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Recommendation system Real World Projects using Python

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  • 2,037 Students
  • Updated 10/2023
4.4
(44 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
4 Hour(s) 29 Minute(s)
Language
English
Taught by
Shan Singh
Rating
4.4
(44 Ratings)
3 views

Course Overview

Recommendation system Real World Projects using Python

Real World Projects on recommendation systems with data science, machine learning and AI techniques..

Believe it or not, almost all online platforms today uses recommender systems in some way or another.

So What does “recommender systems”  stand for and why are they so useful?

Let’s look at the top 3 websites on the Internet : Google, YouTube, and Netfix


Google: Search results

Thats why Google is the most successful technology company today.


YouTube: Video dashboard

I’m sure I’m not the only one who’s accidentally spent hours on YouTube when I had more important things to do! Just how do they convince you to do that?

That’s right this is all on account of Recommender systems!


Netflix: So powerful in terms of recommending right movies to users according to the behaviour of users !


Recommender systems aim to predict users' interests and recommend product items that quite likely are interesting for them.

This course gives you a thorough understanding of the Recommendation systems.


In this course, we will cover :

  • Use cases of recommender systems.

  • Average weighted Technique Recommender System

  • Popularity-based Recommender System

  • Hybrid Model based on Average weighted & Popularity

  • Collaborative filtering.

  • Content based filtering

  • and much, much more!


Not only this, you will also work on two very exciting projects.



Instructor Support - Quick Instructor Support for any query within 2-3 hours

All the resources used in this course will be shared with you via Google Drive Link



How to make most from the course ?

  • Check out the lecture "Utilize This Golden Oppurtunity  , QnA Section !"


Course Content

  • 10 section(s)
  • 37 lecture(s)
  • Section 1 Introduction & welcome to this course !
  • Section 2 ------------------- Project 1 : TMDB use-case ----------------------
  • Section 3 Build a Recommendation System using Average Weighted
  • Section 4 Build a recommendation system using Popularity Score
  • Section 5 Build a recommendation system using Weighted average and Popularity score
  • Section 6 Build a recommendation system using Content based filtering
  • Section 7 Build a more Advance recommendation system using Content based filtering
  • Section 8 ------------------- Project 2 : Movie_lens use-case --------------------
  • Section 9 Build a Recommender System using Co-relation
  • Section 10 Build a Recommender System using KNN-based Collaborative filtering..

What You’ll Learn

  • Learn How to tackle Real world Problems..
  • Learn Collaborative based filtering
  • Learn how to use Correlation for Recommending similar Movies or similar books
  • Learn Content based recommendation system
  • Learn how to use different Techniques like Average Weighted , Hybrid Model etc..
  • Learn different types of Recommender Systems


Reviews

  • D
    Dipal Veturkar
    5.0

    Excellent Course!!!!, I was looking for such course. I have also enrolled for the courses in the bonus section

  • M
    Martin Capek
    5.0

    Nice overview of recommendation systems, together with very nice explanations. Thank you, Shan. I enjoyed this course.

  • D
    Delfina Renata Almeida Santos Lima
    5.0

    Fantastic course. The teacher makes a great effort to transmit all the knowledge in a clear and simple way.

  • S
    Sahit Sharma
    1.0

    this guy is bad

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