A research team led by Prof. Kwon Hyuk-jun of the DGIST Department of Electrical Engineering and Computer Science has developed a next-generation AI semiconductor technology that mimics the human brain's efficiency in AI and neuromorphic systems.

The advancement of AI has stimulated a rapidly growing demand for energy-efficient semiconductor technology with a fast operational speed. However, traditional computing devices with their von Neumann architecture and separate computing and memory units have speed and energy efficiency shortcomings associated with data processing bottlenecks. Consequently, research on neuromorphic devices that mimic biological neurons' simultaneous computing and memory functions is gaining attention.

Against this backdrop, Prof. Hyuk-Jun Kwon's team developed synaptic field-effect transistors using hafnium oxide, which has strong electrical properties, and thin layers of tin disulfide. This resulted in a three-terminal neuromorphic device capable of storing multiple levels of data in a manner similar to neurons.

The research successfully replicated biological characteristics such as short- and long-term properties, yielding a highly efficient device that responds 10,000 times faster than human synapses and consumes very little energy.

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