Machine Learning Top 5 Models Implementation "A-Z"
- Development
- Mar 11, 2025

Machine Learning Top 5 Models Implementation A-Z, available at $19.99, has an average rating of 4.31, with 20 lectures, based on 8 reviews, and has 41 subscribers.
You will learn about From Dataset to Machine Learning 5 Models scenarios Implementation Understanding the dataset Data Analysis (missing values, outliers, outliers detection techniques, correlation) Feature engineering Selecting algorithms Training the baseline Understanding the testing matrix (ROC, AUC, Accuracy, Kappa) Testing the baseline model Problems with the existing approach Cross validation, Grid search, Models parameters tuning Models optimization, Ensembles and much more . This course is ideal for individuals who are For all students willing to have a career in machine learning It is particularly useful for For all students willing to have a career in machine learning.
Enroll now: Machine Learning Top 5 Models Implementation A-Z
Summary
Title: Machine Learning Top 5 Models Implementation A-Z
Price: $19.99
Average Rating: 4.31
Number of Lectures: 20
Number of Published Lectures: 20
Number of Curriculum Items: 20
Number of Published Curriculum Objects: 20
Original Price: $19.99
Quality Status: approved
Status: Live
What You Will Learn
Who Should Attend
Target Audiences
One case study, five models from data preprocessing to implementation with Python, with some examples where no coding is required.
We will cover the following topics in this case study
Problem Statement?
Data?
Data Preprocessing 1
Understanding Dataset
Data change and Data Statistics
Data Preprocessing 2
Missing values
Replacing missing values
Correlation Matrix
Data Preprocessing 3
Outliers
Outliers Detection Techniques
Percentile-based outlier detection
Mean Absolute Deviation (MAD)-based outlier detection
Standard Deviation (STD)-based outlier detection
Majority-vote based outlier detection
Visualizing outlier
Data Preprocessing? 4
Handling outliers
Feature Engineering
Models? Selected
·K-Nearest Neighbor (KNN)
·Logistic regression
·AdaBoost
·GradientBoosting
·RandomForest
·Performing the Baseline Training
Understanding the testing matrix
·The Mean accuracy of the trained models
·The ROC-AUC score
ROC
AUC
?Performing the Baseline Testing
Problems with this Approach
Optimization Techniques
·Understanding key concepts to optimize the approach
Cross-validation
The approach of using CV
Hyperparameter tuning
Grid search parameter tuning
Random search parameter tuning
Optimized? Parameters Implementation
·Implementing a cross-validation based approach
·Implementing hyperparameter tuning
·Implementing and testing the revised approach
·Understanding problems with the revised approach
?Implementation of the revised approach
·Implementing the best approach
Log transformation of features
Voting-based ensemble ML model
·Running ML models on real test data
Best approach & Summary
Examples with No Code
Downloads – Full Code
Course Curriculum
Chapter 1: Introduction
Lecture 1: Introduction
Chapter 2: Data Preprocessing
Lecture 1: Introducing the problem statement
Lecture 2: Introduction To No Code
Lecture 3: Data Preprocessing 1
Lecture 4: Data Preprocessing 2
Lecture 5: Data Preprocessing 3
Lecture 6: Data Preprocessing 4
Lecture 7: Feature Engineering for the Baseline Model
Lecture 8: Feature Engineering for the Baseline Model v2
Lecture 9: Data Preprocessing with No Code
Chapter 3: Models Selection
Lecture 1: Training Baseline and Understanding the Testing Matrix
Lecture 2: Compare ROC Models No Code
Lecture 3: Baseline Model Testing No Code
Lecture 4: Testing the Baseline
Lecture 5: Problems with the Existing Approach
Chapter 4: Optimization & Implementation
Lecture 1: Optimization the Existing Approach
Lecture 2: Implementing the Revised Approach
Chapter 5: Best Approach Implementation & Summary
Lecture 1: Best Approach
Chapter 6: More Examples on No Coding
Lecture 1: Example1-Parameter Optimization
Lecture 2: Example2-Cross Validation
Instructors

Amine Mehablia
Cybersecurity, Machine Learning and Blockchain
Rating Distribution
Frequently Asked Questions
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