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Reinforcement Learning - Abhishek Nandy, Manisha Biswas

Reinforcement Learning (eBook)

With Open AI, TensorFlow and Keras Using Python
eBook Download: PDF
2017 | 1st ed.
XIII, 167 Seiten
Apress (Verlag)
978-1-4842-3285-9 (ISBN)
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66,99 inkl. MwSt
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Master reinforcement learning, a popular area of machine learning, starting with the basics: discover how agents and the environment evolve and then gain a clear picture of how they are inter-related. You'll then work with theories related to reinforcement learning and see the concepts that build up the reinforcement learning process. 

Reinforcement Learning discusses algorithm implementations important for reinforcement learning, including Markov's Decision process and Semi Markov Decision process. The next section shows you how to get started with Open AI  before looking at Open AI Gym. You'll then learn about Swarm Intelligence with Python in terms of reinforcement learning.
 
The last part of the book starts with the TensorFlow environment and gives an outline of how reinforcement learning can be applied to TensorFlow. There's also coverage of Keras, a framework that can be used with reinforcement learning. Finally, you'll delve into Google's Deep Mind and see scenarios where reinforcement learning can be used. 

What You'll Learn 
  • Absorb the core concepts of the reinforcement learning process
  • Use advanced topics of deep learning and AI
  • Work with Open AI Gym, Open AI, and Python 
  • Harness reinforcement learning with TensorFlow and Keras using Python

Who This Book Is For

Data scientists, machine learning and deep learning professionals, developers who want to adapt and learn reinforcement learning.




Abhishek Nandy is B.Tech in IT and he is a constant learner.He is Microsoft MVP at Windows Platform,Intel Black belt Developer as well as Intel Software Innovator he has keen interest on AI,IoT and Game Development. Currently serving as a Application Architect in an IT Firm as well as consulting AI,IoT as well doing projects on AI,ML and Deep learning.He also is an AI trainer and driving the technical part of Intel AI Student developer program.He was involved in the first Make in India initiative where he was among top 50 innovators and got trained in IIMA.

Manisha Biswas is BTech in Information Technology and currently working as a Software Developer at Insync Tech-Fin Solutions Ltd,in kolkata, India. I'm involved with several areas of technology including Web Development, IoT,Soft Computing and Artificial Intelligence. I am an Intel Software Innovator and I was also awarded the SHRI DEWANG MEHTA IT AWARDS 2016 by NASSCOM,a certificate of excellence for top academic scores. I have very recently formed a WOMEN IN TECHNOLOGY Community at KoIKata,India to empower women to learn and explore new technologies.I always like to invent things,create something new,or to invent a new look for the old things. When not in front of my terminal, I am an explorer, a foodie, a doodler and a dreamer. I am always very passionate to share my knowledge and ideas with others. I am following the passion and doing the same currently by sharing my experiences to the community so that others can learn and also give shape to my ideas in a new way this lead me to become Google Women Techmakers Kolkata Chapter Lead.

Master reinforcement learning, a popular area of machine learning, starting with the basics: discover how agents and the environment evolve and then gain a clear picture of how they are inter-related. You'll then work with theories related to reinforcement learning and see the concepts that build up the reinforcement learning process. Reinforcement Learning discusses algorithm implementations important for reinforcement learning, including Markov's Decision process and Semi Markov Decision process. The next section shows you how to get started with Open AI  before looking at Open AI Gym. You'll then learn about Swarm Intelligence with Python in terms of reinforcement learning. The last part of the book starts with the TensorFlow environment and gives an outline of how reinforcement learning can be applied to TensorFlow. There's also coverage of Keras, a framework that can be used with reinforcement learning. Finally, you'll delve into Google's Deep Mind and see scenarios where reinforcement learning can be used. What You'll Learn Absorb the core concepts of the reinforcement learning processUse advanced topics of deep learning and AIWork with Open AI Gym, Open AI, and Python Harness reinforcement learning with TensorFlow and Keras using PythonWho This Book Is ForData scientists, machine learning and deep learning professionals, developers who want to adapt and learn reinforcement learning.

