Machine Learning

About The Book

<p><span style=background-color: rgba(245 245 244 1); color: rgba(121 121 121 1)>The presents book a comprehensive and structured journey through the foundational principles and advanced methodologies that drive the modern field of artificial intelligence and machine learning. The book is meticulously organized to serve as both a textbook for graduate-level learners and a reference manual for researchers and professionals aiming to understand and apply AI techniques in a wide variety of domains. By integrating theoretical frameworks with real-world applications it offers readers both the how and why behind the workings of intelligent systems. Beginning with the basics in Chapter 1: Fundamentals of Machine Learning the book gradually builds the reader's understanding of essential algorithms learning paradigms and modeling techniques. This is followed by an exploration of advanced strategies in Chapter 2 which dives into optimization regularization and ensemble methods that refine the learning process. Through clearly explained mathematical formulations and illustrative examples readers are empowered to engage deeply with core concepts while also preparing for complex implementations. Chapters 3 through 5 guide readers through pivotal domains such as unsupervised learning probabilistic models reinforcement learning and deep neural networks. These chapters serve as a bridge between theoretical understanding and practical deployment offering insight into clustering dimensionality reduction Q-learning policy optimization convolutional and recurrent architectures. In particular the deep learning chapter provides a robust look into the structures and operations that power modern AI-from natural language processing to computer vision. The book goes beyond techniques and tools by addressing the theoretical and statistical underpinnings of machine learning in Chapters 7 and 8. By introducing concepts from information theory generalization VC dimensions and entropy it fosters a deeper appreciation for the mathematical rigor that supports AI's growth. Furthermore Chapter 6 on applications illustrates the transformative impact of machine learning across healthcare robotics finance cybersecurity and smart environments linking abstract ideas to tangible societal advancements. Overall Understanding Artificial Intelligence: Fundamentals and Applications is designed to offer a balanced in-depth view of the AI ecosystem-ideal for students educators and practitioners alike. It emphasizes clarity real-world relevance and intellectual rigor making it a valuable guide for anyone seeking to master the evolving landscape of intelligent systems. </span></p>
Piracy-free
Piracy-free
Assured Quality
Assured Quality
Secure Transactions
Secure Transactions
Delivery Options
Please enter pincode to check delivery time.
*COD & Shipping Charges may apply on certain items.
Review final details at checkout.
downArrow

Details


LOOKING TO PLACE A BULK ORDER?CLICK HERE