G06F11/2257

Analysis of memory sub-systems based on threshold distributions

Disclosed is a system comprising a memory component having a plurality of memory cells capable of being in a plurality of states, each state of the plurality of states corresponding to a value stored by the memory cell, and a processing device, operatively coupled with the memory component, to perform operations comprising: obtaining, for the plurality of memory cells, a plurality of distributions of threshold voltages, wherein each of the plurality of distributions corresponds to one of the plurality of states, classifying each of the plurality of distributions among one of a plurality of classes, generating a vector comprising a plurality of components, wherein each of the plurality of components represents the class of a respective one of the plurality of distributions, and processing, using a classifier, the generated vector to determine a likelihood that the memory component will fail within a target period of time.

METHOD AND DEVICE FOR TESTING A TECHNICAL SYSTEM

A method for testing a technical system. The method includes: tests are carried out with the aid of a simulation of the system, the tests are evaluated with respect to a fulfillment measure of a quantitative requirement on the system and an error measure of the simulation, on the basis of the fulfillment measure and error measure, a classification of the tests as either reliable or unreliable is carried out.

METHOD AND DEVICE FOR TESTING A TECHNICAL SYSTEM

A method for testing a technical system. The method includes: tests are carried out with the aid of a simulation of the system, the tests are evaluated with respect to a fulfillment measure of a quantitative requirement on the system and an error measure of the simulation, on the basis of the fulfillment measure and error measure, a classification of the tests as either reliable or unreliable is carried out, and a test database is improved on the basis of the classification.

Method and system for developing an anomaly detector for detecting an anomaly parameter on network terminals in a distributed network
11775403 · 2023-10-03 ·

The present invention discloses a computer implemented method for developing an anomaly detector which is adapted to detect/predict anomaly in one or more network terminals and optimize the behavior of the network terminals. The said method is adapted to collect and monitor the behavior of the network terminals and compare it with the behavior profile of the network terminals in order to detect the anomaly parameter. The behavior profile is the normal interaction of the software and hardware components of the network terminals. A system for implementation and execution of such anomaly detector is also disclosed.

INTELLIGENT CONDITION MONITORING AND FAULT DIAGNOSTIC SYSTEM FOR PREVENTATIVE MAINTENANCE
20230280740 · 2023-09-07 ·

A system for condition monitoring and fault diagnosis includes a data collection function that acquires time histories of selected variables for one or more of the components, a pre-processing function that calculates specified characteristics of the time histories, an analysis function for evaluating the characteristics to produce one or more hypotheses of a condition of the one or more components, and a reasoning function for determining the condition of the one or more components from the one or more hypotheses.

Automated system for intelligent error correction within an electronic blockchain ledger

A system for automated and intelligent error correction within an electronic blockchain ledger is provided. The system may analyze unformatted/unstructured blockchain event logs using machine learning algorithms in order to identify and label the errors within the event logs. Based on the identified errors, the system may use predictive analysis in conjunction with error or rule repositories and/or machine learning to identify potential solutions to the identified errors. Once the potential solutions have been identified, the system may automatically attempt to rectify the blockchain transaction errors using the potential solutions. The system may further comprise trend/correlation analyses and reporting functions regarding various metrics and may output said metrics in various accessible formats.

Methods and systems for self-healing in connected computing environments
11531583 · 2022-12-20 · ·

Methods and systems for networked systems are provided. A reinforcement learning (RL) agent is deployed during runtime of a networked system having at least a first component and a second component. The RL agent detects a first degradation signal in response to an error associated with the first component and a second degradation signal from the second component, the second degradation signal generated in response to the error. The RL agent identifies from a learned data structure an action for fixing degradation, at both the first component and the second component; and continues to update the learned data structure, upon successful and unsuccessful attempts to fix degradation associated with the first component and the second component.

DETECTING DATACENTER MASS OUTAGE WITH NEAR REAL-TIME/OFFLINE USING ML MODELS

The present embodiments relate to data center outage detection and alert generation. An outage detection service as described herein can process near real-time data from various sources in a datacenter and process the data using a model to determine one or more projected sources of a detected outage. The model as described herein can include one or more machine learning models incorporating a series of rules to process near-real time data and offline data and determine one or more projected sources of an outage. An alert message can be generated to provide the projected sources of the outage and other data relevant to the outage.

ANALYSIS OF MEMORY SUB-SYSTEMS BASED ON THRESHOLD DISTRIBUTIONS

Disclosed is a system comprising a memory component having a plurality of memory cells capable of being in a plurality of states, each state of the plurality of states corresponding to a value stored by the memory cell, and a processing device, operatively coupled with the memory component, to perform operations comprising: obtaining, for the plurality of memory cells, a plurality of distributions of threshold voltages, wherein each of the plurality of distributions corresponds to one of the plurality of states, classifying each of the plurality of distributions among one of a plurality of classes, generating a vector comprising a plurality of components, wherein each of the plurality of components represents the class of a respective one of the plurality of distributions, and processing, using a classifier, the generated vector to determine a likelihood that the memory component will fail within a target period of time.

Systems and methods for detecting errors in artificial intelligence engines

A system, method, and apparatus for detecting errors in an artificial intelligence engine. The method includes processing a medical image of a patient at an artificial intelligence engine, and producing a first test result at the artificial intelligence engine based on the medical image. The method also includes detecting an error in the first test result using a server emulator, and producing a second test result that corrects the error in the first test result. In addition, the method includes transmitting the second test result from the artificial intelligence engine to a picture archiving and communication systems server.