Statistical control rules for detecting anomalies in time series data

    公开(公告)号:US11695643B1

    公开(公告)日:2023-07-04

    申请号:US17513620

    申请日:2021-10-28

    Applicant: Rapid7, Inc.

    CPC classification number: H04L41/147 H04L43/045 H04L43/067 H04L43/16

    Abstract: Systems and methods are disclosed to implement a time series anomaly detection system that uses configurable statistical control rules (SCRs) and a forecasting system to detect anomalies in a time series data (e.g. fluctuating values of a network activity metric). In embodiments, the system forecasts future values of the time series data along with a confidence interval based on seasonality characteristics of the data. The time series data is monitored for anomalies by comparing actual observed values in the time series with the predicted values and confidence intervals, according to the SCRs. The SCRs may be defined and tuned via a configuration interface that allows users to visually see how different SCRs perform over real data. Advantageously, the disclosed system allows users to create custom anomaly detection triggers for different types of time series data, without use of a monolithic detection model which can be difficult to tune.

    Monitoring network activity for anomalies using activity metric forecasting model

    公开(公告)号:US12068924B2

    公开(公告)日:2024-08-20

    申请号:US18197980

    申请日:2023-05-16

    Applicant: Rapid7, Inc.

    CPC classification number: H04L41/147 H04L43/045 H04L43/067 H04L43/16

    Abstract: Systems and methods are disclosed to implement a time series anomaly detection system that uses configurable statistical control rules (SCRs) and a forecasting system to detect anomalies in a time series data (e.g. fluctuating values of a network activity metric). In embodiments, the system forecasts future values of the time series data along with a confidence interval based on seasonality characteristics of the data. The time series data is monitored for anomalies by comparing actual observed values in the time series with the predicted values and confidence intervals, according to the SCRs. The SCRs may be defined and tuned via a configuration interface that allows users to visually see how different SCRs perform over real data. Advantageously, the disclosed system allows users to create custom anomaly detection triggers for different types of time series data, without use of a monolithic detection model which can be difficult to tune.

    Statistical Control Rules for Detecting Anomalies in Times Series Data

    公开(公告)号:US20230291657A1

    公开(公告)日:2023-09-14

    申请号:US18197980

    申请日:2023-05-16

    Applicant: Rapid7, Inc.

    CPC classification number: H04L41/147 H04L43/045 H04L43/16 H04L43/067

    Abstract: Systems and methods are disclosed to implement a time series anomaly detection system that uses configurable statistical control rules (SCRs) and a forecasting system to detect anomalies in a time series data (e.g. fluctuating values of a network activity metric). In embodiments, the system forecasts future values of the time series data along with a confidence interval based on seasonality characteristics of the data. The time series data is monitored for anomalies by comparing actual observed values in the time series with the predicted values and confidence intervals, according to the SCRs. The SCRs may be defined and tuned via a configuration interface that allows users to visually see how different SCRs perform over real data. Advantageously, the disclosed system allows users to create custom anomaly detection triggers for different types of time series data, without use of a monolithic detection model which can be difficult to tune.

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