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    • 1. 发明授权
    • Automated identification of performance crisis
    • 自动识别性能危机
    • US08078913B2
    • 2011-12-13
    • US12473900
    • 2009-05-28
    • Moises GoldszmidtPeter Bodik
    • Moises GoldszmidtPeter Bodik
    • G06F11/00
    • G06F11/079G06F11/0709G06F11/3409G06F2201/81H04L41/0681
    • Methods for automatically identifying and classifying a crisis state occurring in a system having a plurality of computer resources. Signals are received from a device that collects the signals from each computer resource in the system. For each epoch, an epoch fingerprint is generated. Upon detecting a performance crisis within the system, a crisis fingerprint is generated consisting of at least one epoch fingerprint. The technology is able to identify that a performance crisis has previously occurred within the datacenter if a generated crisis fingerprint favorably matches any of the model crisis fingerprints stored in a database. The technology may also predict that a crisis is about to occur.
    • 用于自动识别和分类在具有多个计算机资源的系统中发生的危机状态的方法。 从收集系统中每台计算机资源的信号的设备接收信号。 对于每个时期,都会产生一个时代指纹。 在检测到系统内的性能危机之后,产生由至少一个时代指纹组成的危机指纹。 该技术能够确定如果生成的危机指纹有利地匹配存储在数据库中的任何模型危机指纹,则数据中心之前发生了性能危机。 该技术还可能预测危机即将发生。
    • 2. 发明申请
    • TIME MODULATED GENERATIVE PROBABILISTIC MODELS FOR AUTOMATED CAUSAL DISCOVERY
    • 用于自动发现的时间调制生成概率模型
    • US20090144034A1
    • 2009-06-04
    • US11949061
    • 2007-12-03
    • Aleksandr SimmaMoises Goldszmidt
    • Aleksandr SimmaMoises Goldszmidt
    • G06F17/10G06G7/62
    • H04L41/0663H04L41/142H04L41/145
    • Dependencies between different channels or different services in a client or server may be determined from the observation of the times of the incoming and outgoing of the packets constituting those channels or services. A probabilistic model may be used to formally characterize these dependencies. The probabilistic model may be used to list the dependencies between input packets and output packets of various channels or services, and may be used to establish the expected strength of the causal relationship between the different events surrounding those channels or services. Parameters of the probabilistic model may be either based on prior knowledge, or may be fit using statistical techniques based on observations about the times of the events of interest. Expected times of occurrence between events may be observed, and dependencies may be determined in accordance with the probabilistic model.
    • 客户端或服务器中的不同信道或不同业务之间的依赖关系可以从对构成这些信道或业务的分组的进入和传出的时间的观察来确定。 概率模型可用于正式表征这些依赖性。 概率模型可以用于列出输入分组和各种信道或服务的输出分组之间的依赖性,并且可以用于建立围绕这些信道或服务的不同事件之间的因果关系的预期强度。 概率模型的参数可以基于现有知识,或者可以使用基于关于感兴趣事件的时间的观察的统计技术来拟合。 可以观察事件之间的预期发生时间,并且依赖性可以根据概率模型来确定。
    • 3. 发明申请
    • ADDING PROTOTYPE INFORMATION INTO PROBABILISTIC MODELS
    • 将原型信息添加到概率模型中
    • US20090076794A1
    • 2009-03-19
    • US11855099
    • 2007-09-13
    • Kannan AchanMoises GoldszmidtLev Ratinov
    • Kannan AchanMoises GoldszmidtLev Ratinov
    • G06F17/27G10L15/14G10L15/18
    • G10L15/142G06F17/2715G06K9/6297
    • Mechanisms are disclosed for incorporating prototype information into probabilistic models for automated information processing, mining, and knowledge discovery. Examples of these models include Hidden Markov Models (HMMs), Latent Dirichlet Allocation (LDA) models, and the like. The prototype information injects prior knowledge to such models, thereby rendering them more accurate, effective, and efficient. For instance, in the context of automated word labeling, additional knowledge is encoded into the models by providing a small set of prototypical words for each possible label. The net result is that words in a given corpus are labeled and are therefore in condition to be summarized, identified, classified, clustered, and the like.
