Description
Deep Learning Recommender Systems
Deep Learning Recommender Systems
Deep Learning Recommender Systems is a comprehensive course designed to help you master the advanced techniques behind today’s most intelligent recommendation engines. Whether you’re a data scientist, machine learning engineer, or developer, this course equips you with the practical skills needed to build powerful recommender systems using state-of-the-art deep learning models.
Explore real-world applications, from Netflix and YouTube suggestions to personalized e-commerce product recommendations. This course bridges theory and hands-on practice, giving you the tools to create scalable, accurate, and responsive recommendation solutions that adapt to user behavior in real-time.
What You’ll Learn
- Core concepts of collaborative and content-based filtering
- Neural networks and deep learning foundations for recommender systems
- Matrix factorization and embedding techniques
- Autoencoders, RNNs, and Transformer models for recommendations
- Building hybrid recommender systems
- Scalable deployment using TensorFlow, PyTorch, and Keras
Requirements
- Basic understanding of Python programming
- Familiarity with machine learning and neural networks
- Experience with data manipulation libraries like NumPy or pandas
Course Description
This hands-on course will guide you through the latest methodologies used by tech giants to deliver hyper-personalized content. Through lectures, coding assignments, and real-world case studies, you’ll implement and train your own deep learning-based recommender systems.
From the basics of user-item interaction modeling to advanced architectures like Neural Collaborative Filtering and attention-based models, every module builds toward giving you practical, production-level skills. You’ll also learn how to evaluate models using precision, recall, and MAP, as well as how to optimize for cold-start problems and scalability.
By the end of this course, you’ll have a portfolio-ready project that demonstrates your ability to solve real-world recommendation problems using modern deep learning strategies.
About the Publication
This course is developed by a team of AI and data science professionals with years of industry experience in building large-scale machine learning systems. Their expertise ensures the content is both academically solid and industry-relevant.
Explore These Valuable Resources
- Google ML Recommendations Guide
- Netflix Tech Blog: Recommendations
- Papers With Code – Recommender Systems
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