Foundations

ML Fundamentals

Neural networks, backpropagation, gradient descent — the maths behind AI

19,894
lessons
Skills in this topic
View full skill map →
ML Maths Basics
beginner
Manipulate vectors and matrices
Supervised Learning
beginner
Train decision trees, random forests, and neural nets
Unsupervised Learning
intermediate
Apply k-means and DBSCAN clustering
ML Pipelines
intermediate
Engineer features and handle missing data
📚 Continue on Coursera External links · Free to audit
1 / 3 View all →
Statistics, Bioinformatics, and AI in SABV Research
📚 External: Coursera ↗
Self-paced
Statistics, Bioinformatics, and AI in SABV Research
Opens on Coursera ↗
Explainable AI: Scene Classification and GradCam Visualization
📚 External: Coursera ↗
Self-paced
Explainable AI: Scene Classification and GradCam Visualization
Opens on Coursera ↗
Semantic Segmentation with Amazon Sagemaker
📚 External: Coursera ↗
Self-paced
Semantic Segmentation with Amazon Sagemaker
Opens on Coursera ↗
Solve Business Problems with AI and Machine Learning
📚 External: Coursera ↗
Self-paced
Solve Business Problems with AI and Machine Learning
Opens on Coursera ↗
Fundamentos de IA Aplicados ao CRM
📚 External: Coursera ↗
Self-paced
Fundamentos de IA Aplicados ao CRM
Opens on Coursera ↗
Using BigQuery Machine Learning for inference
📚 External: Coursera ↗
Self-paced
Using BigQuery Machine Learning for inference
Opens on Coursera ↗