Nishant Mysore, Gopabandhu Hota, S. Deiss, B. Pedroni, G. Cauwenberghs
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Hierarchical Network Partitioning for Reconfigurable Large-Scale Neuromorphic Systems
We present an efficient and scalable partitioning method for mapping large-scale neural network models to reconfigurable neuromorphic hardware. The partitioning framework is optimized for compute-balanced, memory -efficient parallel processing targeting low-latency execution and dense synaptic storage, with minimal routing across various compute cores. We demonstrate highly scalable and efficient partitioning for connectivity-aware and hierarchical address-event routing resource-optimized mapping, significantly reducing the total communication volume recursively when compared to random balanced assignment. We evaluate the partitioning algorithm on synthetic small-world networks with varying degrees of sparsity factor and fan-out. The combination of our method and practical results suggest a promising path towards extending to very large-scale networks and more degrees of hierarchy.