Model drift refers to the degradation of model performance due to changes in data and relationships between input and output variables. It is relatively common for model drift to impact an organization negatively over time or sometimes suddenly. To effectively detect and mitigate drift, organizations can monitor and manage model performance as part of data and AI platform. This integrated approach to data and AI can help you:
How to build responsible AI at scale
Explore the AI Academy
Announcing the launch of watsonx.ai - The all new enterprise studio that brings together traditional machine learning along with new generative AI capabilities powered by foundation models
Understand the impact of model drift.
Learn how to detect drift in AI models.
Get under the hood to learn how the drift monitor works.
Get a technical overview of model validation and monitoring.