Public discourse increasingly treats artificial intelligence (AI), machine learning (ML), and data science as interchangeable concepts, obscuring critical distinctions among their histories, goals, and methodological foundations. This article examines how this terminological conflation emerged, tracing the conceptual evolution of AI, ML, and data science and clarifying their overlapping yet distinct domains. It argues that linguistic imprecision shapes research agendas, funding priorities, regulatory frameworks, ethical debates, and public perceptions of technological capability and risk. Drawing on historical, technical, and sociotechnical perspectives, the article shows how AI has become an umbrella term encompassing diverse computational practices, while ML has driven much of AI’s recent practical success, and data science has reframed scientific inquiry around large-scale data analysis. The widespread collapse of these distinctions—reinforced by media narratives, industry marketing, and academic incentives—has contributed to inflated expectations, misplaced fears, and blurred accountability in the governance of algorithmic systems. The article contends that terminological precision is essential for responsible innovation and democratic oversight of emerging technologies. By articulating clearer conceptual boundaries among AI, ML, and data science, scholars, policymakers, and practitioners can foster more transparent communication, more coherent regulation, and more informed public understanding of the technologies increasingly shaping social, economic, and political life.
Paul B. Perrin (Wed,) studied this question.