How the brain’s functional connectivity can be induced in neuromorphic devices to overcome the limitations of conventional silicon technology.
![Brain connections: neuromorphic devices emulate the brain’s hardware](https://www.advancedsciencenews.com/wp-content/uploads/2019/05/artificial-intelligence-2228610_1280.jpg)
How the brain’s functional connectivity can be induced in neuromorphic devices to overcome the limitations of conventional silicon technology.
For decades the density of integrated circuits has grown exponentially, according to the empirical Moore´s law published in 1965. In this period, the storage density has increased by a factor of about 100 million. Yet, this rapid development is approaching fundamental...
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