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Advanced Analytics Specialist Exam for Data Scientists Questions and Answers
What is the most likely reason for an HBase table to contain millions of columns?
A data engineer is asked to process several large datasets using MapReduce. Upon initial inspection the engineer realizes that there are complex interdependencies between the datasets.
Why is this a problem?
An edge has an embeddedness of 0. What is the edge most likely to be?