Book Image

Keras Reinforcement Learning Projects

By : Giuseppe Ciaburro
Book Image

Keras Reinforcement Learning Projects

By: Giuseppe Ciaburro

Overview of this book

Reinforcement learning has evolved a lot in the last couple of years and proven to be a successful technique in building smart and intelligent AI networks. Keras Reinforcement Learning Projects installs human-level performance into your applications using algorithms and techniques of reinforcement learning, coupled with Keras, a faster experimental library. The book begins with getting you up and running with the concepts of reinforcement learning using Keras. You’ll learn how to simulate a random walk using Markov chains and select the best portfolio using dynamic programming (DP) and Python. You’ll also explore projects such as forecasting stock prices using Monte Carlo methods, delivering vehicle routing application using Temporal Distance (TD) learning algorithms, and balancing a Rotating Mechanical System using Markov decision processes. Once you’ve understood the basics, you’ll move on to Modeling of a Segway, running a robot control system using deep reinforcement learning, and building a handwritten digit recognition model in Python using an image dataset. Finally, you’ll excel in playing the board game Go with the help of Q-Learning and reinforcement learning algorithms. By the end of this book, you’ll not only have developed hands-on training on concepts, algorithms, and techniques of reinforcement learning but also be all set to explore the world of AI.
Table of Contents (13 chapters)

Summary

In this chapter, the basic concepts of the Monte Carlo method have been explored. The Monte Carlo method consists of looking for the solution of a problem, representing it as a parameter of a hypothetical population, and of estimating this parameter by examining a sample of the population obtained through sequences of random numbers. To understand the basic concepts, a numerical integration using the Monte Carlo method was performed. Then, Monte Carlo techniques for prediction and control were explored.

Subsequently, a practical case was addressed: Amazon stock price prediction using Python. To analyze the performance of Amazon stock prices, we used data relating to the stock prices in the time interval from 2000-06-05 to 2018-06-05 on NASDAQ GS stock quote. This data was downloaded from the Yahoo Finance website. Then, a model based on a BSM formula was fit. Finally,...