Introduction

Learn about Protegrity Synthetic Data.

Protegrity Synthetic Data unlocks the full potential of AI and analytics by creating entirely new data that mirrors the patterns of your original datasets. This new data contains no sensitive information. You can train and test AI models without risk. You can also scale these models without exposure or compliance violations.

Advantges of Protegrity Synthetic Data over Anonymized Data:

  • Preserve utility for analytics, machine learning, and testing while minimizing privacy risks.
  • Can simulate rare events or edge cases in data.
  • Does not have a 1:1 mapping to real records.
  • Is not regulated or biased.
  • Cannot be traced back to any individual.

Use Cases

Protegrity Synthetic Data is used for:

  • Training machine learning models without exposing sensitive data.
  • Sharing data across teams or vendors while maintaining compliance.
  • Replacing expensive or hard-to-source real-world data collection.
  • Testing and development environments that replicate real-world complexity without privacy risks.
  • Monetizing data and evaluating vendors.

Privacy-Preserving Characteristics

A list of characteristics for privacy-preserving using Protegrity Synthetic Data.

Comparison with Other Privacy-Enhancing Technologies

Understand the difference between Protegrity Synthetic Data and other data protection methods.

Protegrity Synthetic Data Overview

An overview of key characteristics of Protegrity Synthetic Data and its role in privacy compliance.

How Protegrity Synthetic Data is Generated

Describes how Protegrity Synthetic Data generation works.


Last modified : March 24, 2026