M. Ivanovic, A. Živić, N. Tachos, George Gois, N. Filipovic, D. Fotiadis
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引用次数: 1
摘要
本文介绍了硅芯片研究平台硅ofcm的构建和云化经验,硅ofcm是一种创新的硅芯片临床试验解决方案,用于全心脏性能的设计和功能优化以及药物治疗效果的监测,旨在减少动物研究和人体临床试验。云化的主要目标是证明可移植性、提高可伸缩性和降低长期基础设施成本。该平台中计算成本最高的部分,即科学工作流管理器,已成功移植到Amazon Web Services。我们在三个不同的研究工作流上对性能进行基准测试,每个工作流都有不同的资源需求和执行时间。第一个基准测试是连续运行工作流的纯粹性能。第二个测试的目的是通过同时提交多个工作流来对底层基础结构进行压力测试。基准测试结果很有希望,在这种计算量很大的用例中,基础设施的启动开销几乎可以忽略不计。
In-silico Research Platform in the Cloud - Performance and Scalability Analysis
The paper describes experiences from building and cloudification of the in-silico research platform SilicoFCM, an innovative in-silico clinical trials' solution for the design and functional optimization of whole heart performance and monitoring effectiveness of pharmacological treatment, with the aim to reduce the animal studies and the human clinical trials. The primary aim of cloudification was to prove portability, improve scalability and reduce long-term infrastructure costs. The most computationally expensive part of the platform, the scientific workflow manager, was successfully ported to Amazon Web Services. We benchmarked the performance on three distinct research workflows, each of them having different resource requirements and execution time. The first benchmark was pure performance of running workflow sequentially. The aim of the second test was to stress-test the underlying infrastructure by submitting multiple workflows simultaneously. The benchmark results are promising, painting the infrastructure launching overhead almost negligible in this kind of heavy computational use-case.