Use Shadow Data Discovery to detect sensitive information in your apps that usually
evade traditional data loss prevention (DLP) measures and expose your organization to hidden
risks
Shadow Data Discovery addresses the
critical problem of sensitive information evading traditional Data Loss Prevention
(DLP) measures, exposing organizations to hidden risks. This feature employs
advanced machine learning to automatically summarize and categorize documents,
providing visibility into potentially sensitive data that conventional security
tools might miss. You can use Shadow Data Discovery to uncover and manage shadow
data, which includes highly unstructured research and development files, coded
communications, merger and acquisition documents, and code repositories in
unsupported languages.
Shadow Data Discovery integrates with your existing Enterprise Data Loss Prevention (E-DLP)
workflows, allowing you to refine your Enterprise DLP profiles and Security
policy rules based on newly discovered categories or sensitive data you weren't
previously aware of. This adaptive approach ensures your data security strategy
evolves alongside your changing data ecosystem. Shadow Data Discovery transforms
large volumes of unstructured data into actionable intelligence, enabling your
security analysts to swiftly assess and remediate risks.
By utilizing Shadow Data Discovery, you can more effectively safeguard your
organization's sensitive information, reduce the risk of data breaches, and maintain
compliance with evolving regulatory requirements. Shadow Data Discovery provides
unprecedented visibility into your data landscape, helping you identify patterns in
highly unstructured information and secure assets you might not have known existed.
It enhances your overall data security posture, streamlines the identification of
sensitive information, or allows your security administrators to gain deeper
insights into your organization's data landscape.