Sergei Romanov, Abel Soares Siqueira, Jonathan de Bruin, J. Teijema, Laura Hofstee, R. van de Schoot
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引用次数: 0
摘要
主动学习可用于优化和加快系统综述的筛选阶段。模拟筛选过程的模拟研究可用于测试不同机器学习模型的性能或研究不同训练数据的影响。本文介绍了一种具有多处理计算策略的架构设计,可并行运行多项此类模拟研究,使用 ASReview Makita 工作流程生成器和 Kubernetes 软件进行云技术部署。我们对所提出的云架构及其用法进行了技术说明。此外,我们还进行了 1140 次模拟,调查了使用不同数量的 CPU 和内存设置所需的计算时间。我们的分析表明了使用多处理计算可以在多大程度上加快模拟速度。本文中开发的并行计算策略和架构设计可为未来研究提供更优化的模拟时间,同时确保安全完成所需进程。
Optimizing ASReview simulations: A generic multiprocessing solution for ‘light-data’ and ‘heavy-data’ users
Active learning can be used for optimizing and speeding up the screening phase of systematic reviews. Running simulation studies mimicking the screening process can be used to test the performance of different machine-learning models or to study the impact of different training data. This paper presents an architecture design with a multiprocessing computational strategy for running many such simulation studies in parallel, using the ASReview Makita workflow generator and Kubernetes software for deployment with cloud technologies. We provide a technical explanation of the proposed cloud architecture and its usage. In addition to that, we conducted 1140 simulations investigating the computational time using various numbers of CPUs and RAM settings. Our analysis demonstrates the degree to which simulations can be accelerated with multiprocessing computing usage. The parallel computation strategy and the architecture design that was developed in the present paper can contribute to future research with more optimal simulation time and, at the same time, ensure the safe completion of the needed processes.