« first day (3060 days earlier)      last day (2118 days later) » 

01:11
cbg
 
10 hours later…
11:29
cbg
My existential crisis got another star overnight. Very reassuring :P
if your inner demons are a given you might as well throw them a metal party and have fun
True. Slipknot keeps me grounded
11:37
^ closed
thanks
@AndrasDeak is this an endorsed canned comment or your own? Seems pretty reasonable, just wondering.
I say "endorsed" but there's a few common "Welcome to SO.." type comments that I see doing the rounds, which I assume come from some Meta post, but I haven't seen that comment before
@roganjosh no, just wrote it
but most canned comments are community-written, rarely have to do with meta
"don't answer crap" is rarely a canned comment reason
Huh, I'd just assumed that the normal "welcome" type comments come from a Meta post
some might, but most probably don't
11:50
Meta just drives me a bit mad these days so I stay away
I only need to see the answer poster's name and skim the post to know that I have zero interest in the answer
but most canned comments probably overlap with github.com/SO-Close-Vote-Reviewers/auto-comments
@AndrasDeak this has somehow resulted in me in a Linkin Park loop and I'm not complaining :P
you should stop when you're becoming numb
11:59
That was the first track. But YouTube has offered up a smorgasbord of nostalgia
12:19
hi @roganjosh and @AndrasDeak, can i ask you a question?
Only along the room rules sopython.com/chatroom
You can ask a question of the room, it doesn't have to be us. Just keep in mind the rules if you're about to post a mega block of code
i have multiple csv files with same number of columns & column header, but different rows. I want to compare each file to the others based on matching values to columns 1 and 2, but if the value in column 4 is bigger, i would delete that row from that file.
i tried pandas with if, but was not succeful
This is a bit too broad currently. Were you joining/merging the dataframes?
i don't want to merge them. most solutions out there suggest merging
keep each csv on its own but delete duplicate rows based on column1 & column2 and if column 4 is bigger in one file than the other
12:26
Ok, so you're not being clear on how this should work. Tbh my first thought is that I'd use the csv module and dictionaries, but I really have no idea what I'm shooting for here
df1 = pd.read_csv('file1.csv')
df2 = pd.read_csv('file2.csv')
Can you make an mcve?
sure, let me try
thanks
df1 = pd.read_csv('file1.csv')
df2 = pd.read_csv('file2.csv')
if [df1.Lon].equals[df2.Lon]:
if [df1.Lat].equals[df2.Lat]:
df1.drop([df1.Distance] > [df2.Distance])
You're dropping duplicates? Or are you trying to get Haversine distance between points?
I'm not trying to be obstinate, but that's far from an MCVE
columns in both files are Lon, Lat, Distance (distance is already calculated)
12:36
Distance cannot be calculated row-wise unless you have a matrix
okay. so column 1 and column 2 would be like keys. column 4 would be the criteria. one of the rows has to be removed
which value stays? one with bigger column 4 or smaller column 4?
Or it's a distance from a fixed point...
Lon,Lat,Distance
-96.2148,38.985,1.9984
-96.2062,38.979,2.99666
-96.1976,38.9729,3.99636
-96.1891,38.9669,4.99515
So it's distance from a fixed point?
each csv has these columns, but rows could be difference
delete rows when Distance value in file1 is bigger than Distance value in file2 (after matching Lon, Lat)
12:39
delete which row?
the row with bigger value? in file1?
This doesn't make sense to me. How can a series of lat/long have different distance values? Also, you're now trying to match dataframes based on float values.
compare file1 to file2. Find rows with matching Lon,Lat in both files. Delete rows in file1 when Distnace1 >Distance2 (for the matching Lon,Lat )
okay, delete from file 1. got it
so file2 doesnt change
@ParitoshSingh I'm missing something here if you're following
for now, it doesn't. File1 changes when i compare file2 with file3 later on
sorry, @ParitoshSingh
for now, it doesn't. File2 changes when i compare file2 with file3 later on
12:42
@roganjosh i am not reading yet into "why" hes doing what he wants to do, because we dont know the context of the columns yet.
are the combinations of Lon and lat unique inside one file? as in, can file1 contain two rows with same lon, same lat, but different distances?
My brain is too caught up in the scenarios that lead to this I guess. Maybe a pathfinding algorithm that chooses different routes from a lat/long to a fixed coordinate, and taking the best.
@roganjosh i have 2 devices placed at 2 different locations and as they measure, there could be overlapped area in the measurement.
@ParitoshSingh, No the same file does NOT contain repeated lon,lat values.....not even a single one
perfect. you have a unique identifier then. Their combination can be thought of as "keys" or "indexes"
12:47
Well if there are no repeated lat/long values then the question doesn't make sense
if you insist on using dataframes, you'd probably be able to turn two columns into 1 index? roganjosh probably knows better than me
@roganjosh no repeated values inside 1 file. he will have the same pair in a 2nd file
@roganjosh, no repeated within the same file, but could be repeated between multiple files
yes
Your own code tests for equality and now you're saying they can't be equal
right, ok
Then drop_duplicates
You can use drop_duplicates before any kind of merge
Now, question
tied it but couldn't fit the both columns Lon,Lat and the 3rd conditions )Distance)
12:50
is your end goal to get the SHORTEST distance for each Lat Lon pair?
no matter how many files?
ok, there we go.
you shouldnt want to compare it file by file.
you need to start maintaining a final "result" dataframe/dict
@ParitoshSingh, yes, that is what i want to do
update it with file 1 first. then file 2, only overwriting if a distance value for lat/lon pair is smaller
and keep updating this single result dataframe/dict
I suppose, loop in the directory, read all .csv as dataframes, then comapre dataframes and drop duplicates
12:52
Ok. Let me try to piece this together. You will first want to sort each CSV by distance, then call drop_duplicates and keep='first'
thats a way to do it, yeah
@roganjosh, how, codewise
sort=groupby ?
import pandas as pd

