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Machine Learning Project: Notebook to Production

Overview

This project serves as a comprehensive guide to constructing an end-to-end machine learning architecture suitable for deployment on a server—whether local or cloud-based.

Objectives

The goal is to provide a clear exposition of the typical workflow in production-level projects, including but not limited to:

  • Modular Coding: Crafting code in a manner that promotes readability and reusability.
  • Logging: Ensuring that all actions and transactions are properly recorded.
  • Model Preservation: Techniques for saving and retrieving machine learning models efficiently.
  • Pipeline Construction: Establishing a streamlined process for predictions, allowing for direct input into predefined fields on a frontend interface.

Deployment

The culmination of this project is the deployment phase, where the machine learning model is integrated with a frontend website, facilitating user interaction and prediction generation through a user-friendly interface.

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