Let’s Dive In
Get the overview of course outcomes, key takeaways, and prerequisites.
We'll cover the following
What is this course about?
In this course, we will explore an end-to-end machine learning framework that will build skills to solve various use cases encountered in the professional data science journey. You will benefit from the latest developments in the data science space and easy-to-follow content curated for both beginners and experienced data science practitioners.
Throughout the course journey, we’ll work with the widely popular machine learning framework H2O, also known as H2O-3, and implement it to model real-life practical use cases. We’ll learn the benefits of using H2O and get familiar with its low-code approach. We’ll also see how distributed data storage and algorithms can process and analyze very large datasets and solve complex machine learning tasks.
Prerequisites
To get the most out of this course, you should be familiar with:
Machine learning concepts such as supervised and unsupervised learning, although this course will cover them in detail
Python programming
Linear algebra, probability, and statistics
Data analysis and data transformations
A good understanding and solid foundation of these concepts will help us utilize the H2O framework efficiently.