Find out in this report how the two Data Loss Prevention (DLP) solutions compare in terms of features, pricing, service and support, easy of deployment, and ROI.
Amazon Macie is a security service that uses machine learning to automatically discover, classify, and protect sensitive data in AWS. Amazon Macie recognizes sensitive data such as personally identifiable information (PII) or intellectual property, and provides you with dashboards and alerts that give visibility into how this data is being accessed or moved. The fully managed service continuously monitors data access activity for anomalies, and generates detailed alerts when it detects risk of unauthorized access or inadvertent data leaks. Amazon Macie is available to protect data stored in Amazon S3.
Now more than ever, your data is on the move—whether it’s on a laptop, flash drive, or moving across physical, virtual, and cloud infrastructures. At any point along the way, your financial data, customer information, intellectual property, or trade secrets could be lost or stolen. Securing this data is further complicated by several growing risk factors:
Rapidly evolving compliance regulations and mandates, including GDPR
Continued growth of workforce mobility
Employees using their own mobile devices and consumer apps for work
Rising frequency of advanced persistent threats (APTs) and data breach incidents
To avoid the embarrassment, reputation damage, regulatory fines, and revenue loss, today’s enterprise must be able to identify, track, and secure all confidential data from multiple points within the organisation and in the cloud without impacting employee productivity and performance. In the past, many organisations tried traditional data loss prevention (DLP) solutions but found they were too intrusive, too complex to manage, and too costly to acquire, deploy, and maintain.
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