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01:22
@smci No. The OP isn't using or asking about Pandas. They just want an answer using the standard csv module. You can certainly let them know that Pandas can be used for that task, but you definitely should not close it as a dupe of a Pandas question.
mmmmmmmmmmmmm. I am back everyone
01:43
Ok that's cool.... Nobody on here
@NiNisanNijackle It's usually rather quiet here at this time of day. The Europeans are mostly asleep. There might be some Americans lurking, though.
And I guess some Indians would be awake by now.
I am american
It feels weird using english. I am used to talking in chinese
Can I ask a quick question @PM2Ring? Would you suggest pytorch or TensorFlow? I am a reader, so I don't mind reading documentation (in fact I prefer an official source).
@NiNisanNijackle Sorry, I have no idea. Tensorflow does seem popular, but it's not my field.
Ok thanks, I'll just read a book then about the topic then.
Tao
Tao
02:01
cabbage
weekend cabbage
hmm...I need a new keyboard...
 
3 hours later…
04:58
cbg all
05:50
cbg
 
2 hours later…
07:30
cabbage
What is difference between dim = -1 and dim = 2 , are they same ?
In programming sometimes we concat or multiply where dim or axis is optional argument.
Sorry, I really don't know what you're asking about
@NiNisanNijackle If you want to implement research papers or want to understand complete black box of neural networks , what is going on under the hood then go for pytorch ( Its good for quick model implementation where you can specify almost everything , you have full control over network , but its not for production , some of my friends use but result are quite different sometimes but they enjoy to implement papers ) ,
otherside if you want to build model for production then go for tensorflow but tensorflow is little blackbox , If you try to dig into documentation you will lost. so you will prefer to use readymade functions and thus you will not able to understand what is going on under the hood in network , I am regular Tensorflow user , sometimes its takes time to understand tensorflow inbuilt functions because you have to go through source code because Tensorflow documentation is not really good.
@roganjosh ok so suppose if i want to concat two matrix then if i try axis or dim = -1 or dim = 2 , both result are same so what is difference ?
08:16
@AyodhyankitPaul Do you understand the meaning behind a "black box" and a "white box"? You seem to be using them quite liberally.
It isn't in relation to documentation
@coldspeed By blackbox here i meant "A function which have some argument , you just pass values to those argument and you get result which is return of function , But you don't have any idea how function is working"
Good. Now what is "little blackbox"?
Also, what is "complete black box"?
(spacing sensitive)
@coldspeed I am sorry , deleting my answer , I don't have time to explain all of those things ,I just wanted to help him , I think you can write better answer than me to make him understand , Thanks :)
You can't delete comments that are more than 2 minutes old in chat, sadly
08:29
I thought it was 2 minutes?
you thought right!
you can tell I haven't been here in a while
YEY, what did I win?
a free 1 hour coaching session on PHP!
I don't want to play anymore
This is what you get when you blindly click "I Accept" to Ts&Cs :/
shoot, I forgot where the emoji keyboard is on my mac
I wanted to send an emoji
cmd + ctrl + spacebar!
08:34
You're having a 'mare this morning :)
it's still night here, and I'm waiting for something to finish buffering :D
Night? Where are you based?
NM, Los Angeles
roundabouts there
08:49
@AyodhyankitPaul it matters if your array can be other than 3d. axis=2 is "third dimension from the left", axis=-1 is "first dimension from the right. These only coincide for 3d arrays. Depending on what the code does either can work
09:02
In a broadcasting setting -1 is usually more extensible
@AndrasDeak Thanks
09:24
import pandas as pd
dataset = pd.read_csv('https://docs.google.com/spreadsheets/d/1yov-m63sOnQcm23xp96GyF-NB2xIqWMev3EA1VroJAo')

Why won't this work?
What's the actua way of doing it?
It's not a physical file on your system. You might want to use gspread to get the content, or another library I'm trying to remember the name of that will download files...
@MisterGeeky download as csv?
Well, there's PyDrive but I'm not sure that's the library I was looking for
@AndrasDeak I prefer the file hosted because I'm using Google Colab.
Wait, I got it.
33
A: Getting Google Spreadsheet CSV into A Pandas Dataframe

Max GhenisSeems to work for me without the StringIO: test = pd.read_csv('https://docs.google.com/spreadsheets/d/' + '0Ak1ecr7i0wotdGJmTURJRnZLYlV3M2daNTRubTdwTXc' + '/export?gid=0&format=csv', # Set first column as rownames in data frame ...

