A Glance at Reinforcement Learning - ADG Efficiency
A professional highlight of 2017 has been teaching A Glance at Reinforcement Learning – an introductory course I've developed. You can find the course materials on GitHub. This one day course is aimed at data scientists with a grasp of supervised machine learning but no prior understanding of reinforcement learning. Course scope – introduction to the fundamental concepts of reinforcement learning – value function methods dynamic programming, Monte Carlo, temporal difference, Q-Learning, DQN – policy gradient methods score function, REINFORCE, advantage actor-critic, AC3 – AlphaGo – practical concerns reward scaling, mistakes I've made, advice from Vlad Mnih & John Schulman – literature highlights distributional perspective, auxiliary loss functions, inverse RL I've given this course to three batches at Data Science Retreat in Berlin and once to a group of startups from Entrepreneur First in London. Each time I've had great questions, kind feedback and improved my own understanding.
Nov-29-2017, 14:40:39 GMT