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We asked leading experts - what are the most important developments of 2019 and 2020 key trends in AI, Analytics, MachineLearning, Data Science, and DeepLearning? This blog focuses mainly on technology and deployment.
As we say goodbye to one year and look forward to another, KDnuggets has once again solicited opinions from numerous research & technology experts as to the most important developments of 2019 and their 2020 key trend predictions.
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As per a 2020 report by DICE, data engineer is the fastest-growing job role and witnessed 50% annual growth in 2019. The report also mentioned that big tech giants like Amazon and Accenture are willing to dig a deep hole in their pockets for hiring skilled data engineers. For machinelearning, an introductory text by Gareth M.
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