Artificial intelligence is being tested across hospitals, schools, and public agencies to support diagnosis, environmental risk forecasting, and operational decision-making. Yet recent deployments continue to reveal a persistent challenge: models that perform well in controlled settings often degrade when exposed to real-world variability different populations, changing data distributions, and unpredictable operational conditions.