Skip to main content

Learn

  • Learn core concepts of machine learning
  • Learn about different types of machine learning algorithms
  • Build real-world projects using supervised and unsupervised learning algorithms
  • Learn to implement neural networks

About

If you've ever wanted the Jetsons to be real, well we aren’t that far off from a future like that. If you’ve ever chatted with automated robots, then you’ve definitely interacted with machine learning. From self-driving cars to AI bots, machine learning is slowly spreading its reach and making our devices smarter. Artificial intelligence is the future of computers, where your devices will be able to decide what is right for you. Machine learning is the core for having a futuristic reality where robot maids and robodogs exist. Machine learning includes the algorithms that allow the computers to think and respond, as well as manipulate the data depending on the scenario that’s placed before them. So, if you’ve ever wanted to play a role in the future of technology development, then here’s your chance to get started with machine learning. Because machine learning is complex and tough, we’ve designed a course to help break it down into more simple concepts that are easier to understand. It also requires you to have some experience with Python principles which will be required when we put the algorithms to test in actual real-world Python projects. The course covers a number of different machine learning algorithms such as supervised learning, unsupervised learning, reinforced learning and even neural networks. From there you will learn how to incorporate these algorithms into actual projects so you can see how they work in action! But, that's not all. At the end of each unit, the course includes quizzes to help you evaluate your learning on the subject.

Style and Approach

This course covers the basic concepts of machine learning that are crucial to get started on the journey of becoming a developer for machine learning. This course covers all the different algorithms that are required to simulate the right environment for your computer.

Features

  • Start at the very beginning and delve right into machine learning, before breaking down the most important concepts principles.
  • The course does require you to have a mathematical background as machine learning relies heavily on mathematical concepts.

Course Length : 6 hours 43 minutes

ISBN : 9781789138245

Requirements

Add information about the skills and knowledge students need to take this course.

Author

Eduonix

Eduonix Learning Solutions - Eduonix creates and distributes high-quality technology training content. Our team of industry professionals has been training manpower for more than a decade. We aim to teach technology the way it is used in industry and the professional world. We have a professional team of trainers for technologies ranging from Mobility, Web to Enterprise and Database and Server Administration.

Frequently Asked Questions

What web browser should I use?

The Open edX platform works best with current versions of Chrome, Edge, Firefox, Internet Explorer, or Safari.

See our list of supported browsers for the most up-to-date information.

respond
hours per week
respond
Free
respond
RPS
respond
en

Share this course

Categories

Data Science(241)

Coding and Tools(37)

Admin and Cloud(380)

DevOps(78)

Programming(631)

Application Development(754)

Web Development(547)

Big Data and Analytics(709)

Soft Skills(19)

Network Security & Infrastructure(284)

Process Concepts(8)

Database(80)

Business Intelligence(22)

I've read enough.Take me to RPS