Mastering Machine Learning Theory and Practice
Explore the theoretical underpinnings of machine learning and practical implementations, focusing on algorithms and their applications.
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 sufficient mathematical details for a deeper understanding of how different techniques work. An overview of the Python programming language and the fundamental theoretical aspects of ML, including probability theory and optimization, is also included. The course contains several practical coding exercises as well.
By the end of the course, you will have a deep understanding of different machine-learning methods and the ability to choose the right method for different applications.
There are no reviews yet.