Foundations

Mathematical Foundations

Linear algebra, calculus, probability, statistics and optimisation — the maths behind ML

2,093
lessons
Skills in this topic
View full skill map →
Maths for ML
beginner
Multiply matrices and compute dot products
Probability & Statistics
beginner
Calculate conditional probability and Bayes' theorem
Optimisation
intermediate
Implement gradient descent from scratch
Information Theory
intermediate
Calculate Shannon entropy and cross-entropy loss
📚 Continue on Coursera External links · Free to audit
1 / 3 View all →
Measure Vector Similarity
📚 External: Coursera ↗
Self-paced
Measure Vector Similarity
Opens on Coursera ↗
Probability, Statistical Inference and Regression Analysis
📚 External: Coursera ↗
Self-paced
Probability, Statistical Inference and Regression Analysis
Opens on Coursera ↗
Motion Planning for Self-Driving Cars
📚 External: Coursera ↗
Self-paced
Motion Planning for Self-Driving Cars
Opens on Coursera ↗
Social and Economic Networks:  Models and Analysis
📚 External: Coursera ↗
Self-paced
Social and Economic Networks: Models and Analysis
Opens on Coursera ↗
Statistical Inference
📚 External: Coursera ↗
Self-paced
Statistical Inference
Opens on Coursera ↗
Fundamentals of Risk Management & Financial Analysis
📚 External: Coursera ↗
Self-paced
Fundamentals of Risk Management & Financial Analysis
Opens on Coursera ↗