{"id":95,"date":"2019-11-10T13:18:46","date_gmt":"2019-11-10T13:18:46","guid":{"rendered":"http:\/\/localhost\/wordpress\/?p=95"},"modified":"2021-05-29T17:48:37","modified_gmt":"2021-05-29T17:48:37","slug":"being-caution-with-new-science-ml-dl-nn-part-one-prompting-caution","status":"publish","type":"post","link":"http:\/\/localhost\/wordpress\/being-caution-with-new-science-ml-dl-nn-part-one-prompting-caution\/","title":{"rendered":"Being caution with New Science ML\/DL\/NN: Part one – Prompting Caution"},"content":{"rendered":"\t\t
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According to the bureau of labor statistics Computer and Information Research Scientists jobs are projected to grow 16%<\/a>. While I believe that one of the “hot words” for now is Machine Learning, the applications and use cases can only speak for themselves. This field is growing exponentially fast and I feel that its foundation is somewhat shaky. This opinion is based off the answers I have received from the following three questions:<\/p>\n