Mage Data

Privacy Enhancing Technologies

Secure data-in-use with the help of our context and format preserving anonymization methods that ensures security of the data while retaining its usability and preserving the data value.


  • Anonymize sensitive data using context and format preserving anonymization techniques.
  • Retain the value of your data while mitigating risk of sensitive data exposure
  • Secure your data using robust anonymization methods that minimizes the risk of re-identification
  • Use differential privacy techniques to secure sensitive data while retaining data usability
  • Mimic production data in your non-production and testing environments without exposing sensitive data
  • Synthetically generate realistic data that is identical to your production data specific to security leaders responsible for maintaining regulatory compliance
  • Audit-ready reporting that displays the presence of sensitive data across the enterprise


  • Determine the likelihood of the discovered data classification being sensitive data with a scorecard approach, that assigns confidence scores
  • Choose from three scan types, namely Sample Scan, Full Scan, and Incremental Scan, with flexible scanning methods
  • Scan only the newly added tables/rows/columns after a datastore refresh through incremental scanning
  • Anonymize your data through mechanisms that not only preserve the format of the original data, but also retains the context
  • Generate realistic data for analytics and testing that replicates production data without the inherent risk of sensitive data exposure


  • Choose how you want to secure your sensitive data with a data classification centric anonymization technique.
  • Secure your data across the spectrum, whether it is in-transit, at-rest, or in-use.
  • Provide the best-in-class security for your sensitive data with NIST approved fips140
    algorithm for encryption and tokenization.
  • Enable adequate anonymization with minimal re-identification risk using Mage Data’s (patent pending) masking method.
  • Generate a fake dataset similar in characteristics to the original data through fuzzy logic and artificial intelligence, with Mage Data’s identities.
  • Maintain an anonymized datastore that preserves demographics, gender ratios, age distribution, etc.