Data science and traditional business intelligence (BI) differ primarily in their approaches to data analysis and the scope of insights they provide. While traditional BI focuses on descriptive analytics, which involves summarizing historical data to provide insights into past performance, data science encompasses a broader range of techniques, including predictive and prescriptive analytics. Data science leverages advanced algorithms and statistical models to uncover hidden patterns, forecast future trends, and optimize decision-making processes. Additionally, data science often involves working with unstructured or semi-structured data sources, such as text, images, and sensor data, whereas traditional BI typically deals with structured data stored in relational databases. Overall, data science offers a more comprehensive and forward-looking perspective on data analysis, enabling organizations to extract deeper insights and drive innovation.