Engineering Probability and Statistics Part 2 covers the principles of statistical inference, including sampling distributions, confidence intervals, hypothesis testing, and analysis of variance (ANOVA) for comparing means across multiple groups.

Engineering Probability and Statistics Part 2

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There are 7 modules in this course
In this module, you will learn how to define null and alternative hypotheses, which form the foundation of any hypothesis test. You’ll explore the concepts of type I and type II errors and understand their impact on decision-making. The lesson will guide you in distinguishing between one-tailed and two-tailed tests, helping you choose the appropriate test for different scenarios. Finally, you will learn to interpret p-values and assess statistical significance, enabling you to draw meaningful conclusions from data and make informed decisions based on statistical evidence.
What's included
5 videos19 readings4 assignments
5 videos• Total 26 minutes
- Course Introduction• 2 minutes
- Meet Your Faculty• 1 minute
- Introduction to Hypothesis Testing• 8 minutes
- One-Sample t-Test• 7 minutes
- Hypothesis Test for a Proportion• 7 minutes
19 readings• Total 199 minutes
- Welcome to Engineering Probability and Statistics• 4 minutes
- Engineering Probability & Statistics Part 2 Syllabus• 10 minutes
- Course Communication and Support• 10 minutes
- Academic Integrity• 5 minutes
- Statistical Hypothesis• 2 minutes
- Intro to Video: Introduction to Hypothesis Testing• 2 minutes
- Drawing a Conclusion• 10 minutes
- Types of Errors in Hypothesis Testing• 20 minutes
- Z-tests for Hypotheses About a Population Mean• 20 minutes
- Interpreting P-values and Rejection Regions• 10 minutes
- Rejection Regions• 10 minutes
- Solved Examples for One-Sample Z-test• 20 minutes
- Two-Tail Test• 10 minutes
- Intro to Video: One-Sample t-Test• 2 minutes
- One Sample t-Test Example• 10 minutes
- Visualizing P-values for One-and Two-Tailed Tests• 20 minutes
- Tests Concerning a Population Proportion• 15 minutes
- Intro to Video: Hypothesis Test for a Proportion• 2 minutes
- Choosing the Right Hypothesis Test• 17 minutes
4 assignments• Total 120 minutes
- Assess Your Learning: Introduction to Hypothesis Testing• 30 minutes
- Assess Your Learning: The Z-test for Population Mean• 30 minutes
- Assess Your Learning : One-Sample t-Test for Small-Sample Size• 30 minutes
- Assess Your Learning: Hypothesis testing for Population Proportion• 30 minutes
This module explores the fundamental concepts of sampling distributions and their crucial role in statistical inference. You'll investigate how samples drawn from the same population naturally vary, creating a distribution of statistical measures rather than a single fixed value. Through hands-on examples, you'll learn to distinguish between sample statistics (such as means and proportions) and their underlying distributions, gaining insight into how these sample values fluctuate around population parameters. We'll place special emphasis on the distribution of the sample mean, examining its properties and significance as a cornerstone of statistical inference. The module culminates with an exploration of the central limit theorem—one of statistics' most powerful principles—which allows us to make reliable approximations of sampling distributions regardless of the original population's shape. By understanding these concepts, you'll develop the essential foundation needed to construct confidence intervals, perform hypothesis tests, and make data-driven decisions in the face of uncertainty.
What's included
9 readings2 assignments
9 readings• Total 95 minutes
- Sampling Variability• 5 minutes
- Sample Statistics as Random Variables• 5 minutes
- Variability Measures of a Sample• 10 minutes
- From Random Samples to Sampling Distributions• 10 minutes
- Example: MP3 Player Configuration• 10 minutes
- The Distribution of Sample Mean• 10 minutes
- Central Limit Theorum• 10 minutes
- Example: Bananas at the Supermarket• 20 minutes
- Inferences on the Population Mean• 15 minutes
2 assignments• Total 60 minutes
- Assess Your Learning: Sampling and Variability• 30 minutes
- Assess Your Learning: Sample Mean Distribution and Central Limit Theorem (CLT)• 30 minutes
This module explores how we bridge the gap between sample data and population parameters through statistical estimation. We begin with point estimation, where single values from our sample serve as our "best guess" for unknown population parameters. We'll examine various point estimators and their properties before expanding to confidence intervals, which provide a measure of precision that point estimates lack. You'll learn how confidence levels represent the reliability of our estimation procedure and explore the critical relationship between sample size and interval width. The concepts of margin of error and precision will be central to our discussions, showing how larger samples typically yield narrower intervals and more precise estimates. We'll also address common misinterpretations of confidence intervals to ensure proper application. Throughout the module, we'll apply these techniques to real-world scenarios across disciplines, demonstrating how statistical intervals enable data-driven decisions with quantified uncertainty. Whether estimating population means or proportions, these methods provide a systematic approach to making inferences with incomplete information—a fundamental skill in statistical analysis.
