ISBN13: | 9781032732978 |
ISBN10: | 10327329711 |
Binding: | Hardback |
No. of pages: | 338 pages |
Size: | 234x156 mm |
Weight: | 784 g |
Language: | English |
Illustrations: | 67 Illustrations, black & white; 11 Halftones, black & white; 56 Line drawings, black & white |
698 |
Mathematics in general
Combinatorics and graph theory
Applied mathematics
Electrical engineering and telecommunications, precision engineering
Theory of computing, computing in general
Computer architecture, logic design
Operating systems and graphical user interfaces
Artificial Intelligence
Environmental sciences
Artificial Intelligence
GBP 150.00
Click here to subscribe.
Not in stock at Prospero.
This book guides readers through the history and development of AI, from its early mathematical beginnings through to the exciting possibilities of its potential future applications.
Artificial Intelligence: An Introduction to Big Ideas and their Development, Second Edition guides readers through the history and development of artificial intelligence (AI), from its early mathematical beginnings through to the exciting possibilities of its potential future applications. To make this journey as accessible as possible, the authors build their narrative around accounts of some of the more popular and well-known demonstrations of artificial intelligence, including Deep Blue, AlphaGo and even Texas Hold?em, followed by their historical background, so that AI can be seen as a natural development of the mathematics and computer science of AI. As the book proceeds, more technical descriptions are presented at a pace that should be suitable for all levels of readers, gradually building a broad and reasonably deep understanding and appreciation for the basic mathematics, physics, and computer science that is rapidly developing artificial intelligence as it is today.
Features
- Only mathematical prerequisite is an elementary knowledge of calculus.
- Accessible to anyone with an interest in AI and its mathematics and computer science.
- Suitable as a supplementary reading for a course in AI or the History of Mathematics and Computer Science in regard to artificial intelligence.
New to the Second Edition
- Fully revised and corrected throughout to bring the material up-to-date.
- Greater technical detail and exploration of basic mathematical concepts, while retaining the simplicity of explanation of the first edition.
- Entirely new chapters on large language models (LLMs), ChatGPT, and quantum computing.
1. Computing Hardware. 2. The Integrated Circuit. 3. Software. 4. Open Source Software. 5. Expert Systems. 6. Inverted Decision Tree. 7. Deep Blue. 8. Jeopardy and Miss Debater. 9. The Perceptron. 10. Parameterization. 11. Gradient Descent and Backpropagation. 12. The Cross-Entropy Cost Function. 13. Convolutional Neural Networks. 14. Imagenet and Model Fitting. 15. Markov Chain Monte Carlo Simulation. 16. Reinforcement Learning. 17. AlphaGo. 18. Game Theory. 19. Predictive Analytics. 20. Support Vector Machines. 21. Top-Down Speech Recognition. 22. Bottom-Up Speech Recognition. 23. Speech Synthesis. 24. RBMs, GANs, and LFCF. 25. LLMs and GPTs. 26. Massive Parallel Processing and Supercompuers. 27. Quantum Computing. 28. Industrial Robots: Robot Physicians. 29. Autonomous Vehicles. 30. Exoplanets/Exomoon Astronomer. 31. Protein Folding. 32. Intelligence. 33. The AI Singularity.