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Probability And Statistics Masterclass - Making Maths Fun - OneDDL - 08-09-2024 Free Download Probability And Statistics Masterclass - Making Maths Fun Last updated 2/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 8.02 GB | Duration: 20h 15m Learn everything from Probability, Statistics, Permutation and Combination with walk along practice questions What you'll learn Visualizing data, including bar graphs, pie charts, histograms Data distributions, including mean, variance, and standard deviation, and normal distributions and z-scores Analyzing data, including mean, median, and mode, plus range and IQR and box plots Different types of distribution - Bernoulli, Binomial, Uniform, Normal, Pareto, Chi square, Hypothesis Testing, Central limit theorem Probability, including union vs. intersection and independent and dependent events and Bayes' theorem Permutation with examples Combination with examples Different types of distributions - Uniform, Log Normal, Pareto, Normal, Binomial, Bernoulli Chi Square distribution and Goodness of Fit Central Limit Theorem Hypothesis Testing Requirements Foundation in Mathematics Description PROBABILITY & STATISTICS MASTERCLASS IS SET UP TO MAKE LEARNING FUN AND EASYThis 100+ lesson course includes 20+ hours of high-quality video and text explanations of everything from Probability, Statistics, Permutation and Combination. Topic is organized into the following sectionsata Type - Random variable, discrete, continuous, categorical, numerical, nominal, ordinal, qualitative and quantitative data typesVisualizing data, including bar graphs, pie charts, histograms, and box plotsAnalyzing data, including mean, median, and mode, IQR and box-and-whisker plotsData distributions, including standard deviation, variance, coefficient of variation, Covariance and Normal distributions and z-scoresDifferent types of distributions - Uniform, Log Normal, Pareto, Normal, Binomial, BernoulliChi Square distribution and Goodness of FitCentral Limit TheoremHypothesis TestingProbability, including union vs. intersection and independent and dependent events and Bayes' theorem, Total Law of ProbabilityHypothesis testing, including inferential statistics, significance levels, test statistics, and p-valuesPermutation with examplesCombination with examplesExpected Value.AND HERE'S WHAT YOU GET INSIDE OF EVERY SECTION:We will start with basics and understand the intuition behind each topicVideo lecture explaining the concept with many real life examples so that the concept is drilled inWalkthrough of worked out examples to see different ways of asking question and solving themLogically connected concepts which slowly builds up Enroll today ! Can't wait to see you guys on the other side and go through this carefully crafted course which will be fun and easy.YOU'LL ALSO GET:Lifetime access to the courseFriendly support in the Q&A sectionUdemy Certificate of Completion available for download30-day money back guarantee Overview Section 1: Getting Started Lecture 1 Introduction Section 2: Visualizing Data Lecture 2 What is a random variable Lecture 3 Nominal and Ordinal Data Lecture 4 Introduction to Central Tendency Lecture 5 Central Tendency - Examples Lecture 6 Data Visualization Lecture 7 Types of Quartiles, Inter Quartile Range, Percentiles Lecture 8 Types of Quartile, Inter Quartile Range - Example Section 3: Basics of Statistics Lecture 9 Standard Devation & Variance Lecture 10 Sample Standard Deviation Lecture 11 Co-variance Lecture 12 Normal Distribution Lecture 13 Chi Square Distribution Lecture 14 Chi Square Goodness of Fit Lecture 15 Association between Categorical variables Lecture 16 Correlation Section 4: Advanced Statistics Lecture 17 Probability Mass Function Lecture 18 Probability Distribution Function Lecture 19 Bernoulli Distribution Lecture 20 Binomial Distribution Lecture 21 Expected Value Lecture 22 Expected Value - Example Lecture 23 Expected Value for Bernoulli Distribution Lecture 24 Expected Value for Binomial Distribution Lecture 25 Law of large numbers Lecture 26 Normal Distribution and its properties Lecture 27 Impact of standard deviation on the PDF Lecture 28 Cumulative Distribution