Sigma-Delta Neural Network Conversion on Loihi 2
- URL: http://arxiv.org/abs/2505.06417v1
- Date: Fri, 09 May 2025 20:37:27 GMT
- Title: Sigma-Delta Neural Network Conversion on Loihi 2
- Authors: Matthew Brehove, Sadia Anjum Tumpa, Espoir Kyubwa, Naresh Menon, Vijaykrishnan Narayanan,
- Abstract summary: We use Loihi 2's graded spikes to develop a method for converting ANN networks to spiking networks.<n>We evaluate the performance of this network on Loihi 2 and compared it to NVIDIA's Jetson Xavier edge AI platform.
- Score: 2.2718043506526873
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Neuromorphic computing aims to improve the efficiency of artificial neural networks by taking inspiration from biological neurons and leveraging temporal sparsity, spatial sparsity, and compute near/in memory. Although these approaches have shown efficiency gains, training these spiking neural networks (SNN) remains difficult. The original attempts at converting trained conventional analog neural networks (ANN) to SNNs used the rate of binary spikes to represent neuron activations. This required many simulation time steps per inference, which degraded efficiency. Intel's Loihi 2 is a neuromorphic platform that supports graded spikes which can be used to represent changes in neuron activation. In this work, we use Loihi 2's graded spikes to develop a method for converting ANN networks to spiking networks, which take advantage of temporal and spatial sparsity. We evaluated the performance of this network on Loihi 2 and compared it to NVIDIA's Jetson Xavier edge AI platform.
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