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AI-Enhanced Agile Delivery Forecasting With Probabilistic Models, Flow Metrics, and Human Governance
Abstract
Accurate delivery forecasting remains a challenge in Agile software development due to uncertainty, evolving requirements, and complex socio-technical dynamics. Traditional estimation techniques often produce deterministic predictions that fail to communicate delivery risk and scale effectively across teams. This chapter presents an AI-enhanced Agile delivery forecasting framework that integrates probabilistic models, flow metrics, and human-in-the-loop governance. Probabilistic techniques such as Monte Carlo simulation and Bayesian inference are combined with flow-based metrics, including cycle time, throughput, and work-in-progress, to generate adaptive and risk-aware forecasts across sprint, release, and portfolio levels. Machine learning methods support continuous refinement of predictions using historical and real-time data, while human oversight ensures contextual interpretation, ethical use, and accountability. The chapter illustrates how combining AI with human judgment improves delivery predictability while preserving core Agile principles.
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