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Math 0-1: Probability For Data Science & Machine Learning - AD-TEAM - 10-11-2024 Math 0-1: Probability For Data Science & Machine Learning Published 9/2024 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 12.73 GB | Duration: 17h 30m A Casual Guide for Artificial Intelligence, Deep Learning, and Python Programmers
[b]What you'll learn[/b] Conditional probability, Independence, and Bayes' Rule Use of Venn diagrams and probability trees to visualize probability problems Discrete random variables and distributions: Bernoulli, categorical, binomial, geometric, Poisson Continuous random variables and distributions: uniform, exponential, normal (Gaussian), Laplace, Gamma, Beta Cumulative distribution functions (CDFs), probability mass functions (PMFs), probability density functions (PDFs) Joint, marginal, and conditional distributions Multivariate distributions, random vectors Functions of random variables, sums of random variables, convolution Expected values, expectation, mean, and variance Skewness, kurtosis, and moments Covariance and correlation, covariance matrix, correlation matrix Moment generating functions (MGF) and characteristic functions Key inequalities like Markov, Chebyshev, Cauchy-Schwartz, Jensen Convergence in probability, convergence in distribution, almost sure convergence Law of large numbers and the Central Limit Theorem (CLT) Applications of probability in machine learning, data science, and reinforcement learning [b]Requirements[/b] College / University-level Calculus (for most parts of the course) College / University-level Linear Algebra (for some parts of the course) [b]Description[/b] Common scenario: You try to get into machine learning and data science, but there's SO MUCH MATH.Either you never studied this math, or you studied it so long ago you've forgotten it all.What do you do?Well my friends, that is why I created this course.Probability is one of the most important math prerequisites for data science and machine learning. It's required to understand essentially everything we do, from the latest LLMs like ChatGPT, to diffusion models like Stable Diffusion and Midjourney, to statistics (what I like to call "probability part 2").Markov chains, an important concept in probability, form the basis of popular models like the Hidden Markov Model (with applications in speech recognition, DNA analysis, and stock trading) and the Markov Decision Process or MDP (the basis for Reinforcement Learning).Machine learning (statistical learning) itself has a probabilistic foundation. Specific models, like Linear Regression, K-Means Clustering, Principal Components Analysis, and Neural Networks, all make use of probability.In short, probability cannot be avoided!If you want to do machine learning beyond just copying library code from blogs and tutorials, you must know probability.This course will cover everything that you'd learn (and maybe a bit more) in an undergraduate-level probability class. This includes random variables and random vectors, discrete and continuous probability distributions, functions of random variables, multivariate distributions, expectation, generating functions, the law of large numbers, and the central limit theorem.Most important theorems will be derived from scratch. Don't worry, as long as you meet the prerequisites, they won't be difficult to understand. This will ensure you have the strongest foundation possible in this subject. No more memorizing "rules" only to apply them incorrectly / inappropriately in the future! This course will provide you with a deep understanding of probability so that you can apply it correctly and effectively in data science, machine learning, and beyond.Are you ready?Let's go!Suggested prerequisitesifferential calculus, integral calculus, and vector calculusLinear algebraGeneral comfort with university/collegelevel mathematics Overview Section 1: Welcome Lecture 1 Introduction Lecture 2 Outline Lecture 3 How to Succeed in this Course Section 2: Probability Basics Lecture 4 What Is Probability? Lecture 5 Wrong Definition of Probability (Common Mistake) Lecture 6 Wrong Definition of Probability (Example) Lecture 7 Probability Models Lecture 8 Venn Diagrams Lecture 9 Properties of Probability Models Lecture 10 Union Example Lecture 11 Law of Total Probability Lecture 12 Conditional Probability Lecture 13 Bayes' Rule Lecture 14 Bayes' Rule Example Lecture 