Shadow mode, drift alerts and audit logs: Inside the modern audit loop

Neutral 1.0
Traditional software governance often uses static compliance checklists, quarterly audits and after-the-fact reviews. But this method can't keep up with AI systems that change in real time. A machine learning (ML) model might retrain or drift between quarterly operational syncs. This means that, by the time an issue is discovered, hundreds of bad decisions could already have been made. This can be almost impossible to untangle. In the fast-paced world of AI, governance must be inline, not an after-the-fact compliance review. In other words, organizations must adopt what I call an “audit loop": A continuous, integrated compliance process that operates in real-time alongside AI development and deployment, without halting innovation. This article explains how to implement such continuous AI c
Read Source Login to use Pulse AI

Pulse AI Analysis

Pulse analysis not available yet. Click "Get Pulse" above.

This analysis was generated using Pulse AI, Glideslope's proprietary AI engine designed to interpret market sentiment and economic signals. Results are for informational purposes only and do not constitute financial advice.