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    Artificial Intelligence Masterclass

    Posted By: ELK1nG
    Artificial Intelligence Masterclass

    Artificial Intelligence Masterclass
    Published 5/2025
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 17.96 GB | Duration: 51h 43m

    Learn AI from scratch with hands-on projects: Machine Learning, Deep Learning, Reinforcement Learning, and more using Py

    What you'll learn

    Understand the foundational math behind AI, including linear algebra, probability, and optimization.

    Build and train machine learning models from scratch using Python and PyTorch.

    Develop deep learning systems such as CNNs, RNNs, Transformers, and Autoencoders with real code.

    Apply reinforcement learning algorithms including SARSA, Q-learning, PPO, and A3C in interactive environments.

    Use techniques like PCA, regularization, and cross-validation to improve model performance.

    Explore advanced topics such as Graph Neural Networks, Bayesian methods, and Meta-Learning with working examples.

    Requirements

    No prior background in AI is required.

    Basic programming knowledge helps, but there’s an optional Python section at the beginning for anyone who needs it.

    You’ll need a computer that can run Python and a stable internet connection to follow along with the tools and notebooks.

    Description

    This course is built for learners who want a serious, structured path into Artificial Intelligence. Whether you’re coming from engineering, programming, or analytics — or even starting from scratch — you’ll find that everything here is laid out in a practical, step-by-step format.We start with foundational math and basic Python — so you don’t have to worry if you haven’t used linear algebra or probability in a while. You’ll get clear walkthroughs of the math behind algorithms, with Python implementations that you can run, change, and learn from directly.From there, we cover all the major building blocks of modern AI:Supervised and unsupervised learningModel accuracy and regularizationDeep learning with CNNs, RNNs, and TransformersReinforcement learning methods like Q-Learning, PPO, A3C, TRPOBayesian models, optimization methods, and neural architecture searchYou’ll work with real code, solve tasks visually, and understand why each method works — not just how to use it. We also use a mix of Python, PyTorch, Julia, and Colab notebooks where appropriate.If you’re looking for an over-the-top promo, you won’t find it here. This course is detailed, technical, and designed to make sure you walk away actually understanding AI.All content is developed and presented by Advancedor Academy.

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Python Programming (Optional)

    Lecture 2 What is Python?

    Lecture 3 Anaconda & Jupyter & Visual Studio Code

    Lecture 4 Google Colab

    Lecture 5 Environment Setup

    Lecture 6 Python Syntax & Basic Operations

    Lecture 7 Data Structures: Lists, Tuples, Sets

    Lecture 8 Control Structures & Looping

    Lecture 9 Functions & Basic Functional Programming

    Lecture 10 Intermediate Functions

    Lecture 11 Dictionaries and Advanced Data Structures

    Lecture 12 Modules, Packages & Importing Libraries

    Lecture 13 File Handling

    Lecture 14 Exception Handling & Robust Code

    Lecture 15 OOP

    Lecture 16 Data Visualization Basics

    Lecture 17 Advanced List Operations & Comprehensions

    Section 3: Mathematical Foundations for AI

    Lecture 18 Linear Algebra Review: Vectors and Matrices

    Lecture 19 Eigenvalues and Eigenvectors

    Lecture 20 Probability Distributions

    Lecture 21 Probability Theory Basics

    Lecture 22 Bayesian Probability

    Lecture 23 Statistics for AI: Descriptive and Inferential Statistics

    Lecture 24 Inferential Statistics

    Lecture 25 Gradient Descent

    Lecture 26 Normal Distribution

    Lecture 27 Derivatives and Differentiation Rules

    Lecture 28 AdaGrad

    Lecture 29 AdaGrad with Python

    Lecture 30 RMSProp

    Section 4: Data Preprocessing (Optional)

    Lecture 31 Data Quality

    Lecture 32 Data Cleaning Techniques

    Lecture 33 Handling Missing Value

    Lecture 34 Dealing With Outliers

    Lecture 35 Feature Scaling and Normalization

    Lecture 36 Standardization

    Lecture 37 Encoding Categorical Variables

    Lecture 38 Feature Engineering

    Lecture 39 Dimensionality Reduction

    Section 5: Exploratory Data Analysis (EDA)

