Practical Deep Reinforcement Learning (PDRL)

The Practical Deep Reinforcement Learning (PDRL) Certificate Program, hosted by the Data Institute at the University of San Francisco is designed for those looking to gain hands-on experience with cutting-edge AI techniques.

Over the course of 7 weeks, participants will delve into deep reinforcement learning (DRL), an advanced area of machine learning that has transformed domains like game playing, robotic control, healthcare, supply chain optimization, and smart building management. By leveraging PyTorch, one of the most widely used deep learning frameworks, you will gain practical skills and the confidence needed to build and deploy DRL models effectively.

This certificate is ideal for students, researchers, and professionals with a basic background in machine learning and Python. Participants are expected to be familiar with basic statistics and Python.

Learning Outcomes

Upon completing the PDRL program, participants will:

  • Master the fundamentals of deep reinforcement learning, including deep Q-networks (DQN), policy gradients, and actor-critic methods.
  • Develop proficiency in using PyTorch to implement DRL algorithms efficiently.
  • Understand practical applications of DRL across multiple industries and domains.
  • Evaluate and optimize DRL models using advanced techniques, including reward shaping and hyperparameter tuning.
  • Gain insight into real-world deployment challenges such as scalability and safety.
  • Demonstrate the ability to solve real-world problems using DRL models.

Learning Objectives

Participants will achieve the following learning objectives:

  • Understanding of DRL Concepts: Acquire a foundational understanding of DRL principles, including key algorithms like deep Q-networks (DQN), policy gradients, and actor-critic architectures.
  • PyTorch Proficiency: Gain hands-on experience in coding and implementing DRL algorithms using PyTorch.
  • Application of DRL Techniques: Explore how DRL techniques are applied in different fields, such as game playing, robotics, healthcare, and smart energy systems.
  • Model Optimization Skills: Learn to evaluate and optimize DRL models, focusing on reward shaping, exploration strategies, and hyperparameter tuning.
  • Deployment Knowledge: Understand the practical considerations for deploying DRL models, emphasizing real-world implementation challenges.

Details

Dates: TBD
Schedule: TBD
Location: Online
Instructor: Mustafa Hajij
Continuing Education Units: 2
Cost: $1195, $795 for USF Alumni, $295 for USF Students

 

Data Institute

101 Howard St. Suite 500
San Francisco, CA 94105
Hours

Mon-Fri, 9 a.m. - 5 p.m.