it's the only answer to the question, it's a python script for accessing google cloud print ; but the main method refers to a refresh key and i can't see how to get that. There is a brief mention of it in the answer but it makes no sense to me
Hey i'm working with some code that makes use of 'GetUrl' ; but I'm working in python 3 not 2.7 ; is there some way I can still access GetUrl in python3?
@wim what has been going on with Chicago weather lately, I visited a month ago and it was 20 degrees hotter than Texas and then it was perfect the last few weeks
Needed a quick help regarding a situation. I am trying to check a condition using if statement but the tricky part is is that if the condition is satisfied I don't want to do the action for that line but the lines that immediately follow.
I have a text file with a number of lines. I want to an append some number to a list if a line starts with 'open' but not to the line that starts with 'open' but to the next line that follows. The line that starts with 'open' will have a NULL appended to it.
But now the working solution that I have is appending numbers to the line that starts with 'open' as well as I am not being able to achieve the neeeded solution
you split the file by "\n" symbol, then you go through the loop
lemme try writing example for you
>>> multiline = '''line
another line
open line
hey please append to me
line
open another line
and me too
line'''
>>> splitted = multiline.split('\n')
>>> for x in range(len(splitted)):
if splitted[x].startswith('open'):
try:
splitted[x+1] = splitted[x+1] + '*appended data*'
except IndexError:
splitted.append('*appended data*')
>>> processed = '\n'.join(splitted)
>>> print(processed)
line
another line
open line
hey please append to me *appended data*
line
open another line
and me too*appended data*
line
>>>
and thats the solution
then it is up to you - write that back to file, or continue doing something else
@roganjosh I have a dataframe with 3 cols: datetime, user_id, minutes_consumed. Based on 3 predefined time windows (ex: 4am - noon) I want to find which window a user consumed the most content based on minutes_consumed.
I tried splitting the dataframe into 3 based on the windows but I don't know where to go from here
Whatever criteria you're using to split the df, just use the same thing to add a number to a new column to start rather than splitting it into a new df
@heather depends on what you're going to do with it. But anyway you'll probably want a tuple or similar; either to do first+second, first-second or first_sol, second_sol later.
i have a simple python function that sends email if log file isnot updating I read a configfile and if my section is logging_active then i run this function in a thread, else i run some other function in a thread. However i think i am doing something wrong in the threading part my try is https://pastebin.com/89PbcqpP
You're welcome. If you have future general questions, it's better not to direct them specifically to me btw, since there are other people in this room far more knowledgeable so it's better just to open it to the room. Also, I was on lunch :)
@Stacksofoverflow, Just a hint, you're more likely to get faster and more helpful responses if you post a question on SO rather than here. For one, code formatting is poor here.
Yep, SO as a concept is Q&A rather than a help-desk. Not a criticism of your problem or how you're laying it out. Just don't think it's the right place.
Depending on how localized your problem is (and it sounds pretty localized) I'm not sure others would benefit a lot once your problem is solved. There are already hundreds of specific problems with solutions on SO :P
I agree with Andras. I think if you try formulating this as an MCVE you'll either find the solution yourself in the process or you'll have a question that you could post
@Stacksofoverflow. You can play it this way. If you think you have a Minimal Complete & Verifiable Example of your problem that isn't answered elsewhere, post it on SO. I think it's highly likely we'll find a duplicate, but we may be wrong :).
@Stacksofoverflow I did start losing track of what you were trying to do in the end though. Just the process of formalising the problem into an MCVE solves a lot of problems I have
"Here is the exact code required to get my dataframe. When I do df.genre, it gives an AttributeError. How do I get the genre column?" Seems like something that would get answered on the main site in like a minute
Scrolling up I see you're calling it "a groupby" so maybe it's not the same kind of object as a dataframe. idk, I am a simple llama farmer that wandered into this public library whose computer already had this page open
In my opinion, be explicit: use df['genre'] for a column, df.loc['genre'] for an index, df.genre for an attribute. These are all different things. Pandas (IMO) confuses the issue by allowing the period for multiple purposes.
@AndrasDeak, Fair enough :). At least on SO answers, I always advocate the explicit way. The last thing you want is having to explain an error when a space is added to a column name.
Which is a step above "here is the output when I do print(my_object), I assume all you readers already know how to turn this back into something useful using the special magic incantations handed to all numpy users during their induction ceremony"
Visually though, using df['key'] syntax does help with one-liners which can get out of hand and with approximately a billion methods and attributes in the library, I find it better to have that clarity
I strongly advise you read a good book / tutorial on Pandas. Unfortunately, SO (main or chat) isn't the best tool for this. Not because we don't have the knowledge, but because there's simply too much information to impart and we don't know exactly where to begin.
I couldn't really recommend a book, I'll leave that to others, but another approach you can try is going through the pandas tag. You'll quickly realise who the most prolific answerers are. It's worth going through their approach to solving problems because the docs won't necessarily give you a sense of the clever ways methods can be combined
I have a pandas data frame like:
A 1
A 2
B 5
B 5
B 4
C 6
I want to group by the first column and get second column as lists in rows:
A [1,2]
B [5,5,4]
C [6]
Is it possible to do something like this using pandas groupby?
Huh... apparently a module I installed placed its tests folder directly into my site-packages directory, and now my pytest imports those tests instead of mine... that's really not what I expected the problem to be :D
@Stacksofoverflow native python code is subject to the global interpreter lock (GIL). Lower-level stuff can go around that but that happens under special circumstances (such as numpy calling multithreaded blas)
what I can't understand is why some python uses all the cores of my machine and some use only one, is it just the case that most python code can't be compiled "far down" enough to be passed to multiple cores?
idk if that makes sense
but I can see python using all cores in some cases and only 1 in others
I find it kinda hard to answer "why doesn't mode packages compile down to C to get around the GIL" (whatever compile down to C means). It's more or less up to those who maintain the Library/created it. Seems like an opinionated question which has no short sweet answer...
Just picking up a conversation that went on too long in comments here (stackoverflow.com/a/17811862/575530) with @MartijnPieters. Does anyone have first-hand experience using screen-readers with Python and how they voice indentation? Martijn recommended looking at NVDA, EdSharp, and Orca.
@Stacksofoverflow the thing with python is that you use it for convenience. For critical parts library maintainers might consider implementing parts in C (or fortran), but the default is, you know, python
Still can't iterate over them, though, which is weird since I thought we determined earlier this week that __getitem__ by itself is sufficient to support iteration
>>> class Foo:
... def __getitem__(self, idx):
... if idx > 5:
... raise IndexError
... return idx
...
>>> [x for x in Foo()]
[0, 1, 2, 3, 4, 5]
>>> import re
>>> [x for x in re.match(".", "coconuts")]
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: '_sre.SRE_Match' object is not iterable
>>> re.match('','').__iter__
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
AttributeError: '_sre.SRE_Match' object has no attribute '__iter__'