I have encountered a problem many times while trying to fix up python canonicals, where a question would be great for explaining a common problem (and already has high-quality answers) - if only the question weren't so specific to irrelevant details of OP's situation. Typically, answers will be written that address the details - especially including things that aren't obvious to the asker, but can be determined, e.g., from the details of error messages
If I know that the problem described in a question is an example of a more generic problem with fundamentally the same solution, should I interpret the question as if it were already that broad? The actual breadth of the question is generally not evident, since questions are typically just phrased like "how can I fix the error?", etc. (Does this mean, any error with the same underlying cause? Or just the error in the actual MRE as it stands?)
If so, how can I make the breadth of the question more obvious to others? How can I help the question come up in external search engines, for everyone who should be directed to it (i.e., including people trying to install things that aren't NumPy)?
If not, can/should I edit the question so that it clearly has the appropriate breadth? Should I create a new Q&A pair, with my answer for the general version of the question, and mark the existing question as a duplicate? Something else?
My primary goal here is that every question about the generic problem gets routed to the same canonical, because they should. The questions are duplicates, it's just that the people asking them have no realistic way to determine that - and, because each is asked about a specific scenario that is different, but in an irrelevant way, it's often difficult to choose one to use for the general case.
Some examples (but I do not want the discussion to be question-specific):
https://stackoverflow.com/questions/51922364 is the best I know of for the general problem: there are multiple Python installations on the system, and running
pip3) installs new libraries to a different one vs. (the one that runs using
py at the command line, or the one that some IDE has been set up to use, etc.) The underlying problem is really the same regardless of the details, and it especially doesn't matter that OP wants to install NumPy specifically.
https://stackoverflow.com/questions/6039605 is what I've been using as a canonical for problems where trying to use a built-in function or class doesn't work because the name was previously reassigned in the code; trying to use the built-in instead accessed whatever was assigned, which is not fit for purpose. The problem is not specific to
list are also commonly clobbered like this); the attempt to use the built-in after the assignment could be anywhere (not simply caused by a loop); the error message could be practically anything (depending on what was assigned); the reassignment of the name could take other forms (e.g., trying to write one's own function named
str). But it's still the same problem regardless.
There are countless questions along the lines of "how do I get from a list of X to a list of Y?", or "how do I process all my Xs in the Y way", or "how do I Y-ify each X in a list of Xs", etc. In practically every case, the appropriate answer is: if
Y-ify means creating a new value based on X, figure out code that converts from X to Y, then use a list comprehension to apply that code to each element. Alternately, if "Y-ify" means to "do something" rather than to create a new value, just write a
for loop. There are some variations on the theme, but the problem decomposition is basically always like that - because each Y-ification is independent, and there isn't really a way to take advantage of the fact that we want to process an entire list at once, we need to iterate over it. Sometimes it's not clear whether OP actually knows how to Y-ify a single X, and whether that is separately being asked. Sometimes we end up with rather high-quality QA pairs for specific versions of the question, e.g. Convert all strings in a list to int. I have closed a lot of questions as duplicates of Apply function to each element of a list, after some considerable fix-up work. But even that isn't really general enough - because sometimes Y-ifying an X can be done with a simple expression like
the_x + foo, rather than needing to call a function; and sometimes we want to call functions for their side effects which typically shouldn't use a list comprehension. But it seems like a clear violation of authorial intent here to broaden "apply a function to" into "modify" or "process".