Foundations of Probability in Python
Offered By: DataCamp
Course Description
Overview
Learn fundamental probability concepts like random variables, mean and variance, probability distributions, and conditional probabilities.
Probability is the study of regularities that emerge in the outcomes of random experiments. In this course, you'll learn about fundamental probability concepts like random variables (starting with the classic coin flip example) and how to calculate mean and variance, probability distributions, and conditional probability. We'll also explore two very important results in probability: the law of large numbers and the central limit theorem. Since probability is at the core of data science and machine learning, these concepts will help you understand and apply models more robustly. Chances are everywhere, and the study of probability will change the way you see the world. Let’s get random!
Probability is the study of regularities that emerge in the outcomes of random experiments. In this course, you'll learn about fundamental probability concepts like random variables (starting with the classic coin flip example) and how to calculate mean and variance, probability distributions, and conditional probability. We'll also explore two very important results in probability: the law of large numbers and the central limit theorem. Since probability is at the core of data science and machine learning, these concepts will help you understand and apply models more robustly. Chances are everywhere, and the study of probability will change the way you see the world. Let’s get random!
Syllabus
- Let's start flipping coins
- A coin flip is the classic example of a random experiment. The possible outcomes are heads or tails. This type of experiment, known as a Bernoulli or binomial trial, allows us to study problems with two possible outcomes, like “yes” or “no” and “vote” or “no vote.” This chapter introduces Bernoulli experiments, binomial distributions to model multiple Bernoulli trials, and probability simulations with the scipy library.
- Calculate some probabilities
- In this chapter you'll learn to calculate various kinds of probabilities, such as the probability of the intersection of two events and the sum of probabilities of two events, and to simulate those situations. You'll also learn about conditional probability and how to apply Bayes' rule.
- Important probability distributions
- Until now we've been working with binomial distributions, but there are many probability distributions a random variable can take. In this chapter we'll introduce three more that are related to the binomial distribution: the normal, Poisson, and geometric distributions.
- Probability meets statistics
- No that you know how to calculate probabilities and important properties of probability distributions, we'll introduce two important results: the law of large numbers and the central limit theorem. This will expand your understanding on how the sample mean converges to the population mean as more data is available and how the sum of random variables behaves under certain conditions.
We will also explore connections between linear and logistic regressions as applications of probability and statistics in data science.
Taught by
Alexander A. Ramírez M.
Related Courses
FinTech for Finance and Business LeadersACCA via edX Accounting Data Analytics
University of Illinois at Urbana-Champaign via Coursera Advanced AI on Microsoft Azure: Ethics and Laws, Research Methods and Machine Learning
Cloudswyft via FutureLearn Ethics, Laws and Implementing an AI Solution on Microsoft Azure
Cloudswyft via FutureLearn Post Graduate Certificate in Advanced Machine Learning & AI
Indian Institute of Technology Roorkee via Coursera