AI vs. Human Error: Why Letting Machines Own the Words Could Be Our Biggest Mistake

Ginette Collazo Instructor:
Ginette Collazo 
Tuesday, June 2, 2026
10:00 AM PDT | 01:00 PM EDT
60 Minutes
Webinar ID: 504188

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Price Details
Live Webinar
$149 One Attendee
$299 Corporate Live
Recorded Webinar
$199 One Attendee
$399 Corporate Recorded
Combo Offers
Live + Recorded
$299 $348 Live + Recorded
Corporate (Live + Recorded)
$599 $698 Corporate
(Live + Recorded)

Live: One Dial-in One Attendee

Corporate Live: Any number of participants

Recorded: Access recorded version, only for one participant unlimited viewing for 6 months ( Access information will be emailed 24 hours after the completion of live webinar)

Corporate Recorded: Access recorded version, Any number of participants unlimited viewing for 6 months ( Access information will be emailed 24 hours after the completion of live webinar)

Overview:

Artificial Intelligence (AI) is rapidly transforming regulated industries, including pharmaceuticals, medical devices, and biologics. From predictive analytics and batch record review to deviation trending and inspection readiness, AI offers unprecedented efficiency. However, one fundamental reality remains: AI systems are not error-free-and may never be.

Unlike traditional software, AI systems-especially machine learning and generative AI-operate probabilistically. This means outputs can vary, contain bias, hallucinate information, or produce inconsistent results. In highly regulated environments governed by agencies such as the U.S. Food and Drug Administration, even small inaccuracies can have major compliance and patient safety implications.

This session explores the regulatory, ethical, and operational implications of AI's inherent error potential. Participants will gain clarity on validation expectations, risk management strategies, and how to responsibly integrate AI within FDA-regulated systems while maintaining GMP compliance and data integrity.

Rather than asking whether AI can be perfect, this course reframes the question: How do we build controls, oversight, and governance models that make AI safe, compliant, and inspection-ready?

Why you should Attend: AI adoption is accelerating-but regulatory expectations remain stringent. Understanding how AI errors intersect with GMP requirements, validation standards, and FDA scrutiny is essential before implementation.

Key Highlights:

  • Regulatory Perspective: Understand how FDA expectations apply to AI-enabled systems
  • Risk-Based Thinking: Learn how to assess AI risk using ICH-aligned frameworks
  • Validation Challenges: Explore limitations of traditional Computer System Validation (CSV) when applied to adaptive AI systems
  • Inspection Readiness: Prepare for regulatory questions about algorithm transparency, explainability, and oversight
  • Practical Governance Models: Implement structured human-in-the-loop controls to mitigate AI risk

Attendees will leave with a practical framework for deploying AI responsibly in regulated environments without compromising compliance or patient safety.

By the end of this session, participants will be able to:
  • Explain why AI errors may be statistically unavoidable
  • Differentiate between deterministic software errors and probabilistic AI outputs
  • Interpret FDA expectations for AI-enabled tools in GMP environments
  • Apply risk-based validation principles to AI systems
  • Design oversight mechanisms and human-in-the-loop safeguards
  • Identify documentation requirements for AI governance
  • Establish monitoring metrics for AI performance drift
  • Prepare defensible responses for regulatory inspections involving AI tools

Areas Covered in the Session:
  • The Nature of AI Error: Hallucinations, Bias, and Model Drift
  • Deterministic vs. Probabilistic Systems in GMP
  • Regulatory Expectations from the U.S. Food and Drug Administration
  • AI Validation vs. Traditional CSV
  • Risk Management Principles aligned with International Council for Harmonisation of Technical Requirements for Pharmaceuticals for Human Use (ICH Q9)
  • Data Integrity Considerations (ALCOA+)
  • Governance Models for AI in Regulated Industries
  • Human Oversight and Accountability Frameworks
  • AI in Deviation Management, CAPA, and Trending
  • Inspection Readiness and Audit Defense Strategies

Who Will Benefit:
  • Quality Assurance (QA) Professionals
  • Quality Control (QC) Analysts
  • Regulatory Affairs Specialists
  • Computer System Validation (CSV) Professionals
  • IT and Data Governance Leaders
  • Manufacturing and Operations Managers
  • Compliance Officers
  • Risk Management Professionals
  • Digital Transformation Leaders


Speaker Profile
Ginette Collazo, Ph. D. is an Industrial-Organizational Psychologist with 20 years of experience that specializes in Engineering Psychology and Human Reliability, disciplines that study the interaction between human behavior and productivity. She has held positions leading training and human reliability programs in the Pharmaceutical and Medical Device Manufacturing Industry.

Nine years ago, Dr. Collazo established Human Error Solutions (HES), a Florida based boutique consulting firm, where she has been able to position herself as one of the few Human Error Reduction Experts in the world. HES, led by Dr. Collazo, developed a unique methodology for human error investigations, cause determination, CA-PA development and effectiveness that has been implemented and proven amongst different industries globally. This scientific method has been applied in critical quality situations and workplace accidents.

She is the author of the book Human Error: Root Cause Determination Model, published in 2008. She is also a speaker at significant events like Interphex, FDAnews Annual Conference, Global Conference on Process Safety, International Conference on Applied Human Factors and Ergonomics, and of course, Pharmaceutical Industry Association.


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