Rutgers Classifieds>Rutgers Online Courses>Recommender Systems with Machine Learning

Recommender Systems with Machine Learning

About this Course

This course starts with the theoretical concepts and fundamental knowledge of recommender systems, covering essential taxonomies. You\'ll learn to use Python to evaluate datasets based on user ratings, choices, genres, and release years. Practical approaches will help you build content-based and collaborative filtering techniques. As you progress, you\'ll cover necessary concepts for applied recommender systems and machine learning models, with projects included for hands-on experience. Key learnings include AI-integrated basics, taxonomy, overfitting, underfitting, bias, variance, and building content-based and item-based systems with ML and Python, including KNN-based engines. The course is suitable for beginners and those with some programming experience, aiming to advance ML skills and build customized recommender systems. No prior knowledge of recommender systems, ML, data analysis, or math is needed, only basic Python. By the end, you\'ll relate theories to various domains, implement ML models for real-world recommendation systems, and evaluate them.

Created by: Packt


Related Online Courses

This course explores the population-environment relationship. In this course, you will learn about the human population and the ways in which changes in the population affect the environment.... more
This specialization is intended to familiarize learners with a broad range of financial technologies. While finance has always been at the forefront of technological innovation, the financial... more
The aim of the course is to introduce businesses employees to the Capitals Approach and help them to get started with integrating natural, social and human capitals into business decision-making.... more
This is a self-paced lab that takes place in the Google Cloud console. A convolution is a filter that passes over an image, processes it, and extracts features that show a commonality in the image.... more
This specialization provides an overview of how semiconductors are characterized. After a review of semiconductor basics, the courses cover electrical, electron beam, ion beam, x-ray, and optical... more

CONTINUE SEARCH

FOLLOW COLLEGE PARENT CENTRAL