CCNA 200-301 Pearson uCertify Network Simulator
ISBN: 9781616918378200-301-SIMULATOR.AB1
Reskill, learn, and own machine learning statistics because the future doesn’t wait for the unprepared.
(STATS-ML.AW1) / ISBN : 978-1-64459-689-0
Master the statistics for machine learning with this hands-on course.
In this course, dive into essential statistical concepts and apply them in Python for machine learning. Learn how to process data, run tests, and build models using key Python libraries like Pandas, NumPy, and more.
From foundational math to advanced techniques like ANOVA and non-parametric tests, you’ll get step-by-step training.
12+ Interactive Lessons |
No, this Statistics for Machine Learning course starts with the fundamentals, making it perfect for beginners. However, basic Python knowledge will help you apply statistical concepts in coding exercises.
Yes! You’ll dive deep into probability theory, key distributions (Normal, Binomial, Poisson, etc.), and how they apply to machine learning.
Unlike traditional stats courses, this one focuses on real-world ML applications, teaching you how to use statistics for model evaluation, hypothesis testing, and data preprocessing.
Definitely. Many ML interviews test statistical concepts covered here. Probability, hypothesis testing, regression, and data analysis make this course great for interview prep.