I'm going to answer a bit about "the same is also the case if I try to select NaN values d[d.something != nan]"
You need to be aware that NaN doesn't compare as equal to another NaN:
In : numpy.NaN == numpy.NaN
In : numpy.NaN != numpy.NaN
This may seem backwards. However, when you think of the first along the lines of "if it isn't a number, it can't be equal to anything", it gets more clear.
== will always return
NaN as either side. The, if you interpret
a != b as
not (a == b), the second makes sense too. That could explain part of the problem. Your
d[d.something != NaN] will always return
I will look more into the other issue by digging into the code.