Udemy

Mastering Machine Learning: From Basics to Breakthroughs

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  • 486 Students
  • Updated 6/2025
4.6
(74 Ratings)
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Course Information

Registration period
Year-round Recruitment
Course Level
Study Mode
Duration
6 Hour(s) 1 Minute(s)
Language
English
Taught by
Anitha K, Dr. R. Anto Arockia Rosaline
Rating
4.6
(74 Ratings)

Course Overview

Mastering Machine Learning: From Basics to Breakthroughs

Machine Learning, Supervised Learning, Unsupervised Learning, Regression, Classification, Clustering, Markov Models

This Machine Learning course offers a comprehensive introduction to the core concepts, algorithms, and techniques that form the foundation of modern machine learning. Designed to focus on theory rather than hands-on coding, the course covers essential topics such as supervised and unsupervised learning, regression, classification, clustering, and dimensionality reduction. Learners will explore how these algorithms work and gain a deep understanding of their applications across various domains.

The course emphasizes theoretical knowledge, providing a solid grounding in critical concepts such as model evaluation, bias-variance trade-offs, overfitting, underfitting, and regularization. Additionally, it covers essential mathematical foundations like linear algebra, probability, statistics, and optimization techniques, ensuring learners are equipped to grasp the inner workings of machine learning models.

Ideal for students, professionals, and enthusiasts with a basic understanding of mathematics and programming, this course is tailored for those looking to develop a strong conceptual understanding of machine learning without engaging in hands-on implementation. It serves as an excellent foundation for future learning and practical applications, enabling learners to assess model performance, interpret results, and understand the theoretical basis of machine learning solutions.

By the end of the course, participants will be well-prepared to dive deeper into machine learning or apply their knowledge in data-driven fields, without requiring programming or software usage.

Course Content

  • 5 section(s)
  • 40 lecture(s)
  • Section 1 Introduction
  • Section 2 Linear Models for Regression
  • Section 3 Mixture Models and EM
  • Section 4 Hidden Markov Models
  • Section 5 Combining Models

What You’ll Learn

  • Explore the fundamental mathematical concepts of machine learning algorithms
  • Apply linear machine learning models to perform regression and classification
  • Utilize mixture models to group similar data items
  • Develop machine learning models for time-series data prediction
  • Design ensemble learning models using various machine learning algorithms


Reviews

  • C
    CHITTURU SATHWIKA (RA2311003010727)
    2.5

    good for SRM exams only

  • A
    Avishek Banerjee
    4.0

    Detailed and lucid theoretical explanations are given. It would have been even better with a bit of practical implementation using python. Nonetheless, it's indeed a good course for beginners to understand the basics and grow an interest in the subject.

  • S
    Shwetal Mehul Sathwara
    5.0

    "Great course! Covers all the fundamentals of ML with clear explanations and practical coding exercises. Perfect for beginners and intermediate learners."

  • K
    Kratika Dariyani
    4.5

    Very Nice. The concepts were easy and clear.

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