df = pd.read_csv('something.csv')
df = df.sort_values(by=['Distance'])
df = df.drop_duplicates(subset=['Lat', 'Long'])
That now sorts the individual file that you read
Once you drop the dupe, you're left with the minimum of the file
Once you merge it all together, you'll need to repeat for the combined DF
he'll only need to do it on the final df after merging
his files are already the minimum versions possible
just, not sorted i suppose.
df = df.drop_duplicates(subset=['Lat', 'Long']) will drop nothing as there are no duplicated within the same file (df).
12:59
@ParitoshSingh merging is expensive. Drop the pointless values prior to the merge
there arent any dupes
in a single file
Yep, backing out of this, I'm clearly not following
This is going to be one very big temp dataframe, thats for sure.
loop in the directory, read all .csv as dataframes, then comapre dataframes and drop duplicates based on furthest
@roganjosh haha dw, frankly you've already solved it :P
13:01
Not really, because I suspect that duplicates on float values will fail
ooof.
i cant think of a reason for it to fail in this case though
conversion from strings to floats, even if imperfect, shouldn't be done differently across two files.
Because GPS does not give stable results
So we have to assume that they hard-coded the locations for the devices
ah i see
makes sense. also, this chat keeps timing out on me :(
@roganjosh, forget about the device location. if you have 2 files with 3 columns in each (Lon,Lat,Distance). delete douplicate from file1 based on matching (Lon,Lat) and furthest away by Distance.
@user2031063 yes, so sort by distance and drop the duplicates
It's literally just that. Doesn't matter how many locations we're talking about, just sort on distance and drop the duplicates, keeping the first value
13:10
@roganjosh, sorry, i am not following. your last drop_duplicate line deletes rows from which file? file1 or file2
this is an example
Lon,Lat,Distance
-96.2148,38.985,1.9984
-96.2062,38.979,2.99666
-96.1976,38.9729,3.99636
-96.1891,38.9669,5.99515


Lon,Lat,Distance
-92.2148,35.985,1.9984
-92.2062,33.979,2.99666
-92.1976,34.9729,3.99636
-96.1891,38.9669,4.99515
None of the files. Merge them all, then do it
2 files there
@sorry, i am totally lost
ohhhh, you want me to merge all the csv files?
read all files. merge into a single dataframe.
that is going to be one big file..........don't think that will work
13:11
Since there are no duplicates in each individual file, it's not possible to make it quicker
could go near/over 1M rows
memory?
Meh, 1M rows isn't huge, I could do it on the laptop I'm using
how to loop over all .csv in the folder
My original suggestion was to try filter the CSV before the merge, but it transpired that it's not possible
quick google searches or stackoverflow searches should get you started.
13:13
os.listdir()
it would be something along the lines of os.listdir
path =r'C:\Test'
allFiles = glob.glob(path + "/*.csv")
frame = pd.DataFrame()
rbrb
Well that code does nothing with the file
You know, this whole thing would be much easier with the csv module and just keeping a dict of minimum values. The convenience of read_csv is just falling apart in this case. Just ditch pandas for this.
how else to do it?
13:19
Use the built-in CSV module to iterate through the file and only store lines that have a value less than what you've already seen for a set of lat/long
don't know how to do it this way. Is it possible to help me with the code?
I'll give you an outline but you'll need to give me a few mins
thanks
import csv
import os

