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Key features: Multi-source dataintegration with real-time analytics processing Triple Pixel tracking system for purchase journey analysis AI anomaly detection with automated alerts Real-time inventory monitoring with logistics integration Customer segmentation engine with lifetime value tracking Visit Triple Whale 6.
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