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RECLAIM YOUR DIGITAL GOLD


          machine learning (ML) have greatly simplified data
          organization and categorization. To accomplish this, the
          AI and ML must first be linked to the appropriate data
          source or sources before being trained/programmed to
          process it.
          Let’s start with a look at the various data collection
          methods and data sources that result from data
          harvesting.



          HOW IS DATA COLLECTED?


          The methods and data sources most commonly used
          for building machine learning models are summarized
          below:


          1. Traditional Data CollectionMethods

          Many businesses have had technology systems that
          process and/or collect data over time, making such
          data invaluable to their operations today. Some of
          these systems are made up of databases that contain
          information    about products, inventory, sales, and
          customers, as well as transactional level data.

          The retail industry has some of the most comprehensive
          and historical data due to the various POS(Point OfSale)
          systems and manufacturer databanks. When combined
          with the data continuum from product manufacturer to
          retailer to consumer level data, this can be a powerful
          data lake. Any industry could claim the same; however,
          the manufacturing, banking, insurance, CPG(Consumer
          Package Goods),and automotive industries have led the
          way in amassing such traditional data aggregates over
          decades.


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