Neural Networks Explained
Kai Turing
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Naturwissenschaften, Medizin, Informatik, Technik / Informatik, EDV
Beschreibung
"Neural Networks Explained" offers a comprehensive yet accessible exploration of artificial intelligence's fundamental building blocks, making complex concepts approachable for readers without technical expertise. The book uniquely bridges the gap between advanced AI technology and everyday understanding by drawing compelling parallels between biological brains and artificial neural networks, helping readers grasp how these systems learn and make decisions.
The journey begins with core concepts of neural networks, including neurons, layers, and connections, before progressing through their historical evolution and modern applications. Rather than relying on complex mathematical formulas, the book employs vivid analogies and real-world examples, such as how neural networks power smartphone facial recognition or distinguish between images of cats and dogs. This practical approach makes technical concepts tangible for business professionals, students, and curious individuals alike.
Through a combination of case studies, expert interviews, and documented examples, the book examines neural networks' impact across various industries, from healthcare diagnostics to autonomous vehicles. It thoughtfully addresses contemporary debates surrounding AI ethics and bias while maintaining scientific accuracy. The interdisciplinary perspective, connecting computer science with neuroscience and psychology, provides readers with a holistic understanding of both the technology's capabilities and its broader implications for society, making it an invaluable resource for anyone seeking to navigate our increasingly AI-driven world.
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