@AndrasDeak sorry for the late response! thank you so much, sounds logic (I'm new into this). for some reason I'm getting an error, probably an overlook on the array edge as you mention maybe (?) will look deeper into it. thaanks
@MikeDriscoll thank you! usually I find pillow very useful! even though haven't been able to figure out how to paste one image centered on the x,y point over another image using pillow, I know I could paste one image over another in a coordinate using pillow but unsure how to center the image on that point
Cabbage, I have a quick question, is it good practice to type annotate every variable declaration in a code or is it enough only at the function definition?
in the following code, should I type annotate line 3 or not
class Stack:
def __init__(self, size: int = 100):
self.__stack: list = []
Usually, I only annotate when the type cannot be inferred (by both humans and type checkers).
In your case, I would annotate it even stronger – it's not clear whether [] is a list[int], a list[str], a list[Frame], or whatever else gets put on the stack.
There is probably some deep, fundamental truth in there. If a function returns a tree but there is no-one there to hear it, did it actually return a tree?
In PyQt5 i have i QDialog that it's opens with .exec() instead of .show(). I use the exec method, to freeze the function until Dialog is closed.
The problem is that in with this Dialog I may open another QDialog. The new QDialog is opens but the Dialog focus doesn't change if i click inside the new QDialog.
@MisterMiyagi thank you, this makes me understanding the need for typing a bit more
also I am not sure if anyone here remembers my earlier question which had a raise and return in a function, the answer according to my professor was Union[NoReturn, str], just wanted to let you guys now :)
i think the problem is that your output essentially seems sequential in nature. i can't think of a clean way to vectorize this unless you're okay with binning into fixed frequency intervals instead, but that would give incorrect answers for situations where a user opened the app at 3 minutes in, and say, 7 minutes in. (a 5 minute frequency binning would count this as 2 separate logins if the bins started at 0 so to speak)
then you dont need the cumsum either, just the diff would do
sec, i'll give an example
import pandas as pd
s = pd.Series([1, 1, 1, 2, 2, 1, 2, 2] )
idx = (s.diff().fillna(1) != 0) # if you wanted to do an actual pandas groupby, this should be fillna(0)
s[idx]
test_df.groupby(test_df['user_id'])['app_open_time'].apply(lambda x:x.diff().fillna(pd.Timedelta(seconds=0)).dt.seconds.ne(60 * 5).sum()) but seems to give the same output
well I will stop at this, if you want to take a shot, one of my previous attempt wa using x.diff().fillna(pd.Timedelta(seconds=0)).dt.seconds.le(60*5) to get values less than 300
the problem with comparing against 300 is that 300 is the "offset" from the login, it doesn't make sense to just compare against it directly in any manner.
I wonder why numpy.zeros and Mat::zeros have different width-height format. It is confusing when I have to translate one code to the other one as follows.
The main reason for such transposes is row-major vs. column-major memory layout, but C and numpy both use row-major by default (insofar as C has multidimensional arrays).
@TheShortestMustacheTheorem probably because the existing Mat doesn't exist