Data structure and algorithms for AI & ML
Artificial Intelligence (AI) and Machine Learning (ML) have revolutionized modern computing and technology, offering powerful solutions in fields ranging from natural language processing to autonomous systems. At the heart of AI and ML lie complex data manipulations and efficient algorithmic processes that transform raw data into meaningful patterns, predictions, and decisions. This book, Data Structures and Algorithms for Artificial Intelligence and Machine Learning, is specifically designed for AI and ML students, researchers, and practitioners who wish to gain a deep understanding of the fundamental data structures and algorithms that underpin intelligent systems. Unlike conventional textbooks that treat data structures and algorithms as standalone computer science topics, this book contextualizes these core concepts within the AI and ML landscape, bridging the gap between theory and practical AI application. Why This Book? Most AI and ML courses focus heavily on mathematical foundations, model training, and application frameworks but often overlook the essential role of data structures and algorithmic efficiency. Without an understanding of the underlying data handling and algorithmic strategies, AI models can become inefficient, slow, and unscalable. This book is a comprehensive guide that covers all crucial data structures and algorithms that are directly relevant to AI and machine learning systems. It explains how to choose and implement the right data structures to handle vast amounts of data efficiently, how different algorithms optimize the training and inference processes, and how the combination of these two components results in faster, smarter AI systems. Target Audience · Undergraduate and Postgraduate AI and ML students: This book will serve as an essential companion to their academic curriculum, enhancing their grasp of AI-specific algorithmic principles. · Researchers and Practitioners: Those developing AI systems will benefit from insights into algorithm optimization and data handling that directly impact model performance. · Software Engineers transitioning to AI/ML: Professionals with a programming background seeking to specialize in AI will find this book invaluable in understanding the AI-centric approach to algorithms and data structures. · Data Scientists and Analysts: Who want to deepen their understanding of how data is stored, retrieved, and manipulated efficiently in AI pipelines. Structure and Content Overview The book is carefully structured to build your knowledge step-by-step. It begins with fundamental concepts of data structures and algorithms tailored specifically for AI contexts, progressing towards advanced algorithmic strategies employed in modern AI systems. · Foundations: Understanding arrays, trees, graphs, and hash tables with AI-relevant examples. · Core Algorithms: Learning how graph traversals, nearest neighbor search, optimization algorithms, and tree-based models fit into AI tasks. · Specialized Topics: Deep dives into sparse matrix operations, graph neural networks, heuristic algorithms, and parallel processing. ·
-
Autore:
-
Anno edizione:2026
-
Editore:
-
Formato:
-
Lingua:Inglese
Formato:
Gli eBook venduti da Feltrinelli.it sono in formato ePub e possono essere protetti da Adobe DRM. In caso di download di un file protetto da DRM si otterrà un file in formato .acs, (Adobe Content Server Message), che dovrà essere aperto tramite Adobe Digital Editions e autorizzato tramite un account Adobe, prima di poter essere letto su pc o trasferito su dispositivi compatibili.
Cloud:
Gli eBook venduti da Feltrinelli.it sono sincronizzati automaticamente su tutti i client di lettura Kobo successivamente all’acquisto. Grazie al Cloud Kobo i progressi di lettura, le note, le evidenziazioni vengono salvati e sincronizzati automaticamente su tutti i dispositivi e le APP di lettura Kobo utilizzati per la lettura.
Clicca qui per sapere come scaricare gli ebook utilizzando un pc con sistema operativo Windows