Math 0-1: Probability for Data Science & Machine Learning

A Casual Guide for Artificial Intelligence, Deep Learning, and Python Programmers
4.93 (143 reviews)
Udemy
platform
English
language
Data Science
category
Math 0-1: Probability for Data Science & Machine Learning
1,202
students
23.5 hours
content
Apr 2025
last update
$74.99
regular price

What you will learn

Conditional probability, Independence, and Bayes' Rule

Use of Venn diagrams and probability trees to visualize probability problems

Discrete random variables and distributions: Bernoulli, categorical, binomial, geometric, Poisson

Continuous random variables and distributions: uniform, exponential, normal (Gaussian), Laplace, Gamma, Beta

Cumulative distribution functions (CDFs), probability mass functions (PMFs), probability density functions (PDFs)

Joint, marginal, and conditional distributions

Multivariate distributions, random vectors

Functions of random variables, sums of random variables, convolution

Expected values, expectation, mean, and variance

Skewness, kurtosis, and moments

Covariance and correlation, covariance matrix, correlation matrix

Moment generating functions (MGF) and characteristic functions

Key inequalities like Markov, Chebyshev, Cauchy-Schwartz, Jensen

Convergence in probability, convergence in distribution, almost sure convergence

Law of large numbers and the Central Limit Theorem (CLT)

Applications of probability in machine learning, data science, and reinforcement learning

Screenshots

Math 0-1: Probability for Data Science & Machine Learning - Screenshot_01Math 0-1: Probability for Data Science & Machine Learning - Screenshot_02Math 0-1: Probability for Data Science & Machine Learning - Screenshot_03Math 0-1: Probability for Data Science & Machine Learning - Screenshot_04
6110451
udemy ID
8/5/2024
course created date
11/23/2024
course indexed date
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