    Lecture 40 Descriptive Statistics

    Lecture 41 Multivariate Analysis

    Section 6: Introduction to Machine Learning

    Lecture 42 Introduction to Machine Learning

    Lecture 43 History and Evolution of Machine Learning

    Lecture 44 Applications of Machine Learning

    Lecture 45 Types of Machine Learning: Supervised, Unsupervised, and Reinforcement Learning

    Lecture 46 Machine Learning Pipeline

    Lecture 47 Overview of Python Libraries for Machine Learning

    Section 7: Introduction Concepts and Notation for Machine Learning

    Lecture 48 ML Introduction Concepts - 1

    Lecture 49 ML Introduction Concepts - 2

    Lecture 50 ML Introduction Concepts - 3

    Lecture 51 ML Introduction Concepts - 4

    Lecture 52 Notation

    Section 8: Learning

    Lecture 53 What is Learning?

    Lecture 54 Why Do We Predict f?

    Lecture 55 Curse of Dimensionality

    Lecture 56 How Do We Predict f?

    Lecture 57 Prediction Accuracy or Model Simplicity?

    Lecture 58 Regression vs Classification

    Section 9: Measuring Model Accuracy

    Lecture 59 Measuring Prediction Quality

    Lecture 60 Bias-Variance Trade-Off

    Lecture 61 Classification Setup

    Lecture 62 KNN Example

    Section 10: Simple Linear Regression

    Lecture 63 Mathematical Basis of Regression

    Lecture 64 Regression - Visual Explanation

    Section 11: Multiple Linear Regression

    Lecture 65 Multiple Linear Regression

    Lecture 66 OLS Table

    Lecture 67 Hypothesis Testing

    Section 12: KNN

    Lecture 68 Part 1

    Section 13: Naive Bayes

    Lecture 69 Introduction

    Section 14: Logistic Regression

    Lecture 70 Introduction

    Section 15: Model Performance Metrics

    Lecture 71 Confusion Matrix

    Lecture 72 Accuracy

    Lecture 73 Precision

    Lecture 74 Recall

    Lecture 75 F1 Score

    Lecture 76 ROC-AUC Curve

    Lecture 77 Log-Loss

    Section 16: Model Selection

    Lecture 78 Cross Validation

    Lecture 79 K-Fold Cross Validation - Regression

    Lecture 80 K-Fold Cross Validation -Classification

    Lecture 81 Grid Search & Random Search

    Section 17: Regularization

    Lecture 82 Mathematical Basis of Regularization

    Section 18: Support Vector Machines (SVM)

    Lecture 83 The Mathematical Foundation of SVM - 1

    Lecture 84 The Mathematical Foundation of SVM - 2

    Lecture 85 Kernels

    Lecture 86 SVM Cost Function

    Section 19: Decision Trees

    Lecture 87 Fundamentals

    Lecture 88 Gini Index & Overfitting

    Section 20: Random Forest

    Lecture 89 Introduction to RF

    Section 21: Boosting - Machine Learning

    Lecture 90 Boosting - Part 1

    Lecture 91 Boosting - Part 2

    Section 22: Unsupervised Learning

    Lecture 92 Introduction to Unsupervised Learning

    Lecture 93 K-Means Clustering - Part 1

    Lecture 94 K-Means Clustering - Part 2

    Lecture 95 Dimensionality Reduction: PCA - 1

    Lecture 96 Dimensionality Reduction: PCA - Iris

    Lecture 97 PCA - MNIST

    Section 23: Neural Networks and Deep Learning

    Lecture 98 Introduction to Neural Networks

    Lecture 99 Deep Learning Architectures: CNN

    Section 24: Deep Feedforward Neural Network

    Lecture 100 XOR with a Deep Feedforward Neural Network

    Lecture 101 Deep Feedforward Neural Network (DFFN) - MNIST

    Section 25: Multi-Layer Perceptron

    Lecture 102 MLP Mixer Structure with Pytorch

    Section 26: Convolutional Neural Networks (CNNs)

