Home>Courses>Distributed Machine Learning and Its Implementation with H2O

Distributed Machine Learning and Its Implementation with H2O

Gain insights into H2O-3's scalable framework and explore model interpretability, AutoML features, and algorithm implementation. Discover how to derive insights and tackle big data for explainable ML solutions.

Advanced

37 Lessons

9h

Certificate of Completion

Gain insights into H2O-3's scalable framework and explore model interpretability, AutoML features, and algorithm implementation. Discover how to derive insights and tackle big data for explainable ML solutions.
AI-POWERED

Explanations

AI-POWERED

Explanations

This course includes

72 Playgrounds
6 Quizzes
Course Overview
What You'll Learn
Course Content
Recommendations

Course Overview

This course teaches about a distributed and highly scalable machine learning framework known as H2O-3. H2O has become the go-to solution for organizations seeking to build data-driven and explainable solutions. In this course, you’ll learn about H2O’s versatile machine learning framework, which empowers you with high-performing and interpretable machine learning models. The H2O framework is compatible with Java, JSON, R, Python, and Scala. You’ll start by covering the concepts of machine learning models. ...Show More
This course teaches about a distributed and highly scalable machine learning framework known as H2O-3. H2O has become the go-to solution for organizations seeking to build data-driven and explainable solutions. In this course, you’ll learn about H2O’s vers...Show More

TAKEAWAY SKILLS

Machine Learning

Data Science

Python

Artificial Intelligence

What You'll Learn

An understanding of distributed machine learning
Working knowledge of the powerful H2O ML framework, including various algorithms and their implementation in data science use cases
Hands-on experience in building explainable machine learning models and deriving insights from them
The ability to utilize autoML tools effectively for building fast, scalable, and robust machine learning models
An understanding of distributed machine learning

Show more

Course Content

1.

Introduction to Machine Learning

5 Lessons

Get familiar with machine learning basics, frameworks, and model evaluation techniques.

4.

Unsupervised Learning: Clustering with H2O

6 Lessons

Enhance your skills in clustering using H2O, focusing on EDA, model prediction, and analysis.

6.

Closing Notes

1 Lessons

Investigate key concepts and practical skills in machine learning using the H2O framework.

7.

Appendix

1 Lessons

Prepare for H2O by ensuring compatible OS, Java, and optional R or Python integrations.

Course Author

Trusted by 2.5 million developers working at companies

Hands-on Learning Powered by AI

See how Educative uses AI to make your learning more immersive than ever before.

Instant Code Feedback

Evaluate and debug your code with the click of a button. Get real-time feedback on test cases, including time and space complexity of your solutions.

AI-Powered Mock Interviews

Adaptive Learning

Explain with AI

AI Code Mentor

Free Resources

FOR TEAMS

Interested in this course for your business or team?

Unlock this course (and 1,000+ more) for your entire org with DevPath