Probability - The Science of Uncertainty and Data

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Course Features

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Duration

16 weeks

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Delivery Method

Online

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Available on

Limited Access

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Accessibility

Mobile, Desktop, Laptop

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Language

English

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Subtitles

English

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Level

Advanced

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Effort

14 hours per week

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Teaching Type

Instructor Paced

Course Description

The world is full of uncertainty: accidents, storms, unruly financial markets, noisy communications. The world is also full of data. Probabilistic modeling and the related field of statistical inference are the keys to analyzing data and making scientifically sound predictions.

Probabilistic models use the language of mathematics. But instead of relying on the traditional "theorem-proof" format, we develop the material in an intuitive but still rigorous and mathematically-precise manner. Furthermore, while the applications are multiple and evident, we emphasize the basic concepts and methodologies that are universally applicable.

The course covers all of the basic probability concepts, including:

  • multiple discrete or continuous random variables, expectations, and conditional distributions
  • laws of large numbers
  • the main tools of Bayesian inference methods
  • an introduction to random processes (Poisson processes and Markov chains)

The contents of this courseare heavily based upon the corresponding MIT class Introduction to Probability a course that has been offered and continuously refined over more than 50 years. It is a challenging class but will enable you to apply the tools of probability theory to real-world applications or to your research.

This course is part of theMITx MicroMasters Program in Statistics and Data Science. Master the skills needed to be an informed and effective practitioner of data science.

Course Overview

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Live Class

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Human Interaction

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Personlized Teaching

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International Faculty

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Post Course Interactions

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Instructor-Moderated Discussions

Skills You Will Gain

Prerequisites/Requirements

Comfort with mathematical reasoning; and familiarity with sequences, limits, infinite series, the chain rule, and ordinary or multiple integrals.

College-level calculus (single-variable & multivariable)

What You Will Learn

Inference methods

Laws of large numbers and their applications

Probabilistic calculations

Random processes

Random variables, their distributions, means, and variances

The basic structure and elements of probabilistic models

Course Instructors

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Dimitri Bertsekas

Professor, Electrical Engineering and Computer Science at MIT

Dimitri Bertsekas is a Professor with the Department of Electrical Engineering and Computer Science, and a member of the National Academy of Engineering. He obtained his PhD from MIT and joined the f...
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Eren Can Kizildag

Teaching Assistant at MIT

Eren Kizildag is a graduate student in the Electrical Engineering and Computer Science department at MIT, carrying out research in the Laboratory for Information and Decision Systems (LIDS) and the R...
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Jagdish Ramakrishnan

Teaching Assistant at MIT

Jagdish Ramakrishnan received his PhD from MIT’s Department of Electrical Engineering and Computer Science. His dissertation focused on optimizing the delivery of radiation therapy cancer treatments ...
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Jimmy Li

Teaching Assistant at MIT

Jimmy Li received his PhD from MIT’s Department of Electrical Engineering and Computer Science. His research focused on applying the tools taught in this and related courses to problems in marketing....
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