Building Recommender Systems with Matrix Factorization

Learn how to design, build, and evaluate collaborative filtering models and hybrid recommendation engines using Python, even if you are new to machine learning.

โ˜… 4.4 (190) โฑ 1h 48m ๐Ÿ“š 11 lessons ๐ŸŽง Audio version

About this course

How do streaming platforms and e-commerce sites know exactly what products you want to buy next? Behind these personalized experiences lie recommendation engines powered by matrix factorization and collaborative filtering. This text-based course guides you through the foundational mathematics and practical Python implementations of modern recommendation algorithms. You will transition from understanding basic user-item interactions to building, evaluating, and tuning sophisticated hybrid models that combine multiple data sources for superior accuracy. What you'll learn: - Understand the foundational linear algebra and terminology behind matrix factorization and dimensionality reduction - Build collaborative filtering models using Singular Value Decomposition (SVD) and Alternating Least Squares (ALS) - Implement implicit feedback techniques to handle real-world user behaviors like clicks, views, and dwell time - Design hybrid recommender systems that combine collaborative filtering with content-based filtering to solve the cold-start problem - Apply evaluation metrics such as Precision at K and Mean Average Precision to measure recommendation quality - Explore modern retrieval patterns, including approximate nearest neighbors, to scale your models The course begins with essential mathematical concepts and notation before guiding you through step-by-step code implementations and model evaluation strategies. You will read detailed explanations, analyze Python code snippets, and complete written exercises to solidify your understanding of recommendation engine mechanics. This course is designed for beginner data scientists, software developers, and analytical minds who want to understand recommendation engines from the ground up, with no prior experience in recommender systems required. Start reading today to unlock the power of personalized recommendations in your own projects.

What you'll get

  • ๐Ÿ“œ Certificate of completion
    Add it to your LinkedIn profile
  • ๐Ÿ’ฌ Personal AI tutor
    Stuck on a lesson? Ask your built-in tutor anything, any time.
  • ๐ŸŽง Audio version included
    Learn on the go โ€” no screen needed
  • โ™พ๏ธ Lifetime access
    Come back anytime, no expiry
  • ๐Ÿ“ฑ Phone or computer
    Works anywhere, any device
  • ๐Ÿ’ธ 30-day refund
    No questions asked
  • โšก Short & focused
    1h 48m of practical content

Reviews (3)

ุฃุญู…ุฏ ุจู† ุฑุงุดุฏ ุขู„ ู…ูƒุชูˆู… BH
โ˜… 5 ยท 2025-06-21T17:19:05+00:00

Really enjoyed this. The explanations were super clear, and the examples provided were spot-on. I learned a lot.

Mateo Rodrรญguez UY Verified learner
โ˜… 3 ยท 2025-04-16T00:51:05+00:00

Really enjoyed this. The examples were super helpful and made complex ideas easy to grasp. Great value!

Archie Garcia AU Verified learner
โ˜… 3 ยท 2025-03-09T15:20:05+00:00

Good introduction. I appreciated the clear steps, although some of the later modules could have used more examples.

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What do I need to take this course? +

Just a phone or computer with internet. No installs, no special hardware.

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By card via Stripe, or with cryptocurrency. We do not store card details โ€” Stripe handles them securely.

Can I get a refund? +

Yes โ€” full refund within 30 days, no questions asked.

How long will I have access? +

Forever. Once you purchase, the course is yours to revisit anytime.

Will I get a certificate? +

Yes. On completion you'll receive a certificate you can add to your LinkedIn profile.

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