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A global industrial technology leader in transportation and mobility faced multimillion-dollar annual losses from fuel distribution challenges, including leaks, theft, and meter inaccuracies. By deploying a cloud-native AWS analytics platform in just seven days, the company implemented AI-powered anomaly detection models that reduced issue identification times from days to hours while improving detection accuracy by 14%.
This solution automated advanced variance analysis across 12 critical areas, including siphon flow monitoring, tank calibration errors, and delivery cross-drop detection. Real-time IoT data processing enabled proactive risk mitigation, preventing an estimated $250M in potential losses annually while uncovering equivalent revenue opportunities through improved operational insights.
The platform’s MLOps framework and streaming analytics capabilities increased analyst productivity 8x through automated alerts and dashboards, while its scalable architecture supports continuous expansion across global operations. With a projected 650% ROI over three years, the solution demonstrates how rapid cloud adoption combined with targeted AI implementation can transform traditional industrial operations into data-driven profit centers.
Download the case study for detailed insights into the cloud-native analytics platform and AI-driven strategies that unlocked significant ROI and new revenue streams.
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