What's included
1 video12 readings2 assignments
1 video• Total 8 minutes
- Introduction to Confidence Intervals• 8 minutes
12 readings• Total 137 minutes
- What are Point Estimators?• 10 minutes
- How to Select the Right Estimator• 15 minutes
- The Minimum Variance Unbiased Estimator• 10 minutes
- Principle of Minimum Variance Unbiased Estimation• 10 minutes
- Unbiased Estimator for Proportion• 15 minutes
- Confidence Intervals and Confidence Levels• 10 minutes
- Intro to Video: Introduction to Confidence Intervals• 2 minutes
- Confidence Intervals of Population Mean• 20 minutes
- Other Levels of Confidence• 10 minutes
- Example: Engine production Process• 20 minutes
- Confidence Level and Precision• 10 minutes
- Example: Quality Control in Light Bulbs• 5 minutes
2 assignments• Total 60 minutes
- Assess Your Learning: Point Estimation• 30 minutes
- Assess Your Learning: Confidence Levels and Confidence Intervals • 30 minutes
In this module, you’ll learn how to estimate unknown population values using sample data through the construction of confidence intervals. These intervals provide a range of plausible values for population parameters and help quantify the uncertainty associated with your estimates. We’ll begin with methods for large samples, where the z-distribution can be used to construct confidence intervals for population means and proportions. Then, we’ll move on to small samples, where we use the t-distribution to account for greater uncertainty due to limited data. You’ll also explore the use of one-sided confidence intervals, which allow you to estimate just an upper or lower bound when needed—such as showing a minimum requirement is met or a maximum is not exceeded. By the end of the module, you’ll be able to select the appropriate confidence interval method based on your data, calculate interval bounds, and interpret the results in real-world situations.
What's included
2 videos9 readings3 assignments
2 videos• Total 12 minutes
- Confidence Interval for Small Samples• 7 minutes
- Confidence Interval for Population Proportion• 5 minutes
9 readings• Total 69 minutes
- Large-Sample CI for Population Mean• 10 minutes
- Example: Carbon Steel• 5 minutes
- Confidence Intervals based on a Normal Population Distribution• 10 minutes
- Properties of the t-Distribution• 5 minutes
- Intro to Video: Confidence Interval for Small Samples• 2 minutes
- Confidence Intervals for Small Samples• 20 minutes
- Intro to Video: Confidence Interval for Population Proportion• 2 minutes
- Two-Bounds Confidence Intervals• 5 minutes
- One-Bound Confidence Intervals• 10 minutes
3 assignments• Total 90 minutes
- Assess Your Learning: Confidence Intervals for a Large Sample Size• 30 minutes
- Assess Your Learning: Confidence Intervals for Small Samples• 30 minutes
- Assess Your Learning: One-Bound vs. Two Bound Confidence Intervals• 30 minutes
This module explores three essential statistical methods for comparing population parameters: the Two-Sample Z-Test, the Two-Sample T-Test, and the Two-Proportion Z-Test. These tests are critical for evaluating whether differences between two groups—whether means or proportions are statistically significant. Together, these tools enable learners to analyze real-world scenarios, ranging from educational interventions to consumer preferences—by forming hypotheses, calculating test statistics and p-values, and making informed, data-driven decisions.
