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Machine Learning Top 5 Models Implementation "A-Z"

  • Development
  • Mar 11, 2025
SynopsisMachine Learning Top 5 Models Implementation A-Z, available a...
Machine Learning Top 5 Models Implementation "A-Z"  No.1

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

  • 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 .
  • Who Should Attend

  • For all students willing to have a career in machine learning
  • Target Audiences

  • For all students willing to have a career in machine learning
  • 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

  • Machine Learning Top 5 Models Implementation "A-Z"  No.2
    Amine Mehablia
    Cybersecurity, Machine Learning and Blockchain
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 0 votes
  • 3 stars: 1 votes
  • 4 stars: 0 votes
  • 5 stars: 6 votes
  • Frequently Asked Questions

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