Publication | Open Access
Shortest Path and Neighborhood Subgraph Extraction on a Spiking Memristive Neuromorphic Implementation
29
Citations
17
References
2019
Year
Unknown Venue
EngineeringMachine LearningNeurochipSocial SciencesData ScienceSpiking Neural NetworksNeuromorphic EngineeringNeuromorphic DevicesParallel ComputingSnc PropertiesMemristive SncNeurocomputersNeighborhood Subgraph ExtractionComputer EngineeringNeuromorphic ComputingComputer ScienceGraph TheoryNeurophysiologyComputational NeuroscienceShortest PathNeuronal NetworkParallel ProgrammingNeuroscienceBrain-like ComputingIn-memory Computing
Spiking neuromorphic computers (SNCs) are promising as a post Moore's law technology partly because of their potential for very low power computation. SNCs have primarily been demonstrated on machine learning and neural network applications, but they can also be used for applications beyond machine learning that can leverage SNC properties such as massively parallel computation and collocated processing and memory. Here, we demonstrate two graph problems (shortest path and neighborhood subgraph extraction) that can be solved using SNCs. We discuss the approach for mapping these applications to an SNC. We also estimate the performance of a memristive SNC for these applications on three real-world graphs.
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