Enhancing Human-Centric Logistics Decision-Making with AI-Driven Route Optimization and Predictive Insights

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Abstract

Large-scale logistics operations face significant challenges in decision-making processes, particularly when striving to align with human needs while ensuring efficiency. To tackle these challenges, we present an AI-driven framework that seamlessly combines route optimization with predictive insights targeted at enhancing logistics decision-making from a human-centric perspective. Our method employs advanced machine learning algorithms to analyze extensive route data and forecast logistics demands, driving operational efficiency. By integrating real-time data feeds, it enables adaptive routing adjustments that respond proactively to fluctuating conditions. The predictive insights utilize historical data to forecast potential disruptions, facilitating optimal delivery times and resource management. Experimentation with diverse datasets reveals the framework’s capacity to considerably lower operational costs and elevate service levels. User engagement highlights how AI-driven insights significantly refine decisionmaking processes, promoting logistics strategies that cater to both efficiency and human considerations. This research underscores the critical balance between technological advancements and a human-centric approach, paving the way for improved outcomes in supply chain management

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