15 Independence Lecture 16 Mutual Independence Example Lecture 17 Probability Tree Diagrams Section 3: Random Variables and Probability Distributions Lecture 18 What is a Random Variable? Lecture 19 The Bernoulli Distribution Lecture 20 The Categorical Distribution Lecture 21 The Binomial Distribution Lecture 22 The Geometric Distribution Lecture 23 The Poisson Distribution Section 4: Continuous Random Variables and Probability Density Functions Lecture 24 Continuous Random Variables and Continuous Distributions Lecture 25 Physics Analogy Lecture 26 More About Continuous Distributions Lecture 27 The Uniform Distribution Lecture 28 The Exponential Distribution Lecture 29 The Normal Distribution (Gaussian Distribution) Lecture 30 The Laplace (Double Exponential) Distribution Section 5: More About Probability Distributions and Random Variables Lecture 31 Cumulative Distribution Function (CDF) Lecture 32 Exercise: CDF of Geometric Distribution Lecture 33 CDFs for Continuous Random Variables Lecture 34 Exercise: CDF of Normal Distribution Lecture 35 Change of Variables (Functions of Random Variables) pt 1 Lecture 36 Change of Variables (Functions of Random Variables) pt 2 Lecture 37 Joint and Marginal Distributions pt 1 Lecture 38 Joint and Marginal Distributions pt 2 Lecture 39 Exercise: Marginal of Bivariate Normal Lecture 40 Conditional Distributions and Bayes' Rule Lecture 41 Independence Lecture 42 Exercise: Bivariate Normal with Zero Correlation Lecture 43 Multivariate Distributions and Random Vectors Lecture 44 Multivariate Normal Distribution / Vector Gaussian Lecture 45 Multinomial Distribution Lecture 46 Exercise: MVN to Bivariate Normal Lecture 47 Exercise: Multivariate Normal, Zero Correlation Implies Independence Lecture 48 Multidimensional Change of Variables (Discrete) Lecture 49 Multidimensional Change of Variables (Continuous) Lecture 50 Convolution From Adding Random Variables Lecture 51 Exercise: Sums of Jointly Normal Random Variables (Optional) Section 6: Expectation and Expected Values Lecture 52 Expected Value and Mean Lecture 53 Properties of the Expected Value Lecture 54 Variance Lecture 55 Exercise: Mean and Variance of Bernoulli Lecture 56 Exercise: Mean and Variance of Poisson Lecture 57 Exercise: Mean and Variance of Normal Lecture 58 Exercise: Mean and Variance of Exponential Lecture 59 Moments, Skewness and Kurtosis Lecture 60 Exercise: Kurtosis of Normal Distribution Lecture 61 Covariance and Correlation Lecture 62 Exercise: Covariance and Correlation of Bivariate Normal Lecture 63 Exercise: Zero Correlation Does Not Imply Independence Lecture 64 Exercise: Correlation Measures Linear Relationships Lecture 65 Conditional Expectation pt 1 Lecture 66 Conditional Expectation pt 2 Lecture 67 Law of Total Expectation Lecture 68 Exercise: Linear Combination of Normals Lecture 69 Exercise: Mean and Variance of Weighted Sums Section 7: Generating Functions Lecture 70 Moment Generating Functions (MGF) Lecture 71 Exercise: MGF of Exponential Lecture 72 Exercise: MGF of Normal Lecture 73 Characteristic Functions Lecture 74 Exercise: MGF Doesn't Exist Lecture 75 Exercise: Characteristic Function of Normal Lecture 76 Sums of Independent Random Variables Lecture 77 Exercise: Distribution of Sum of Poisson Random Variables Lecture 78 Exercise: Distribution of Sum of Geometric Random Variables Lecture 79 Moment Generating Functions for Random Vectors Lecture 80 Characteristic Functions for Random Vectors Lecture 81 Exercise: Weighted Sums of Normals Section 8: Inequalities Lecture 82 Monotonicity Lecture 83 Markov Inequality Lecture 84 Chebyshev Inequality Lecture 85 Cauchy-Schwartz Inequality Section 9: Limit Theorems Lecture 86 Convergence In Probability Lecture 87 Weak Law of Large Numbers Lecture 88 Convergence With Probability 1 (Almost Sure Convergence) Lecture 89 Strong Law of Large Numbers Lecture 90 Application: Frequentist Perspective Revisited Lecture 91 Convergence In Distribution Lecture 92 Central Limit Theorem Section 10: Advanced and Other Topics Lecture 93 The Gamma Distribution Lecture 94 The Beta Distribution Python developers and software developers curious about Data Science,Professionals interested in Machine Learning and Data Science but haven't studied college-level math,Students interested in ML and AI but find they can't keep up with the math,Former STEM students who want to brush up on probability before learning about artificial intelligence |