What's included
4 videos20 readings4 assignments
4 videos• Total 33 minutes
- Inferences for Two Means• 9 minutes
- Two Sample t-Test for Independent Means• 9 minutes
- Paired t-Test for Comparing Two Means• 8 minutes
- Inference for Two Population Proportions• 7 minutes
20 readings• Total 198 minutes
- Inferences Based on Two Samples• 10 minutes
- Intro to Video: Inferences for Two Means• 2 minutes
- z-Test for Comparing Two Population means• 5 minutes
- Performing the z-Test• 10 minutes
- Example: Rockwell Hardness• 15 minutes
- Confidence Interval for the Difference Between Two Means (Z-Test)• 10 minutes
- Example: Types of Steel• 15 minutes
- Intro to Video: Two Sample t-Test for Independent Means• 2 minutes
- The Two-Sample t-Test• 10 minutes
- Hypothesis Testing Using Two-Sample t-Test• 10 minutes
- Hypothesis Setup• 20 minutes
- Confidence Interval for the Difference Between Two Means (t-Test)• 15 minutes
- Intro to Video: Paired t-Test for Comparing Two Means• 2 minutes
- Hypothesis Testing for Paired Data• 10 minutes
- Confidence Interval for Paired Data• 10 minutes
- Intro to Video: Inference for Two Population Proportions• 2 minutes
- Inferences Concerning a Difference Between Population Proportions• 5 minutes
- Application-Why use this?• 10 minutes
- Alternative Hypotheses and P-Value Areas• 20 minutes
- Confidence Interval for Difference Between Two Proportions• 15 minutes
4 assignments• Total 120 minutes
- Assess Your Learning: Inferences about two population means-Known variances• 30 minutes
- Assess Your Learning: Inferences about Two Independent Means• 30 minutes
- Assess Your Learning: Inferences about Two-Paired Samples• 30 minutes
- Assess Your Learning: Inferences about Two Population Proportions• 30 minutes
This module introduces One-Way ANOVA, a method used to compare three or more group means in a statistically valid way. You’ll learn how ANOVA partitions total variability into components, how to test for group differences using the F-statistic, and how to follow up with Tukey’s post-hoc procedure to identify which groups differ. The focus is on both statistical interpretation and practical application in engineering and experimental contexts.
What's included
2 videos10 readings3 assignments
2 videos• Total 16 minutes
- Intro to Analysis of Variance• 9 minutes
- Post-Hoc Analysis• 7 minutes
10 readings• Total 64 minutes
- Why ANOVA Works: Need, Logic, and Assumptions• 5 minutes
- ANOVA Hypothesis• 10 minutes
- Intro to Video: Intro to Analysis of Variance• 2 minutes
- The F-Test• 5 minutes
- Understanding the F-Distribution• 10 minutes
- Understanding the ANOVA Table Structure• 15 minutes
- The ANOVA Decision Process• 5 minutes
- Why is Post-Hoc Analysis Necessary?• 5 minutes
- Intro to Video: Post-Hoc Analysis• 2 minutes
- Alternative Post-Hoc Methods• 5 minutes
3 assignments• Total 90 minutes
- Assess Your Learning: Introduction to Analysis of Variance (ANOVA)• 30 minutes
- Performing and Interpreting the F-Test• 30 minutes
- Assess Your Learning: Post-Hoc Analysis-Tukey's Procedure• 30 minutes
In this final module, you’ll bring together everything you’ve learned in this course to analyze real-world case studies, reflect on your learning, and communicate your statistical insights effectively. You'll apply inferential methods like confidence intervals, hypothesis testing, ANOVA, and correlation analysis to authentic data sets from medicine, geology, and finance. The emphasis is now on synthesis—integrating methods, interpreting results with clarity, evaluating the assumptions behind statistical tests, and making informed decisions. You’ll demonstrate this in your group video presentations, offer peer feedback, and participate in a discussion on how your thinking and skills have evolved. This module also reinforces the importance of clear statistical communication—how to translate findings into understandable, actionable conclusions for different audiences.
What's included
5 readings
5 readings• Total 86 minutes
- Case Study Background• 15 minutes
- Dataset Calculations• 20 minutes
- Geology Case Study Background• 20 minutes
- Case Study Background• 30 minutes
- Congratulations!• 1 minute
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