    • 公开了将原型信息并入用于自动化信息处理,挖掘和知识发现的概率模型中的机制。 这些模型的示例包括隐马尔可夫模型(HMM),潜在狄利克雷分配(LDA)模型等。 原型信息将先前的知识注入到这些模型中,从而使它们更准确,有效和高效。 例如,在自动化字标识的上下文中,通过为每个可能的标签提供一小组原型字来将附加知识编码到模型中。 最终的结果是,给定语料库中的单词被标记,因此在其中被概括,识别,分类,聚类等等。
    • 5. 发明申请
    • Automated diagnosis and forecasting of service level objective states
    • 服务水平目标状态的自动诊断和预测
    • US20060188011A1
    • 2006-08-24
    • US10987611
    • 2004-11-12
    • Moises GoldszmidtIra CohenTerence KellyJulie Symons
    • Moises GoldszmidtIra CohenTerence KellyJulie Symons
    • H03H7/30
    • G06Q10/04
    • Systems, methods, and software used in performing automated diagnosis and identification of or forecasting service level object states. Some embodiments include building classifier models based on collected metric data to detect and forecast service level objective (SLO) violations. Some such systems, methods, and software further include automated detecting and forecasting of SLO violations along with providing alarms, messages, or commands to administrators or system components. Some such messages include diagnostic information with regard to a cause of a SLO violation. Some embodiments further include storing data representative of system performance and detected and forecast system SLO states. This data can then be used to generate reports of system performance including representations of system SLO states.
    • 用于执行自动诊断和识别或预测服务级对象状态的系统,方法和软件。 一些实施例包括基于收集的度量数据建立分类器模型以检测和预测服务水平目标(SLO)违规。 一些这样的系统,方法和软件还包括自动检测和预测SLO违规以及向管理员或系统组件提供警报,消息或命令。 一些这样的消息包括关于SLO违规的原因的诊断信息。 一些实施例还包括存储表示系统性能的数据和检测和预测系统SLO状态。 然后,该数据可用于生成系统性能的报告,包括系统SLO状态的表示。
    • 7. 发明申请
    • REPAIR-POLICY REFINEMENT IN DISTRIBUTED SYSTEMS
    • 分布式系统修理政策修订
    • US20120072769A1
    • 2012-03-22
    • US12886566
    • 2010-09-21
    • Moises GoldszmidtMihai BudiuYue ZhangMichael Pechuk
    • Moises GoldszmidtMihai BudiuYue ZhangMichael Pechuk
    • G06F11/28G06F11/14
    • G06F11/0793G06F11/3006G06F11/3055
    • In a distributed system a plurality of devices (including computing units, storage and communication units) are monitored by an automated repair service that uses sensors and performs one or more repair actions on computing devices that are found to fail according to repair policies. The repair actions include automated repair actions and non-automated repair actions. The health of the computing devices is recorded in the form of states along with the repair actions that were performed on the computing devices and the times at which the repair actions were performed, and events generated by both sensors and the devices themselves. After some period of the time, the history of states of each device, the events, and the repair actions performed on the computing devices are analyzed to determine the effectiveness of the repair actions. A statistical analysis is performed based on the cost of each repair action and the determined effectiveness of each repair action, and one or more of the policies may be adjusted, as well as determining from the signals and events from the sensors whether the sensors themselves require adjustment
