Implications of Public Cloud Resource Heterogeneity for Inference Serving

J. Gunasekaran, Cyan Subhra Mishra, P. Thinakaran, M. Kandemir, C. Das
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引用次数: 9

Abstract

We are witnessing an increasing trend towards using Machine Learning (ML) based prediction systems, spanning across different application domains, including product recommendation systems, personal assistant devices, facial recognition, etc. These applications typically have diverse requirements in terms of accuracy and response latency, that can be satisfied by a myriad of ML models. However, the deployment cost of prediction serving primarily depends on the type of resources being procured, which by themselves are heterogeneous in terms of provisioning latencies and billing complexity. Thus, it is strenuous for an inference serving system to choose from this confounding array of resource types and model types to provide low-latency and cost-effective inferences. In this work we quantitatively characterize the cost, accuracy and latency implications of hosting ML inferences on different public cloud resource offerings. Our evaluation shows that, prior work does not solve the problem from both dimensions of model and resource heterogeneity. Hence, to holistically address this problem, we need to solve the issues that arise from combining both model and resource heterogeneity towards optimizing for application constraints. Towards this, we discuss the design implications of a self-managed inference serving system, which can optimize for application requirements based on public cloud resource characteristics.
公共云资源异构对推理服务的影响
我们正在目睹使用基于机器学习(ML)的预测系统的趋势日益增长,跨越不同的应用领域,包括产品推荐系统,个人助理设备,面部识别等。这些应用程序通常在准确性和响应延迟方面有不同的要求,这些要求可以通过无数的ML模型来满足。然而,预测服务的部署成本主要取决于所采购的资源类型,这些资源本身在供应延迟和计费复杂性方面是异构的。因此,对于推理服务系统来说,从这些混杂的资源类型和模型类型中进行选择以提供低延迟和成本效益的推理是非常困难的。在这项工作中,我们定量地描述了在不同的公共云资源产品上托管ML推论的成本、准确性和延迟影响。我们的评估表明,以往的工作并没有从模型和资源异质性两个维度解决问题。因此,要从整体上解决这个问题,我们需要解决由于将模型和资源异构结合起来以优化应用程序约束而产生的问题。为此,我们讨论了一个自管理推理服务系统的设计含义,该系统可以根据公共云资源特征对应用需求进行优化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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