Benziane S. Neural Network Advancements in the Age of AI 2025
Download this torrent!
Benziane S. Neural Network Advancements in the Age of AI 2025
To start this P2P download, you have to install a BitTorrent client like qBittorrent
Category: Other
Total size: 9.63 MB
Added: 1 month ago (2025-06-25 10:01:01)
Share ratio: 39 seeders, 0 leechers
Info Hash: BD9D9254FB3FF7A63F006096CAC63AAEE97AF876
Last updated: 7 hours ago (2025-07-31 05:12:51)
Description:
Textbook in PDF format
Emerging trends such as Explainable Artificial Intelligence (XAI), few-shot learning, and neural architecture search (NAS) push the boundaries of current neural networks. These cutting-edge networks are transforming the design and efficiency in modern applications, including computer vision, natural language processing (NLP), and autonomous systems. They enable engineers and data scientists to design efficient models, accelerating innovation in sectors like healthcare, biotechnology, and smart systems. The practical implementation techniques of these advanced neural networks are ideal for optimizing neural networks in real-world scenarios and solving real-world problems. Neural Network Advancements in the Age of AI provides a comprehensive exploration of neural networks, emphasizing both the theoretical foundations and practical applications across various fields. It bridges the gap between theory and practice, making neural networks accessible to both researchers and practitioners. Covering topics such as machine translation, predictive maintenance, and skill acquisition, this book is an excellent resource for AI engineers, data scientists, software developers, healthcare professionals, financial practitioners, engineers, computer scientists, professionals, researchers, scholars, academicians, and more.
Deep Learning has emerged as a transformative branch of Artificial Intelligence (AI), revolutionizing diverse domains with its ability to process and analyze large, complex datasets. The Chapter 2 provides an in-?depth exploration of Deep Learning techniques, emphasizing their foundational concepts, architecture, and applications. It begins with the discussion of the history of Deep Learning and the transition from Machine Learning to Deep Learning. An introduction to neural networks, including convolutional and recurrent architecture, and highlights their unique capacity for hierarchical feature extraction. The discussion extends to advanced techniques such as Generative AI, Large Language Model and Transformer Model, showcasing their adaptability across tasks. Focusing on practical implications, the chapter examines the impact of Deep Learning in fields like healthcare, finance, autonomous systems, and natural language processing. By the end of the chapter, readers will gain a comprehensive understanding of Deep Learning capabilities, limitations, and transformative potential.
Preface
Section 1. Mathematical and Theoretical Foundations
Introduction to Neural Networks
Deep Learning: Foundations, Architectures, and Transformative Applications
Regularization of Generative Models
The Revolution of Generative AI
Section 2. Generative and Adversarial Models
Exploring the Applications and Impact of Generative Adversarial Networks in Modern Technology
Section 3. Specialized Architectures
CNN in Medical Imaging: Advantages, Challenges, and Future Scope
Leveraging Echo State Networks for DDoS Detection in Software- Defined Networking
Enhancing Content Recommendation for Programming Education Using BERT- Based Techniques
Section 4 Language, Translation, and Accessibility
Evaluating Neural Network- Based Arabic Machine Translation: Challenges, Metrics, and Solutions Conversational Algerian Sign Language Recognition Using the Deep
Learning Approach
Section 5 Human Activities, Learning, and Behavior
Decoding Human Activities: Algorithms, Frameworks, and Challenges in Recognition Systems
vestigating Motivation for Skill Acquisition Among Indian Students Pursuing Professional Courses: A Predictive Analytics Framework With Artificial Neural Networks
Data Quality Management Technique in Big Data Analytics for Machine Learning and Deep Learning Applications in Gaming
Compilation of References