Evaluating Container Orchestration for Neuromorphic Workloads in Virtual Edge Environments
Huyen Pham, Bilhanan Silverajan

TL;DR
This paper evaluates deploying neuromorphic spiking neural network workloads in containerized edge environments using Kubernetes, focusing on latency, throughput, and resource sensitivity.
Contribution
It provides the first detailed analysis of SNN workload behavior and orchestration challenges in virtual edge environments, highlighting resource and routing issues.
Findings
SNN workloads are highly sensitive to resource constraints.
Default load balancing can cause tail latency issues.
Classification accuracy remains stable despite resource limitations.
Abstract
The growing adoption of edge computing has created an increasing need for workloads capable of operating under strict resource and energy constraints. Neuromorphic computing, and spiking neural networks (SNNs) in particular, offers an energy-efficient alternative to conventional machine learning through event-driven computation. However, how SNN workloads behave when deployed within modern container orchestration frameworks, especially in edge environments, remains largely unexplored. This paper investigates the feasibility of deploying and orchestrating SNN workloads in a virtual edge environment using Kubernetes, focusing on end-to-end latency, throughput, classification accuracy, infrastructure overhead, and runtime behavior under concurrent load. Experiments were conducted on a single-node K3d cluster running on a Windows 11 host with WSL2 and Docker Desktop. The results show that…
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