Skip to content

Latest commit

 

History

History
47 lines (30 loc) · 3.31 KB

README.md

File metadata and controls

47 lines (30 loc) · 3.31 KB

Delivery Management System (DMS)

Introduction

The Delivery Management System (DMS) is a sophisticated routing and package management application designed for the Western Governors University Parcel Service (WGUPS). This project showcases a practical application of algorithms and data structures to address real-world problems in package delivery logistics. The DMS optimizes delivery routes and ensures timely distribution of packages, addressing the challenge of maintaining efficiency in daily local deliveries (DLD).

Key Features

  • Efficient Routing Algorithm: Implements the Nearest Neighbor algorithm for optimal route planning under specific operational constraints.
  • Hash Table Implementation: Custom-built hash table for fast access and management of package data.
  • Scalable Solution: Designed to be adaptable for various cities, catering to a broad operational scope.
  • User Interface: Provides an intuitive interface for monitoring package delivery statuses and total mileage.
  • Real-Time Adjustments: Capable of handling dynamic changes in package information and routing.

Technical Overview

  • Language & Libraries: Developed in Python, leveraging its standard libraries for handling data operations.
  • Data Structures: Utilizes hash tables, custom classes, and lists to manage and process delivery data efficiently.
  • Algorithms: Employs the Nearest Neighbor algorithm for routing, tailored for real-time decision-making and local optimization.
  • Simulation Capabilities: Simulates the delivery process, providing insights into the operational aspects of package delivery.

Installation & Usage

  • Installation: Download and extract the contents of the project repository. No additional installation required, as the project utilizes Python's standard libraries.

  • Running the Program: Execute main.py to launch the application. The program simulates the delivery process based on the provided data sets and operational parameters.

    Screenshot1 Screenshot2

Highlights & Strengths

  • Operational Efficiency: Demonstrates an efficient approach to managing and delivering packages within the constraints of limited resources.
  • Adaptability & Scalability: The design is adaptable for use in different geographical locations, showing potential for scalability.
  • Algorithmic Choice: The choice of the Nearest Neighbor algorithm aligns with the need for quick and locally optimized decision-making in a real-world delivery scenario.

Future Enhancements

  • Enhanced User Interface: Development of a more sophisticated UI for real-time tracking and updates.
  • Machine Learning Integration: Implementation of predictive analytics for route optimization and delivery time estimation.
  • API Integration: Incorporating real-time data from external sources for dynamic route adjustments.

Additional Information

For more detailed information about the project's implementation, including the specifics of the algorithmic approach, data structure utilization, and potential alternatives, please refer to the accompanying documentation.

Author

Eric Jacobs - A skilled software developer with expertise in creating efficient and scalable solutions for real-world applications.