An Offline Demand Estimation Method for Multi-threaded Applications

Juan F. Pérez, Sergio Pacheco-Sanchez, G. Casale
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引用次数: 24

Abstract

Parameterizing performance models for multi-threaded enterprise applications requires finding the service rates offered by worker threads to the incoming requests. Statistical inference on monitoring data is here helpful to reduce the overheads of application profiling and to infer missing information. While linear regression of utilization data is often used to estimate service rates, it suffers erratic performance and also ignores a large part of application monitoring data, e.g., response times. Yet inference from other metrics, such as response times or queue-length samples, is complicated by the dependence on scheduling policies. To address these issues, we propose novel scheduling-aware estimation approaches for multi-threaded applications based on linear regression and maximum likelihood estimators. The proposed methods estimate demands from samples of the number of requests in execution in the worker threads at the admission instant of a new request. Validation results are presented on simulated and real application datasets for systems with multi-class requests, class switching, and admission control.
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一种多线程应用的离线需求估计方法
为多线程企业应用程序参数化性能模型需要找到工作线程为传入请求提供的服务速率。在这里,对监视数据的统计推断有助于减少应用程序分析的开销,并推断缺失的信息。虽然利用率数据的线性回归通常用于估计服务率,但它的性能不稳定,并且还忽略了大部分应用程序监控数据,例如响应时间。然而,从其他指标(如响应时间或队列长度样本)进行的推断由于依赖于调度策略而变得复杂。为了解决这些问题,我们提出了基于线性回归和最大似然估计的多线程应用程序的新的调度感知估计方法。所提出的方法在接收新请求的瞬间从工作线程中正在执行的请求数量的样本中估计需求。在具有多类请求、类切换和准入控制的系统上,给出了仿真和实际应用数据集的验证结果。
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