Cognitive Computing Fundamentals for Better Decision Making
684 pages
24 hours of reading
Focusing on the intricacies of machine learning, this updated edition explores its applications in cognitive computing, IoT, big data, AI, and quantum computing. It provides insights into how various machine learning techniques address both fundamental and complex challenges across society and industry, making it a valuable resource for understanding these transformative technologies.
Chapter 1: Introduction.- Chapter Goal: This chapter will set the stage. It
will talk about the main technologies and topics which are going to be used in
the book. IT would also provide brief description of the same. No of pages :
30-40 Sub -Topics 1. What is Machine Learning 2. DNA of ML 3. Big Data and
associated technologies 4. What is cognitive computing by the way 5. Let's
talk about internet of things (IOT) 6. All this happens in cloud .....
Really!! 7. Putting it all together 8. Few professional point of views on
Machine Learning technologies 9. Mind Map for the chapter 10. Visual and text
summary of the chapter 11. Ready to use diagrams for decision makers 12.
Conclusion Chapter 2: Fundamentals of Machine Learning and its technical
ecosystem Chapter Goal: This chapter will explain the fundamental concepts of
ML, Its uses in relevant business scenarios. Also takes deep die into business
challenges where ML will be used as a solution. Apart from this chapter would
cover architectures and other important aspects which are associated with the
Machine Learning. No of pages: 40-50 Sub - Topics 1. Evolution of ML 2. Need
for Machine Learning 3. The Machine Learning business opportunity 4. Concepts
of Machine Learning 4.1 Algorithm types for Machine Learning 4.2 Supervised
learning 4.3 Machine Learning models 4.5 Machine Learning life cycle 5. Common
programing languages for ML 6. Data mining and Machine Learning 7. Knowledge
discovery and ML 8. Types and architecture of Machine Learning 9. Application
and uses of Machine Learning 10. Tools and frameworks of Machine Learning 11.
New advances in Machine Learning 12. Tenets for large scale ML applications
13. Machine Learning in IT organizations 14. Machine Learning value creation
15. Case study 16. Authors interpretation of case studies 17. Few professional
point of views 18. Mind map for the chapter 19. Some important questions and
their answers 20. Your notes .... My notes 21. Visual and text summary of the
chapter 22. Ready to use diagram for the decision makers 23. Conclusion
Chapter 3: Methods and techniques of Machine Learning Chapter Goal: This
chapter will discuss in details about the common methods and techniques of
Machine Learning No of pages: - 40-50 Sub - Topics: 1. Quick look on required
mathematical concepts 2. Decision trees 2.1 The basic of decision tree 2.2 How
decision tree works 2.3 Different algorithm types in decision tree 2.4 Uses
and applications of decision trees in enterprise 2.5 Get maximum out of
decision tree 3. Bayesian networks 3.1 The basics of Bayesian networks 3.2 Hoe
Bayesian network works 3.3 Different algorithm types in Bayesian network 3.4
Uses and applications of Bayesian network in enterprise 3.5 Get maximum out of
Bayesian networks 4. Artificial neural networks 4.1 The basics of Artificial
neural networks 4.2 How Artificial neural networks 4.3 Different algorithm
types in Artificial neural networks 4.4 Uses and applications of Artificial
neural networks in enterprise 4.5 Get maximum out of Artificial neural
networks 5. Association rules learning 5.1 The basics of Association rules
learning 5.2 How artificial Association rules learning 5.3 Different algorithm
types in Association rules learning 5.4 Uses and applications of Association
rules learning in enterprise 5.6 Get maximum out of Association rules learning
6. Support vector machines 7. Few professional point of views on Machine
Learning technologies 8. Case study 9. Mind map for the chapter 10. Some
important questions and their answers 11. Your notes...my notes 12 Visual and
text summary of the chapter 13 Ready to use diagram of the decision makers 14
Conclusion Chapter 4: Machine Learning and its relationship with cloud, IOT,
big data and cognitive computing in business perspective Chapter Goal: This
Chapter will discuss briefly about Machine Learning associated technologies,
like big data, internet of things(IOT), cognitive computing and cloud
computing.