Probability & Statistics for Machine Learning & Data Science

This course is part of Mathematics for Machine Learning and Data Science Specialization

Instructor: Luis Serrano

What you'll learn

  •   Describe and quantify the uncertainty inherent in predictions made by machine learning models
  •   Visually and intuitively understand the properties of commonly used probability distributions in machine learning and data science
  •   Apply common statistical methods like maximum likelihood estimation (MLE) and maximum a priori estimation (MAP) to machine learning problems
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  •   Assess the performance of machine learning models using interval estimates and margin of errors
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  • Skills you'll gain

  •   Statistical Analysis
  •   Probability
  •   Probability Distribution
  •   Exploratory Data Analysis
  •   Statistical Machine Learning
  •   Statistical Visualization
  •   Sampling (Statistics)
  •   Statistical Hypothesis Testing
  •   Probability & Statistics
  •   Bayesian Statistics
  •   Statistical Inference
  •   A/B Testing
  •   Descriptive Statistics
  •   Data Science
  • There are 4 modules in this course

    After completing this course, you will be able to: • Describe and quantify the uncertainty inherent in predictions made by machine learning models, using the concepts of probability, random variables, and probability distributions. • Visually and intuitively understand the properties of commonly used probability distributions in machine learning and data science like Bernoulli, Binomial, and Gaussian distributions • Apply common statistical methods like maximum likelihood estimation (MLE) and maximum a priori estimation (MAP) to machine learning problems • Assess the performance of machine learning models using interval estimates and margin of errors • Apply concepts of statistical hypothesis testing to commonly used tests in data science like AB testing • Perform Exploratory Data Analysis on a dataset to find, validate, and quantify patterns. Many machine learning engineers and data scientists need help with mathematics, and even experienced practitioners can feel held back by a lack of math skills. This Specialization uses innovative pedagogy in mathematics to help you learn quickly and intuitively, with courses that use easy-to-follow visualizations to help you see how the math behind machine learning actually works.  We recommend you have a high school level of mathematics (functions, basic algebra) and familiarity with programming (data structures, loops, functions, conditional statements, debugging). Assignments and labs are written in Python but the course introduces all the machine learning libraries you’ll use.

    Week 2 - Describing probability distributions and probability distributions with multiple variables

    Week 3 - Sampling and Point estimation

    Week 4 - Confidence Intervals and Hypothesis testing

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