首页> 外文会议>International conference on service-oriented computing >Estimating the Performance of Cloud-Based Systems Using Benchmarking and Simulation in a Complementary Manner
【24h】

Estimating the Performance of Cloud-Based Systems Using Benchmarking and Simulation in a Complementary Manner

机译:使用基准和互补模拟评估基于云的系统的性能

获取原文

摘要

Estimating future runtime performance and cost is an essential task for Chief Information Officers in deciding whether to adopt a Cloud-based system. Benchmarking and simulation are two techniques that have long been practiced towards reliable estimation. Benchmarking involves (potentially) high cost and time consumption, but oftentimes yields more reliable estimates than simulation, while the simulation is much cheaper and faster than benchmarking, but less reliable. In order to deal with this dichotomy, we propose a complementary approach to estimating the performance of Cloud-based systems, whereby performance estimates can be obtained in a fast, inexpensive, and also reliable way. In this approach, the ontological concepts of a benchmark model, whose benchmark results have already been obtained, are mapped into those of a simulation model, while the mismatches and similarities between the two models are taken care of, through measures of similarity between the two. This ontology-driven construction of simulation models is intended not only to yield more reliable simulation results but also to help better explain why the simulation results may, or may not, be reliable. To validate our complementary approach, simulation models are constructed using CloudSim, and the simulation results are compared against the corresponding benchmark results, by using our prototype tool, collected from Amazon Web Service (AWS) and Google Compute Engine (GCE) by using the Yahoo! Cloud Serving Benchmark (YCSB) tool. These experiments show that the simulation results show about 90% accuracy with respect to the benchmark results, and additionally we feel we could better explain why this happens.
机译:首席信息官在决定是否采用基于云的系统时,估算未来的运行时性能和成本是一项基本任务。基准测试和模拟是长期用于可靠估计的两种技术。基准测试涉及(潜在地)较高的成本和时间消耗,但通常会比模拟产生更可靠的估计,而模拟比基准测试便宜得多且速度更快,但可靠性较差。为了应对这种二分法,我们提出了一种补充方法来估计基于云的系统的性能,从而可以以快速,廉价且可靠的方式获得性能估计。在这种方法中,将已经获得基准结果的基准模型的本体概念映射到模拟模型的本体概念中,同时通过两个模型之间的相似性度量来解决两个模型之间的失配和相似性。这种由本体驱动的模拟模型的构建不仅旨在产生更可靠的模拟结果,而且还有助于更好地解释为什么模拟结果可能可靠或不可靠。为了验证我们的补充方法,使用CloudSim构建了仿真模型,并使用我们的原型工具(使用Yahoo从Amazon Web Service(AWS)和Google Compute Engine(GCE)收集了原型工具)将仿真结果与相应的基准测试结果进行了比较。 !云服务基准(YCSB)工具。这些实验表明,模拟结果相对于基准结果显示出约90%的准确性,此外,我们认为我们可以更好地解释为什么会发生这种情况。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号