What critical gap exists regarding auditing machine learning models for compliance?
Answer
Traditional compliance experts may lack the necessary data science literacy
A gap exists because traditional compliance experts might not have the data science literacy needed to effectively audit machine learning models, while data scientists may miss subtle regulatory nuances.

Related Questions
What is the fundamental driver necessitating Regulatory Technology (RegTech)?Which entity type actively utilizes RegTech tools according to the text?How is RegTech changing the day-to-day work for those already in compliance?Success in future compliance roles increasingly depends on understanding which areas?Which specific role type is mentioned as emerging at the intersection of technology and regulation?What critical gap exists regarding auditing machine learning models for compliance?What sense of purpose is associated with solving high-stakes issues in RegTech?What allows individuals with deep regulatory knowledge and technology steering ability to find leadership opportunities sooner?If RegTech tools become critical infrastructure, what might regulators scrutinize more closely?According to the table, what is the potential RegTech role pivot for someone with Deep AML/KYC Knowledge?When do RegTech solutions become essential tools rather than optional upgrades for compliance departments?