Answer Posted / Ravinder Kumar Singh
Neuromorphic Computing is a subfield of computer science that aims to design hardware systems inspired by the structure, function, and operation of the human brain. It seeks to create artificial neural networks that can learn from data, adapt to new situations, and process information in real-time.nNeuromorphic computing devices are often modeled after biological neurons and synapses, making them energy-efficient, scalable, and capable of solving complex problems.
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