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    Probability And Statistics For Undergraduate Students

    Posted By: ELK1nG
    Probability And Statistics For Undergraduate Students

    Probability And Statistics For Undergraduate Students
    Published 6/2025
    MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
    Language: English | Size: 30.85 GB | Duration: 31h 51m

    Foundations of Probability and Statistics for STEM Students and Engineers

    What you'll learn

    Master basic probability concepts, including conditional probability and Bayes’ Theorem.

    Use descriptive statistics to summarize and analyze data.

    Work with key distributions: Binomial, Poisson, and Normal.

    Perform hypothesis tests and calculate confidence intervals.

    Solve real-world STEM problems using statistics.

    Build data interpretation and critical thinking skills.

    Requirements

    A basic understanding of algebra

    Interest in STEM fields like engineering, science, or computer science

    No prior knowledge of statistics or probability is required

    A calculator (scientific or graphing) is recommended for practice problems

    Description

    Unlock the fundamentals of Probability and Statistics with this comprehensive course designed specifically for STEM undergraduates and aspiring engineers. Whether you’re preparing for exams like the FE, enhancing your analytical skills, or building a strong foundation in data analysis and probability theory, this course offers everything you need.Starting with basic concepts such as probability rules and descriptive statistics, the course advances to key topics including discrete and continuous probability distributions, sampling methods, and hypothesis testing. You’ll develop the ability to interpret data, assess uncertainty, and make informed decisions based on statistical reasoning—skills crucial in engineering, computer science, physics, biology, and other STEM fields.What You’ll Learn:Understand core probability concepts including conditional probability and Bayes’ Theorem.Summarize and analyze data using descriptive statistics and visualization techniques.Work with important distributions like Binomial, Poisson, and Normal to model real-world phenomena.Perform hypothesis testing and construct confidence intervals to support decision making.Apply statistical methods to solve practical problems relevant to STEM careers and research.What’s Included:Over 120 engaging video lectures with clear explanations and real-world examples.Interactive quizzes and practice problems to reinforce your learning.Step-by-step walkthroughs of probability and statistics problems common in exams and professional work.This course is perfect for:Undergraduate STEM students in engineering, computer science, physics, mathematics, and related fields.Students preparing for the FE exam or other professional certification tests.Anyone seeking to strengthen their statistical reasoning and data analysis skills.With hands-on problem-solving and accessible teaching, this course will equip you with the confidence to tackle statistics challenges in your academic and professional journey. Enroll today and build a strong foundation in Probability and Statistics!

    Overview

    Section 1: Descriptive Statistics

    Lecture 1 Population Versus Sample

    Lecture 2 Descriptive and Inferential Statistics

    Lecture 3 Frequency and Relative Frequency

    Lecture 4 Qualitative Data and Bar Graphs

    Lecture 5 Quantitative Data (Single-Valued Tables)

    Lecture 6 Quantitative Data (Class Intervals)

    Lecture 7 Histograms and Polygons

    Lecture 8 Cumulative Frequency Distribution Tables

    Lecture 9 Stem and Leaf Displays

    Lecture 10 Problem Solving Session 1

    Lecture 11 Problem Solving Session 2

    Lecture 12 Problem Solving Session 3

    Lecture 13 Measures of Center

    Lecture 14 Problem Solving Session 4

    Lecture 15 Symmetric And Skewed Histograms

    Lecture 16 Measures of Variability

    Lecture 17 Variance and Standard Deviation

    Lecture 18 Problem Solving Session 5

    Lecture 19 Trimmed Mean

    Lecture 20 Quartiles

    Lecture 21 Percentiles

    Lecture 22 Interquartile Range (IQR) and Outliers

    Lecture 23 Problem Solving Session 6

    Lecture 24 Problem Solving Session 7

    Lecture 25 BoxPlot

    Lecture 26 Problem Solving Session 8

    Section 2: Sample Space, Events, and Set Theory

    Lecture 27 Sample Space and Probability of Events

    Lecture 28 Relationships Between Sets

    Lecture 29 Venn Diagram

    Lecture 30 Axioms and Properties

    Lecture 31 Conditional Probability

    Lecture 32 Bayes' Theorem

    Lecture 33 Tree Diagram

    Lecture 34 Problem 1

    Lecture 35 Problem 2

    Lecture 36 Problem 3

    Lecture 37 Problem 4

    Lecture 38 Problem 5

    Lecture 39 Problem 6

    Section 3: Counting Techniques

    Lecture 40 Multiplication Rule

    Lecture 41 Factorials

    Lecture 42 Permutations and Combinations

    Lecture 43 Problem 1

    Lecture 44 Fixing Positions

    Lecture 45 Fixing Order

    Lecture 46 Distributing Indistinguishable Balls into Distinguishable Boxes

    Lecture 47 Problem 2

    Lecture 48 Problem 3

    Lecture 49 Problem 4

    Lecture 50 Problem 5

    Lecture 51 Problem 6

    Section 4: Discrete Probability Distributions

    Lecture 52 Discrete and Continuous Random Variables

    Lecture 53 Discrete Probability Mass Function, Expected Value, and Variance

    Lecture 54 Expected Value and Variance of Functions of x

    Lecture 55 Cumulative Distribution Functions

    Lecture 56 Probability Density Functions and Cumulative Density Functions

    Lecture 57 The Bernoulli Distribution

    Lecture 58 The Binomial Distribution

    Lecture 59 Cumulative Distribution Table of the Binomial Distribution

    Lecture 60 The Hypergeometric Distribution

    Lecture 61 The Geometric Distribution

    Lecture 62 The Negative Binomial Distribution

    Lecture 63 The Poisson Distribution

    Lecture 64 Cumulative Distribution table of the Poisson Distribution

    Lecture 65 Approximating the Hypergeometric Distribution with the Binomial Distribution

