Build a strong mathematical foundation for Machine Learning and Artificial Intelligence with this comprehensive course on Probability and Statistics.
This course is designed to help you understand how data behaves, how models make predictions, and how to validate results using statistical techniques—skills that are essential for every AI and ML professional.
You will start with probability theory and random variables, learning how uncertainty is modeled in real-world systems. Then, you will explore probability distributions used in machine learning, such as normal, binomial, and Poisson distributions.
Next, the course dives into statistical inference, where you’ll learn estimation techniques and confidence intervals to draw meaningful conclusions from data.
You will also master hypothesis testing and p-values, enabling you to make data-driven decisions and validate assumptions in ML models. Different types of hypothesis tests are covered with practical examples.
Further, you’ll learn correlation and regression analysis, which are fundamental to predictive modeling and feature relationships in machine learning.
Finally, you will apply all concepts in a real-world statistical analysis project, working with actual datasets to simulate industry-level data science workflows.
External Reference
Coursera (ML/Statistics courses)
Internal Reference
Data Science Essentials for AI with Python
