A primer on Machine Learning for Data Science. Revealed for everyday people, by the Backyard Data Scientist.
Master key concepts and practical skills through structured learning modules. By completing this curriculum, you'll gain valuable expertise applicable to real-world scenarios.
Genuinely understand what Computer Science, Algorithms, Programming, Data, Big Data, Artificial Intelligence, Machine Learning, and Data Science is.
To understand how these different domains fit together, how they are different, and how to avoid the marketing fluff.
The Impacts Machine Learning and Data Science is having on society.
To really understand computer technology has changed the world, with an appreciation of scale.
To know what problems Machine Learning can solve, and how the Machine Learning Process works.
This comprehensive Introduction to Machine Learning for Data Science curriculum is designed to take you from foundational concepts to advanced implementation. Each module builds upon the previous, ensuring a structured learning path that maximizes knowledge retention and practical application.
Understand what you need to succeed in this course and determine if it's the right fit for your learning goals
What you need before starting this Introduction to Machine Learning for Data Science course:
This course is perfect for:
Everything you need to know about this online course, from duration to certification
Course Instructor
David Valentine
Expert instructor with industry experience
Course Language
English
All materials in English
This online course offers comprehensive training with expert instruction, practical exercises, and a certificate of completion. Join thousands of students advancing their careers through quality online education.
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