E-Book, Englisch, 267 Seiten, eBook
ISBN: 978-3-031-56713-1
Verlag: Springer International Publishing
Format: PDF
Kopierschutz: 1 - PDF Watermark
Artificial Intelligence: AGuide for Everyone
is a step in addressing that gap by providing information that readers can easily understand at every level.
This book aims to provide useful information to those planning, developing, or using AI, which has the potential to transform industries and shape the future. Whether you are stepping into the world of AI for the first time or are a seasoned professional seeking deeper insights, this comprehensive guide ensures that both beginners and experienced individuals find value within its pages.Artificial Intelligence: A Guide for Everyone
encompasses theoretical as well as practical aspects of AI across various industries and applications. It demystifies AI by explaining, in a language that non-techies can follow, its history, different types, differentiating technologies, and various aspects of implementation. It explains the connection between AI theory and real-world application across diverse industries and how it fuels innovation.
Whether you are an executive, student, professional, seasoned businessperson, or simply curious about the future of technology,
Artificial Intelligence: A Guide for Everyone
equips you with the knowledge to navigate this transformative field with confidence.
Zielgruppe
Popular/general
Autoren/Hrsg.
Weitere Infos & Material
Preface.- Chapter. 1. Introduction.- Chapter. 2. Benefits and Disadvantages.- Chapter. 3. AI-Human Relationship.- Chapter. 4. Requirements.- Chapter. 5. Technologies, Techniques, and Components.- Chapter. 6. Building an AI System.- Chapter. 7. Pre-built AI.- Chapter. 8. Measuring AI Performance.- Chapter. 9. Comparing Measurement Methods.- Chapter. 10. Simulating Intelligence.- Chapter. 11. Traditional Goals of AI Research.- Chapter. 12. Additional Goals of AI Research.- Chapter. 13. Machine Learning.- Chapter. 14. Machine Learning Development Process.- Chapter. 15. AI Development Process.- Chapter. 16. AI Sub-fields.- Chapter. 17. AI Categories.- Chapter. 18. Categories based on Functionality.- Appendix.