seen = {}

for file in os.listdir('some_dir'):
    reader = csv.reader(file)
    for lat, long, distance in reader:
        if ((lat, long) in seen):
            distance < seen[(lat, long)] = distance
        else:
            seen[(lat, long)] = distance
Completely untested, but use lat/long as a tuple key, and store the minimum distance
to understand this right, reads all csv in one df, delets duplicate based on matching (lon,lat) and further away (bigger distance).
13:27
Scrap that, I messed up
import csv
import os

seen = {}

for file in os.listdir('some_dir'):
    reader = csv.reader(file)
    for lat, long, distance in reader:
        if ((lat, long) in seen):
            if seen[(lat, long)] > distance:
                seen[(lat, long)] = distance
        else:
            seen[(lat, long)] = distance
the final file is saved as what name?
You can't do what you want
What about the order that you read the files?
The minimum is a fluid value that depends entirely on the order that you read the files
error
----> 8 for lon, lat, Distance in reader:
9 if ((long, lat) in seen):
10 if seen[(lon, lat)] > Distance:

ValueError: not enough values to unpack (expected 3, got 1)
import csv
import os

seen = {}

for file in os.listdir('some_dir'):
    reader = csv.reader(file)
    for row in reader:
        if ((row[0], row[1]) in seen):
            if seen[(row[0], row[1])] > row[2]:
                seen[(row[0], row[1])] = row[2]
        else:
            seen[(row[0], row[1])] = row[2]
Must admit that I'm getting a little bored of this discussion by now though
9 if ((row[0], row[1]) in seen):
10 if seen[(row[0], row[1])] > row[2]:
11 seen[(row[0], row[1])] = row[2]

IndexError: list index out of range
for line 9
13:40
Are you willing to do some debugging on your side or am I supposed to cover all eventualities?
@roganjosh, thanks for your help
@ParitoshSingh, thanks
Ugh
@user2031063 the others have spent way too much effort trying to help you. Please learn how to solve problems yourself. Read and understand what a help vampire is and don't be one.
14:35
I need help with pytest. I write python code but still learning how to test. can anyone please help me. not for free of course
that way I can learn better
trying to test argparse arguments for file
14:52
what exactly are you trying to test? How do you plan on checking whether argparse handled the input correctly? Like, are you going to check whether a specific function was called with specific arguments?
yes to check whether a specific function was called correctly
the argparse input, the functions are correctly called and just full unit testing with pytest
1. Stub the function that should be called
2. Set `sys.argv`
3. Call the argparse code
4. Verify that the stubbed function was called correctly
def my_args(*args):
"""
Validate and parse all input parameters
"""
parser = argparse.ArgumentParser()
parser.add_argument('-f',action = 'store', help='first input file', required=True)
parser.add_argument('-s',action = 'store', help='second file name', required=True)
parser.add_argument('-n',action = 'store', help='qual name in file1', required=True)
looks like this
I don't know how to stub functions even though I know what it means
I have to admit I don't know either (I don't test as much or as thoroughly as I should)
basically just creating the function which does nothing
15:43
recbg
15:54
recbg??
If you want to test whether a function has been called or not, you can redefine it for the purpose of your tests.
Hmm, it might be a good idea to add "recbg" to the salad vocabularity page
Such as, suppose you have a function...

def foo():
return 'Hello World'

And you want to test it, and know if it has been called or not, you can do...

foo_ = foo
def foo():
print('Entering foo')
result = foo_
print('Leaving foo')
return result
Cant indent properly, im not as here as i used to, but you get the logic.
you can't mix code and non-code in a single chat message
oh I get it lol
15:58
I'll try to remember this :P
Btw, I forgot the parenthesis for the call of foo_()
I know that. I am just trying to use pytest
Redefining the function this way avoids you to decorate all your code.
You want to know if your function has been called during pytest ?
no my questiong was how to test the sample function I mentioned above
argparse function that takes in file as input in pytest
will I need to create test files similar to input file? If so how do I go about testing it
using pytest
Oh. Yes
You need to create a Dataset indeed
You want your function to do things. The only way to control it does things properly is to create a Dummy Dataset.
Since you want to test argparse, you must use the CLI... OR. Mimic the way it evaluates things.
You create a parser that basically parse for you the sys.argv.
And it returns a dict if im not mistaken when you use .parse_args
Simulate this dict :)
Okay thanks. I am still learning pytest so what will the test look like for the above function assuming I created the two input files
def my_args(*args):

