Predictive diagnosis of SLA violations in cloud services by seasonal trending and forecasting with thread intensity analytics

Data can be categorized into facts, information, hypothesis, and directives. Activities that generate certain categories of data based on other categories of data through the application of knowledge which can be categorized into classifications, assessments, resolutions, and enactments. Activities...

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Hauptverfasser: CHAN ERIC S, AHAD RAFIUL, GHONEIMY ADEL, SANTOS ADRIANO COVELLO
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creator CHAN ERIC S
AHAD RAFIUL
GHONEIMY ADEL
SANTOS ADRIANO COVELLO
description Data can be categorized into facts, information, hypothesis, and directives. Activities that generate certain categories of data based on other categories of data through the application of knowledge which can be categorized into classifications, assessments, resolutions, and enactments. Activities can be driven by a Classification-Assessment-Resolution-Enactment (CARE) control engine. The CARE control and these categorizations can be used to enhance a multitude of systems, for example diagnostic system, such as through historical record keeping, machine learning, and automation. Such a diagnostic system can include a system that forecasts computing system failures based on the application of knowledge to system vital signs such as thread or stack segment intensity and memory heap usage. These vital signs are facts that can be classified to produce information such as memory leaks, convoy effects, or other problems. Classification can involve the automatic generation of classes, states, observations, predictions, norms, objectives, and the processing of sample intervals having irregular durations.
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subjects CALCULATING
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
PHYSICS
title Predictive diagnosis of SLA violations in cloud services by seasonal trending and forecasting with thread intensity analytics
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