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eGain Evaluator Now Brings Continuous Quality Assurance to AI-Generated Answers

Enterprises now have a systematic way to test, monitor, and improve AI answer quality before issues reach customersSUNNYVALE, Calif., May 06, 2026 (GLOBE NEWSWIRE) -- eGain (NASDAQ: EGAN), the knowledge platform for AI-powered customer engagement, today announced the general availability of eGain Evaluator, a product tailored for organizations where AI-generated answers can carry financial and legal consequences. Inaccurate or non-compliant answers expose organizations to regulatory risk, erode

articleEgain CorporationMay 6, 20263/company/egain-corporation/news/egain-evaluator-now-brings-continuous-quality-assurance-to-ai-generated-answers
eGain Evaluator Now Brings Continuous Quality Assurance to AI-Generated Answers

About this update from Egain Corporation

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