
Product Roadmap Prioritization using AI
In the fast-evolving SaaS industry, effective product roadmapping is critical for aligning development efforts with business goals, customer needs, and market trends. Traditionally, product managers rely on manual methods such as stakeholder meetings, intuition-based decision-making, and static prioritization frameworks like RICE and MoSCoW. These approaches, while structured, are often time-consuming, prone to biases, and struggle to process large volumes of data efficiently. In contrast, AI-driven automation offers a data-driven approach to product roadmapping by integrating customer feedback, market trends, and business objectives in real time. This paper explores the limitations of traditional roadmapping methods and presents an AI-powered framework that enhances decision-making through intelligent prioritization, sentiment analysis, and predictive analytics. By leveraging machine learning and automation, product managers can reduce manual effort, improve accuracy, and adapt roadmaps dynamically to shifting market conditions. This study demonstrates how AI-driven decision support can optimize feature prioritization, increase efficiency, and provide SaaS companies with a competitive advantage in a rapidly evolving digital landscape.
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Work Title | Product Roadmap Prioritization using AI |
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License | CC BY 4.0 (Attribution) |
Work Type | Masters Culminating Experience |
Sub Work Type | Scholarly Paper/Essay (MA/MS) |
Program | Information Systems |
Degree | Master of Science |
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Publication Date | April 2025 |
DOI | doi:10.26207/p9dj-mm45 |
Deposited | April 23, 2025 |
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