OSWALD CAMPESATO - An Intuition-Based Approach to Reinforcement Learning
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In this talk, you’ll learn about “An Intuition-Based Approach to Reinforcement Learning”. A framework that helps algorithms learn how to make decisions by receiving feedback from their environment. It’s based on the idea that humans and animals use intuition to make decisions, and this process can be used to create more efficient and effective learning algorithms. By emphasizing simpler, more intuitive strategies, this approach has been applied to game playing, robotic control, and autonomous driving, and shows promise in enabling more efficient and effective learning compared to traditional reinforcement learning methods.
Oswald Campesato is the co-founding CEO of iQuarkt and the author of more than 35 technical books. He has 20 years of experience as a software developer and has worked in numerous management roles. Campesato recently completed books about TensorFlow 2/Keras and Angular/machine learning and he’s currently working on an NLP/machine learning book. He has designed a unique curriculum for new natural language processing and deep reinforcement learning courses and also teaches machine learning and deep learning courses.
Key Topics:
0:00 - Introductions
3:40 - What is the Goal
5:59 - Exploit Versus Explore
8:18 - Greedy Versus Epsilon-Greedy
9:05 - Discount Factor (“g”)
10:50 - Calculating Rewards
16:00 - Pseudo Code
18:51 - Working With Q-Tables (1)
20:38 - Working With Q-Tables (2)
21:41 - Online Q-Table
22:15 - States & Actions
27:51 - TD Learning vs Monte Carlo
29:05 - From DRA to MDP
30:45 - Stochastic Actions
32:18 - OpenAI CartPole
36:40 - More Terminology
38:20 - Useful Links
Related Blogs:
Churn Prevention with Reinforcement Learning:
Pieter Abbeel on Deep Reinforcement Learning:
7 Reinforcement Learning Use Cases in 2022:
Reinforcement Learning for Anyone: Open AI Gym and Ray:
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OSWALD CAMPESATO - An Intuition-Based Approach to Reinforcement Learning