Does Python have a data structure that supports constant time random selection (ie choose an element at random) and constant time add and delete of elements?
I suspect that if you want set /dict-like O(1) insertion, deletion & lookup, the best you can do for the random selection is O(log(n)).
How big is this set? How much do its contents change? If you want lots of random selections without many changes, then choosing from a list may be acceptable. But if you need to rebuild the list frequently, that's pretty useless. OTOH, if the set is small, doing a random islice may be fast enough, even though it's O(n)
probably because you see exceptions outside context
Whereas with functions you know where you imported them from
Any part of your code should be able to handle all sorts of exceptions at the same time (JSON decode error, Unicode decode error etc) whereas you don't have to keep 3 kinds of load functions at the same time.
Because it's how Python code is expected to be written, and thus how it's expected to be read. Scattering imports all over the code will trip people reading your code. E.g. they see load, they go to the top and see it's not imported. They search for def load(): nothing. Then "hmm...".
You can say you'll be the only one reading your code... but that just means you like to write crap code for your own benefit. In which case you do you. But if you want to learn decent Python you should strive to write idiomatic code.
But even if your file is half a mile long, I don't see the problem with writing the imports at the top. Most of the time you can easily recognize modules by name, so who cares where they were imported? I don't go looking for an import if I see collections somewhere in the code
I have a higher-order function, my_pickle_module.load, which optionally takes a function as input. If the user provides a function, they need a way to fall back to the default function. The standard for similar modules (like pickle) is to have a class, so you can override the function(s) you want and fall back to the default behavior with super():
class CustomUnpickler(my_pickle_module.Unpickler):
def find_module(self, module_name):
return super().find_module(module_name)
CustomUnpickler().load(b'foobar')
My problem is that I don't have such a class, and I don't really want to create one just for this purpose. I'm thinking of using this kind of design instead:
(Actually, I do have such a class, but it's only used internally, and because of the way it's architectured, cannot be made part of the public API. So I'd essentially have to create a public version of it, which would be kind of messy and confusing)
Like I said, if you're the only one reading your code you can do whatever. If you collaborate with others you should use idiomatic style because that's what Python programmers have trained themselves to read easily.
Sure, it's not a complete waste of time, but 1) it's like leaving 5% of your rubbish in the bin instead of emptying it all and 2) it's so unexpected that most people do it without even realizing
Yeah, 5% trash is a lot better than 100%, and it's a good thing if you spend two minutes emptying the bin pinning down your public API
I'd expect no__all__ plus star imports causing much larger problems all the time. Using third-party libraries pulled in through submodules for instance.
I want to say "no that's not why, because there's a trivial workaround for this", but... it probably is why. It leads to too many stupid problems, even if they're not hard to solve
Cabage! There is a way to adjust the matplotlib's plot tick labels spacement non-linearly, relatively to each group (each group has a different color) that is, between the first tick labels group and the second tick labels group, between the second tick labels group and the third tick labels group, and so on?
I forgot to say, and consequently, adjusting the spacing between the plot bars referring to each group of ticks.
I believe that if this is possible, it should be done using the ax.yaxis.set_major_locator method, but I couldn't find a way to do it according to the possible parameters.
Can Someone explain why the inverse isn't working with this matrix but it is with the commented part?
from sympy import Matrix
list = []
print(self.get_key_secret())
key = np.array([7, 23, 21, 9, 19, 3, 15, 15, 12]).reshape(3, 3)
# key = np.array(
# [[3, 10, 20],
# [20, 9, 17],
# [9, ...
It's really getting ridiculous though. You have literally reached the point where you're surprised that you can't access a class that you didn't import
i thought "if TYPE_CHECKING" was equivalent to writing if False: ie something that would hide the import to python while still keeping it readable to the type checkers
since python is not actually doing anything with it
1. problem: in `def my_func() -> Test:` you need `from aaa.bbb import Test`. That's the source of your cyclic import. Solution: avoid that import during runtime. 2. solution 1: `def my_func() -> 'aaa.bbb.Test':`, there's no `Test` for Python to be confused about, and type checkers can evaluate that string. 3. solution 2: `def my_func() -> Test` but with postponed evaluation of annotations, i.e. `from __future__ import annotations`. Postponing means runtime treats annotations as if they were strings, see solution 1. However type checkers will be confused, not knowing where `Test` comes from.…
right, there's no markdown in multiline chat
people who actually know typing, please correct me if I'm wrong
Not sure what happens if you use the future import and def my_func() -> aaa.bbb.Test. Or you might need the TYPE_CHECKING-guarded import even for solution 1.
So to put it better: you need some module import in the TYPE_CHECKING guard, and you need either a string-valued annotation that matches this import, or the future import. Because the future import merely makes all annotations implicitly stringy.
@Marco I'm back in front of a laptop, but your question was not clear to me. Are you just talking about tick placement? Or a bar plot (histogram)? In either case whatever you want should be possible, I just don't know what that is.
this is the last python program i write i am sure so it's no biggie, but honestly i find mind blowing people find this acceptable and have to work with this
even php is better than this, and we all know how bad php is
Same vibes as newbies coming to SO and Python's bug tracker to complain about new previously undiscovered bugs that they've just found while playing with an interpreter
If you're using pyplot.barh, yes. One naive way to do that is for you to do something like for i in range(3, y.size, 3): y[i:] += 0.5 # or whatever shift
@AndrasDeak--СлаваУкраїні Yes, I am using pyplot.barh... but I think I would need to do it individually anyway, because each group has a specific number of bars. But it wouldn't be a problem, because there are very few spacing adjustments needed. Finally, adjusting this y in relation to each bar, will the tick relative to that bar also adjust automatically?
@AndrasDeak--СлаваУкраїні, each group occurs after 4, 5, 3, 4 and 3 of theirs bar plots respectively, so what I should put in multiplicity_of_each_group?
If you mean that the groups have 4, 5, 3, 4, 3 bars, respectively, then exactly these numbers in a list. multiplicities = [4, 5, 3, 4, 3]; number_of_groups = len(multiplicities)
What do you mean "why"? Everything we're doing is changing your data on the vertical axis so that your bars get shifted along the vertical axis. That's exactly why I've been talking about adding something to y.
If you know that then you should know that y is supposed to be the data you have on the vertical axis, i.e. your classes. Although I'm realising now that your "classes" are probably strings that get plotted as categoricals, which breaks my solution as-is.
@Marco it's primarily not a label! It's the y coordinate. But pyplot is "smart" enough that if you give it string data, it generates integer data values to plot, and uses the strings as categorical labels.
This is why pyplot.barh has y as the first positional parameter. This is why I told you to look at the signature.
The docs has barh(y, ...), your code has barh(thing.CLASSES, ...).