This is a student data management application developed in Python and TKinter. It utilizes the TKinter pillow library to include images to buttons. I've separated TKinter elements into their own individual classes. The user can change the smilely face color for each button individually or by entire row.

Overview

Smiley Face Cube Display

Table of Contents

  • Project Description
  • Getting Started
  • Prerequisites
  • Installation & Deployment
  • Additional Documentation

Project Description

This is a TKinter GUI application developed in Python and TKinter. It utilizes the TKinter pillow library to attach images to buttons. I've separated TKinter elements into their own individual classes. The user can change the smilely face color for each button individually or by the entire row.

Click on the Image to Watch My Project in Action on YouTube

Watch my Project in Action on YouTube

Getting Started

These instructions will get you a copy of the project up and running on your local machine for development and testing purposes.

Prerequisites

This Python project uses the following external Python libraries that must be installed via Pip or via requirements.txt.

  • TKinter
  • pillow
  • random
  • Image
  • ImageTk
  • PhotoImage

Installation & Deployment

A step by step guide that will tell you how to get the development environment up and running.

Step 1: Clone the repository:

https://github.com/yohancho316/DisplaySmileyFaces.git

Step 2: Use the given command to install project dependencies via Pip:

pip install -r requirements.txt

Step 3: In terminal navigate to the project's local directory and run this command to run the application:

python3 main.py

Additional Documentation

Owner
Yohan (John) Cho
Comp Sci Student at California Lutheran University
Yohan (John) Cho
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