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From human genome mapping to BigData Analytics, Artificial Intelligence (AI),MachineLearning, Blockchain, Mobile digital Platforms (Digital Streets, towns and villages),Social Networks and Business, Virtual reality and so much more. What is MachineLearning? MachineLearning delivers on this need.
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Our tech-driven approach of automated micro-fulfillment centers, digitized picking and packing, machinelearning and bigdata algorithms for SKU selection and demand forecasting and focus on ultra-fresh produce and grocery items, make us the top-rated grocery app, replacing the weekly grocery trip to the supermarket,” he added.
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