Question 1 of 3 Your predecessor trained a machine-learning algorithm years before you started working. Your boss now wants you to apply it to a new situation. Why should you be hesitant? The training data may be inappropriate. Sentient decision-making is now a better option. Old algorithms are too slow. New algorithms for machine learning are much more accurate.
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