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Engineering Probability and Statistics Part 1

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Engineering Probability and Statistics Part 1

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Gain insight into a topic and learn the fundamentals.
2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

Gain insight into a topic and learn the fundamentals.
2 weeks to complete
at 10 hours a week
Flexible schedule
Learn at your own pace

There are 7 modules in this course

Welcome to Engineering Probability and Statistics Part 1. Throughout your time in this course, you will be given opportunities to check your understanding of course material, as well as engage in quizzes to reflect on all the concepts you have explored within each module. By the end of this part 1 course on engineering probability and statistics, you will have a foundational understanding of the fundamentals of statistics, probability, variables, and types of distributions.

Welcome to your first step into the world of statistics! This module isn't just about numbers—it's about discovering how data can help us make smarter decisions, solve problems, and improve processes. While it may not be apparent, statistics impacts everyday life, and it plays a major role in engineering, from predicting trends to optimizing systems. In this module, you'll explore key ideas such as statistical thinking, understanding variability, and distinguishing between populations and samples. You'll also get hands-on experience with exploratory data analysis (EDA), where you'll learn how to collect, summarize, and visualize data to find meaningful patterns and uncover insights. By the end of this module, you'll have a strong foundation in statistical reasoning, setting you up for success in the rest of the course. So, let's get started and see how statistics can help you make sense of the world around you.

What's included

4 videos27 readings4 assignments

4 videosTotal 19 minutes
  • Course Introduction2 minutes
  • Meet Your Faculty1 minute
  • Numerical Descriptive Statistics9 minutes
  • Graphical Descriptive Statistics7 minutes
27 readingsTotal 96 minutes
  • Welcome to Engineering Probability and Statistics4 minutes
  • Engineering Probability & Statistics Part 1 Syllabus10 minutes
  • Course Communication and Support10 minutes
  • Academic Integrity2 minutes
  • What is Statistics?2 minutes
  • Understanding Variability in Data2 minutes
  • The Big Picture2 minutes
  • Exploratory Data Analysis (EDA)2 minutes
  • What is Data?3 minutes
  • Why Data and Variables Matter6 minutes
  • Branches of Statistics3 minutes
  • Intro to Video: Numerical Descriptive Statistics2 minutes
  • Measures of Central Tendency1 minute
  • The Mean4 minutes
  • The Median3 minutes
  • The Mode3 minutes
  • Measures of Variability3 minutes
  • Example: Web Server Response Time Monitoring3 minutes
  • Quartiles and Percentiles2 minutes
  • Intro to Video: Graphical Descriptive Statistics2 minutes
  • Stem-and-Leaf Displays3 minutes
  • Dot Plots2 minutes
  • The Histogram3 minutes
  • Histogram for Discrete Numerical Data5 minutes
  • Histogram for Continuous Numerical Data5 minutes
  • Histogram for Qualitative Data (Bar Chart)4 minutes
  • Box Plots5 minutes
4 assignmentsTotal 120 minutes
  • Assess Your Learning: Statistics and Their Applications30 minutes
  • Assess Your Learning: Understanding Data, Variables, and Types of Data30 minutes
  • Assess Your Learning: Numerical Descriptive Statistics30 minutes
  • Assess Your Learning: Graphical Descriptive Statistics30 minutes

Probability is all about understanding uncertainty and making informed decisions. Every day, we encounter situations where the result is unknown—whether it’s predicting the weather or playing a game of chance. In this module, you will learn the basics of probability, including how to define experiments, sample spaces, and events. You will also learn the difference between simple and compound events. A few key rules help us calculate and understand probabilities effectively. You will learn how to apply the complement, addition, and multiplication rules to calculate the likelihood of different events. We will also discuss conditional probability and independence so you can determine if events are related or completely independent. Counting principles such as permutations and combinations will also help you determine the number of possible outcomes in various scenarios. Finally, we’ll introduce Bayes’ Theorem, which is a powerful tool for updating probabilities as new information becomes available. By the end of this module, you will be able to define probability concepts, apply key probability rules, analyze conditional probability, use counting principles, and apply Bayes' Theorem to make data-driven decisions.