    Lecture 66 Approximating the Binomial Distribution by the Poisson Distribution

    Lecture 67 Problem 1

    Section 5: Continuous Probability Distributions

    Lecture 68 Probability Density Function for Continuous Random Variables

    Lecture 69 Problem 1

    Lecture 70 Expected Value and Variance

    Lecture 71 Cumulative Distribution Function

    Lecture 72 Problem 2

    Lecture 73 Continuous Probability Distributions

    Lecture 74 The Uniform Distribution

    Lecture 75 The Normal Distribution

    Lecture 76 The Standard Normal Distribution Curve

    Lecture 77 From X to Z

    Lecture 78 The Exponential Distribution

    Lecture 79 The Memoryless Property

    Lecture 80 Exponentials in a Poisson Process

    Lecture 81 The Gamma Distribution

    Lecture 82 The Incomplete Gamma Function

    Lecture 83 The Chi Squared Distribution

    Lecture 84 Approximating the Binomial Distribution by the Normal Distribution

    Lecture 85 From on Probability Density Function to Another

    Section 6: Joint Probability Distributions of Two Random Variables

    Lecture 86 Introduction to Joint Probability Distribution

    Lecture 87 Joint Probability Mass Function in Two Discrete Random Variables

    Lecture 88 Expected Value of a Function of Two Discrete Random Variables

    Lecture 89 Covariance and Linear Relationship

    Lecture 90 Correlation of Two Random Variables

    Lecture 91 Independence of Two Discrete Random Variables

    Lecture 92 Introduction to Joint Probability Density Function of Two Continuous Random Vars

    Lecture 93 Problem 1: Review on Double Integrals

    Lecture 94 Problem 2: Review on Double Integrals

    Lecture 95 Marginal pdf in Two Continuous Random Variables

    Lecture 96 Expected Value of a Function of Two Continuous Random Variables

    Lecture 97 Problem 3

    Lecture 98 Problem 4

    Lecture 99 Problem 5

    Lecture 100 Problem 6

    Lecture 101 Problem 7

    Lecture 102 Conditional Pmf and Conditional Pdf

    Lecture 103 Conditional Expectations

    Lecture 104 Expected Value and Variance of Linear Combination

    Section 7: Sampling Distributions

    Lecture 105 Introduction to Sampling Distributions

    Lecture 106 Sampling Distribution of the Sample Mean for Normal Population

    Lecture 107 Central Limit Theorem

    Lecture 108 Sampling Distribution of Sample Proportion

    Lecture 109 Sampling Distribution of Sample Variance

    Section 8: Confidence Intervals

    Lecture 110 Point Estimates

    Lecture 111 Biased and Unbiased Estimators

    Lecture 112 Standard Error of the Estimate

    Lecture 113 Method of Moments

    Lecture 114 Introduction to Confidence Intervals

    Lecture 115 Confidence Intervals for Population Mean with Known Standard Deviation

    Lecture 116 Margin of Error, Width, and Sample Size

    Lecture 117 T-Distribution

    Lecture 118 T-Tables

    Lecture 119 Confidence Interval for Population Mean with Unknown Sigma (n<40)

    Lecture 120 Confidence Interval for Population Mean with Unknown Sigma (n>40)

    Lecture 121 Summary

    Lecture 122 Problem 1

    Lecture 123 Confidence Interval for Population Proportion

    Lecture 124 Confidence Interval for Population Variance

    Lecture 125 Problem 2

    Section 9: Hypothesis Testing

    Lecture 126 Null and Alternative Hypothesis

    Lecture 127 Types of Errors

    Lecture 128 Critical Value Approach

    Lecture 129 Critical Value Approach with Unknown Sigma

    Lecture 130 Critical Value Approach For p When Binomial is Approximately Normal

    Lecture 131 Critical Value Approach For p When Binomial is NOT Approximately Normal

    Lecture 132 Critical Value Approach For Population Variance

    Lecture 133 P-value Approach for Population Mean with Known Sigma

    Lecture 134 P-value Approach for Population Mean with Unknown Sigma

    Lecture 135 P-value Approach for p with Normal Approximation

    Lecture 136 P-value Approach for p without Normal Approximation

    Lecture 137 P-value Approach for Population Variance

    This course is designed for undergraduate students in STEM majors—including engineering, computer science, physics, biology, and mathematics—who want a solid foundation in probability and statistics. It’s also ideal for students preparing for the FE exam or anyone looking to strengthen their skills for data-driven problem solving. No prior statistics background is required.