Patent classifications
G06F11/2263
Machine defect prediction based on a signature
Methods, system, and computer readable medium are presented for predicting defects using a machine learning component based on a generated signature. A trained machine learning component that has been trained with historic data that represents a series of events that occurred within a plurality of heterogeneous systems over a plurality of periods of change for the heterogeneous systems can be received. A base signature for a first heterogeneous system that includes a first mix of modules can be compared to a current signature for the first heterogeneous system to identify one or more irregularities. The trained machine learning component can predict one or more defects for the first heterogeneous system based on the identified irregularity.
COMPUTER-CONTROLLED METRICS AND TASK LISTS MANAGEMENT
An electronic evaluation device and method thereof for optimizing an operation of computer-controlled metric appliances in a network. The method includes determining whether a fault associated with computer-controlled metric appliance is valid based on a feedback received in real time from a validation entity and updating predefined programmable instructions assigned to the computer-controlled metric appliance in response to determining that the fault is invalid. The predefined programmable instructions are used to determine whether the computer-executable metric is achieved or not. The method includes applying a machine learning model on the plurality of parameters and the computer-executable goal to determine a computer-executable task list to be assigned to the computer-controlled metric appliance in order to achieve the computer-executable goal.
Methods and apparatus for data analysis
A method and apparatus for data analysis according to various aspects of the present invention is configured to test a set of components and generate test data for the components. A diagnostic system automatically analyzes the test data to identify a characteristic of a component fabrication process by recognizing a pattern in the test data and classifying the pattern using a neural network.
Generating error event descriptions using context-specific attention
Generating error event descriptions by receiving a set of error messages associated with an error event, generating a tokenization of at least one line of the set of error messages, providing the tokenization to an attention head according to a context of the tokenization, providing an output of the attention head as input to a generative model, generating a description of the error event according to the output, and providing the description to a user.
Methods and apparatus to analyze performance of watermark encoding devices
Methods, apparatus, systems and articles of manufacture are disclosed that provide an apparatus to monitor watermark encoder operation, the apparatus comprising: a data collector to collect one or more types of heartbeat data from a watermark encoder, the heartbeat data including time varying data, the one or more types of the heartbeat data defined by a software development kit (SDK); a machine learning engine to process the heartbeat data to predict whether the watermark encoder is associated with respective ones of a plurality of failure modes; and an alert generator to, in response to the machine learning engine predicting the watermark encoder is associated with a first one of the failure modes: generate an alert indicating the at least one of the one or more components to be remedied according to the first one of the failure modes; and transmit the alert to a watermark encoder management agent.
FACILITATING DETECTION OF ANOMALIES IN DATA CENTER TELEMETRY
Facilitating detection of anomalies of a target entity is provided herein. A system can comprise a processor and a memory that stores executable instructions that, when executed by the processor, facilitate performance of operations. The operations can comprise training a model on a first set of variables that are constrained by a second set of variables. The second set of variables can characterize elements of a defined entity. The first set of variables can define a normality of the defined entity. The operations also can comprise employing the model to identify expected parameters and unexpected parameters associated with the defined entity to at least a defined level of confidence.
DETECTING AND RESPONDING TO AN ANOMALY IN AN EVENT LOG
A method identifies and prioritizes anomalies in received monitoring logs from an endpoint log source. One or more processors identify anomalies in the monitoring logs by applying a plurality of disparate types of anomaly detection algorithms to the monitoring logs, and then determine a likelihood that the identified anomalies are anomalous based on outputs of the plurality of disparate types of anomaly detection algorithms. The processor(s) then prioritize the monitoring logs based on the likelihood that the identified anomalies are actually anomalous, and send prioritized monitoring logs that exceed a priority level to a security information and event management system (SIEM).
Method, A Diagnosing System And A Computer Program Product For Diagnosing A Fieldbus Type Network
The invention relates to a method for diagnosing a fieldbus type network. The method comprises the steps of measuring, using a signal measuring device such as an oscilloscope, a bus signal of the fieldbus type network, providing the measured bus signal to a computer system, and generating, by the computer system, a diagnosis. The diagnosis is performed by executing a step of comparing, by the computer system, the measured bus signal with signals in a database of bus signals and corresponding diagnoses; and/or feeding, by the computer system, the measured bus signal to a trained statistical model trained to diagnose the fieldbus type network; as well as a step of outputting the diagnosis based on the output of the comparison and/or the output of the statistical model.
HEALTH INDICATOR PLATFORM FOR SOFTWARE REGRESSION REDUCTION
Systems and methods for automatically reducing regression for a software payload applied to a plurality of computing platforms by a software updater. One example method includes receiving a health request associated with the payload, and retrieving, from an escalation engine, a plurality of identifiers identifying a subset of the plurality of computing platforms that have completed deployment of the payload, and determining a plurality of ULS tags associated with the payload. The method includes querying an anomaly detector for failure data, including pre and post-deployment data, for the subset corresponding to the ULS tags, detecting a potential software regression associated with the payload by comparing the pre and post-deployment data, and querying a root cause analyzer based on the potential regression. The method includes receiving an identifier identifying a potential root cause for the potential regression, and transmitting an event based on the potential regression and the potential root cause.
Automatic failure detection in magnetic resonance apparatuses
In a method, a computer and a medical computer for automatic failure analysis in order to provide a cause of failure of the medical imaging apparatus during operation, input data are read into the computer that include raw data or image data, acquired by the imaging apparatus. A set of performance indicators in the input data is calculated by the computer. A trained neural network system is accessed with the calculated performance indicators, in order to provide result data that, in the case of a failure, identify a failure source.