In the world of cybersecurity, a lot is written about testing vulnerabilities and attack vectors to reduce the risk of a data breach and keep up with privacy regulations. But if you are testing the security of your data, how do you do that without compromising the data itself?
To construct a reliable test environment, you need data that is structurally similar to production – often identical in shape – without exposing real sensitive information. Data masking solves that problem by anonymizing sensitive information while preserving its format and relationships, so it can still be used for test and development workloads.
Beyond testing, the goal is to protect sensitive information while keeping the data realistic enough to be useful for operational tasks – especially in building test and development environments that reflect real-world conditions.
Below is an updated list of 13 data masking tools: first, the core anonymization platforms from our 2026 comparison, followed by additional vendors often used to protect test environments.
- K2view
K2view Data Masking tools are a standalone, best-of-breed solution for enterprises that need to mask data quickly, simply, and at high scale. It is built to handle complex, multi-system environments while keeping test data realistic and consistent.
The K2view data masking solution supports structured and unstructured data masking with full referential integrity retention, so related records remain linked correctly across systems. It can extract data from relational and non-relational databases, file systems, and other enterprise sources, making it suitable for heterogeneous landscapes.
Key capabilities include:
- Sensitive data discovery and classification via rules or LLM-based cataloging
- An integrated catalog for policy, access control, and audit
- Static and dynamic data masking across structured and unstructured data
- In-flight anonymization for data moving between environments
- Dozens of customizable, out-of-the-box masking functions
- Synthetic data generation capabilities when masking alone is not enough
- Full support for CPRA, HIPAA, GDPR, and DORA compliance
- Self-service and API automation for CI/CD, deployable in hybrid, on-premises, and cloud environments
For test environments, this means teams can discover PII across many systems, apply consistent masking while preserving relationships, and provision production-like datasets on demand without relying on full clones. Non-technical teams can define and monitor anonymization tasks using a guided interface or chat co-pilot, reducing dependence on central IT.
Initial setup and implementation require careful planning, and the platform delivers the greatest value at enterprise scale rather than in very small organizations. For enterprises that need privacy protection at any scale and want a single standard for masking across their test landscapes, K2view offers broad coverage, strong governance, and extensive automation.
- Broadcom Test Data Manager
Broadcom Test Data Manager is a legacy data anonymization and TDM tool designed for large enterprises with complex test data requirements. It combines static and dynamic data masking with synthetic data creation, subsetting, and virtualization.
In test environments, it can help reduce storage and refresh effort by creating masked subsets and virtual test databases, while integrating with multiple DevOps pipelines. This makes it suitable for organizations with large data estates and established infrastructure.
However, the initial setup is complex, self-service options are limited, and the user experience often feels dated. It tends to be a better fit for enterprises already using Broadcom products and prepared to invest in a sizable implementation rather than teams looking for a lightweight or highly self-service masking solution.
- IBM InfoSphere Optim
IBM InfoSphere Optim is a legacy data anonymization tool with broad support for databases, big data platforms, and cloud deployments. It focuses on masking sensitive structured data, archiving production data, and maintaining compatibility across diverse databases, operating systems, and hardware (including mainframe environments).
For test environments, Optim can create right-sized, masked test databases that reduce storage cost and support regulatory needs such as GDPR and HIPAA.
On the downside, integration with modern data lakes and cloud-native stacks can be complex, and some capabilities lag behind newer masking solutions. The UI is often described as clunky, and cloud-native features need improvement. It is most suitable for enterprises already using IBM products and managing a mix of legacy and modern systems.
- Informatica Persistent Data Masking
Informatica Persistent Data Masking focuses on continuous data protection across environments, making it applicable for organizations undergoing cloud transformations. It provides persistent, irreversible masking of sensitive data, along with real-time masking options for production environments and an API-based architecture for integration.
For test environments, the tool helps keep non-production data sets anonymized while supporting ongoing application changes and migrations. It also benefits organizations that are already standardized on Informatica for other data management tasks.
Licensing and cloud setup can be complex, and smaller teams may experience a steep learning curve. It fits best where Informatica is already part of the data stack and where large-scale, long-term deployments justify the operational investment.
- Perforce Delphix
Perforce Delphix provides data virtualization and management capabilities, including masking and synthetic data generation, to deliver secure and compliant copies of production data to development, test, and analytics environments.
Its features include self-service data delivery and virtualization, centralized governance, API automation, and storage optimization via virtualization. For test environments, this can improve the speed of test-data provisioning and reduce storage consumption by serving virtualized copies instead of full physical clones.
Users often point out that reporting and analytics features are limited, and in some scenarios the platform can be complex and costly. It is best suited to enterprises with mature test or DevOps practices, heavy data volumes, and strict compliance needs that can benefit from the combination of virtualization and masking.
