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One of the primary drivers for the phenomenal growth in dynamic real-time data analytics today and in the coming decade is the Internet of Things (IoT) and its sibling the Industrial IoT (IIoT). trillion by 2030. RFID), inventory monitoring (SKU / UPC tracking).
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The pandemic and its aftermath highlighted the importance of having a robust supply chain strategy , with many companies facing disruptions due to shortages in raw materials and fluctuations in customer demand. Here’s how companies are using different strategies to address supply chain management and meet their business goals.
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Protiviti Managing Director, Technology Strategy & Operations. Implementing new technology for enterprise transformation brings increased responsibility to ensure the organization and its customers are protected from emerging risks associated with that new technology. Connect with the authors: Scott Laliberte. Joan Smith. Jason Brucker.
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