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IRI DMaaS
IRI, The CoSort Company
Securely safeguard PII with expert data masking solutions.
IRI offers a Data Masking as a Service solution that focuses on safeguarding personally identifiable information (PII).
Initially, under a non-disclosure agreement, IRI commits to categorizing, assessing, and documenting the sensitive data within your systems. We will provide a preliminary cost estimate that can be refined collaboratively during the data discovery phase.
Next, you will need to securely transfer the vulnerable data to a safe on-premise or cloud staging area, or alternatively, grant IRI remote, supervised access to the data sources in question. Utilizing the award-winning IRI Data Protector suite, we will mask the data in accordance with your specified business rules, whether on a one-time basis or routinely.
In the final stage, our specialists can facilitate the transfer of the newly masked data to production replicas or to lower non-production environments, ensuring that the data is now secure for analytics, development, testing, or training purposes. Additionally, if required, we can offer extra services, such as re-identification risk assessments of the de-identified data.
This method combines the advantages of established data masking technologies and services, eliminating the need for you to learn and tailor new software from the ground up. Moreover, should you decide to utilize the software internally, it will come fully configured to streamline long-term self-use and adaptation. By partnering with IRI, you can confidently navigate the complexities of data protection while focusing on your core business objectives.
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In contrast to many conventional data management systems, PHEMI Health DataLab is designed with Privacy-by-Design principles integral to its foundation, rather than as an additional feature. This foundational approach offers significant benefits, including:
It allows analysts to engage with data while adhering to strict privacy standards.
It incorporates a vast and adaptable library of de-identification techniques that can conceal, mask, truncate, group, and anonymize data effectively.
It facilitates the creation of both dataset-specific and system-wide pseudonyms, enabling the linking and sharing of information without the risk of data leaks.
It gathers audit logs that detail not only modifications made to the PHEMI system but also patterns of data access.
It automatically produces de-identification reports that are accessible to both humans and machines, ensuring compliance with enterprise governance risk management.
Instead of having individual policies for each data access point, PHEMI provides the benefit of a unified policy that governs all access methods, including Spark, ODBC, REST, exports, and beyond, streamlining data governance in a comprehensive manner. This integrated approach not only enhances privacy protection but also fosters a culture of trust and accountability within the organization.
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Ensure the core message, format, and precision remain intact while prioritizing confidentiality. Enhance data security by transforming and concealing sensitive details through the implementation of pseudonymization techniques that comply with privacy regulations and facilitate analytical needs. The transformed data retains its contextual relevance and referential integrity, rendering it appropriate for use in testing, analytics, or support applications. As a highly scalable and efficient data masking solution, Informatica Persistent Data Masking safeguards sensitive information such as credit card numbers, addresses, and phone contacts from unintended disclosure by producing realistic, anonymized datasets that can be securely shared both internally and externally. Moreover, this approach significantly reduces the risk of data breaches in nonproduction environments, improves the quality of test datasets, expedites development workflows, and ensures adherence to various data privacy standards and regulations. By incorporating such comprehensive data masking strategies, organizations not only secure sensitive information but also cultivate an environment of trust and security, which is essential for maintaining stakeholder confidence. Ultimately, the adoption of these advanced techniques plays a crucial role in promoting an organization's overall data governance framework.
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IRI Voracity
IRI, The CoSort Company
Streamline your data management with efficiency and flexibility.
IRI Voracity is a comprehensive software platform designed for efficient, cost-effective, and user-friendly management of the entire data lifecycle. This platform accelerates and integrates essential processes such as data discovery, governance, migration, analytics, and integration within a unified interface based on Eclipse™.
By merging various functionalities and offering a broad spectrum of job design and execution alternatives, Voracity effectively reduces the complexities, costs, and risks linked to conventional megavendor ETL solutions, fragmented Apache tools, and niche software applications. With its unique capabilities, Voracity facilitates a wide array of data operations, including:
* profiling and classification
* searching and risk-scoring
* integration and federation
* migration and replication
* cleansing and enrichment
* validation and unification
* masking and encryption
* reporting and wrangling
* subsetting and testing
Moreover, Voracity is versatile in deployment, capable of functioning on-premise or in the cloud, across physical or virtual environments, and its runtimes can be containerized or accessed by real-time applications and batch processes, ensuring flexibility for diverse user needs. This adaptability makes Voracity an invaluable tool for organizations looking to streamline their data management strategies effectively.
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Apache Atlas
Apache Software Foundation
Empower your data governance with seamless compliance and collaboration.
