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AI Crash Course

You're reading from   AI Crash Course A fun and hands-on introduction to machine learning, reinforcement learning, deep learning, and artificial intelligence with Python

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Product type Paperback
Published in Nov 2019
Publisher Packt
ISBN-13 9781838645359
Length 360 pages
Edition 1st Edition
Languages
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Author (1):
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Hadelin de Ponteves Hadelin de Ponteves
Author Profile Icon Hadelin de Ponteves
Hadelin de Ponteves
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Toc

Table of Contents (17) Chapters Close

Preface 1. Welcome to the Robot World 2. Discover Your AI Toolkit FREE CHAPTER 3. Python Fundamentals – Learn How to Code in Python 4. AI Foundation Techniques 5. Your First AI Model – Beware the Bandits! 6. AI for Sales and Advertising – Sell like the Wolf of AI Street 7. Welcome to Q-Learning 8. AI for Logistics – Robots in a Warehouse 9. Going Pro with Artificial Brains – Deep Q-Learning 10. AI for Autonomous Vehicles – Build a Self-Driving Car 11. AI for Business – Minimize Costs with Deep Q-Learning 12. Deep Convolutional Q-Learning 13. AI for Games – Become the Master at Snake 14. Recap and Conclusion 15. Other Books You May Enjoy 16. Index

Summary

In this chapter, you learned the five fundamental principles of Artificial Intelligence from a Reinforcement Learning perspective. Firstly, an AI is a system that takes an observation (values, images, or any data) as input, and returns an action to perform as output (principle #1). Then, there is a reward system that helps it measure its performance. The AI will learn through trial and error based on the reward it gets over time (principle #2). The input (state), the output (action), and the reward system define the AI environment (principle #3). The AI interacts with this environment through the Markov decision process (principle #4). Finally, in training mode, the AI learns how to maximize its total reward by updating its parameters through the iterations, and in inference mode, the AI simply performs its actions over full episodes without updating any of its parameters – that is to say, without learning (principle #5).

In the next chapter, you will...

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