🌏 Travel Itinerary Backend System β€” Full Stack SDE Assignment

Created By
21471A0505a year ago
Create a backend system for managing travel itineraries with the following components: 1. Database architecture for trip itineraries and models for the same using SQLAlchemy 2. RESTful API endpoints for creating and viewing itineraries 3. MCP server that provides recommended itineraries based on duration
Overview

What is the Travel Itinerary Backend System?

The Travel Itinerary Backend System is a backend application designed to manage and recommend travel itineraries for destinations like Phuket and Krabi in Thailand, built using FastAPI and SQLAlchemy.

How to use the Travel Itinerary Backend System?

To use the system, clone the repository from GitHub, set up the environment, and run the FastAPI server to access the RESTful API endpoints for creating and viewing itineraries.

Key features of the Travel Itinerary Backend System?

  • Create detailed travel itineraries with a day-wise breakdown.
  • View all existing itineraries.
  • Get AI-free recommended itineraries based on the number of nights.
  • Support for hotel stays, transfers, and daily activities.

Use cases of the Travel Itinerary Backend System?

  1. Planning trips to Thailand with detailed itineraries.
  2. Managing travel plans for groups or families.
  3. Providing recommendations for activities and accommodations based on user preferences.

FAQ from the Travel Itinerary Backend System?

  • Can I customize my itinerary?

Yes! You can create detailed itineraries tailored to your travel preferences.

  • Is the system free to use?

Yes! The backend system is open-source and free to use.

  • What technologies are used in this project?

The project is built using Python, FastAPI, SQLAlchemy, and SQLite for local development.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
21471A0505
Star
0
Language
Python
License
-

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