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@ -20,6 +20,22 @@ scientist" standpoint.
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* Why is it hard to approach?
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Operations research can be difficult to approach, since there are many
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references and subfields. Compared to machine learning for instance,
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OR has a slightly longer history (going back to the 17th century, for
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example with Monge and the optimal transport problem). This means that
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good textbooks and such have existed for a long time, but also that
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there will be plenty of material to choose from.
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Moreover, OR is very close to applications. Sometimes methods may vary
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a lot in their presentation depending on whether they're applied to
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train tracks, sudoku, or travelling salesmen. In practice, the
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terminology and notations are not the same everywhere. This is
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disconcerting if you are used to mathematics, where notations evolved
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over a long time and is pretty much standardised for many areas. In
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contrast, if you're used to the statistics literature with its [[https://lingpipe-blog.com/2009/10/13/whats-wrong-with-probability-notation/][strange
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notations]], you will find that OR is actually very well formalised.
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- why it may be more difficult to approach than other, more recent
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areas like ML and DL
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- slightly longer history
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