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Serving DNNs like Clockwork: Performance Predictability from the Bottom Up

A. Gujarati,Reza Karimi,4 Authors,Jonathan Mace

2020 · ArXiv: 2006.02464
USENIX Symposium on Operating Systems Design and Implementation · 284 Citations

TLDR

This work adopts a principled design methodology to successively build a fully distributed model serving system that achieves predictable end-to-end performance and demonstrates that Clockwork exploits predictable execution times to achieve tight request- level service-level objectives (SLOs) as well as a high degree of request-level performance isolation.

Abstract

Machine learning inference is becoming a core building block for interactive web applications. As a result, the underlying model serving systems on which these applications depend must consistently meet low latency targets. Existing model serving architectures use well-known reactive techniques to alleviate common-case sources of latency, but cannot effectively curtail tail latency caused by unpredictable execution times. Yet the underlying execution times are not fundamentally unpredictable-on the contrary we observe that inference using Deep Neural Network (DNN) models has deterministic performance. Here, starting with the predictable execution times of individual DNN inferences, we adopt a principled design methodology to successively build a fully distributed model serving system that achieves predictable end-to-end performance. We evaluate our implementation, Clockwork, using production trace workloads, and show that Clockwork can support thousands of models while simultaneously meeting 100 ms latency targets for 99.997% of requests. We further demonstrate that Clockwork exploits predictable execution times to achieve tight request-level service-level objectives (SLOs) as well as a high degree of request-level performance isolation.

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