Zensar Technologies Introduces ZenseAI.AssureAI for Enterprise AI Assurance

July 18, 2026
Zensar Technologies has launched ZenseAI.AssureAI, an AI assurance and quality engineering offering designed to test, validate, and monitor AI systems across their lifecycle.

Zensar Technologies announced in a press release the launch of ZenseAI.AssureAI, a comprehensive AI assurance and quality engineering offering aimed at helping enterprises test, validate, monitor, and govern AI systems across their lifecycle. The platform supports classical machine learning, generative AI, and agentic AI, addressing shortcomings in traditional quality assurance frameworks that were built for deterministic software.

ZenseAI.AssureAI incorporates four core pillars powered by over 30 automated checks covering data quality and bias assurance, functional and model evaluation, trustworthy AI assurance, and non-functional assurance. It helps ensure compliance with frameworks such as the EU AI Act, NIST AI RMF, and ISO 42001, generating audit-ready documentation while assessing AI confidence levels.

The solution is supported by a multidisciplinary team of experts and is available across industries including banking, insurance, healthcare, manufacturing, and telecommunications. According to Zensar, organizations using ZenseAI.AssureAI have reported up to 40% fewer model defects in production, 60% faster AI release cycles, and 35% improvements in model accuracy.

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