SECURITY MONITORING PLATFORM FOR MANAGING ACCESS RIGHTS ASSOCIATED WITH CLOUD APPLICATIONS
A security monitoring platform may use an unsupervised machine learning technique to cluster historical data related to user access rights associated with multiple cloud applications based on various features that relate to user permissions and attributes within the multiple cloud applications. The...
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creator | NEVATIA, Dayapatra TAKAWALE, Paresh Vinay KRISHNAN, Ravishankar PATIDAR, Mukul Dilip NORI, Ravi Shankar MITTAL, Garima |
description | A security monitoring platform may use an unsupervised machine learning technique to cluster historical data related to user access rights associated with multiple cloud applications based on various features that relate to user permissions and attributes within the multiple cloud applications. The security monitoring platform may use a supervised machine learning technique to train an access rights data model based on the clustered historical data and perform one or more actions that relate to current access rights assigned to at least one user within one or more of the multiple cloud applications based on a score representing a probability that an access level assigned to the at least one user within the one or more of the multiple cloud applications is correct. The security monitoring platform may apply a reinforcement learning technique to update the access rights data model based on feedback related to the one or more actions. |
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subjects | CALCULATING COMPUTING COUNTING ELECTRIC DIGITAL DATA PROCESSING PHYSICS |
title | SECURITY MONITORING PLATFORM FOR MANAGING ACCESS RIGHTS ASSOCIATED WITH CLOUD APPLICATIONS |
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