Generate SYNTHETIC DATA
Synthetic data generation tools: Compare top platforms and features
Backed by Gartner’s Market Guide
Modern synthetic data generation tools go beyond basic synthetic data, combining privacy-preserving techniques, AI-driven generation, and platform capabilities to support testing, analytics, and AI use cases.
Compare synthetic data methods based on:
-
Synthetic data generation techniques
-
Privacy-preserving and compliance approaches
-
Data realism, accuracy, and statistical integrity
-
Scalability for testing, analytics, and AI workloads
-
Vendor capabilities and platform fit
Get the Gartner report
Key capabilities to compare in synthetic data software
Compare synthetic data generation techniques
Evaluate different approaches to synthesize data across use cases
Review privacy-preserving capabilities
Understand how tools protect sensitive data for compliance
Balance data realism and utility
Maintain accuracy and usability for testing, analytics, and AI
Evaluate synthetic data tools and vendors
Compare platforms, capabilities, and vendor fit
Why teams are evaluating synthetic data generators
Synthetic data generation tools overcome the challenges inherent to traditional data masking software, and support a variety of critical use cases in the enterprise:
- Testing and development: Deliver realistic AI-generated test data on demand
- Privacy & compliance: Enforce data privacy for regulatory compliance
- Analytics and AI: Maintain high-fidelity data for model training and analytics
Who This Guide Is For
- Infosec: Privacy & compliance assurance
- Data engineering: Scalable synthetic data delivery
- Analytics & AI: High-fidelity AI training data
- Quality engineering: Realistic synthetic data for testing