Irem Boybat, Manuel Le Gallo, et al.
PRIME 2017
As the conventional von Neumann-based computational architectures reach their scalability and performance limits, alternative computational frameworks inspired by biological neuronal networks hold promise to revolutionize the way we process information. Here, we present a bioinspired computational primitive that utilizes an artificial spiking neuron equipped with plastic synapses to detect temporal correlations in data streams in an unsupervised manner. We demonstrate that the internal states of the neuron and of the synapses can be efficiently stored in nanoscale phase-change memory devices and show computations with collocated storage in an experimental setting.
Irem Boybat, Manuel Le Gallo, et al.
PRIME 2017
Manuel Le Gallo, Tomas Tuma, et al.
ESSDERC 2016
Malte J. Rasch, Charles Mackin, et al.
Nature Communications
Abu Sebastian, Tomas Tuma, et al.
Nature Communications