But I had to edit out the parse_dates. For some reason that throws an error.
What exactly was the change that that answer gave you?
I'm confused. I didn't know pandas could do this
09:39
The trick is to add '/export?gid=0&format=csv' to the link.
Probably downloads on the fly
ANyhow, got it working. Fabulous result.
And you taught me something. Win/win :)
10:28
What's actually happening with the apostrophes in this question? I wanted to copy/paste the character here and it does, in fact, turn into a backtick
I thought those characters were deliberately used by OPs but now I suspect there's some intervention by the editor to make the fancy apostrophes
Is it a result of using backticks and then converting to code with ctrl + k?
Strange question, there's inconsistency in it too
Yeah, but I think they've been bitten by some formatting done by the code editor
I believe the character is a UTF " LEFT SINGLE QUOTATION MARK"
Which I've seen generated from some word processing software, I got bitten by this when I first wrote some PHP years ago, was the first encoding bug I remember being hit with
I have seen SQL questions that correctly display backticks. In cases that I've seen that quotation mark, I've always assumed that the OP has used the wrong character but I think I'm wrong on that assumption
But it's along the right lines. Somehow, I think there's a way to screw up quotation marks in the SO code editor
Sorry, backticks
10:55
In [12]: import unicodedata as ud

In [13]: ud.name('‘')
Out[13]: 'LEFT SINGLE QUOTATION MARK'
you bet your butt it's not SO's fault, but OP messed it up. Posting code from an iphone or something.
Well that settles that, thanks Andras
is there an open source python ide that can be used from browser -> server
need to customise it for a project
Being succinct is fine but I think you're missing some details here. What does "used from browser -> server" mean?
i type code in browser , the code is sent to some sandbox where its run, and output is returned
Before I give suggestions you already know, have you searched for something? If so, what was wrong with the options?
11:09
i really couldn't find anything
most of the ones(only 2) i found seem to be unmaintained and arent popular at all
What problem are you trying to solve?
i want to conduct free tests in india
and many colleges have coding tests
what test can you not complete locally?
so we need to come up with a rudimentary solution (proof of concept) that allows students to run their code in their browser
the tests are online
we have the framework done for that
Right, so you want students to be able to submit code to complete a test you set? I'll have a think
11:15
repl.it has similar feature
but i want some open source solution that we can customise
im not sure what these things are called
@roganjosh, submitting the code isnt that important right now. first thing is that we need users to run any code in browser
thanks for the help
But you want to modify it
So presumably it has to be a sandbox that you host locally
locally from our infrastructure , from the user's perspective it will be browser based
i am surprised no open source implementation of this exists
well, if you think it doesn't exist, it's my Google search against yours :)
Because I don't know of a framework
11:21
if you do find something, let me know how you searched. i dont know what these things are called exactly
11:35
i found github.com/codeboardio/codeboard which checks all boxes
will explore it
12:09
I imagine you can run almost everything in the browser
@PM2Ring It's possible, sure. There are other languages in the world that have sounds that can approximate the G (Scots springs to mind, for example). And it's not like Dutch has click consonants‌​..
12:25
i have a data frame like below
team  account
inf   70059.0    127862
      70059.0         0
      70059.0    127862
      70059.0      5950
      70059.0    127862
      70059.0      3450
      70059.0    127862
      70059.0      7250
      70059.0    127862
      70059.0         0
      70059.0    127862
      70059.0    119875
      70059.0     76717
      70059.0         0
Name: total, dtype: int64
I do daytoppers = df.groupby(level=['team','account']).max()
but i get
team  account
inf   70059.0    127862
      70059.0    119875
I expect to get only 1 entry
Floating point precision?
Those are different numbers
1e-15 difference or so
12:41
oh you mean 70059.0 should be 7--59 to group correctly
Is there a reason you need that column to be float?
@pythonRcpp or at least the values should be the same (rounded, if that makes sense for your data)
if those are really ints then yes, convert to ints anyway as roganjosh suggested
>>> df
   accounts
0   70059.0
1   70059.0
2   70059.0
3   70059.0
4   70059.0
5   70059.0
6   70059.0
7   70059.0
>>> df.accounts.ptp()
7.275957614183426e-11
omg ... i have been struggling with this for over 2 hrs now ... yes it can be a string int or anything that gets grouped by
the question is whether "accounts" makes sense to be an int :|
yes it is ok to have it as int