- Datprof Privacy
Datprof Privacy specializes in making test data privacy-friendly, offering an accessible, basic set of data anonymization tools. It anonymizes data in non-production environments, generates synthetic test data, and provides high configurability and rule-setting, with GDPR and HIPAA readiness.
For smaller organizations or less complex data environments, Datprof Privacy can provide reasonable control over how data is masked without requiring an extensive platform rollout.
Setup can still be time-intensive, and automation features are more limited than in larger platforms. Users often highlight flexibility but also note the significant effort required for initial configuration, which can reduce some of the operational benefits for larger or more dynamic test environments.
- EPI-USE Labs
EPI-USE’s Data Secure focuses on SAP landscapes and mixed SAP/non-SAP environments. Its value lies in enabling consistent masking across those complex, tightly integrated stacks.
For organizations running significant SAP workloads, it can help protect sensitive data in test environments without breaking cross-module dependencies. For broader, multi-vendor data estates, it is more specialized and may need to be combined with other tools to cover non-SAP systems in a consistent way.
- Eclipse Risk
Eclipse Risk offers masking for structured data at scale, using techniques such as encryption, randomization, and substitution. It is designed for organizations that want privacy-by-design across large, heterogeneous data sets.
In test environments, it can anonymize sensitive data while leaving structure intact, but typically requires integration work to align with existing discovery, cataloging, and deployment pipelines. It is more of a masking engine than a complete test-data lifecycle platform, so teams may need additional tooling for provisioning and environment management.
- SecuPi
SecuPi provides dynamic and static masking, tokenization, and fine-grained controls for sensitive data across cloud, hybrid, and on-premises environments. Its primary emphasis is on data access governance: enforcing who can see what, and monitoring that access.
For test environments, SecuPi is useful where organizations need policy-driven visibility and control, especially when test and production share infrastructure. It can reduce exposure of sensitive data without necessarily requiring separate masked copies.
As with other access-governance tools, it does not aim to cover full test data management, so teams responsible for subsetting and provisioning test databases may still need additional solutions.
- Solix
Solix Common Data Platform (CDP) includes data discovery, governance, and masking, along with referential masking and format-preserving encryption. It functions more as a broad data platform than a narrowly focused test-data masking product.
This can be helpful for organizations that want unified governance for analytics, archival, and test data from a single environment. For teams primarily seeking focused test-environment masking, the broader platform footprint may feel heavier and demand more operational effort than a specialized masking tool.
- Oracle
Oracle’s Data Masking and Subsetting Pack is aimed at organizations that rely heavily on Oracle databases. It supports sensitive data discovery, subsetting, and masking for non-production environments.
In Oracle-centric environments, it can be a practical way to create safe test datasets without bringing in a separate platform. In more diverse, multi-vendor contexts, it is less flexible and may need to be combined with additional masking tools to achieve consistent policies across all systems.
- Mage
Mage Data provides static and dynamic data masking with more than 60 anonymization methods and tokenization options. It targets test-environment masking and broader data-privacy use cases and uses AI to help identify sensitive fields and PII.
For test environments, it can provide a range of masking techniques for different data types. As with other specialized masking engines, teams still need to design how it plugs into their broader test data processes, including discovery outside its scope, test data provisioning, and environment lifecycle management.
- Azure SQL Database
Azure SQL Database includes native dynamic data masking, which limits exposure of sensitive fields at query time without changing the underlying data. It can be configured through the Azure Portal, T-SQL, or REST APIs and is integrated into the Azure ecosystem.
For organizations using Azure SQL, this offers a convenient way to reduce direct access to sensitive columns in certain shared or lower-trust environments. It is primarily oriented toward on-the-fly masking in supported databases rather than full-scale test data masking across many systems, so it complements rather than replaces broader anonymization platforms.
Conclusion
Protecting test environments is not just about identifying vulnerabilities; it is about ensuring that the data used for those tests does not introduce new risk. Data masking tools solve this by anonymizing sensitive information while preserving the realism needed for meaningful testing and development.
The tools above range from broad enterprise platforms and legacy solutions to specialized masking engines and cloud-native features. Among them, K2view stands out for enterprises that need consistent, scalable masking across many systems, with:
- Sensitive data discovery and classification built in
- Structured and unstructured masking that preserves referential integrity
- Support for static, dynamic, and in-flight anonymization
- Regulatory alignment with CPRA, HIPAA, GDPR, and DORA
- Self-service and API automation for CI/CD pipelines
- Optional synthetic data generation when masking alone is not enough
Other vendors can play important roles in SAP-centric, access-governance, or cloud-specific scenarios, but for organizations looking to standardize data masking across complex test environments, K2view provides a unified foundation for both privacy and usability.