Designing Recommender Systems with Python and Machine Learning
Build and evaluate personalized recommendation engines using collaborative filtering, matrix factorization, and deep learning techniques in Python.
About this course
Recommendation algorithms power the modern web, helping users discover products, movies, and music tailored to their exact preferences. Understanding how to design, build, and evaluate these systems is a highly sought-after skill in data science and machine learning.
This text-based course guides you from foundational recommendation concepts to implementing advanced deep learning models. You will learn how to structure recommendation pipelines, process user-item interactions, and apply industry-standard evaluation metrics to measure performance. Along the way, you will explore modern techniques such as embedding-based retrieval to ensure your systems are scalable and efficient.
What you'll learn:
- Understand core recommendation concepts, including explicit versus implicit feedback and the cold-start problem.
- Implement neighborhood-based collaborative filtering and content-based filtering algorithms in Python.
- Apply matrix factorization techniques, including Singular Value Decomposition (SVD), to predict user preferences.
- Build neural collaborative filtering models using deep learning frameworks like TensorFlow.
- Utilize vector embeddings and similarity search to scale recommendation retrieval efficiently.
- Evaluate system performance using metrics such as RMSE, precision, recall, and hit rate.
You will begin by exploring the essential terminology and mathematical foundations of similarity metrics before moving on to hands-on Python implementations. Through clear written explanations and structured code exercises, you will progress from classic collaborative filtering to modern deep learning architectures.
This course is designed for beginner data scientists, software developers, and analytical minds who want to understand recommendation algorithms. No prior experience with recommender systems is required, though a basic familiarity with Python and machine learning concepts is recommended.
Start reading today to build recommendation engines that deliver personalized user experiences.
What you'll get
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Certificate of completion
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Lifetime access
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Phone or computer
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30-day refund
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Short & focused
1h 19m of practical content
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Frequently asked
What do I need to take this course? +
Just a phone or computer with internet. No installs, no special hardware.
How do I pay? +
By card via Stripe, or with cryptocurrency. We do not store card details — Stripe handles them securely.
Can I get a refund? +
Yes — 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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