Artificial Intelligence and Big Data H 162 p. 18
Iafrate, Fernando 著
目次
List of Figures ix Preface xiii Introduction xxi Chapter 1. What is Intelligence? 1 1.1. Intelligence 1 1.2. Business Intelligence 2 1.3. Artificial Intelligence 5 1.4. How BI has developed 6 1.4.1. BI 1.0 7 1.4.2. BI 2.0 8 1.4.3. And beyond 11 Chapter 2. Digital Learning 13 2.1. What is learning? 13 2.2. Digital learning 14 2.3. The Internet has changed the game 16 2.4. Big Data and the Internet of Things will reshuffle the cards 18 2.5. Artificial Intelligence linked to Big Data will undoubtedly be the keystone of digital learning 21 2.6. Supervised learning 22 2.7. Enhanced supervised learning 24 2.8. Unsupervised learning 28 Chapter 3. The Reign of Algorithms 33 3.1. What is an algorithm? 34 3.2. A brief history of AI 34 3.2.1. Between the 1940s and 1950s 35 3.2.2. Beginning of the 1960s 36 3.2.3. The 1970s 37 3.2.4. The 1980s 37 3.2.5. The 1990s 38 3.2.6. The 2000s 38 3.3. Algorithms are based on neural networks, but what does this mean? 39 3.4. Why do Big Data and AI work so well together? 42 Chapter 4. Uses for Artificial Intelligence 47 4.1. Customer experience management 48 4.1.1. What role have smartphones and tablets played in this relationship? 50 4.1.2. CXM is more than just a software package 51 4.1.3. Components of CXM 53 4.2. The transport industry 55 4.3. The medical industry 58 4.4. “Smart” personal assistant (or agent) 60 4.5. Image and sound recognition 62 4.6. Recommendation tools 65 4.6.1. Collaborative filtering (a “collaborative” recommendation mode) 66 Conclusion 71 Appendices 75 Appendix 1. Big Data 77 Appendix 2. Smart Data 83 Appendix 3. Data Lakes 89 Appendix 4. Some Vocabulary Relevant to 93 Appendix 5. Comparison Between Machine Learning and Traditional Business Intelligence 101 Appendix 6. Conceptual Outline of the Steps Required to Implement a Customization Solution based on Machine Learning 103 Bibliography 107 Glossary 111 Index 115
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