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In the rapidly evolving landscape of software development and testing enterprises are facing unprecedented challenges around data quality, speed, and privacy. GenRocket’s Quality Evolution Platform (QEP) is the industry’s first integrated solution that bridges legacy test data management (TDM) with design-driven synthetic data and an AI-orchestrated future. QEP gives engineering teams complete control over test and training data, so they can increase coverage, protect privacy, and release faster—without waiting on production refreshes or exposing PII.
GenRocket offers a powerful synthetic data generation platform that enables BSFI firms to generate high-quality, secure, and diverse synthetic data. GenRocket effectively addresses crucial testing and compliance challenges. This article covers the following topics:
In today’s digitally connected healthcare landscape, Electronic Health Record (EHR) and Electronic Medical Record (EMR) systems are the backbone of patient data management. These systems support clinical workflows, billing, diagnostics, and data sharing across providers.
As data privacy regulations tighten and the risk of data exposure grows, enterprises are rethinking their approach to test data management (TDM). In particular, software engineering and quality assurance (QA) teams are facing new pressure from Chief Information Security Officers (CISOs) and compliance officers to stop using masked production data in lower environments. Increasingly, organizations are turning to synthetic data as a secure and scalable alternative. At GenRocket, we’re seeing this shift accelerate across enterprise quality engineering teams with both new and existing customers.
In the realm of software quality assurance and engineering, there exists a wide array of testing categories, each tailored to ensure different aspects of system functionality, performance, and compliance. These range from unit testing, which examines individual components, to complex integrations, performance benchmarking, and regulatory compliance checks. For each testing category, having precise and relevant test data is crucial to accurately assess system behavior and ensure quality.