Sep 18, 2025

Energy efficient computing with brain inspired magnetic junctions

Physicists are developing an innovative approach that will significantly improve the energy efficiency of computers. They take their inspiration from the human brain.

(Nanowerk News) The rapid development of artificial intelligence (AI) poses challenges to today's computer technology. Conventional silicon processors are reaching their limits: they consume large amounts of energy, the storage and processing units are not interconnected and data transmission slows down complex applications.
As the size of AI models is constantly increasing and they are having to process huge amounts of data, the need for new computing architectures is rising. In addition to quantum computers, focus is shifting, in particular, to neuromorphic concepts. These systems are based on the way the human brain works.
This is where the research of a team led by Dr. Tahereh Sadat Parvini and Prof. Dr. Markus Münzenberg from the University of Greifswald and colleagues from Portugal, Denmark and Germany began. They have found an innovative way to make computers of tomorrow significantly more energy-efficient. Their research centres around so-called magnetic tunnel junctions (MTJs), tiny components on the nanoscale.
"These components not only store information, they can even process it, just like nerve cells. This makes them ideal for novel computing concepts that are based on the way the brain works, what we call 'neuromorphic computing'," explains Dr. Tahereh Sadat Parvini, postdoc at the University of Greifswald and co-author of the paper that was recently published in Communications Physics ("Magnetic tunnel junctions driven by hybrid optical-electrical signals as a flexible neuromorphic computing platform").
spintronic chip for neuromorphic computing
Illustration of the envisioned spintronic chip for neuromorphic computing. (Image: University of Greifswald)
The research team developed a hybrid opto-electrical excitation scheme that combines electrical currents with short laser pulses. This made it possible to generate particularly high thermoelectric voltages in the MTJs - an important prerequisite for the targeted simulation of synapse behaviour.
The physicists were able to identify three particularly remarkable properties: Firstly, the generated voltage can be adjusted flexibly depending on the electrical current, similar to the weight of a synapse in the brain. Secondly, spontaneous "spike" signals occurred, which are similar to the way information is exchanged between nerve cells. Thirdly, in computer simulations, a simple neuromorphic network based on this technology already achieved a recognition accuracy of 93.7 % for digits that had been written by hand.
"Our results show that MTJs with optical-electrical control represent a compact and energy-saving platform for the next generation of computing," summarises Prof. Dr. Markus Münzenberg. "As the technology is compatible with today's semiconductor technology, we believe, that in the future, it could be used in everyday devices as well as high-performance computers."
Source: University of Greifswald (Note: Content may be edited for style and length)
6d piezo alignement system