AI RESEARCH

dashi: A Python library for Dataset Shift Characterization to Support Trustworthy AI Development and Deployment

arXiv CS.AI

ArXi:2605.31360v1 Announce Type: cross The Artificial Intelligence (AI) life cycle requires a thorough understanding of the underlying data dynamics for robust, safe and cost-effective AI development and use. Dataset shifts are defined as changes between train and test data distributions. Whether occurring over time (temporal) or across different sites (multi-source), they can severely degrade model performance and compromise data quality. This is particularly important in health AI, where the safety and fundamental rights of patients can be severely affected by uncontrolled shifts both at.