Function Lecture 29 Formula of Normal Distribution Lecture 30 Understanding Normal Distribution through excel Lecture 31 Normal Standard deviation Lecture 32 Extreme values in normal distribution Lecture 33 Z score Introduction Lecture 34 Z score detailed explanation Lecture 35 How to read a z score table Lecture 36 Using z score - Example 1 Lecture 37 Using z score - Example 2 Lecture 38 Using z score - Example 3 Lecture 39 Using z score - Example 4 Lecture 40 Symmetric Distribution and Skewness Lecture 41 Central Limit Theorem - Introduction Lecture 42 Central Limit Theorem - Revisiting Lecture 43 Central Limit Theorem - Conclusion Lecture 44 Central Limit Theorem - Solved Example 1 Lecture 45 Central Limit Theorem - Solved Example 2 Lecture 46 Uniform Distribution Lecture 47 Log Normal Distribution Lecture 48 Log Normal Distribution - Examples Lecture 49 Power Law Distribution Lecture 50 Pareto Distribution Lecture 51 Pareto Distribution Formula Lecture 52 Q-Q plot Lecture 53 Box Cox Transformation Lecture 54 How distributions are used Lecture 55 Introduction to Null Hypothesis Lecture 56 Confidence Interval - Example 1 Lecture 57 Confidence Interval - Example 2 Lecture 58 z table vs t table Lecture 59 Hypothesis Testing - Example 1 Lecture 60 Hypothesis Testing - Example 2 Lecture 61 Hypothesis Testing - Example 3 Lecture 62 Concluding Hypothesis Testing Section 5: Introduction to Probability Lecture 63 Introduction to Probability Lecture 64 Laws of Probability - Conditional Probability & Bayes Theorem Lecture 65 Laws of Probability - Mutually Exclusive and Independent Events Lecture 66 Probability - Examples to Practice - Part1 Lecture 67 Probability - Examples to Practice - Part2 Lecture 68 Chain Rule of Probability Lecture 69 Chain Rule of Probability - Example Lecture 70 Chain Rule of Probability - Cards Example Lecture 71 Birthday Paradox Lecture 72 Probability - More Examples - Part 1 Lecture 73 Probability - More Examples - Part 2 Lecture 74 Probability - More Examples - Part3 Lecture 75 Probability Trees Lecture 76 Total Law of Probability Lecture 77 Total Law of Probability - Example Lecture 78 Probability - More Examples Lecture 79 Total Law of Probability - More Examples Section 6: Introduction to Permutation and Combination through Examples Lecture 80 Permutation & Combinations - Introduction Lecture 81 Permutation & Combinations - Examples - Part 1 Lecture 82 Permutation & Combinations - Examples - Part 2 Lecture 83 Permutation & Combinations - Examples - Part 3 Lecture 84 Permutation & Combinations - Examples - Part 4 Lecture 85 Permutation & Combinations - Examples - Part 5 Lecture 86 Permutation & Combinations - Examples - Part 7 Section 7: Permutation through Formula Lecture 87 Factorial Notation Lecture 88 Introduction to Permutation - Part 1 Lecture 89 Introduction to Permutation - Part 2 Lecture 90 Introduction to Permutation - Part 3 Lecture 91 Permutation - Examples 1 Lecture 92 Permutation - Part 3 - Examples 1 Lecture 93 Permutation - Part 3 - Examples 2 Lecture 94 Permutation - Examples 2 Lecture 95 Permutation - Examples 3 Lecture 96 Introduction to Permutation - Part 4 Section 8: Introduction to Combination Lecture 97 Introduction to Combinations Lecture 98 Combination - More Examples 1 Lecture 99 Combination - More Examples 2 Lecture 100 Combination - More Examples 3 Section 9: Expected Value Lecture 101 What is Expected Value Lecture 102 Expected Value - Example1 Lecture 103 Properties of Expected Value - Part1 Lecture 104 Properties of Expected Value - Part2 Lecture 105 Properties of Expected Value - Part3 Lecture 106 Properties of Expected Value - Part4 Lecture 107 Expected Value - Example2 Lecture 108 Expected Value - Example3 Lecture 109 Expected Value - Example4 Section 10: Miscellaneous Lecture 110 Probability - Examples 1 Lecture 111 Probability - Examples 2 Lecture 112 Probability - Examples 3 Students currently studying probability and statistics or students about to start probability and statistics,Anyone who wants to study math for fun,Anyone wanting to learn foundational Maths for Data Science Homepage Recommend Download Link Hight Speed | Please Say Thanks Keep Topic Live No Password - Links are Interchangeable |