Introducing automated management through iteratively increased automation and indicators

Integrated Network Management(2011)

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Abstract
Introducing automation into a managed environment includes significant initial overhead and abstraction, creating a disconnect between the administrator and the system. In order to facilitate the transition to automated management, this paper proposes an approach whereby automation increases gradually, gathering data from the task deployment process. This stored data is analysed to determine the task outcome status and can then be used for comparison against future deployments of the same task and alerting the administrator to deviations from the expected outcome. Using a machine-learning approach, the automation tool can learn from the administrator's reaction to task failures and eventually react to faults autonomously.
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Key words
data analysis,fault tolerant computing,learning (artificial intelligence),automated management,data gathering,machine learning approach,task deployment process,task outcome status,adaptability,artificial intelligence,automation,deployment,management,neural networks,reliability
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