Do not re-open. This is exactly how duplicate closure is meant to work.
The key difference between the questions boils down to this:
it does not at all mention NumPy
While this is relevant for describing a problem, it is not actually relevant for the problem itself. Both the NumPy and Pandas (and many other scientific Python) cases are actually about a more fundamental task/mechanism.
Not knowing this is perfectly fine for people seeking answers – after all, they would have to already know the solution otherwise. So it is good to have the different specific questions.
However, there is little point duplicating the solutions. In fact, calling attention to the underlying task/mechanism is part of a proper answer. So it is good to have few general answers.
Duplicate closure does exactly that: It preserves the various different ways of asking the same thing while directing attention to the same fundamental answers.
That said, duplicate closure is always parts subjective and parts pragmatic. It is normal that duplicates are not perfect matches when one is just looking at them literal enough. Many questions are written with practical considerations in mind, not generalisation as a duplicate target.
Instead of re-opening duplicates due to small differences, consider to edit duplicate targets to smooth out or remove the differences. For example, a simple solution is often to slightly broaden the scope of the duplicate target:
Logical operators for Boolean indexing in Pandas, NumPy, and similar
Changing a known duplicate target to cover a broader scope while leaving its practical example untouched is often doable with reasonable effort. It leaves its current answers valid while signalling that they apply to other related cases as well.