Travel Itinerary Backend

Created By
Shirisha-16a year ago
A backend system built with FastAPI and SQLAlchemy to manage travel itineraries, including hotel stays, transfers, activities, and day-wise plans. Also includes a recommendation endpoint via an MCP server.
Overview

What is Travel Itinerary Backend?

Travel Itinerary Backend is a backend system designed to manage travel itineraries, including hotel stays, transfers, activities, and day-wise plans, built using FastAPI and SQLAlchemy.

How to use Travel Itinerary Backend?

To use the Travel Itinerary Backend, clone the repository, set up a virtual environment, install the required dependencies, and run the server. Optionally, you can seed sample data for specific locations.

Key features of Travel Itinerary Backend?

  • Create and view trip itineraries
  • Manage day-wise hotel accommodations, transfers, and activities
  • Get recommended itineraries based on the number of nights
  • Sample data seeded for popular destinations like Phuket and Krabi

Use cases of Travel Itinerary Backend?

  1. Planning and managing travel itineraries for vacations.
  2. Providing recommendations for travel activities and accommodations.
  3. Integrating with front-end applications to display travel plans.

FAQ from Travel Itinerary Backend?

  • Can I customize the itineraries?

Yes! You can create and modify itineraries as per your travel preferences.

  • Is there sample data available?

Yes! Sample data for Phuket and Krabi is included to help you get started.

  • What technologies are used in this project?

The project uses FastAPI for the API framework, SQLAlchemy for database modeling, and SQLite as the database.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
Shirisha-16
Star
0
Language
Python
License
-

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