What's included

2 videos14 readings2 assignments

2 videosTotal 16 minutes
  • Conditional Probability7 minutes
  • Bayes’ Theorem9 minutes
14 readingsTotal 57 minutes
  • What is a Random Experiment?1 minute
  • Sample Spaces1 minute
  • What is an Event?2 minutes
  • Fundamental Event Operations3 minutes
  • Example: Number of Active Machines in a Factory2 minutes
  • Probability3 minutes
  • Example: Employee Preferences in a Tech Company2 minutes
  • Understanding the Product Rule for Ordered Pairs10 minutes
  • Combinations and Permutations3 minutes
  • Example: Film Festival Options15 minutes
  • Intro to Video: Conditional Probability1 minute
  • The Law of Total Probability4 minutes
  • Intro to Video: Bayes’ Theorem2 minutes
  • Bayes’ Theorem: Example8 minutes
2 assignmentsTotal 60 minutes
  • Assess Your Learning: Experiments, Sample Space, Events, and Probability30 minutes
  • Assess Your Learning: Conditional Probability and Bayes’ Theorem30 minutes

In this module, we’ll cover some of the most fundamental concepts in statistics: random variables and probability distributions. These concepts enable us to mathematically model previously discussed probability-based scenarios. Specifically, you’ll learn how random variables act like the link between probability theory and analytics. We’ll also take a look at the difference between discrete and continuous random variables and examine some types of probability distributions.

What's included

6 readings2 assignments

6 readingsTotal 16 minutes
  • Discrete Random Variables3 minutes
  • Discrete Probability Distributions3 minutes
  • Expected Values, Variances, and Standard Deviations3 minutes
  • Example: Car Wash2 minutes
  • Cumulative Distribution Functions3 minutes
  • Visualizing the Cumulative Distribution Function2 minutes
2 assignmentsTotal 16 minutes
  • Assess Your Learning: Random Variables10 minutes
  • Assess Your Learning: Cumulative Distribution Functions6 minutes

In this module, we’ll explore some important discrete probability distributions that help us model real-world randomness. These distributions provide a structured way to analyze uncertainty in everyday scenarios, from predicting defective products in manufacturing to estimating customer arrivals at a service center. We’ll cover the Binomial, Negative Binomial, Hypergeometric, and Poisson distributions. You'll learn how to choose the right distribution for the right scenario, model complex situations, and understand the fascinating Poisson process, which governs time-dependent events such as traffic flow and server requests. By the end of this module, you'll be equipped with the skills to analyze, model, and interpret discrete probability distributions, turning theoretical concepts into practical insights!

What's included

4 videos14 readings2 assignments

4 videosTotal 30 minutes
  • The Binomial Distribution7 minutes
  • The Hypergeometric Distribution6 minutes
  • The Negative Binomial Distribution8 minutes
  • The Poisson Distribution9 minutes
14 readingsTotal 27 minutes
  • Intro to Video: The Binomial Distribution1 minute
  • Example: Manufacturing Defects3 minutes
  • Binomial Distribution Applications2 minutes
  • Intro to Video: The Hypergeometric Distribution1 minute
  • Hypergeometric and Binomial Distributions Relationship2 minutes
  • Hypergeometric Distribution Case Study3 minutes
  • Estimating an Unknown Population Size1 minute
  • Intro to Video: The Negative Binomial Distribution1 minute
  • Negative Binomial Distribution Applications2 minutes
  • Intro to Video: The Poisson Distribution1 minute
  • Poisson Distribution in Practice3 minutes
  • The Poisson Process3 minutes
  • Binomial Approximation to Poisson Distribution2 minutes
  • Comparing Various Discrete Distributions2 minutes
2 assignmentsTotal 60 minutes
  • Assess Your Learning: Binomial, Hypergeometric, and Negative Binomial Distributions30 minutes
  • Assess Your Learning: The Poisson Distribution30 minutes

In this module, we’ll learn about another type of random variable, continuous random variables. Based on this different type of random variable, we will be defining new types of probability distributions. We will explore the types of continuous random variables, probability distribution functions for continuous random variables, and then the uniform, normal, and lognormal distributions. By the end of this module, you'll be equipped with the skills to analyze, model, and interpret continuous variables and probability distributions, turning theoretical concepts into practical insights.

