riversongs Posted March 6 Report Share Posted March 6 Free Download Udemy - Mathematics For Machine Learning And LlmsPublished: 3/2025MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHzLanguage: English | Size: 2.81 GB | Duration: 15h 28mHow is math used in AIWhat you'll learnMachine Learning mathematicslinear algebra, statistics, probability and calculus for machine learningHow algorithms worksHow algorithms are parametrizidedRequirementsBasic notions of machine learningDescriptionMachine Learning is one of the hottest technologies of our time! If you are new to ML and want to become a Data Scientist, you need to understand the mathematics behind ML algorithms. There is no way around it. It is an intrinsic part of the role of a Data Scientist and any recruiter or experienced professional will attest to that. The enthusiast who is interested in learning more about the magic behind Machine Learning algorithms currently faces a daunting set of prerequisites: Programming, Large Scale Data Analysis, mathematical structures associated with models and knowledge of the application itself. A common complaint of mathematics students around the world is that the topics covered seem to have little relevance to practical problems. But that is not the case with Machine Learning.This course is not designed to make you a Mathematician, but it does provide a practical approach to working with data and focuses on the key mathematical concepts that you will encounter in machine learning studies. It is designed to fill in the gaps for students who have missed these key concepts as part of their formal education, or who need to catch up after a long break from studying mathematics.Upon completing the course, students will be equipped to understand and apply mathematical concepts to analyze and develop machine learning models, including Large Language Models.OverviewSection 1: IntroductionLecture 1 IntroductionLecture 2 The Learning DiagramLecture 3 PythonSection 2: Types of LearningLecture 4 Supervised LearnimgLecture 5 Unsupervised LearningLecture 6 Reinforcement LearningLecture 7 When to Use and Not to Use MLLecture 8 How to chose ML AlgorithmsSection 3: Data PreparationLecture 9 Preeliminar AnalysisLecture 10 The Target VariableLecture 11 Missing DataLecture 12 Log Transformation - HomocedasticityLecture 13 Outliers and Anomaly DetectionLecture 14 Data TransformationLecture 15 Data Transformation (cont.)Section 4: Statistics in the Context off MLLecture 16 Significant DifferencesLecture 17 Descriptive and Inferential StatisticsSection 5: Descriptive StatisticsLecture 18 Variables and MetricsLecture 19 Correlation and CovarianceSection 6: Probabilities for MLLecture 20 UncertainityLecture 21 Frquentist versus Bayesian ProbabilitiesLecture 22 Random Variables and SamplingLecture 23 Sampling SpacesLecture 24 Basic Definitions of ProbabilitiesLecture 25 Axions, Theorems, IndependenceLecture 26 Conditional ProbabilityLecture 27 Bayes Theorem and Naive Bayes AlgorithmLecture 28 Expectation, Chance and LikelihoodLecture 29 Maximum Likelihood Estimation (MLE)Lecture 30 SimulationsLecture 31 Monte Carlo Simulation, Markov ChainnLecture 32 Probability DistributionsLecture 33 Families of DistributionsLecture 34 Normal DistributionLecture 35 Tests for NormalityLecture 36 Exponential DistributionLecture 37 Weibull Distribution and Survival AnalysisLecture 38 Binomial DistributionLecture 39 Poisson DistributionSection 7: Statiscs TestsLecture 40 Hypothesis TestingLecture 41 The p- valueLecture 42 Critical Value, Significance, Confidence, CLT, LLNLecture 43 Z and T TestsLecture 44 Degrees of Freedom and F statisticsLecture 45 ANOVALecture 46 Chi Squared TestLecture 47 Statistical PowerLecture 48 Robustness and Statistical SufficiencySection 8: Time SeriesLecture 49 Times Series DecommpositionLecture 50 Autoregressive ModelsLecture 51 ArimaSection 9: Linear ad Non Linear ModelsLecture 52 Linear and Non Linear ModelsSection 10: Linear Algebra for MLLecture 53 Introduction to Linear AlgebraLecture 54 Types of MatricesLecture 55 Matrices OperationsLecture 56 Linear TransformationsLecture 57 Matrix Decomposition and TensorsSection 11: Calculus for MLLecture 58 FunctionsLecture 59 LimitsLecture 60 The DerivativeLecture 