Just a curious question.

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Let's imagine I have a function testFunc(a,b,c). I need to find a value(-s) of "a,b,c" where the function is minimum with 100% accuracy. Bounds of "a,b,c" are limited. Calculation time is not critical (it could work for a long time).

Which way is better in this case: try to find and optimize some method in "scipy.optimize.minimize" or just write several Nested Loops to go over each value of (a,b,c) and just take minimum value of the function?


Would you use Nested Loops or "scipy.optimize.minimize" in a such case?

  • The answer depends on what you mean by "better". – Mikhail Berlinkov Dec 6 '18 at 23:36
  • Yeah, we could dig into details like costs / accuracy and so on. Added my general question to the topic. – VictorDDT Dec 7 '18 at 0:02
  • Then it's too broad question. The exact solution can only be found if there're just finite number of values that your variables may take. scipy.optimize.minimize assumes that variables are continuos. So, if you use discrete scale for your variables there're methods like itertools.product which emulates nested loops for you. You should make your question more specific, so that it could be answered without conversations. – Mikhail Berlinkov Dec 7 '18 at 0:59

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