I have written a series of Machine Learning and Data Science Lectures and articles based on learnings from a course.
Lec 1: Introduction to AI-ML Lec
Need for ML?
What is ML, DL, AI?
Differences in traditional and ML methods
Lec 2: Introduction to AI-ML - Part -2
Different Types Of learnings : Supervised, Unsupervised, Reinforcement Learnings, Batch and Online Learning
ML piplines
Datatypes, operators, Functions
map(),lambda(),filter(),reduce()
Lec 4: Python Packages required for ML
Lec 7: Statistics Part -1: Descriptive Statistics
Descriptive Statistics
Measure of Central Tendencies, Dispersion Measures, Shape Distribution, Outliers