Publication: Mapping Spiking Neural Networks to Neuromorphic Hardware
Mapping Spiking Neural Networks to Neuromorphic Hardware
Date
Date
Date
Citations
Balaji, A., Catthoor, F., Das, A., Wu, Y., Huynh, K., Dell’Anna, F. G., Indiveri, G., Krichmar, J. L., Dutt, N. D., & Schaafsma, S. (2020). Mapping Spiking Neural Networks to Neuromorphic Hardware. IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 28(1), 76–86. https://doi.org/10.1109/tvlsi.2019.2951493
Abstract
Abstract
Abstract
Neuromorphic hardware implements biological neurons and synapses to execute a spiking neural network (SNN)-based machine learning. We present SpiNeMap, a design methodology to map SNNs to crossbar-based neuromorphic hardware, minimizing spike latency and energy consumption. SpiNeMap operates in two steps: SpiNeCluster and SpiNePlacer. SpiNeCluster is a heuristic-based clustering technique to partition an SNN into clusters of synapses, where intracluster local synapses are mapped within crossbars of the hardware and intercluster global
Metrics
Views
Additional indexing
Creators (Authors)
Journal/Series Title
Journal/Series Title
Journal/Series Title
Volume
Volume
Volume
Number
Number
Number
Page range/Item number
Page range/Item number
Page range/Item number
Page end
Page end
Page end
Item Type
Item Type
Item Type
In collections
Keywords
Language
Language
Language
Publication date
Publication date
Publication date
Date available
Date available
Date available
ISSN or e-ISSN
ISSN or e-ISSN
ISSN or e-ISSN
OA Status
OA Status
OA Status
Publisher DOI
Metrics
Views
Citations
Balaji, A., Catthoor, F., Das, A., Wu, Y., Huynh, K., Dell’Anna, F. G., Indiveri, G., Krichmar, J. L., Dutt, N. D., & Schaafsma, S. (2020). Mapping Spiking Neural Networks to Neuromorphic Hardware. IEEE Transactions on Very Large Scale Integration (VLSI) Systems, 28(1), 76–86. https://doi.org/10.1109/tvlsi.2019.2951493