Volume no :
9 |
Issue no :
2
Article Type :
Scholarly Article
Author :
Prof P.T.Talole, Mr.Nilesh.M.Jadhav,Mr. Ajay.S.Ingle,Mr.Samyak.G.Sonone, Miss.Divyani.V.Patil
Published Date :
June, 2025
Publisher :
Journal of Artificial Intelligence and Cyber Security (JAICS)
Page No: 1 - 6
Abstract : Neuromorphic computing represents a revolutionary approach to artificial intelligence inspired by the architecture and functionality of the human brain. Unlike traditional computing paradigms that rely on binary logic and centralized processing units, neuromorphic systems leverage massively parallel networks of artificial neurons and synapses to mimic the brain's cognitive processes in real time. This seminar explores the foundational principles, current advancements, and future prospects of neuromorphic computing. Topics covered include the biological basis of neural computation, the design and implementation of neuromorphic hardware, applications in machine learning and robotics, as well as challenges such as scalability and energy efficiency. By bridging the gap between neuroscience and computer science, neuromorphic computing holds promise for achieving unprecedented levels of computational efficiency and cognitive capabilities, paving the way towards the next generation of intelligent systems. We survey the current status of Neuromorphic computing applications in real-world and discuss its future.
Keyword AI, artificial neurons, Neuroscience, biological, Application of Neuromorphic computing in real-world
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