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25 Key Machine Learning Algorithms Math, Intuition, Python - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: 25 Key Machine Learning Algorithms Math, Intuition, Python (/Thread-25-Key-Machine-Learning-Algorithms-Math-Intuition-Python) |
25 Key Machine Learning Algorithms Math, Intuition, Python - AD-TEAM - 02-13-2025 ![]() 25 Key Machine Learning Algorithms - Math, Intuition, Python Published 2/2025 MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz Language: English | Size: 419.04 MB | Duration: 0h 42m Learn the core ML algorithms with clear math, intuitive explanations, and Python implementation. What you'll learn Master 25 most important ML algorithms from scratch Step-by-step examples with math calculations Implement each algorithm FROM SCRATCH! Master the essential theory - no interview will be a problem Mathematics behind ML algorithms Intuition behind mathematical formulas Regression, Classification, Clustering, Dimensionality Reduction, and Anomaly Detection Ready to build your own ML projects Enhance your programming skills in Python Requirements Course from the basics (for beginners) Basic mathematical knowledge Basic knowledge of Python (numpy) Description Do you want to understand machine learning algorithms and how artificial intelligence works but don't know where to start? Or perhaps you already have some knowledge and want to deepen your understanding of AI-driven algorithms?- This course is exactly what you need!In this course, you'll master 25 key machine learning algorithms:Simple Linear RegressionMultiple Linear RegressionLogistic RegressionDecision TreesK-meansModel EvaluationNaive BayesRidge RegressionBaggingRandom ForestBoostingLASSOKNNGradient BoostingPCA - Principal Component AnalysisXGBoostLDA - Linear discriminant analysisQDA - Quadratic discriminant analysisAgglomerative Hierarchical ClusteringHard-Margin SVMSVMDBSCANt-SNEIsolation ForestPerceptronEach lesson is designed to provide clear, structured learning with three essential components:Theory - A deep dive into the mathematical concepts behind each algorithmExamples - Simple scenarios to illustrate how each algorithm worksImplementation - Step-by-step Python coding to bring each algorithm to lifeWhy This Course Stands Out:No long videos - Just focused learning! This course is perfect for those who prefer reading over passive video watching.Math made simple - Algorithms are explained in an accessible way, with intuitive examples to help you understand their logic.Hands-on coding - You'll implement every algorithm from scratch, ensuring you truly understand the process.Ready to start your journey in Machine Learning? Overview Section 1: Getting Started with Google Colab Lecture 1 How to start? Section 2: 1. Simple Linear Regression Lecture 2 Intro Lecture 3 Simple Linear Regression Section 3: 2. Multiple Linear Regression Lecture 4 Intro Lecture 5 Multiple Linear Regression Section 4: 3. Logistic Regression Lecture 6 Intro Lecture 7 Logistic Regression Section 5: 4. Decision Trees Lecture 8 Intro Lecture 9 Decision Trees Section 6: 5. K-means Lecture 10 Intro Lecture 11 K-means Section 7: 6. Model Evaluation Lecture 12 Intro Lecture 13 Model Evaluation Section 8: 7. Naive Bayes Lecture 14 Intro Lecture 15 Naive Bayes Section 9: 8. Ridge Regression Lecture 16 Intro Lecture 17 Ridge Regression Section 10: 9. Bagging Lecture 18 Intro Lecture 19 Bagging Section 11: 10. Random Forest Lecture 20 Intro Lecture 21 Random Forest Section 12: 11. Boosting Lecture 22 Intro Lecture 23 Boosting Section 13: 12. LASSO Lecture 24 Intro Lecture 25 LASSO Section 14: 13. KNN - K Nearest Neighbors Lecture 26 Intro Lecture 27 KNN - K Nearest Neighbors Section 15: 14. Gradient Boosting Lecture 28 Intro Lecture 29 Gradient Boosting Section 16: 15. PCA - Principal Component Analysis Lecture 30 Intro Lecture 31 PCA - Principal Component Analysis Section 17: 16. XGBoost Lecture 32 Intro Lecture 33 XGBoost Section 18: 17. LDA - Linear Discriminant Analysis Lecture 34 Intro Lecture 35 LDA - Linear Discriminant Analysis Section 19: 18. QDA - Quadratic Discriminant Analysis Lecture 36 Intro Lecture 37 QDA - Quadratic Discriminant Analysis Section 20: 19. Agglomerative Hierarchical Clustering Lecture 38 Intro Lecture 39 Agglomerative Hierarchical Clustering Section 21: 20. Hard-Margin SVM Lecture 40 Intro Lecture 41 Hard-Margin SVM Section 22: 21. SVM - Support Vector Machine Lecture 42 Intro Lecture 43 SVM - Support Vector Machine Section 23: 22. DBSCAN Lecture 44 Intro Lecture 45 DBSCAN Section 24: 23. t-SNE Lecture 46 Intro Lecture 47 t-SNE Section 25: 24. Isolation Forest Lecture 48 Intro Lecture 49 Isolation Forest Section 26: 25. Perceptron Lecture 50 Intro Lecture 51 Perceptron Aspiring Data Scientists and Machine Learning Engineers,Beginners in Machine Learning who don't know where to start,Those looking for a balance between simple explanations and mathematical formalism,People who prefer reading and analyzing rather than watching long lectures ![]() TurboBit RapidGator AlfaFile FileFactory |