The course "Foundations of Probability and Random Variables" introduces fundamental concepts in probability and random variables, essential for understanding computational methods in computer science and data science. Through five comprehensive modules, learners will explore combinatorial analysis, probability, conditional probability, and both discrete and continuous random variables. By mastering these topics, students will gain the ability to solve complex problems involving uncertainty, design probabilistic models, and apply these concepts in fields like machine learning, AI, and algorithm design.

Foundations of Probability and Random Variables


位教师:Ian McCulloh
访问权限由 New York State Department of Labor 提供
2,196 人已注册
您将学到什么
Master combinatorial techniques, including permutations, combinations, and multinomial coefficients, to solve counting and probability problems.
Apply probability axioms, construct Venn diagrams, and calculate sample space sizes to evaluate probabilities in various scenarios.
Utilize Bayes' formula, the multiplication rule, and conditional probability to assess event relationships and solve real-world problems.
Analyze discrete and continuous random variables using probability density functions, cumulative distribution functions, and expected values.
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21 项作业
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该课程共有6个模块
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