Recommendation systems allow you to gain insights into
data and make a guess on what would be people's preference. It is used
all over the web, be it shopping, social networking, or music. This
video will teach you how to build unique end-to-end recommendation
engines with various tools and enhance your skills.
You will look at various recommendation engines such as personalized
recommendation engines, real-time recommendation engines, SVD
recommender systems. You will also get a quick glance into the future of
recommendation systems by the end of the video. During the course of
the video, you will come across creating recommendation engines with R,
Python, Apache Spark, Neo4j, Apache Mahout, and more. By the end of the
course, you will also learn the best practices and tricks and tips to
build efficient recommender systems.
About The Author
Suresh Kumar Gorakala is a Data scientist focused on Artificial Intelligence. He has professional experience close to 10 years, having worked with various global clients across multiple domains and helped them in solving their business problems using Advanced Big Data Analytics. He has extensively worked on Recommendation Engines, Natural language Processing, Advanced Machine Learning, Graph Databases. He previously co-authored Building a Recommendation System with R for Packt Publishing. He is a passionate traveler and is a photographer by hobby.