12:47
Then convert that column to an int ;) .round().astype(int)
df['accounts'] = df['accounts'].astype(np.int64)
Or int I guess
round first
>>> df
   accounts
0   70059.0
1   70059.0
2   70059.0
3   70059.0
4   70059.0
5   70059.0
6   70059.0
7   70059.0
>>> df.astype(int)
   accounts
0     70059
1     70058
2     70058
3     70058
4     70058
5     70059
6     70059
7     70058
yes thanku soooo much ... i could have saved so much time if i had come here earlier
thanks a ton
No worries
but unfortunately converting it to int also does not group correctly , let me try if converting to string works
12:54
if converting to int doesn't work then I doubt strings will
I don't know what data Andras was working off. Is there a question posted somewhere that I've missed?
Did you overwrite the column after conversion?
@roganjosh random
That was some good guessing then on the floating point issue :)
df = pd.DataFrame({'accounts': (pd.np.random.rand(8)-0.5)*1e-10+70059})
context made it fairly obvious
12:56
Can you give us a reproducible example?
@pythonRcpp in case your original .ptp() is 0 the problem is something else
But I have no idea what it could be then
At the same time I just checked back on this and "I needed to update pandas" gets 2 upvotes. The library can be so frustrating at times.
Who knows what's functional from 1 version to the next?
The docs
The release notes are intimidating
And that only covers things they intended to implement
deprecations and API changes are usually noted in the specific docs
I hope that applies to pandas as well
13:03
From my experience, pandas doesn't work that way
Anecdotal evidence is that that answer got 2 upvotes
1 thing is for sure when account was of type string ABCD it used to group correctly . i just tried runnig by replacing 70059 by abc
@pythonRcpp Are we working from the same example here?
Or are you applying this to a big dataset?
@roganjosh no, they're using their actual data
So, we are in a guessing game of the issue
@pythonRcpp there's nothing more we can help you with until you figure out what those values actually are in account, and until you tell me the .ptp() of those seemingly equal float values
13:07
But, I would like to see the output after you converted to int and grouped the values
DSM
DSM
Saturday morning cabbage, all.
cbg for DSM
cbg DSM
DSM
DSM
Skimming the history: Andras is almost certainly right, and these are very slightly different values.
daymargins = pd.concat(margins) # concat all day margins into 1
print daymargins.reset_index().account.ptp(),"hi Deak"
13:11
huh
good thing DSM is here because I'm out of ideas :P
@pythonRcpp before rounding, right?
so you can do .ptp() then the groupby().max() and still see two values?
Yeah, I think the solution is to palm this off to DSM :P
so you can do .ptp() then the groupby().max() ==no .
before grouping i did ptp
"no" what?
anyway, I'm reaching the end of my utility either way :P
time to make some waffles
Please show the result of converting to int and then groupby
DSM
DSM
First order of business is to get an actual example we can reproduce. What versions are we on?
13:14
@roganjosh its same as what i pasted whn it was float
Ok, so we fall back to DSM's question
also .account.values.tolist() should give you proper representations of the values
DSM
DSM
Oh, wait. Are we on Python 2.7? I have a long-standing policy of not working on 2.7 questions..
ah, I should've warned you
DSM
DSM
Being on an ancient version opens up another possibility: type incompatibility. If one of those is a float and one a string, e.g.
13:22
ew
then .accounts.dtype is also relevant
anyway, we've already demanded enough
huh, numpy freaks me out sometimes
>>> np.array([1, '2'])
array(['1', '2'], dtype='<U21')
using python 2.7.6 , regarding reproducible example i will try to create a small csv which you can use. Thanks for the time
Small amount of quatloos on the MCVE revealing some inconsistency in the data. Before you post it make sure your MCVE reproduces the problem when you load it individually
What would have been your expectation from np.array([1, '2'])?
DSM
DSM
If you pass that to a Series you get an object dtype, so it wouldn't be crazy to assume numpy would do the same thing. I know it doesn't, but that's memory, not expectation.
U21 is big, but I think it's easier to take each item as string rather than see whether each string can be converted to int
13:30
@roganjosh object
Ok, I'll step out of my depth for this; what difference would that make?
refusing the temptation to guess
Not silently modifying your data when put into an array. Things like that.
you know numpy will coerce your input when you assign to an existing array, but in this case there's no existing dtype to begin with
lol, I'd rather they concentrate on the silent overflows on .sum() before that :P
these aren't mutually exclusive things
Well the dtype is decided by my initial comment, no?
"I think it's easier to take each item as string rather than see whether each string can be converted to int"
13:34
    print daymargins

