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Das et al., 2024 - Google Patents

Hardware-Application Co-Design to Evaluate the Performance of an STDP-based Reservoir Computer

Das et al., 2024

Document ID
4926620190618506972
Author
Das H
Patel K
Ameli S
Chakraborty N
Schuman C
Rose G
Publication year
Publication venue
2024 IEEE Computer Society Annual Symposium on VLSI (ISVLSI)

External Links

Snippet

Reservoir computer (RC) is an emerging computing framework to optimize the training cost. RC is a suitable solution for low-power devices such as edge devices. In addition, RC layer is a mystery box to the researcher. Usually, a very small neuron size and minimal random …
Continue reading at ieeexplore.ieee.org (other versions)

Classifications

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