【24h】

Anomaly Detection in High-Performance API Gateways

机译:高性能API网关中的异常检测

获取原文

摘要

Detecting performance anomalies and taking corrective or preventive actions are key requirements in high-performance software systems. However, progress in research related to performance anomaly detection has been limited due to the lack of publicly available datasets. This holds true for performance anomaly detection in API gateways as well. With the advent of the API Economy, API gateways are likely to be widely deployed, thus becoming a key component of enterprise integration architectures. Therefore, it is important to detect performance anomalies in such high-performance API-Gateway systems. The primary contribution of the paper is Vichalana, a dataset that can be used to evaluate the accuracy of anomaly detection algorithms in API-Gateways. In order to generate this data set we first classify the anomalies in API-Gateways into 7 types. Second, we provide detailed criteria for re-creating them in API-Gateway environments. Third, we re-create these anomaly types in an API-Gateway environment (similar to a production environment) and collect 25 measurement parameters relating to CPU, memory, network IO and disk IO under both normal and anomalous conditions. The data set we provide is based on the data we collect in these tests. Finally, using several example scenarios, we illustrate the behaviour of several measurement parameters under different anomaly types. We provide the reasoning for particular behaviours of parameters for different types of anomalous behaviours.
机译:检测性能异常并采取纠正或预防措施是高性能软件系统的关键要求。但是,由于缺乏公开可用的数据集,与性能异常检测相关的研究进展受到限制。 API网关中的性能异常检测也是如此。随着API经济的到来,API网关可能会得到广泛部署,从而成为企业集成体系结构的关键组成部分。因此,重要的是要在这种高性能API网关系统中检测性能异常。本文的主要贡献是Vichalana,该数据集可用于评估API网关中异常检测算法的准确性。为了生成此数据集,我们首先将API网关中的异常分类为7种类型。其次,我们提供了在API网关环境中重新创建它们的详细标准。第三,我们在API网关环境(类似于生产环境)中重新创建这些异常类型,并在正常和异常条件下收集25个与CPU,内存,网络IO和磁盘IO相关的测量参数。我们提供的数据集基于我们在这些测试中收集的数据。最后,使用几个示例场景,我们说明了不同异常类型下几个测量参数的行为。我们提供了针对不同类型的异常行为的参数特定行为的推理。

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