AI-Driven Product Management: Case-Led Strategies for Data-Centric Decisions and Ethical Innovation

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Abstract

Artificial intelligence is reshaping product management by embedding data-centric decision-making, automation, and predictive insight across the full product lifecycle. This paper examines how AI tools such as machine learning, natural language processing and generative design are being used to inform strategy, streamline discovery and design, accelerate prototyping cycles, and personalize user engagement. Drawing on case-based examples from technology-intensive firms, the paper highlights how AI-driven analytics support roadmap planning, feature prioritization, experimentation, and continuous optimization of digital products. The discussion also addresses operational risks and ethical challenges, including bias, opacity and over-reliance on algorithmic recommendations, and outlines governance practices that balance automated insights with human judgment. By synthesizing emerging practices, the paper proposes actionable frameworks for product managers to integrate AI responsibly into day-to-day workflows, using it as a lever for faster learning, more resilient decisions and higher customer value.

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