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The project involves building a predictive model using machine learning algorithms to classify website visitors into two groups - those who are likely to make a purchase and those who are not.

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Customer Conversion Prediction using Machine Learning (CI/CD pipelines)

This repository contains code and resources for predicting visitor-to-customer conversion in an online store using machine learning. The goal of this project is to help online store owners improve their revenue by accurately predicting which visitors are likely to make a purchase.

Project Overview

The project involves building a predictive model using machine learning algorithms to classify website visitors into two groups - those who are likely to make a purchase and those who are not. The data used for the project includes various features such as visitor location, time spent on the website, and product categories viewed.

Requirements

To run the code in this repository, you will need the following:

  • Python 3.6 or higher
  • Jupyter Notebook
  • scikit-learn
  • pandas
  • numpy

CI/CD Pipelines

This project includes CI/CD pipelines to automate the testing, building, and deployment of the code. The pipelines are implemented using GitHub Actions and can be found in the .github/workflows directory.

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License

This project is licensed under the MIT License - see the LICENSE file for details.

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The project involves building a predictive model using machine learning algorithms to classify website visitors into two groups - those who are likely to make a purchase and those who are not.

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