Probability for Data Science
Probability for Data Science, available at Free, has an average rating of 4.65, with 16 lectures, based on 21 reviews, and has 2954 subscribers.
You will learn about Basic probability concepts such as mean and variance Compute the mean and variance of random variables. Conditional probability Bayes rule and statistical independence. Discrete distributions such as geometric, binomial, Poisson. This course is ideal for individuals who are Individuals who are interested in pursuing a career in data science It is particularly useful for Individuals who are interested in pursuing a career in data science.
Enroll now: Probability for Data Science
Summary
Title: Probability for Data Science
Price: Free
Average Rating: 4.65
Number of Lectures: 16
Number of Published Lectures: 16
Number of Curriculum Items: 16
Number of Published Curriculum Objects: 16
Original Price: Free
Quality Status: approved
Status: Live
What You Will Learn
- Basic probability concepts such as mean and variance
- Compute the mean and variance of random variables.
- Conditional probability
- Bayes rule and statistical independence.
- Discrete distributions such as geometric, binomial, Poisson.
Who Should Attend
- Individuals who are interested in pursuing a career in data science
Target Audiences
- Individuals who are interested in pursuing a career in data science
A strong understanding of probability is critical for becoming a successful data scientist. Probability is a key mathematical concept that is essential for modeling and understanding computer system performance and real-world data generated from day-to- day activities and interactions. In particular areas such as data science, machine learning, natural language processing and computer vision rely heavily on probabilistic models.
This short course in probability is designed to provide the necessary background for learning and understanding machine learning and data science concepts. Specifically, the course will introduce the concept of probability, provide an overview of discrete random variables and describe how to compute expectation and variance. The course will also discuss specific distributions such as geometric, binomial and Poisson distributions. The course includes multiple worked-out examples so that students can appreciate how to apply the concepts learnt in the lectures.
At the end of the course, students will
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Be able to describe the basic probability concepts such as mean, variance, conditional probability, Bayes rule and statistical independence.
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Be able to compute the mean and variance of random variables.
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Be able to describe discrete and continuous distributions such as geometric, binomial and Poisson
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Be able to understand how real-world phenomena can be modeled using probability distributions.
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction to probability (part 1)
Lecture 2: Introduction to probability (part 2)
Chapter 2: Discrete Random Variables
Lecture 1: Discrete Random Variables: An introduction
Lecture 2: Expectation of a Discrete Random Variable
Lecture 3: Variance of a Discrete Random Variable
Chapter 3: Expectation, Variance and Conditional Probabaility
Lecture 1: Properties of Expectation and Variance
Lecture 2: Conditional Probability
Lecture 3: Conditional Probability: Simple Example 1
Lecture 4: Bayes Rule
Lecture 5: Statistical Independence and Independent Random Variables
Lecture 6: Find Expectation and Variance: Simple Example
Chapter 4: Example of Discrete Random Variables (Bernoulli, Binomial Geometric, Poisson)
Lecture 1: Bernoulli and Binomial Random Variables
Lecture 2: Binomial Distribution: Simple Example
Lecture 3: Geometric Distribution
Lecture 4: Poisson Distribution
Lecture 5: Poisson Distribution: A Simple Example
Instructors
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Anand Seetharam
Data Scientist, Researcher, Ex-professor, AI for good
Rating Distribution
- 1 stars: 0 votes
- 2 stars: 1 votes
- 3 stars: 3 votes
- 4 stars: 6 votes
- 5 stars: 11 votes
Frequently Asked Questions
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Can I take my courses with me wherever I go?
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