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Pluralsight

Build a Rating Recommendation Engine with Collaborative Filtering

via Pluralsight

Overview

Recommendation systems pervade a great number of aspects of our daily lives. This course will teach you how to build your very own recommendation system using a technique called collaborative filtering.

Recommendation engines are valuable assets for many services that we use in our daily lives. They play a vital role in many industries ranging from retail, e-commerce, entertainment, and even food delivery, while greatly uplifting the user experience. In this course, Build a Rating Recommendation Engine with Collaborative Filtering, you’ll acquire the skills to build your very own recommender system. First, you’ll be introduced to recommender systems, see the different types of recommender systems, and go into more detail on the particular technique that you’re going to use during this course - collaborative filtering. Next, you'll discover how to build a recommender system using memory-based collaborative filtering. Finally, you'll learn all about model-based collaborative filtering and gain the knowledge to code it up using Python. When you're finished with this course, you’ll have the knowledge and skills to build your very own recommendation system.

Syllabus

  • Course Overview 1min
  • Getting Started with Recommender Systems 17mins
  • Memory-based Collaborative Filtering 35mins
  • Model-based Collaborative Filtering 26mins

Taught by

Pratheerth Padman

Reviews

4.7 rating at Pluralsight based on 15 ratings

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