AI GLOSSARY

Concept Drift

Concept drift occurs when the relationship between the input data and the target value changes in some way, potentially making the model inaccurate or unreliable. Concept drift can lead to a decline in the model’s accuracy because it was trained on data that no longer reflects the current patterns or relationships. Handling concept drift is essential in dynamic environments, such as financial markets or user behaviour prediction, where conditions evolve continuously.

All Terms
A  B  C  D  E  F  G  H  I  J  K  L  M  N  O  P  Q  R  S  T  U  V  W  X  Y  Z

Continue learning...

View Resources

4 min read
AI, Insurance, and the UN SDGs: Building a Sustainable Future
Mind Foundry has been working alongside Aioi Nissay Dowa Insurance and the Aioi R&D Lab - Oxford to create AI-powered insurance solutions whose...
5 min read
AI-Powered Infrastructure Inspections for Local Authorities
Local authorities need to support their funding requests with high-quality data. The problem is that they can't obtain this data at the required...
5 min read
AI Assurance Explained: Trust, Safety, and Operational Impact
The UK-USA Technology Prosperity Deal sees overseas organisations pledging £31 billion of investment into UK AI infrastructure. As AI investment...

Stay connected

News, announcements, and blogs about AI in high-stakes applications.