BARISTA:用于深度学习预测服务的高效可扩展无服务器服务系统

Anirban Bhattacharjee, A. Chhokra, Zhuangwei Kang, Hongyang Sun, A. Gokhale, G. Karsai
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引用次数: 49

摘要

预训练的深度学习模型越来越多地被用于提供各种计算密集型预测分析服务,如健身跟踪、语音和图像识别。深度学习模型的无状态和高度并行性使它们非常适合无服务器计算范式。然而,由于动态工作负载和不同的可用资源配置集具有不同的部署和管理成本,因此为这些服务做出有效的资源管理决策是一个难题。为了应对这些挑战,我们提出了一个名为Barista的分布式可扩展深度学习预测服务系统,并做出了以下贡献。首先,我们提出了一种快速有效的方法,通过识别各种趋势来预测工作量。其次,我们制定了一个优化问题,以最小化总成本,同时保证有界的预测延迟和合理的精度。第三,我们提出了一种有效的启发式方法来识别合适的计算资源配置。第四,我们提出了一个智能代理,通过水平和垂直扩展来分配和管理计算资源,以保持所需的预测延迟。最后,我们使用具有代表性的城市交通服务的真实工作负载来演示和验证Barista的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
BARISTA: Efficient and Scalable Serverless Serving System for Deep Learning Prediction Services
Pre-trained deep learning models are increasingly being used to offer a variety of compute-intensive predictive analytics services such as fitness tracking, speech, and image recognition. The stateless and highly parallelizable nature of deep learning models makes them well-suited for serverless computing paradigm. However, making effective resource management decisions for these services is a hard problem due to the dynamic workloads and diverse set of available resource configurations that have different deployment and management costs. To address these challenges, we present a distributed and scalable deep-learning prediction serving system called Barista and make the following contributions. First, we present a fast and effective methodology for forecasting workloads by identifying various trends. Second, we formulate an optimization problem to minimize the total cost incurred while ensuring bounded prediction latency with reasonable accuracy. Third, we propose an efficient heuristic to identify suitable compute resource configurations. Fourth, we propose an intelligent agent to allocate and manage the compute resources by horizontal and vertical scaling to maintain the required prediction latency. Finally, using representative real-world workloads for an urban transportation service, we demonstrate and validate the capabilities of Barista.
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