Fundamentals of Deep Reinforcement Learning
Course Features
Duration
8 weeks
Delivery Method
Online
Available on
Limited Access
Accessibility
Mobile, Desktop, Laptop
Language
English
Subtitles
English
Level
Beginner
Effort
6 hours per week
Teaching Type
Self Paced
Course Description
Course Overview
International Faculty
Post Course Interactions
Instructor-Moderated Discussions
Skills You Will Gain
Prerequisites/Requirements
Proficiency with Python
Functions, classes, objects, loops
Basic familiarity with Jupyter notebooks
Basic probability
Sampling from a normal distributon Conditional probability notation \mathbb{E}E - expectation \SigmaΣ - the summation operator
What You Will Learn
The theoretical underpinnings of Reinforcement Learning ("RL").
How to implement each piece of theory to solve real problems in Python.
The core RL formula: The Bellman Equation
The Q-Learning algorithm, as well as many powerful improvements.
Enough to prepare you for implement Reinforcement Learning algorithms using Deep Neural Networks.
Course Instructors