How to Manage Your Data Science Project

4 steps for managing a data science project

Benjamin Obi Tayo Ph.D.
4 min readJun 7, 2022
Photo by Jo Szczepanska on Unsplash

About the Author

Benjamin O. Tayo is a data science educator, tutor, coach, mentor, and consultant. Contact me for more information about our services and pricing: benjaminobi@gmail.com

Dr. Tayo has written close to 300 articles and tutorials in data science for educating the general public. Support Dr. Tayo’s educational mission using the links below:

PayPal: https://www.paypal.me/BenjaminTayo

CashApp: https://cash.app/$BenjaminTayo

INTRODUCTION

Key takeaways

  • Executing a data science project requires good planning
  • Good planning and preparation will not only improve productivity, but it will help avoid potential pitfalls and roadblocks that could be encountered during project execution

Benjamin Franklin once said: “By failing to prepare, you are preparing to fail.”

This article will discuss the four steps for managing a data science project: Plan, Prepare, Produce, and Publish.

Plan: Before building any machine learning model, it is important to sit down carefully and plan what you want your model to…

--

--

Benjamin Obi Tayo Ph.D.

Dr. Tayo is a data science educator, tutor, coach, mentor, and consultant. Contact me for more information about our services and pricing: benjaminobi@gmail.com