📄️ Probability Basics
An intuitive introduction to probability theory, sample spaces, events, and the fundamental axioms that govern uncertainty in Machine Learning.
📄️ Conditional Probability
Understanding how the probability of an event changes given the occurrence of another event, and its role in predictive modeling.
📄️ Bayes' Theorem
A deep dive into Bayes' Theorem: the formula for updating probabilities based on new evidence, and its massive impact on Machine Learning.
📄️ Random Variables
Understanding Discrete and Continuous Random Variables, Probability Mass Functions (PMF), and Probability Density Functions (PDF).
📄️ PMF & PDF
A deep dive into Probability Mass Functions (PMF) for discrete data and Probability Density Functions (PDF) for continuous data.
🗃️ Distributions
4 items