MATLAB and Simulink Training

Reinforcement Learning Onramp


 

Access to MATLAB through your web browser

 

Engaging video tutorials

 

Hands-on exercises with automated assessments and feedback

 

Lessons available in English only


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1.

Overview of Reinforcement Learning

Familiarize yourself with reinforcement learning concepts and the course.

  • What is reinforcement learning?
  • Course overview
  • Simulating with a pretrained agent

2.

Defining the Environment

Define how an agent interacts with an environment model.

  • Components of a reinforcement learning model
  • Defining an environment interface
  • Rewards and training
  • Including actions in the reward
  • Connecting a Simulink® environment to a MATLAB agent

3.

Defining Agents

Create representations of reinforcement learning agents.

  • Critics and Q values
  • Representing critics for continuous problems
  • Creating neural networks
  • Actors and critics
  • Summary of agents

4.

Training Agents

Use simulation episodes to train an agent.

  • Training
  • Improving training

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