What's included

1 video14 readings2 assignments

1 videoTotal 8 minutes
  • Normal Distribution8 minutes
14 readingsTotal 41 minutes
  • What are Continuous Random Variables?2 minutes
  • Calculating Continuous Probability Distributions2 minutes
  • Calculating the Cumulative Distribution Function3 minutes
  • Expected Value of Continuous Random Variable5 minutes
  • Variance for Continuous Random Variables5 minutes
  • Continuous Uniform Distribution5 minutes
  • What is Normal Distribution?3 minutes
  • Intro to Video: Normal Distribution1 minute
  • Standard Normal Distribution3 minutes
  • Interpretation of the Z-Table3 minutes
  • Normal Approximation for Binomial Probabilities2 minutes
  • Continuity Correction in Binomial Approximation2 minutes
  • The Lognormal Distribution3 minutes
  • The Mean and Variance of Lognormal Random Variables2 minutes
2 assignmentsTotal 60 minutes
  • Assess Your Learning: Continuous Random Variables30 minutes
  • Assess Your Learning: The Normal Distribution30 minutes

In this module, we dive deeper into continuous probability distributions. You will explore the connections between the exponential and Poisson distributions in modeling event timing and how the gamma and Weibull distributions help analyze system reliability and failure rates. You'll also be introduced to the beta distribution, a flexible tool for modeling uncertainty in bounded processes. By the end of this module, you’ll be able to select and apply the right distribution for real-world problems, interpret key parameters, and understand their practical implications.

What's included

3 videos14 readings3 assignments

3 videosTotal 19 minutes
  • The Exponential Distribution6 minutes
  • Beta and Gamma Distribution7 minutes
  • The Weibull Distribution7 minutes
14 readingsTotal 40 minutes
  • Intro to video: The Exponential Distribution1 minute
  • Exponential Distribution2 minutes
  • Relationship With Poisson Process3 minutes
  • The Memoryless Property7 minutes
  • Intro to Video: The Beta and Gamma Distribution1 minute
  • The Gamma Distribution2 minutes
  • Reading the Incomplete Gamma Function Table5 minutes
  • When to Use the Gamma Distribution2 minutes
  • Examples of the Gamma Distribution5 minutes
  • The Beta Distribution3 minutes
  • Example: Estimating a Player’s Free-Throw Accuracy2 minutes
  • Intro to Video: The Weibull Distribution1 minute
  • The Weibull Distribution3 minutes
  • Example: Battery Cycle Life (Weibull)3 minutes
3 assignmentsTotal 90 minutes
  • Assess Your learning: Exponential Distribution30 minutes
  • Assess Your Learning: The Beta and Gamma Distributions30 minutes
  • Assess Your Learning: The Weibull Distribution30 minutes

In this module, we explore joint probability distributions—a powerful framework for analyzing how multiple random variables interact and relate to one another. You will learn how to model and interpret relationships between two random variables, whether they are continuous or discrete. We will begin by establishing the foundational concepts of joint probability distributions and examine how they capture the simultaneous behavior of random variables. You will learn to extract meaningful insights through marginal and conditional distributions, allowing you to understand both the individual behavior of variables and how they behave when other variables are fixed. Finally, we will investigate the critical concepts of covariance and correlation, developing your ability to quantify dependency relationships between random variables and determine whether they move together, in opposition, or independently. By the end of this module, you will have the analytical tools necessary to examine complex probabilistic systems involving two interrelated variables—an essential skill for advanced statistical modeling and data analysis.

What's included

1 video16 readings2 assignments

1 videoTotal 11 minutes
  • Discrete Joint Probability Distribution11 minutes
16 readingsTotal 55 minutes
  • Introduction to Discrete Joint Probability Distribution4 minutes
  • Example: Tech Nest3 minutes
  • Marginal Distributions for Discrete Random Variables3 minutes
  • Intro to Video: Discrete Joint Probability Distribution1 minute
  • Continuous Joint Probability Distributions3 minutes
  • Example: Airport Security Lanes5 minutes
  • Marginal Probability4 minutes
  • Independent Random Variables5 minutes
  • Conditional Distributions5 minutes
  • Expected Values for Joint Random Variables4 minutes
  • Solved Example: Alex's Gadget Shop3 minutes
  • Solved Example: Warehouse Shelf Distance4 minutes
  • Covariance of Joint Random Variables3 minutes
  • Solved Example for Covariance of Joint Random Variables3 minutes
  • Correlation Between Two Variables3 minutes
  • Congratulations!2 minutes
2 assignmentsTotal 60 minutes
  • Assess Your Learning: Discrete and Continuous Joint Probability30 minutes
  • Assess Your Learning: Relationships Between Random Variables30 minutes

Instructor

Northeastern University
3 Courses778 learners

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