Predictive auto scaling engine
    2.
    发明授权

    公开(公告)号:US10552745B2

    公开(公告)日:2020-02-04

    申请号:US14057898

    申请日:2013-10-18

    Applicant: Netflix, Inc.

    Abstract: Techniques for predictively scaling a distributed application are described. Embodiments could monitor performance of an application within a cloud computing environment over a first window of time to collect historical performance data. Here, the application comprises a plurality of application instances. A workload of the application could be monitored over a second window of time to collect historical workload data. Embodiments could analyze both the historical performance data and the historical workload data to determine one or more scaling patterns for the application. Upon determining a present state of the application matches one of the one or more scaling patterns, a plan for predictively scaling the application could be determined. Embodiments could then predictively scale the plurality of application instances, based on the determined plan.

    PREDICTIVE AUTO SCALING ENGINE
    3.
    发明申请
    PREDICTIVE AUTO SCALING ENGINE 审中-公开
    预测自动缩放发动机

    公开(公告)号:US20150113120A1

    公开(公告)日:2015-04-23

    申请号:US14057898

    申请日:2013-10-18

    Applicant: Netflix, Inc.

    Abstract: Techniques for predictively scaling a distributed application are described. Embodiments could monitor performance of an application within a cloud computing environment over a first window of time to collect historical performance data. Here, the application comprises a plurality of application instances. A workload of the application could be monitored over a second window of time to collect historical workload data. Embodiments could analyze both the historical performance data and the historical workload data to determine one or more scaling patterns for the application. Upon determining a present state of the application matches one of the one or more scaling patterns, a plan for predictively scaling the application could be determined. Embodiments could then predictively scale the plurality of application instances, based on the determined plan.

    Abstract translation: 描述了用于预测性地缩放分布式应用的技术。 实施例可以在第一时间窗口内监视云计算环境内的应用程序的性能,以收集历史性能数据。 这里,应用程序包括多个应用程序实例。 可以在第二个时间窗口监视应用程序的工作负载,以收集历史工作负载数据。 实施例可以分析历史性能数据和历史工作负载数据,以确定应用的一个或多个缩放模式。 在确定应用程序的当前状态与一个或多个缩放模式中的一个匹配时,可以确定用于预测缩放应用程序的计划。 然后,实施例可以基于所确定的计划来预测性地缩放多个应用程序实例。

Patent Agency Ranking