Brain-like computing on an organic molecular layer

Information processing circuits in digital computers are static. In our brains, information processing circuits — neurons — evolve continuously to solve complex problems. Now, an international research team from Japan and Michigan Technological University has created a similar process of circuit evolution in an organic molecular layer that can solve complex problems. This is the first time a brain-like “evolutionary circuit” has been realized.

This computer is massively parallel: The world’s fastest supercomputers can only process bits one at a time in each of their channels. Their circuit allows instantaneous changes of ~300 bits.

Their processor can produce solutions to problems for which algorithms on computers are unknown, like predictions of natural calamities and outbreaks of disease. To prove this unique feature, they have mimicked two natural phenomena in the molecular layer: heat diffusion and the evolution of cancer cells.

The monolayer has intelligence; it can solve many problems on the same grid.

Their molecular processor heals itself if there is a defect. This remarkable self-healing property comes from the self-organizing ability of the molecular monolayer. No existing man-made computer has this property, but our brain does: if a neuron dies, another neuron takes over its function.

The work is described in the Nature Physics paper “Massively parallel computing on an organic molecular layer.” It is coauthored by Ranjit Pati, of the Michigan Technological University Department of Physics. Lead author is Anirban Bandyopadhyay, National Institute for Materials Science, National Institute of Information and Communication Technology, Japan.


The material in this press release comes from the originating research organization. Content may be edited for style and length. Have a question? Let us know.

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