parser = argparse.ArgumentParser()
parser.add_argument('-f',action = 'store', help='first input file', required=True)
parser.add_argument('-s',action = 'store', help='second file name', required=True)
parser.add_argument('-n',action = 'store', help='qual name in file1', required=True)
16:08
You've got to test all that separately.
You want to test if your parser works. And you want to test whether the functions you're working with will produce the output.
okay
so I will have tow rite about 4 tests for this sample function?
so I will have to write about 4 tests for this sample function?
I don't remember how parse_args return the dict. But suppose you have to simulate a CLI using os or sys something.
I think yes
One of each argument, and one to check if your parser works
Spoiler : argparse works.
lol it does
And since it works, you don't have to test it.
Okay I think I am beginning to understand it
16:11
You however, have to freeze the version of argparse.
Since an evolution of a tier library could break your code
test for -f, -s and -n
okay
Exactly, but you don't even have to test EVERYTHING.
Like : Does it go in this if, or in this one, etc...
If you had to test everything everything everything... you could never have time to code. But you want to test the big parts of your code so that you know where your Application bugs.
But you want to test small enough parts so that you don't waste time searching through a too big part.
reason for testing input is cos the 2 inputs are different
and input has to have exact format
1 is jpeg and other is tabbed txt
seem complicated now
wish I could do a one on one with someone and just pay them to show me how all this comes together
videos are not helping cos they are too basic
or if someone can give me a link to a comprehensive tutorial on testing command line arguments with files as input
16:29
you just need to push yourself initially. Its just part of the learning curve with anything. Assume for a sec that you wont be able to find such a person for a one on one.
Theres definitely enough resources available online to piece things together, but it may just take some initial effort to find the right resources, and understand and apply them.
But it will be worth it.
Thanks. I am trying. it just gets frustrating at times
spending hours and at the end it is so simple
take breaks, take them often. Just remember, If you arent getting frustrated, you arent learning something new. :)
citation needed
I get the error "ImportError: DLL load failed: The specified module could not be found" for Bokeh. I tried this solution (stackoverflow.com/questions/20201868/…), but it didn't fix the problem. Is there a quick fix for this?
am still a green bean I guess
 
1 hour later…
18:04
cbg
Trying to solve a django bug, just your regular model and auth.user but for some reason django doesn't create permissions for myapp|mymodel|crud
18:54
I'm looking at some sample code. The author uses : a lot. For example, there's a line that reads imgEye = imgEye[:,:,0:3] - I think 0:3 means items in the range with indexes from 0 to 3, and therefore guess an empty : means the entire range. Is that right?
: means the full array.
:, :, 0:3 is a numpy notation that overrides getitem python lists.
okay, so 0:3 is the equivalent of pseudocode i[] = {x[0], x[1], x[2], x[3]} ya?
Here, If I'm not mistaken, but haven't verified it, it means : Get all the items in the first dimension, the second dimension, but only the 3 first element of the 3rd dimension.
@Billdr no
0:3 is the same as :3 and it's the same as how it behaves inside native python lists (i.e. they are right-exclusive: 0:3 includes 0 but excludes 3)
and yes, : just means "from start to end"
and you can use ... in numpy to signal ": for every remaining dimension" when that's unambiguous
Alright. I'll ready up on numpy. Thanks IMCoins and Andras.
18:59
i.e. imgEye[:,:,0:3] can be written as imgEye[..., :3]
(it's a doozy in general, but simple to understand the basics)
 
1 hour later…
20:06
hello, i have a quick question. I have "binary" string like "10010100100111", how can I create another string but with each 10-th element of original inversed? Like "10010100110111" and so on.
I'm not sure there's a non-hacky way to do that
create a new string with those bits flipped. one way is to convert the strings to a single digit list
change every 10th element of this list, then join again.
>>> inp = "10010100100111"
>>> ''.join([c if i % 10 != 0 else str(1-int(c)) for i,c in enumerate(inp, start=1)])
'10010100110111'
Much thanks for answers. Love you, dudes <3
This does what Paritosh said. Straightforward, just a bit contrived. It would be a bit more elegant if strings were mutable, but they aren't.
(maybe not even then)
20:11
i love how the "flipping" is implemented there. Wasnt apparent to me at first, but makes sense
pretty nifty
one could also cook up a numeric solution I guess, but that would take more cognitive power than what I have available right now :P
 
2 hours later…
Is there a way to know who follows a tag on SO?
I don't think so
I really was curious to know who is that single user following the "separator" tag
probably someone who misclicked...
22:46
probably some hipster who thought it'd separate him from everyone else
Don't judge, someone out there might be super-hyped about separators
I prefer the hipster theory

« first day (3060 days earlier)      last day (2118 days later) »