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by brandonb
3547 days ago
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Very cool! I've worked with the Insight Health Data fellows before, enjoyed the experience, and they got a lot done. I think one thing that's tricky about artificial intelligence as a field is that it involves so many diverse pre-requisites. For example, although Caffe lets you configure a DNN with just a simple text file, when something goes wrong, the stack traces are all in C++. The abstractions tend to leak. I know that both software engineers and quantitative scientists are encouraged to apply. On the quantitative scientist side, what level of programming ability do you think somebody needs to succeed in the program? Likewise, on the software engineer side, what level of mathematical background would you expect someone to have coming in? |
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The software engineers coming into the program would have machine learning experience, but have not necessarily in a full-time role yet. Just like the software engineers that come into our data engineering program, it’s a chicken or the egg problem: employers want to see experience in the role before hiring for it, but how can you get experience if no one wants to take a chance on hiring you. Insight takes that chance, you work on cutting edge ML problems here, then the company has evidence (obviously combined with your previous years of work experience) to than make a bet to bring you on as an ML engineer.
Overall AI practitioners in these roles usually fall along a spectrum, having their main strength be either software engineering or quantitative research. Often companies will have experts on both ends work together to implement current research and then put those models into production.