Skip to content

Xneine/DataMining

Repository files navigation

Electric Vehicle Charging Patterns Analysis

Analyzing EV charging patterns using a dataset from Kaggle, providing insights through an interactive web application built with Flask.
Explore the docs »

About The Project

This project analyzes electric vehicle (EV) charging patterns using a dataset from Kaggle. The goal is to uncover trends and patterns in EV charging behaviors, such as time of day, station usage, and user segmentation, and provide insights through an interactive web application built with Flask.

Website Functionality

A. Leaderboard Model Kendaraan Terbaik
This feature provides a leaderboard showcasing the most efficient EV models based on factors such as charging patterns, energy consumption, and more. Users can identify the most efficient models tailored to their needs.

B. Statistik Penggunaan dan Pengisian
Displays detailed usage and charging data for each vehicle model, helping users understand the performance of EV models under various conditions and charging behaviors.

C. Visualisasi Interaktif
The results are presented in tables and interactive graphs, allowing users to easily view insights and trends in EV charging behavior.

(back to top)

Built With

This section should list any major frameworks/libraries used to bootstrap your project. Leave any add-ons/plugins for the acknowledgements section. Here are a few examples.

  • Flask
  • KaggleHub
  • Pandas
  • Matplotlib
  • Seaborn
  • Scikit-learn

(back to top)

Getting Started

This is an example of how you may give instructions on setting up your project locally.
To get a local copy up and running, follow these simple example steps.

Prerequisites

This is an example of how to list things you need to use the software and how to install them.

  • Python 3.x
  • pip
pip install flask
pip install kagglehub
pip install pandas
pip install matplotlib
pip install seaborn
pip install scikit-learn

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Contributors 4

  •  
  •  
  •  
  •