---Advertisement---

21 Best Artificial Intelligence Books to Learn AI

By Shiva

Published On:

---Advertisement---

Artificial Intelligence (AI) is a field that focuses on creating intelligent machines capable of performing tasks that usually require human intelligence, such as reasoning, speech recognition, and vision. Whether you’re a beginner or an advanced learner, these AI books will help you gain the skills needed to succeed in this growing field. Here is a curated list of the top AI books recommended by AI experts.


Author: Tariq Rashid
Edition: 1st Edition
Publisher: Independently Published
Overview: Learn the fundamentals of neural networks and how to create them using Python.


Author: John Paul Mueller
Edition: 1st Edition
Publisher: For Dummies
Overview: A beginner-friendly guide that introduces AI concepts and their real-world applications.


Author: Oliver Theobald
Edition: 2nd Edition
Publisher: Scatterplot Press
Overview: Understand machine learning basics, from regression to neural networks, in simple terms.


Author: Nick Bostrom
Edition: Unabridged Edition
Publisher: Audible Studios on Brilliance Audio
Overview: Explore the future implications of AI and how superintelligence could impact humanity.


Author: Stuart Russell & Peter Norvig
Edition: 3rd Edition
Publisher: Pearson
Overview: A comprehensive guide to AI theory and applications, ideal for students and professionals alike.


Author: James V Stone
Edition: 1st Edition
Publisher: MIT Press
Overview: Dive into deep learning algorithms with detailed mathematical explanations and practical examples.


Author: Max Tegmark
Edition: 1st Edition
Publisher: Knopf
Overview: Discusses how AI will transform society, ethics, and even the future of humanity.


Authors: Jon Kohn, Grant Beyleveld, and Aglae Basens
Edition: 1st Edition
Publisher: Pearson
Overview: A visually rich, beginner-friendly guide to the concepts of deep learning and its applications.


Authors: Anasse Bari, Mohamed Chaouchi, Tommy Jung
Edition: 1st Edition
Publisher: For Dummies
Overview: Understand the fundamentals of predictive analytics and its applications in business.


Author: Joel Grus
Edition: 1st Edition
Publisher: O’Reilly Media
Overview: Learn essential data science and machine learning concepts with hands-on Python code.


Author: AurΓ©lien GΓ©ron
Edition: 2nd Edition
Publisher: O’Reilly Media
Overview: A hands-on guide to building intelligent systems using the most popular Python libraries.


Authors: Mariya Yao, Adelyn Zhou, Marlene Jia
Edition: 1st Edition
Publisher: Wiley
Overview: Learn how business leaders can harness AI and machine learning for business growth.


Authors: Ajay Agrawal, Joshua Gans, Avi Goldfarb
Edition: 1st Edition
Publisher: Harvard Business Review Press
Overview: A clear explanation of how AI’s predictive capabilities will change business models and industries.


Authors: Paul R. Daugherty, H. James Wilson
Edition: 1st Edition
Publisher: Harvard Business Review Press
Overview: A look at how AI is transforming business processes and creating new roles.


Author: Martin Ford
Edition: 1st Edition
Publisher: Packt Publishing
Overview: A collection of interviews with AI pioneers discussing the future of AI and its impact on society.


Author: Jeff Heaton
Edition: 1st Edition
Publisher: Heaton Research
Overview: A practical guide to AI algorithms, including clustering, error calculation, and linear regression.


Authors: Micheal E. Porter, Thomas H. Davenport, Paul Daugherty, H. James Wilson
Edition: 1st Edition
Publisher: Harvard Business Review Press
Overview: A collection of essential articles from Harvard Business Review on AI, analytics, and their business applications.


Author: Ian Goodfellow, Yoshua Bengio, Aaron Courville
Edition: 1st Edition
Publisher: MIT Press
Overview: The definitive guide to deep learning concepts, including deep architectures, optimization, and unsupervised learning.


Author: Sebastian Raschka
Edition: 1st Edition
Publisher: Packt Publishing
Overview: Learn how to implement machine learning algorithms in Python, from beginner to advanced techniques.


Author: FranΓ§ois Chollet
Edition: 1st Edition
Publisher: Manning Publications
Overview: Learn deep learning techniques using the Keras library in R, with applications in computer vision and NLP.


Author: Andriy Burkov
Edition: 1st Edition
Publisher: Andriy Burkov
Overview: A concise, yet comprehensive introduction to machine learning, suitable for both beginners and professionals.


AI is a field accessible to anyone with an interest in technology. Whether you’re a student, developer, or business leader, there are various entry points to learn and apply AI, and the books listed above are an excellent resource for all levels.


Whether you’re starting your AI journey or looking to deepen your expertise, these books cover essential AI concepts, applications, and techniques. Start with beginner-friendly guides and progress to more advanced materials as you grow your skills. Happy learning!

Leave a Comment

Index