Encourage EVERY Employee to Learn and Utilize Data, Analytics, and Machine Learning (DAML) (2022)

By Robert Gray Wald, MS, SCTE® a subsidiary of CableLabs®

Yes, another techie acronym: “DAML.” The author chose DAML (data, analytics, and machine learning) from many contenders because it captures a lot of related subjects in one pronounceable breath. Now how you choose to pronounce it is up to you (dám+L vs. dayme+L). DAML is intended to include a list of terms that are ever-expanding in both their breadth and depth—far too many to list here. This is like looking at a wide-field telescope and a powerful microscope at the same time. Very few people can keep up with the changes or make sense of the interpretations between these views.

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