Unleashing GPUs for Network Function Virtualization: an open architecture based on Vulkan and Kubernetes

NOMS 2022-2022 IEEE/IFIP Network Operations and Management Symposium(2022)

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摘要
General-purpose computing on graphics processing units (GPGPU) is a promising way to speed up computationally intensive network functions, such as performing real-time traffic classification based on machine learning. Recent studies have focused on integrated graphics units and various performance optimizations to address bottlenecks such as latency. However, these approaches tend to produce architecture-specific binaries and lack the orchestration of functions. A complementary effort would be a GPGPU architecture based on standard and open components, which allows the creation of interoperable and orchestrable network functions.This study describes and evaluates such open architecture based on the cross-platform Vulkan API, in which we execute hand-written SPIR-V code as a network function. We also demonstrate a multi-node orchestration approach for our proposed architecture using Kubernetes. We validate our architecture by executing SPIR-V code performing traffic classification with random forest inference. We test this application both on discrete and integrated graphics cards and on x86 and ARM. We find that in all cases the GPUs are faster than the baseline Cython code.
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关键词
network function virtualization,open architecture,Kubernetes,general-purpose computing,computationally intensive network functions,real-time traffic classification,machine learning,integrated graphics units,performance optimizations,architecture-specific binaries,complementary effort,GPGPU architecture,standard components,open components,interoperable network functions,orchestrable network functions,cross-platform Vulkan API,SPIR-V code,multinode orchestration approach,discrete graphics cards,integrated graphics cards
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