Book Image

Practical Data Science Cookbook, Second Edition - Second Edition

By : Prabhanjan Narayanachar Tattar, Bhushan Purushottam Joshi, Sean Patrick Murphy, ABHIJIT DASGUPTA, Anthony Ojeda
Book Image

Practical Data Science Cookbook, Second Edition - Second Edition

By: Prabhanjan Narayanachar Tattar, Bhushan Purushottam Joshi, Sean Patrick Murphy, ABHIJIT DASGUPTA, Anthony Ojeda

Overview of this book

As increasing amounts of data are generated each year, the need to analyze and create value out of it is more important than ever. Companies that know what to do with their data and how to do it well will have a competitive advantage over companies that don’t. Because of this, there will be an increasing demand for people that possess both the analytical and technical abilities to extract valuable insights from data and create valuable solutions that put those insights to use. Starting with the basics, this book covers how to set up your numerical programming environment, introduces you to the data science pipeline, and guides you through several data projects in a step-by-step format. By sequentially working through the steps in each chapter, you will quickly familiarize yourself with the process and learn how to apply it to a variety of situations with examples using the two most popular programming languages for data analysis—R and Python.
Table of Contents (17 chapters)
Title Page
Credits
About the Authors
About the Reviewer
www.PacktPub.com
Preface

Chapter 8. Recommending Movies at Scale (Python)

In this chapter, we will cover the following recipes:

  • Modeling preference expressions
  • Understanding the data
  • Ingesting the movie review data
  • Finding the highest-scoring movies
  • Improving the movie-rating system
  • Measuring the distance between users in the preference space
  • Computing the correlation between users
  • Finding the best critic for a user
  • Predicting movie ratings for users
  • Collaboratively filtering item by item
  • Building a non-negative matrix factorization model
  • Loading the entire dataset into the memory
  • Dumping the SVD-based model to the disk
  • Training the SVD-based model
  • Testing the SVD-based model