    Lecture 103 CNN Architectures with PyTorch

    Lecture 104 CNN Architectures with Julia - Flux

    Lecture 105 CNN Architecture with MATLAB

    Lecture 106 1993 Yann LeCun

    Section 27: Residual Networks (ResNets)

    Lecture 107 Implementing ResNets with Python - 1

    Lecture 108 Implementing ResNets with Python - 2

    Section 28: Recurrent Neural Networks (RNNs)

    Lecture 109 Multi Layer RNN

    Section 29: Gated Recurrent Units (GRUs)

    Lecture 110 Implementing GRU with Python

    Section 30: Attention Mechanisms and Transformers

    Lecture 111 Transformer Architecture from Scratch

    Lecture 112 Training and Using Transformers

    Section 31: TCN

    Lecture 113 Building a TCN Model for Air Quality Forecasting - 1

    Lecture 114 Building a TCN Model for Air Quality Forecasting - 2

    Section 32: Time-Delayed Neural Networks

    Lecture 115 TDNN From Scratch

    Section 33: Sequence-to-Sequence Models

    Lecture 116 Multi-step Time Series Forecasting with Seq2Seq LSTM

    Section 34: Autoencoders

    Lecture 117 Building Sparse Autoencoders with L1 and KL Regularization

    Section 35: Graph Neural Networks (GNNs)

    Lecture 118 Implementing GNNs with Python

    Section 36: Bayesian Neural Network

    Lecture 119 Bayesian Neural Network in PyTorch – Regression with Uncertainty Estimation

    Section 37: HyperNetworks and Dynamic Neural Networks

    Lecture 120 Implementing HyperNetworks

    Lecture 121 Implementing a Fully Dynamic Neural Network in PyTorch

    Section 38: Federated Learning

    Lecture 122 FedProx

    Section 39: Meta Learning

    Lecture 123 Model-Agnostic Meta Learning

    Lecture 124 Few-Shot Classification with Prototypical Networks

    Lecture 125 Few-Shot Classification with Prototypical Networks | Outputs

    Section 40: Reinforcement Learning Basics

    Lecture 126 What's Reinforcement Learning?

    Lecture 127 Components of Reinforcement Learning

    Lecture 128 Markov Decision Processes

    Lecture 129 Markov Decision Processes - Case

    Lecture 130 Markov Decision Processes - Python

    Lecture 131 Markov Decision Processes Code Output

    Lecture 132 Dynamic Programming Principles

    Lecture 133 Dynamic Programming - Case

    Lecture 134 Dynamic Programming - Mathematical Model

    Lecture 135 Dynamic Programming - Python Code

    Lecture 136 Dynamic Programming - Output

    Lecture 137 Policy Evaluation

    Lecture 138 Iterative Policy Evaluation Algorithm with Python

    Lecture 139 Monte Carlo Methods in RL

    Section 41: Temporal Difference Learning

    Lecture 140 What is SARSA?

    Lecture 141 SARSA - Taxi Implementation

    Lecture 142 SARSA - Taxi & Visual

    Lecture 143 Q-Learning Intro

    Lecture 144 Frozen Lake

    Lecture 145 Frozen Lake Python

    Lecture 146 Cliff Walking Python

    Section 42: Function Approximation - Reinforcement Learning

    Lecture 147 Function Approximation in RL

    Lecture 148 Tile Coding

    Lecture 149 Neural Networks in Reinforcement Learning

    Section 43: Policy Gradient Methods

    Lecture 150 What is Reinforce?

