G06F11/3447

Anomaly pattern detection system and method
11580005 · 2023-02-14 ·

Provided is an anomaly pattern detection system including an anomaly detection device connected to one or more servers. The anomaly detection device may include an anomaly detector configured to model input data by considering all of the input data as normal patterns, and detect an anomaly pattern from the input data based on the modeling result.

SYSTEM FOR MONITORING AND OPTIMIZING COMPUTING RESOURCE USAGE OF CLOUD BASED COMPUTING APPLICATION
20230043579 · 2023-02-09 ·

A system of monitoring and optimizing computing resources usage for computing application may include predicting a first performance metric for job load capacity of a computing application for optimal job concurrency and optimal resource utilization. The system may include generating an alerting threshold based on the first performance metric. The system may further include, in response to a difference between the alerting threshold and a job load of the computing application within an interval exceeding a threshold, predicting a second performance metric for job load capacity of the computing application for optimal job concurrency and optimal resource utilization. The system may further include, in response to a difference between the first performance metric and the second performance metric exceeding a difference threshold, updating the alerting threshold with a job load capacity with the optimal resource utilization rate corresponding to the second performance metric.

APPARATUS AND METHOD FOR PREDICTING ANOMALOUS EVENTS IN A SYSTEM
20230038977 · 2023-02-09 · ·

A method and apparatus are described. The method includes receiving a set of data streams including data values generated by a sensor associated with the operation of a component in a system at points in time and generating an anomaly data value for the received data values. The method further includes applying a machine learning algorithm to the received data values and a subset of data values previously received to generate expected data values at points in time beyond the current point in time, generating an expected anomaly data value for each of the expected data values, and identifying an operational anomaly for the component at a point in time beyond the current time based on the expected anomaly data value. The apparatus includes an input interface for receiving the data streams and a processor for processing the received data values to identify an operational anomaly as described above.

TEST SYSTEM FOR DATA STORAGE SYSTEM PERFORMANCE TESTING

Performance testing a data storage system includes recording operating parameters and performance data as the data storage system executes performance tests over a test period, the performance data including one or more measures of a performance characteristic (e.g., latency) across a range of I/O operation rates or I/O data rates for each of the performance tests. Subsets of recorded operating parameters and performance data are selected and applied to a machine learning model to train and use the model, and the model provides a model output indicative for each performance test of a level of validity of the corresponding performance data. Based on the model output indicating at least a predetermined level of validity for a given performance test, the performance data for the performance test are incorporated into a record of validated performance data for the data storage system, usable for benchmarking, regression analysis, hardware qualification, etc.

Method for analyzing the resource consumption of a computing infrastructure, alert and sizing
11556451 · 2023-01-17 · ·

A method and a device for analyzing a consumption of resources in a computing infrastructure to predict a resource consumption anomaly on a computing device. The method includes determining a plurality of resource consumption modeling functions; determining a correlation between the resource consumption modeling functions; measuring a resource consumption by a measurement of a consumption value of a first resource; and predicting the resource consumption of the computing infrastructure. The predicting includes a calculation of a value of future consumption of a resource to be predicted from the consumption value of the first resource and from a previously calculated correlation between modeling functions.

Predicting and managing requests for computing resources or other resources

Requests for computing resources and other resources can be predicted and managed. For example, a system can determine a baseline prediction indicating a number of requests for an object over a future time-period. The system can then execute a first model to generate a first set of values based on seasonality in the baseline prediction, a second model to generate a second set of values based on short-term trends in the baseline prediction, and a third model to generate a third set of values based on the baseline prediction. The system can select a most accurate model from among the three models and generate an output prediction by applying the set of values output by the most accurate model to the baseline prediction. Based on the output prediction, the system can cause an adjustment to be made to a provisioning process for the object.

Systems, methods, and apparatuses for detecting and creating operation incidents

Techniques for determining insight are described. An exemplary method includes receiving a request to provide insight into potential abnormal behavior; receiving one or more of anomaly information and event information associated with the potential abnormal behavior; evaluating the received one or more of the anomaly information and event information associated with the abnormal behavior to determine there is insight as to what is causing the potential abnormal behavior and to add to an insight at least two of an indication of a metric involved in the abnormal behavior, a severity for the insight indication, an indication of a relevant event involved in the abnormal behavior, and a recommendation on how to cure the potential abnormal behavior; and providing an insight indication for the generated insight.

Sensor metrology data integration

Methods, systems, and non-transitory computer readable medium are described for sensor metrology data integration. A method includes receiving sets of sensor data and sets of metrology data. Each set of sensor data includes corresponding sensor values associated with producing corresponding product by manufacturing equipment and a corresponding sensor data identifier. Each set of metrology data includes corresponding metrology values associated with the corresponding product manufactured by the manufacturing equipment and a corresponding metrology data identifier. The method further includes determining common portions between each corresponding sensor data identifier and each corresponding metrology data identifier. The method further includes, for each of the sensor-metrology matches, generating a corresponding set of aggregated sensor-metrology data and storing the sets of aggregated sensor-metrology data to train a machine learning model. The trained machine learning model is capable of generating one or more outputs for performing a corrective action associated with the manufacturing equipment.

Visualization of high-dimensional data

A system is configured to detect a small, but meaningful, anomaly within one or more metrics associated with a platform. The system displays visuals of the metrics so that a user monitoring the platform can effectively notice a problem associated with the anomaly and take appropriate action to remediate the problem. A first visual includes a radar-based visual that renders an object representing data for a set of metrics being monitored. A second visual includes a tree map visual that includes sections where each section is associated with an attribute used to compose the set of metrics. Via the display of the visuals, the techniques provide an improved way of representing a large number of metrics (e.g., hundreds, thousands, etc.) being monitored for a platform. Moreover, the techniques are configured to expose useful information associated with the platform in a manner that can be effectively interpreted by a user.

OUTPUT DEVICE, DATA STRUCTURE, OUTPUT METHOD, AND OUTPUT PROGRAM
20180004869 · 2018-01-04 · ·

An output device 10 is provided with an output unit 11 for outputting, on the basis of job feature information indicating the features of the job of a distributed processing system, estimation model application information that is information in a format suitable for an estimation model that estimates the amount of computer resources required for processing a task constituting the job. The estimation model application information may include word-containing information having binary information that indicates whether or not a character string indicated by the character string information included in the job feature information includes a prescribed word. The estimation model application information may include numerical inversion label information having, as string label information, a value derived by converting, by a prescribed function, the numeric value indicated by the numerical information included in the job feature information.