Books
Fouad Sabry

Machine Learning

Explore the world of machine learning as it intersects with robotics science in this comprehensive guide. This book introduces readers to the foundational concepts of machine learning, demonstrating its critical role in modern robotics. Ideal for professionals, students, and enthusiasts alike, it offers a wellrounded insight into the field’s advancements, practical applications, and future potentials, making it a valuable resource for anyone invested in robotics and machine learning.

Chapters Brief Overview:

1: Machine Learning An overview of machine learning principles in robotics.

2: Artificial Intelligence Examines AI’s integral role in enhancing robotic capabilities.

3: Supervised Learning Delves into models where outcomes guide robotic decisions.

4: Neural Network (Machine Learning) Introduces neural network architectures for robots.

5: Pattern Recognition Covers the role of patterns in robot perception and decisionmaking.

6: Unsupervised Learning Explores datadriven insights for autonomous robotic functions.

7: Training, Validation, and Test Data Sets Examines data preparation for robotics applications.

8: MetaLearning (Computer Science) Discusses robots learning to optimize their own learning.

9: Hierarchical Temporal Memory Explores advanced memory models for robotics.

10: Data Analysis for Fraud Detection Illustrates machine learning in robotic security.

11: Types of Artificial Neural Networks Overview of neural networks applied in robotics.

12: Deep Learning Examines complex, multilayered networks for advanced robotics.

13: Learning Rule Reviews the learning principles applied to robotic intelligence.

14: Feature Learning Describes extracting meaningful patterns in robotics contexts.

15: Deep Belief Network Discusses deep belief structures for robotic learning.

16: Domain Adaptation Covers robots adapting to new environments and tasks.

17: Incremental Learning Shows robots’ ability to build on previous learning.

18: Explainable Artificial Intelligence Focuses on transparency in robot decisions.

19: SelfSupervised Learning Examines selfreliant learning methods in robotics.

20: Symbolic Artificial Intelligence Explores logicbased AI for robotics.

21: Neats and Scruffies Analyzes the structured and flexible approaches in robotics.

This book is not just a technical guide but an insightful journey through robotics science. As machine learning continues to transform the industry, this work provides both practical tools and theoretical insights, making the investment in this knowledge a smart choice for future innovators.
399 printed pages
Original publication
2025
Publication year
2024

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