Home>Courses>Mastering Machine Learning Theory and Practice

Mastering Machine Learning Theory and Practice

Gain insights into machine learning algorithms like regression, deep learning, and SVMs. Learn about Python, probability theory, and optimization through practical coding exercises. Delve into ML intricacies.

Beginner

96 Lessons

36h

Certificate of Completion

Gain insights into machine learning algorithms like regression, deep learning, and SVMs. Learn about Python, probability theory, and optimization through practical coding exercises. Delve into ML intricacies.
AI-POWERED

Explanations

AI-POWERED

Explanations

This course includes

109 Playgrounds
10 Quizzes
Course Overview
What You'll Learn
Course Content
Apply Your Skills

Course Overview

The machine learning field is rapidly advancing today due to the availability of large datasets and the ability to process big data efficiently. Moreover, several new techniques have produced groundbreaking results for standard machine learning problems. This course provides a detailed description of different machine learning algorithms and techniques, including regression, deep learning, reinforcement learning, Bayes nets, support vector machines (SVMs), and decision trees. The course also offers suffici...Show More
The machine learning field is rapidly advancing today due to the availability of large datasets and the ability to process big data efficiently. Moreover, several new techniques have produced groundbreaking results for standard machine learning problems. ...Show More

What You'll Learn

An understanding of the foundations of machine learning and scientific modeling
A working knowledge of deep learning models including MLPs, CNNs, and RNNs
Familiarity with traditional machine learning methods including regression, SVMs, and decision trees
An understanding of the proper application of these methods
Hands-on experience with implementing various machine learning models using sklearn and Keras
An understanding of the foundations of machine learning and scientific modeling

Show more

Course Content

1.

Getting started

1 Lessons

Get familiar with fundamental machine learning concepts, prerequisites, and course coverage.

3.

Scientific Programming with Python

6 Lessons

Master the steps to scientific programming in Python, covering environments, efficiency, data handling, and image processing.

10.

Cyclic Models and Recurrent Neural Networks

9 Lessons

Go hands-on with cyclic models, RNNs, gated architectures, and Boltzmann machines for temporal modeling.

11.

Reinforcement Learning

8 Lessons

Grasp the fundamentals of reinforcement learning, including T-maze problem, model-based and model-free approaches, and deep RL techniques.

12.

Artificial intelligence, the Brain, and Our Society

4 Lessons

Take a closer look at the societal impact of AI, machine learning, and their ethical considerations.

13.

Conclusion

2 Lessons

See how it works: Ensure comprehensive understanding of machine learning principles and practical applications.

Trusted by 2.5 million developers working at companies

Hands-on Learning Powered by AI

See how Educative uses AI to make your learning more immersive than ever before.

Instant Code Feedback

Evaluate and debug your code with the click of a button. Get real-time feedback on test cases, including time and space complexity of your solutions.

AI-Powered Mock Interviews

Adaptive Learning

Explain with AI

AI Code Mentor

Free Resources

FOR TEAMS

Interested in this course for your business or team?

Unlock this course (and 1,000+ more) for your entire org with DevPath