61 Calculating the DerivativeLecture 62 Maximum and MinimumLecture 63 Analitical vs Numerical SolutionsLecture 64 Numerical and Analytic SolutionLecture 65 Gradient DescentSection 12: Distances, Similarities, knn and k meansLecture 66 Distance MeasurementsLecture 67 SimilaritiesLecture 68 Knn and K meansLecture 69 Distances in PythonSection 13: Training, Testing ,ValidationLecture 70 Training, Testin, ValidationLecture 71 Training, Testing, Validation (cont)Section 14: The Cost FunctionLecture 72 The Cost FunctionLecture 73 Cost Function for Regression and ClassificationLecture 74 Minimazing the Cost Function with Gradient DescentLecture 75 Batch annd Stochastic Gradient DescentSection 15: Bias and VarianceLecture 76 Bias and Variance IntroductionLecture 77 ComplexityLecture 78 RegularizationLecture 79 Regularization (Cont)Section 16: Parametric andd Non Parametric AlgorithmsLecture 80 Parametric and Non Parametric AlgorithmsSection 17: Learning CurvesLecture 81 Learning CurvesLecture 82 Learning Curves in PythonSection 18: Dimensionality ReductionLecture 83 PCA and SCDLecture 84 Eigenvectors and EigenvaluesLecture 85 Dimensionality Reduction in PythonSection 19: Entropy and Information GainLecture 86 Entropy and Information GainLecture 87 Entropy and Information Gain (cont)Section 20: Linear RegressionLecture 88 Linear RegressionLecture 89 Linear Regression (cont)Lecture 90 Polinomial RegressionSection 21: ClassificationLecture 91 Logistic FunctionLecture 92 Generalized Linear Models (GLM)Lecture 93 Decision BoundariesLecture 94 Confusion MatrixLecture 95 ROC and AUCLecture 96 Visualization of Class DistributionLecture 97 Precision and RecallSection 22: Decision TreesLecture 98 Introduction to Decision TreesLecture 99 Gini IndexLecture 100 HyperparametersLecture 101 Decision Trees in PythonSection 23: Suport Vector MachinesLecture 102 Introduction to SVMsLecture 103 Introduction to SVMs (cont)Lecture 104 Mathematics of SVMsLecture 105 SVM in PythonSection 24: Ensemble AlgorithmsLecture 106 Wisdom of the CrowdsLecture 107 Bagging and Random ForestLecture 108 Adaboost, Gradient Boosting, XGBoostingSection 25: Natural Language ProcessingLecture 109 Introduction to NLPLecture 110 Tokenization and EmbeddingsLecture 111 Weights and RepresentationLecture 112 Sequences and Sentiment AnalysisSection 26: Neural NetworksLecture 113 Mathematical Model of Artificial NeuronLecture 114 Activation FunctionsLecture 115 Activation Functions (cont)Lecture 116 Weights and Bias ParametersLecture 117 Feedforward and Backpropagation ConceptsLecture 118 Feedforward ProcessLecture 119 Backpropagation ProcessLecture 120 Recurent Neural Networks (RNN)Lecture 121 Convolution Neural Networks (CNN)Lecture 122 Convolution Neural Networks (CNN) (cont)Lecture 123 Seq2Seq and Aplications of NNSection 27: Large Language ModelsLecture 124 Generative vs Descriptive AILecture 125 LLMs PropertiesSection 28: TransformersLecture 126 Introduction to TransformersLecture 127 Training and InferenceLecture 128 Basic Arquitecture of TransformersLecture 129 Encoder WorkflowLecture 130 Sel AttentionLecture 131 Multi-Head AttentionLecture 132 Normalization and Residual ConnectionsLecture 133 DecoderLecture 134 Types of Transformers ArquitectureData Scientists and AI professionalsHomepage: https://www.udemy.com/course/mathematics-for-machine-learning-and-llms/ DOWNLOAD NOW: Udemy - Mathematics For Machine Learning And LlmsRapidgator Links Downloadhttps://rg.to/file/83fa111daccde3a58d87ef278952048e/bcmff.Mathematics.For.Machine.Learning.And.Llms.part1.rar.htmlhttps://rg.to/file/9a9ecbca8ff6722e7ad89b8d169f7897/bcmff.Mathematics.For.Machine.Learning.And.Llms.part3.rar.htmlhttps://rg.to/file/ab651b47d1faa554346a88ca8d4ed50a/bcmff.Mathematics.For.Machine.Learning.And.Llms.part2.rar.htmlFikper Links Downloadhttps://fikper.com/2EnkhSDlAP/bcmff.Mathematics.For.Machine.Learning.And.Llms.part1.rar.htmlhttps://fikper.com/jhjLb2L2M5/bcmff.Mathematics.For.Machine.Learning.And.Llms.part2.rar.htmlhttps://fikper.com/yMvhiV5RWl/bcmff.Mathematics.For.Machine.Learning.And.Llms.part3.rar.html:No Password - Links are Interchangeable Link to comment Share on other sites More sharing options...
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