-1001?

  • Show me the tracking history for ORD-1002.

  • Cancel order ORD-1003.

  • Reschedule delivery for ORD-1004 to next Monday.

  • Find the warehouse responsible for Pune.

  • Search all delivered orders for Alice.

🧠 Why MCP?

Without MCP, every AI application would need custom integration code for each backend service.

MCP provides a standard interface that allows AI assistants to discover and invoke application capabilities through Tools, Resources, and Prompts.

This enables existing business applications to become AI-accessible with minimal changes.

🛠 Tech Stack

  • Python

  • FastAPI

  • SQLAlchemy

  • SQLite

  • Pydantic

  • HTTPX

  • FastMCP (Model Context Protocol)

  • Faker

F
license - not found
-
quality - not tested
C
maintenance

Maintenance

Maintainers
Response time
Release cycle
Releases (12mo)
Commit activity

Resources

Unclaimed servers have limited discoverability.

Looking for Admin?

If you are the server author, to access and configure the admin panel.

Latest Blog Posts

MCP directory API

We provide all the information about MCP servers via our MCP API.

curl -X GET 'https://glama.ai/api/mcp/v1/servers/wickedseer/logistics-mcp-server'

If you have feedback or need assistance with the MCP directory API, please join our Discord server