online


Reinforcement Learning Workflow in MATLAB

Reinforcement Learning Workflowin MATLAB

This webinar is prerecorded

Free | online | Lorant Szabo

Reinforcement Learning is the learning of mapping from situation to action to maximize a scalar reward or reinforcement signal. In contrast to Machine Learning, the learner is not told which action to take but must instead discover which actions yield the highest reward by trying them. In the most exciting cases, actions may affect not only the immediate reward but also the next situation and through that, all subsequent rewards. Trial-and-error search and delayed reward – are the two most significant distinguishing properties of Reinforcement Learning.

During this webinar, we will discuss how to apply Reinforcement Learning using MATLAB® and Simulink® products.

Agenda

  • Brief Introduction to Reinforcement Learning
  • Reinforcement Learning Workflow in MATLAB
  • How to train your Bipod Robot to Walk
  • Pros & Cons of Reinforcement Learning
  • Deep Learning in Medical Imaging

Featured products

All products mentioned in this webinar are developed by MathWorks.

How to Access:

To watch the webinar, simply fill out the form on this page. Once registered, you’ll gain immediate access and can watch it directly on the page. Additionally, you’ll receive an email with a link to access the on-demand session at your convenience.

Share this

Reinforcement Learning Workflow in MATLAB

About the Speaker(s)


  • Lorant Szabo

    Director at NJE-Artificial Intelligence Research Center

    Lorant’s consulting and development work focus on machine learning and autonomous systems.

Register now and start learning!

This webinar is prerecorded. Register for an access link!
Free | online | Lorant Szabo

Join our upcoming webinars!

Recordings are nice, but it is not the same as joining a live event. In order to be notified about our upcoming webinars, training courses, and other events, subscribe to our newsletter.


Registration

Reinforcement Learning Workflow in MATLAB

Please fill out the form below to register.

Recommended Events