    • 在分布式系统中,多个设备(包括计算单元,存储和通信单元)由使用传感器的自动修复服务来监视,并且对根据修复策略发现失败的计算设备执行一个或多个修复动作。 修复操作包括自动修复操作和非自动修复操作。 以状态的形式记录计算设备的健康状况以及在计算设备上执行的修复动作以及执行修复动作的时间以及由传感器和设备本身产生的事件。 在一段时间之后,分析每个设备的状态历史,事件和在计算设备上执行的修复动作,以确定修复动作的有效性。 基于每个修复动作的成本和确定的每个修复动作的有效性进行统计分析,并且可以调整一个或多个策略,以及根据来自传感器的信号和事件确定传感器本身是否需要 调整
    • 8. 发明授权
    • Adding prototype information into probabilistic models
    • 将原型信息添加到概率模型中
    • US08010341B2
    • 2011-08-30
    • US11855099
    • 2007-09-13
    • Kannan AchanMoises GoldszmidtLev Ratinov
    • Kannan AchanMoises GoldszmidtLev Ratinov
    • G06F17/27G06F17/20G06F15/18G10L15/06G10L15/14
    • G10L15/142G06F17/2715G06K9/6297
    • Mechanisms are disclosed for incorporating prototype information into probabilistic models for automated information processing, mining, and knowledge discovery. Examples of these models include Hidden Markov Models (HMMs), Latent Dirichlet Allocation (LDA) models, and the like. The prototype information injects prior knowledge to such models, thereby rendering them more accurate, effective, and efficient. For instance, in the context of automated word labeling, additional knowledge is encoded into the models by providing a small set of prototypical words for each possible label. The net result is that words in a given corpus are labeled and are therefore in condition to be summarized, identified, classified, clustered, and the like.
    • 公开了将原型信息并入用于自动化信息处理,挖掘和知识发现的概率模型中的机制。 这些模型的示例包括隐马尔可夫模型(HMM),潜在狄利克雷分配(LDA)模型等。 原型信息将先前的知识注入到这些模型中,从而使它们更准确,有效和高效。 例如,在自动化字标识的上下文中,通过为每个可能的标签提供一小组原型字来将附加知识编码到模型中。 最终的结果是,给定语料库中的单词被标记,因此在其中被概括,识别,分类,聚类等等。
    • 9. 发明授权
    • Automated health model generation and refinement
    • 自动健康模型生成和细化
    • US07962797B2
    • 2011-06-14
    • US12408570
    • 2009-03-20
    • Moises GoldszmidtPeter BodikHans Christian Andersen
    • Moises GoldszmidtPeter BodikHans Christian Andersen
    • G06F11/00
    • G06F11/079G06F11/0709G06F11/0748H04L41/0681H04L43/0823H04L43/0888
    • The present invention extends to methods, systems, and computer program products for automatically generating and refining health models. Embodiments of the invention use machine learning tools to analyze historical telemetry data from a server deployment. The tools output fingerprints, for example, small groupings of specific metrics-plus-behavioral parameters, that uniquely identify and describe past problem events mined from the historical data. Embodiments automatically translate the fingerprints into health models that can be directly applied to monitoring the running system. Fully-automated feedback loops for identifying past problems and giving advance notice as those problems emerge in the future is facilitated without any operator intervention. In some embodiments, a single portion of expert knowledge, for example, Key Performance Indicator (KPI) data, initiates health model generation. Once initiated, the feedback loop can be fully automated to access further telemetry and refine health models based on the further telemetry.
    • 本发明延伸到用于自动生成和改进健康模型的方法,系统和计算机程序产品。 本发明的实施例使用机器学习工具来分析来自服务器部署的历史遥测数据。 这些工具输出指纹,例如,特定指标加行为参数的小组,可以唯一地识别和描述从历史数据中挖掘的过去的问题事件。 实施例将指纹自动转换为可直接应用于监视运行系统的健康模型。 全面自动化的反馈回路用于识别过去的问题,并在未来出现这些问题时提前通知,无需任何操作员干预。 在一些实施例中,专家知识的单一部分,例如关键绩效指标(KPI)数据,启动健康模型生成。 一旦启动,反馈回路可以完全自动化,以进一步遥测和基于进一步的遥测来改进健康模型。