Quality Digest, Mike King; 07/09/2024
Historically, the sensitive nature of personal and company proprietary information held in life sciences quality management systems (QMS) has been a factor for quality management teams’ reluctance to adopt AI. Add to that the complex global regulatory environment and the penalties of noncompliance, and this disinclination increases as the quality management teams work to reduce risk.
However, as AI’s capabilities and benefits, along with technologies such as machine learning (ML), generative AI (GenAI), and large language models (LLM) become more compelling, quality management teams are considering them to improve productivity and efficiency, reduce errors and duplication of effort, and empower industry professionals in their day-to-day activities.
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