边缘smartnic,实现瞬时计算弹性

D. Z. Tootaghaj, A. Mercian, V. Adarsh, M. Sharifian, P. Sharma
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引用次数: 0

摘要

本文提出了一种新的架构,战略性地收集smartnic未开发的计算能力,以卸载瞬态微服务工作负载峰值,从而减少SLA违规,同时提供更好的性能/能耗。这对于具有严格SLA要求的边缘部署中的ML工作负载尤其重要。利用未开发的计算能力比部署额外的服务器更有利,因为smartnic在经济和操作上更可取。我们提出了Spike-Offload,这是一个低成本和可扩展的平台,利用机器学习来预测峰值,并协调将通用微服务工作负载无缝卸载到smartnic,从而消除了预部署昂贵主机服务器及其利用率不足的需求。我们的SpikeOffload评估显示,对于特定的工作负载,SLA违规最多可以减少20%。此外,我们证明,对于特定的工作负载,我们的方法可以潜在地减少40%以上的资本支出(CAPEX)。此外,每单位能耗的性能可以提高2倍。
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SmartNICs at edge for transient compute elasticity
This paper proposes a new architecture that strategically harvests the untapped compute capacity of the SmartNICs to offload transient microservices workload spikes, thereby reducing the SLA violations while providing better performance/energy consumption. This is particularly important for ML workloads at Edge deployments with stringent SLA requirements. Usage of the untapped compute capacity is more favorable than deploying extra servers, as SmartNICs are economically and operationally more desirable. We propose Spike-Offload, a low-cost and scalable platform that leverages machine learning to predict the spikes and orchestrates seamless offloading of generic microservices workloads to the SmartNICs, eliminating the need for pre-deploying expensive host servers and their under-utilization. Our SpikeOffload evaluation shows that SLA violations can be reduced by up to 20% for specific workloads. Furthermore, we demonstrate that for specific workloads our approach can potentially reduce capital expenditure (CAPEX) by more than 40%. Also, performance per unit energy consumption can be improved by upto 2X.
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