    team  account
    inf   a90059     127862
          a90059          0
          a90059     127862
          a90059       5950
          a90059     127862
          a90059       3450
          a90059     127862
          a90059       7250
          a90059     127862
          a90059          0
          a90059     127862
          a90059     119875
          a90059      76717
          a90059          0
daytoppers = daymargins.groupby(level=['team', 'account']).max().astype(int).reset_index()
DSM
DSM
Erm.. a90059 doesn't look much like a float to me.
yes thats what i did
i made it a string
to check if that works
DSM
DSM
Ah, I see.
@roganjosh I don't think it's a matter of "easier"
Also, convertin to float might be lossy
13:37
@roganjosh yes. Same problem. Hence object.
"lossy" I think is the right word, maybe I spelled it incorrectly
DSM
DSM
Can you print out daymargins.index.values? We still need to get to something we can build.
You don't have to touch the data with object dtype, that's the point
Yeah ok, I can see your point
13:39
[(inf, 'a90059') ('inf', 'a90059') (inf, 'a90059') ('inf', 'a90059')
(inf, 'a90059') ('inf', 'a90059') (inf, 'a90059') ('inf', 'a90059')
(inf, 'a90059') ('inf', 'a90059') (inf, 'a90059') ('inf', 'a90059')
(inf, 'a90059') ('inf', 'a90059')]
DSM
DSM
And there we have it.
this is daymargins.index.values
DSM
DSM
Do you notice anything different between the entries in that list?
nice one
13:40
ohh god ... inf and 'inf' ?
You need 3 nans as well
didnt get you ?
Nans always compare unequal ;)
DSM
DSM
Decide on what type that value should be, whether float or string, and ensure that at your data reading stage.
Curious how the str doesn't reflect that
DSM
DSM
13:44
There were discussions about always putting quotes around strings in the displays, but it uglified the output too much.
i am not able to comprehend
Sounds like a risky trade-off. Hiding obscure bugs...
I'm not following the last points either
DSM
DSM
Your "team" column is coming from somewhere. You're reading it, you're building it, whatever.
yes reading it from a csv
then doing teamMap['team'] = teamMap['team'].str.lower()
DSM
DSM
13:46
Find the first place where you have this multiple-type problem, and decide whether conceptually you want this entry to be a float or a string (is it a name, or a number that just happens to be infinite?)
Then make them so.
@AndrasDeak what was your point about nan?
team is always a string
in my dataframe this is how i map team df3['team'] = df3['teamid'].map(teamMap.set_index('id')['team'])
@roganjosh now they have inf and 'inf', they could add some nans for extra fun
DSM
DSM
Again, go through your code. Check the types of the elements in the team column, and find out where you're introducing the two types. It'll be much easier for you to find them there than for us here.
Ahhh, that was lost on me and possibly pythonRcpp too
13:48
Yup
ok i am finding that out ... you mean somewhere i have put 'inf' as team and somewhere i have put inf as team and thats why i cant group byy
Who here uses gitlab?
me. But I take a completely hands-off approach to how it's run and git is confusing so I almost certainly can't answer anything other than your broad survey question
git is easy to understand when it comes to uploading, I have no clue with deleting and other stuff, but it's faster to delete through the UI...
I love all the private repositories for free. I don't need it, but it feels nice when everyone doesn't see you "Interesting" notes... I probably would open everything up except the stuff with actual private files on my computer.
@roganjosh have you finished the git parable and learngitbranching?
13:55
I haven't even looked at them if I'm honest
@roganjosh just watch this then you understand what the prompt is saying with the terminal commands youtube.com/watch?v=c0oHicokvK8
let me know if it's still confusing after
It gives you a set of instructions to copy in paste on gitlab
It seems confusing if someone doesn't explain it
Things are confusing to me if I don't need to use them
As it stands, I only ever need to commit code to my own repository, given that nobody else in the company is a programmer
And I don't find the need to have branches
Those I mentioned explain the philosophy and how branches and commits and merging etc. work
14:00
I really do need to learn about it, I will look them up
the basics are really simple, I encourage you to do :)
This senior year is going to be lit. I am going to start up chat rooms inside the class that the school can't block!!!! Yeet!!!
With a basic UDP Server
14:36
Hello! I decided to corrupt the code (from GitHub) which computes a factorial of a number rewriting it as:
def factorial(x):
    x = int(input())
    if x == 0:
        return 1
    else:
        return x * factorial(x-1)
and executed factorial("some number")
then it asks me to input a number
it continues till I write 0
and multiplies every number before that and gives that
as a result.
I couldn't get to know how it works (the order of execution)
and why/how it does so
could somebody explain it?
You know what a factorial is right?
You are proably better off implementing it in a loop
for i in range(1, num+1):
factedNum *= i
>>> fact = 1
>>> for i in range(1, 5):
... fact *= i
...
>>> print(fact)
24
@NiNisanNijackle yes, but i cannot understand why it executes in that way after changing the code.
There is a logic error there
It asks for input from the beginning so you have to constantly feed it
and infinitely call itself
unless if you return 1
14:51
@NiNisanNijackle right but from which part/stanza of the code it does so, obtains this "command"?
What command?
If you have a function that calls the same function, that calls the same fucntion, and so on. It goes infinitely
Unless if you return 1 in your code
could you explain this behaviour?
in the image
it multiplies every number before 0
and where in the code it says to do so?
let me test it in the terminal
I just get an infinite input in my code
14:56
so did I
but it stops
when you write 0
*cough and multiplies every number before 0 *cough *cough
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