How do you measure and improve the trustworthiness and transparency of AI and ML solutions in BI?
Artificial intelligence (AI) and machine learning (ML) are powerful tools for business intelligence (BI), enabling data-driven insights and decisions. However, as these technologies become more complex and pervasive, they also raise ethical and practical challenges. How do you measure and improve the trustworthiness and transparency of AI and ML solutions in BI? In this article, we will explore the concepts of explainability and interpretability, and how they can help you achieve more reliable and responsible AI and ML outcomes.