Tags
Language
Tags
May 2025
Su Mo Tu We Th Fr Sa
27 28 29 30 1 2 3
4 5 6 7 8 9 10
11 12 13 14 15 16 17
18 19 20 21 22 23 24
25 26 27 28 29 30 31
    Attention❗ To save your time, in order to download anything on this site, you must be registered 👉 HERE. If you do not have a registration yet, it is better to do it right away. ✌

    ( • )( • ) ( ͡⚆ ͜ʖ ͡⚆ ) (‿ˠ‿)
    SpicyMags.xyz

    The Complete Machine Learning Bootcamp: Build, Evaluate,Tune

    Posted By: ELK1nG
    The Complete Machine Learning Bootcamp: Build, Evaluate,Tune

    The Complete Machine Learning Bootcamp: Build, Evaluate,Tune
    Published 12/2024
    MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
    Language: English | Size: 1.11 GB | Duration: 4h 43m

    Master the Fundamentals of Machine Learning: Workflow, Algorithms, and Optimization for Real-World Applications

    What you'll learn

    Master the end-to-end ML workflow: data prep, model building, and deployment

    Understand and apply key ML algorithms, including regression, clustering, and neural networks

    Evaluate models with metrics like accuracy, F1-Score, and Silhouette

    Optimize models using techniques like hyperparameter tuning and feature selection

    Learn to handle data challenges, including missing values, outliers, and feature engineering

    Explore ethical considerations and trade-offs like fairness, interpretability, and scalability in ML models

    Requirements

    Eagerness to learn machine learning—no prior ML experience needed!

    Description

    Unlock the power of Machine Learning with this beginner-friendly, hands-on course designed to take you from zero to mastery! Whether you're a student, developer, or professional, this course will equip you with the skills to build and optimize machine learning models for real-world applications.You’ll start by understanding the basics of Machine Learning—what it is, how it works, and its real-life applications. From there, you’ll dive into the different types of machine learning: supervised, unsupervised, and reinforcement learning, exploring popular algorithms like linear regression, decision trees, clustering, and more.We’ll guide you through the entire ML workflow: data collection, preprocessing, feature engineering, model evaluation, and deployment. You’ll learn how to handle messy data, select the right algorithms, and optimize your models for the best results.This course also covers essential topics like evaluation metrics, hyperparameter tuning, explainable AI, and ethical considerations, ensuring you develop not just technical skills but also a strong foundation for practical problem-solving.No prior experience with Machine Learning is required—just a basic understanding of Python and a curiosity to learn. By the end, you’ll have the confidence to build your own machine learning models and tackle real-world challenges. Join us and start your ML journey today!

    Overview

    Section 1: Introduction

    Lecture 1 Introduction

    Section 2: Module 1: Overview of Machine Learning

    Lecture 2 Machine learning overview

    Lecture 3 Categories of ML and Business applications

    Section 3: Forms of Machine learning

    Lecture 4 Supervised learning

    Lecture 5 Unsupervised learning

    Lecture 6 Reinforcement learning

    Section 4: Machine learning Workflow

    Lecture 7 Understand ML workflow

    Lecture 8 Model Generation, Evaluation,Tuning, Deployment and Testing

    Lecture 9 Factors involved in selecting ML algorithm

    Section 5: Module 4 : Machine learning - Data

    Lecture 10 Data preparation and Preprocessing

    Lecture 11 Handling Missing Data, Outliers and Categorical Data

    Lecture 12 Feature Engineering

    Lecture 13 Feature Scaling and Selection techniques

    Lecture 14 Data labelling

    Lecture 15 Splitting Data (Training, Testing, Validation)

    Lecture 16 Challenges with Data Preparation

    Lecture 17 Data Quality issues

    Section 6: Module 5 : Machine Learning Algorithms

    Lecture 18 Overview of Machine Learning Algorithms

    Lecture 19 Supervised Learning - Simple and Multiple linear regression

    Lecture 20 Logistic Regression

    Lecture 21 Tree based models - Decision Tree

    Lecture 22 Random Forest

    Lecture 23 Ensemble Models - Boosting and Bagging

    Lecture 24 Neural Networks

    Lecture 25 Unsupervised Learning Algorithms - Clustering K-means

    Lecture 26 Clustering: Hierarchical Clustering

    Lecture 27 Unsupervised Learning Algorithms - Dimensionality Reduction - PCA

    Lecture 28 tSNE (t-Distributed Stochastic Neighbor Embedding)

    Lecture 29 Advanced Algorithms: Reinforcement Learning

    Lecture 30 Deep Learning and Applications

    Lecture 31 Comparison between RL and DL

    Section 7: Module 6: Model Evaluation

    Lecture 32 Overview and key aspects of Model evaluation

    Lecture 33 Overfitting and Underfitting

    Lecture 34 Bias -Variance Tradeoff

    Lecture 35 Supervised Regression Metrics - Regression Metrics: MAE, MSE

    Lecture 36 RMSE and R square

    Lecture 37 Classification Metrics: Accuracy, Precision, Recall, F1-Score

    Lecture 38 ROC and AUC

    Lecture 39 Unsupervised Clustering metrics -Silhouette Score

    Lecture 40 Elbow method

    Lecture 41 Limitations of ML functional performance metrics

    Lecture 42 Selecting ML Functional Performance metrics

    Section 8: Module 7: Non-Functional Performance Metrics (Supervised & Unsupervised)

    Lecture 43 Accuracy vs. Interpretability

    Lecture 44 Scalability and Training Time

    Lecture 45 Fairness and Ethical Considerations

    Section 9: Module 8: Model Optimization and Tuning

    Lecture 46 Deep dive in understanding Model Optimization and Tuning

    Lecture 47 Understanding hyperparameter

    Lecture 48 Hyperparameter Tuning: Grid Search

    Lecture 49 Random search

    Lecture 50 Bayesian Optimization

    Lecture 51 Techniques for Improving Model Performance: Cross Validation

    Lecture 52 Regularization - Lasso and Ridge

    Lecture 53 Feature selection

    Lecture 54 Ensemble Techniques : Boosting, Bagging and Stacking

    Lecture 55 Explainable AI

    Lecture 56 SHAP

    Lecture 57 LIME

    Lecture 58 Use Cases and Benefits of Explainable AI

    Lecture 59 Key takeaways

    This course is designed for: Aspiring Data Scientists and ML Enthusiasts eager to build expertise from scratch. Developers and Programmers looking to expand their skill set with machine learning. Students and Academics pursuing careers in AI, data science, or analytics. Professionals in Any Field who want to understand how ML can solve real-world problems. Beginners in Machine Learning seeking a structured, hands-on learning path. No prior ML experience is required—just curiosity and a willingness to learn!