While AI has potential, there is often a gap between expectations of what AI can do and its actual ability to produce outcomes. Causal AI aims to address this missing link by using data engineering, digital twins, and machine learning to intervene and achieve outcomes, such as growing clients or increasing revenue, rather than just observing or predicting them. This represents a fundamental shift from traditional AI approaches of collecting data, running analytics, and making predictions without accountability.