Abhishek Nandy is B.Tech in IT and he is a constant learner.He is Microsoft MVP at Windows Platform,Intel Black belt Developer as well as Intel Software Innovator he has keen interest on AI,IoT and Game Development. Currently serving as a Application Architect in an IT Firm as well as consulting AI,IoT as well doing projects on AI,ML and Deep learning.He also is an AI trainer and driving the technical part of Intel AI Student developer program.He was involved in the first Make in India initiative where he was among top 50 innovators and got trained in IIMA.Manisha Biswas is BTech in Information Technology and currently working as a Software Developer at Insync Tech-Fin Solutions Ltd,in kolkata, India. I'm involved with several areas of technology including Web Development, IoT,Soft Computing and Artificial Intelligence. I am an Intel Software Innovator and I was also awarded the SHRI DEWANG MEHTA IT AWARDS 2016 by NASSCOM,a certificate of excellence for top academic scores. I have very recently formed a WOMEN IN TECHNOLOGY Community at KoIKata,India to empower women to learn and explore new technologies.I always like to invent things,create something new,or to invent a new look for the old things. When not in front of my terminal, I am an explorer, a foodie, a doodler and a dreamer. I am always very passionate to share my knowledge and ideas with others. I am following the passion and doing the same currently by sharing my experiences to the community so that others can learn and also give shape to my ideas in a new way this lead me to become Google Women Techmakers Kolkata Chapter Lead.

Chapter 1:  Reinforcement Learning basicsChapter Goal: This chapter covers the basics needed for AI,ML and Deep Learning.Relation between them and differences.No of pages 30Sub -Topics1. Reinforcement Learning2. The flow3. Faces of Reinforcement Learning4. 5. Environments6. The depiction of inter relation between Agents and EnvironmentDeep LearningChapter 2:  Theory and AlgorithmsChapter Goal :This Chapter covers the theory  of Reinforcement Learning and Algorithms.No of pages : 60Sub-topics1 . Problem scenarios in Reinforcement Learningins2. Markov Decision process3. SARSA4.Q learning5.Value Functions6.Dynamic Programming and Policies7.Approaches to RLChapter 3: Open AI basicsChapter Goal: In this chapter we will cover the basics of Open AI gym and universe andthen move forward for installing it.No of pages: 40Sub - Topics:1. What are Open AI environments2. Installation of Open AI Gym and Universe in Ubuntu3. Difference between Open AI Gym and UniverseChapter 4: Getting to know Open AI  and Open AI gym the developers wayChapter Goal: We will use Python to start the programming and cover topics accordinglyNo of pages: 60Sub - Topics: 1. Open AI,Open AI Gym and python2. Setting up the environment3. Examples4 Swarm Intelligence using python5.Markov Decision process toolbox for Python6.Implementing a Game AI with Reinforcement LearningChapter 5: Reinforcement learning using Tensor Flow environment and KerasChapter Goal: We cover Reinforcement Learning in terms of Tensorflow and KerasNo of pages: 40Sub - Topics:  1. Tensorflow and Reinforcement Learning2. Q learning with Tensor Flow3. Keras4. Keras and Reinforcement LearningChapter 6  Google’s DeepMind and the future of Reinforcement LearningChapter Goal: We cover the descriptions of the above the content.No of pages: 25Sub - Topics:  1. Google’s Deep Mind2. Future of Reinforcement Learning 3. Man VS Machines where is it Heading to.

Erscheint lt. Verlag 7.12.2017
Zusatzinfo XIII, 167 p. 173 illus., 157 illus. in color.
Verlagsort Berkeley
Sprache englisch
Themenwelt Mathematik / Informatik Informatik Programmiersprachen / -werkzeuge
Mathematik / Informatik Informatik Software Entwicklung
Informatik Theorie / Studium Künstliche Intelligenz / Robotik
Schlagworte Artificial Intelligence • Deep learning • Keras • machine learning • Python • Reinforcement Learning • tensorflow
ISBN-10 1-4842-3285-2 / 1484232852
ISBN-13 978-1-4842-3285-9 / 9781484232859
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