02-6766 494 dukeuae@eim.ae

Course Overview

  • Gain theoretical knowledge regarding the different Machine Learning algorithms
  • Learn the concepts of SVM and SVR in this Machine Learning Course
  • Learn about supervised and unsupervised learning concepts and clustering

Who should attend this Machine Learning Training Course?

The Machine Learning Course is an intensive and comprehensive course designed to provide a deep dive into the fundamental concepts and applications of Machine Learning. The following are some professionals who can benefit greatly from this course:

  • Data Scientists
  • Data Analysts
  • Software Engineers
  • Business Analysts
  • Operations Managers
  • HR Professionals
  • Project Managers
  • Customer Service Managers

    Prerequisites of the Machine Learning Training Course

    Delegates must have a basic understanding of Python Programming and Statistics.

    What’s included in this Machine Learning Training Course?

    • World-Class Training Sessions from Experienced Instructors 
    • Machine Learning Certificate 
    • Digital Delegate Pack

    Course Outline:

    Module 1: Machine Learning – Introduction

    • What is Machine Learning?
    • Main Elements of Machine Learning
    • Traditional Programming Vs Machine Learning
    • Real Time Applications of Machine Learning

    Module 2: Importance of Machine Learning and its Techniques

    • Importance of Machine Learning
    • Types of Machine Learning
    • How Machine Learning Works?

    Module 3: Machine Learning Mathematics

    • What is Machine Learning Mathematics?
    • Why Mathematics is Significant for Machine Learning?

    Module 4: Data Pre-Processing

    • What is Data Pre-Processing?
    • Way to Handling Missing Values

    Module 5: Supervised Learning

    • Introduction to Supervised Learning

    Module 6: Classification

    • Introduction to Classification
    • Types of Learners
    • Support Vector Machines (SVM)
    • How does SVM Work?
    • Discriminant Analysis
    • Naive Bayes
    • Nearest Neighbour

    Module 7: Regression

    • Introduction to Regression
    • Regression Models
    • Linear Regression and GLM
    • SVR
    • Decision Tree
    • Neural Networks

    Module 8: Unsupervised Learning

    • What is Unsupervised Learning?
    • Difference Between Supervised and Unsupervised Learning

    Module 9: Clustering

    • Introduction to Clustering
    • K-Means
    • K-Medoids
    • Fuzzy
    • Hierarchal
    • Gaussian Mixture
    • Hidden Markov Model

    Module 10: Deep Learning

    • Introduction to Deep Learning
    • Importance of Deep Learning
    • How Deep Learning Works?

       

        Quick Enquiry

        If you have any general course enquiries, please fill the form and get in touch today.

        Testimonials

        WhatsApp Support
        Our support team is here to answer your questions. Tell us how we can Help
        👋 Hi, how can I help?