This paper introduces a novel neuromorphic computing architecture that integrates multiple heterogeneous hardware nodes through dynamic virtualization, enabling adaptable allocation and reconfiguration of resources to efficiently process complex tasks.
Neuromorphic spintronics combines neuromorphic computing and spintronics to create energy-efficient, brain-inspired computing systems that leverage the unique properties of the electron's spin.
Spin-NeuroMem is a low-power neuromorphic associative memory design that integrates spintronic devices and CMOS components, achieving superior performance in terms of power consumption, area, and recall speed compared to prior works.
Strain-mediated control of the energy barrier height in low barrier nanomagnets enables reconfiguring binary stochastic neurons (BSNs) to analog stochastic neurons (ASNs) and vice versa, enabling a wide range of applications in neuromorphic hardware.
Photonic-electronic spiking neurons offer high-speed, energy-efficient neuromorphic sensing and computing capabilities.
Hardware-in-loop learning with spin stochastic neurons showcases the potential for edge-intelligent devices.
Die Integration von Mem-Elementen in neuromorphe Hardware bietet eine vielversprechende Lösung für energieeffiziente und leistungsstarke neuronale Netzwerkanwendungen.
Spiking Neural Networks offer fast and efficient solutions for Visual Place Recognition tasks, enabling real-time deployment on resource-constrained robotic systems.
Effektive Event-Driven Lernalgorithmen für tiefe SNNs.
Optimizing ANN-SNN conversion for lossless results under ultra-low latency.