Atlas is a powerful and flexible suite of crucial governance services that enables organizations to meet their compliance requirements effectively within Hadoop, while also integrating smoothly with the larger enterprise data environment. Apache Atlas equips organizations with the tools to oversee open metadata and governance, allowing them to build an extensive catalog of their data assets, classify and manage these resources, and encourage collaboration among data scientists, analysts, and the governance team. It comes with predefined types for a wide range of metadata relevant to both Hadoop and non-Hadoop settings, and it also allows for the creation of custom types to better handle metadata management. These custom types can include basic attributes, complex attributes, and references to objects, and they can inherit features from other types. Entities serve as instances of these types, containing specific details about the metadata objects and their relationships. Moreover, the provision of REST APIs streamlines interaction with types and instances, thereby improving the overall connectivity and functionality within the data framework. This holistic strategy guarantees that organizations can adeptly manage their data governance requirements while remaining responsive to changing demands, ultimately leading to more effective data stewardship. Furthermore, by utilizing Atlas, organizations can enhance their data integrity and compliance efforts, further strengthening their operational resilience.
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OpenText Data Privacy & Protection Foundation is a comprehensive platform designed to protect sensitive data at scale with quantum-ready, standards-based cryptography. It helps organizations future-proof their security posture by using Format-Preserving Encryption (FF1), tokenization, and advanced privacy technologies that allow analytics and cloud migrations to continue without interruption. The solution secures data throughout its entire lifecycle, ensuring protection whether the information is stored, transmitted, or actively used in applications. Because the platform is stateless and high-performance, it supports large volumes and complex architectures common in modern hybrid and multi-cloud environments. Its certifications—including FIPS 140-2, NIST SP 800-38G standardization, and Common Criteria—demonstrate its proven strength and suitability for regulated industries such as financial services, healthcare, and government. OpenText’s deep ecosystem integrations allow data protection to extend into analytics tools, data warehouses, and cloud providers with minimal redesign. Organizations can adopt cloud architectures with confidence, knowing sensitive fields remain protected even in distributed systems. Persistent protection also enables safe machine learning, secure collaboration, and privacy-preserving analytics. Enterprises across 50+ countries rely on OpenText to safeguard billions of data events daily. By reducing exposure, simplifying compliance, and supporting secure innovation, the platform helps businesses maintain agility while staying ahead of emerging security threats.
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Mage™ provides extensive capabilities for Static Data Masking (SDM) and Test Data Management (TDM) that seamlessly integrate with Imperva's Data Security Fabric (DSF), effectively protecting sensitive or regulated data. This integration is designed to fit effortlessly within an organization's existing IT framework, harmonizing with current application development, testing, and data workflows, and does not require any modifications to the current architecture. Consequently, organizations can significantly boost their data protection measures while preserving their operational effectiveness, enabling a secure yet agile data handling process. Furthermore, this compatibility ensures that businesses can implement these security enhancements without disrupting their day-to-day activities.
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The Mage™ Dynamic Data Masking module, a key component of the Mage data security platform, has been meticulously designed with the end user's needs in mind. In partnership with clients, this module effectively meets their distinct challenges and requirements. As a result, it has evolved to support nearly all conceivable scenarios that businesses may face. Unlike many rival products that typically originate from acquisitions or target specific niches, Mage™ Dynamic Data Masking is tailored to deliver thorough safeguarding of sensitive information accessed by application and database users in live environments. This solution also seamlessly integrates into a company's current IT framework, negating the necessity for significant architectural changes, which facilitates a more effortless implementation for organizations. Furthermore, this thoughtful design underscores a dedication to bolstering data security while enhancing user experience and operational effectiveness, positioning it as a reliable choice for enterprises seeking robust data protection. Ultimately, the Mage™ Dynamic Data Masking module stands out for its ability to adapt to the evolving landscape of data security needs.
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Okera
Okera
Simplify data access control for secure, compliant management.
Complexity undermines security; therefore, it's essential to simplify and scale fine-grained data access control measures. It is crucial to dynamically authorize and audit every query to ensure compliance with data privacy and security regulations.
Okera offers seamless integration into various infrastructures, whether in the cloud, on-premises, or utilizing both cloud-native and traditional tools. By employing Okera, data users can handle information responsibly while being safeguarded against unauthorized access to sensitive, personally identifiable, or regulated data. Moreover, Okera's comprehensive auditing features and data usage analytics provide both real-time and historical insights that are vital for security, compliance, and data delivery teams. This allows for swift incident responses, process optimization, and thorough evaluations of enterprise data initiatives, ultimately enhancing overall data management and security.
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The IT department can adopt sophisticated data masking strategies to limit access to confidential information, employing flexible masking rules that align with user authentication levels. By integrating systems for blocking access, conducting audits, and sending notifications to users, IT personnel, and external partners handling sensitive data, the organization can ensure compliance with its security protocols and relevant legal and industry privacy regulations. Furthermore, data-masking techniques can be customized to accommodate diverse regulatory or business requirements, thereby creating a secure environment for both personal and sensitive information. This strategy not only protects data but also supports initiatives in offshoring, outsourcing, and cloud computing. Moreover, large datasets can be safeguarded by implementing dynamic masking for sensitive information within Hadoop environments, which significantly improves overall data protection. Such proactive measures reinforce the robustness of the organization's data security framework, ultimately building trust among stakeholders. This comprehensive approach ensures that sensitive information remains shielded from unauthorized access while empowering the business to innovate and expand.