    Lecture 151 REINFORCE - Python

    Lecture 152 Generalized Advantage Estimation (GAE)

    Lecture 153 Generalized Advantage Estimation (GAE) - Python

    Lecture 154 Advantage Actor-Critic (A2C)

    Lecture 155 Asynchronous Advantage Actor-Critic (A3C)

    Lecture 156 Deterministic Policy Gradient (DPG)

    Lecture 157 DDPG (Deep Deterministic Policy Gradient)

    Lecture 158 TD3 (Twin Delayed DDPG)

    Lecture 159 SAC (Soft Actor-Critic)

    Lecture 160 Trust Region Policy Optimization (TRPO)

    Lecture 161 Proximal Policy Optimization

    Section 44: Deep Q-Networks

    Lecture 162 DQN Intro

    Section 45: Multi-Agent Reinforcement Learning

    Lecture 163 Introduction to Multi-Agent Reinforcement Learning

    Lecture 164 MARL Types

    Lecture 165 MARL Training

    Lecture 166 MARL Challenge

    Lecture 167 MARL - Predator & Prey

    Lecture 168 MARL - Predator & Prey Animated Outputs

    Section 46: Sequential Decision Analytics

    Lecture 169 Sequential Decision Making Intro

    Lecture 170 SDA Project with Julia - 1

    Lecture 171 Dynamic Inventory Management - Python

    Lecture 172 Adaptive Market Planning

    Lecture 173 Portfolio Management

    Lecture 174 SDA Project with Julia - 2

    Lecture 175 Airline Pricing with Python - Code

    Lecture 176 Airline Pricing - Output

    Section 47: Natural Language Processing (NLP)

    Lecture 177 Mathematical Foundations of NLP

    Lecture 178 Text Preprocessing Techniques

    Lecture 179 Vector Space Models and Word Embeddings

    Section 48: AI and Complexity Theory

    Lecture 180 AI and the P vs NP Problem

    Section 49: Latent Variable Models in AI

    Lecture 181 Hidden Markov Models (HMMs)

    Lecture 182 Latent Dirichlet Allocation (LDA)

    Section 50: Advanced Deep Learning Techniques

    Lecture 183 Neural Tangent Kernel (NTK)

    Section 51: Industry 4.0 Projects with AI

    Lecture 184 Introduction to Project

    Lecture 185 EDA & Linear Regression

    Lecture 186 Support Vector Regression - 1

    Lecture 187 Support Vector Regression - 2

    Lecture 188 Time Series

    Lecture 189 Random Forest

    Lecture 190 Neural Networks - 1

    Lecture 191 Neural Networks - 2

    Lecture 192 Multi-Layer Perceptron (MLP) - 1

    Lecture 193 Multi-Layer Perceptron (MLP) - 2

    Lecture 194 Multi-Layer Perceptron (MLP) - 3

    Section 52: Explainable and Interpretable AI

    Lecture 195 What is SHAP

    Lecture 196 SHAP California Project

    Lecture 197 LIME

    Lecture 198 LIME Class Project

    Lecture 199 LIME Project

    Lecture 200 LIME Cancer Project

    Lecture 201 LIME Film Text Project

    Lecture 202 Boruta

    Lecture 203 Boruta Project

    Section 53: MLOps Basics

    Lecture 204 What is MLOPS

    Lecture 205 MLOps Components

    Lecture 206 ML Projects Lifecycle

    Lecture 207 CI CD Pipeline Diagram

    Section 54: Advanced Theoretical Concepts and Algorithms

    Lecture 208 Learning Theory: PAC Learning and VC Dimension

    Lecture 209 Metric Learning

    Lecture 210 Hopfield Networks

    Lecture 211 Kohonen Networks

    Lecture 212 Extreme Learning Machine

    Lecture 213 Bayesian Optimization

    Lecture 214 Restricted Boltzmann Machine

    Lecture 215 Information Theory in Machine Learning

    Lecture 216 Maximum Likelihood Estimation (MLE)

    Lecture 217 Bayesian Inference

    Lecture 218 Bayesian Inference in Machine Learning

    Lecture 219 Bayesian Networks

    This course is for learners who want to gain a solid understanding of artificial intelligence from the ground up. It’s a good fit for students, engineers, developers, or professionals who want to learn how AI systems work, how to implement them properly, and how to build from scratch instead of just using pre-built tools. If you're looking for a course that explains not only how, but also why — without skipping the math or the code — this is designed for you.