Key pillars for successful AI / ML set-up
AI/ML does not fail because of bad algorithms.
It fails because the foundations are weak.
In this video, Zoltan Gelencser, Group CFO at MotorK, shares the five pillars every AI/ML project needs to succeed:
- Robust data governance – quality, lineage, compliance
- Cross-functional collaboration – break the silos
- Scalable infrastructure – from lab to production
- Continuous evaluation – monitor drift and fairness
- Ethics and explainability – transparency from day one