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01:41
@БеляковаАнастасия either with javascript, or pass in some sort keys in the querystring and do it serverside. Take your pick.
 
2 hours later…
03:26
Hm. Anyone know how I'd set the index column on a pandas dataframe on creation?
 
3 hours later…
06:39
cbg
06:50
cbg
 
1 hour later…
08:01
cbg
A question about mongoDB group
After group by _id, and I got those :
"_id": {
"type": 2,
"typetitle": "门2"
},
But I hope I can get :
{
"type": 2,
"typetitle": "门2"
},
 
2 hours later…
edo
edo
09:35
Anyone knows why this recursive regex works in PHP but not in Python:
(a(?1)?b)
Regex101 playground link: https://regex101.com/r/soyesu/1
btw I'm using the re package
Can anyone figure out why am I getting ''tuple' object does not support item assignment' for following code: cdata = list(ldata)
print(type(cdata))
while n > 0:
if cdata[count][0] == cdata[count + 1][0]:
cdata[count + 1][1] = " "
n = n - 1
count = count + 1
I have a dataset and have 5 categories How to slice 3 samples from each category in pandas ?
Is there any in-built function or something?
@edo regexp are implemented differently in different languages. You can however import the regex module (I don't know the details about how to get it, probably using pip install). This one works a bit similarly to the re module, but offers recursion.
edo
edo
@Jerry Thanks, mate. I found a related blog post with more info: http://rachbelaid.com/recursive-regular-experession/
> Now, it's not possible to do it with the built-in re package in Python because it doesn't support recursive pattern!
> To solve this problem with a regular expression in Python then, you need to install the regex package which is more compatible with PCRE.
@user3170565 I'm guessing ldata contains tuples, so cdata becomes a list of tuples. Tuples are immutable, you cannot change them with varname[x] = y.
09:48
any solution?
what are you trying to do?
i'm getting data from db and removing duplicate entries for one to many relationship
(1542527472, 'Kamad', '14/11/2008', 'CA', 100, 560.5, 67660, '', '', 67660), (1542527472, 'Kamad', '14/11/2008', 'SK', 10, 1161, 67660, '', '', 67660)
trying to assign '' to elements [1][1], [1][2], [1][6], [1][9]
ok I'm not sure if it's the best solution, but I'd convert the tuples to lists after the if and before the cdata[count + 1][1] = " "
finally i'm printing this data using reportlab
thanks i'll try to do that
maybe something like
temp = list(cdata[count+1])
temp[1] = " "
cdata[count+ 1] = tuple(temp)
09:57
aha gotcha. why didn't I think about that.. Thanks a lot :)
np
i have 70 k rows data in excel, i have to do a match to figure out if they exist in the larger universe of 7 mil rows which are in db... can anybody suggest the most efficient way to do this (currently can think of normal query stuff)
10:29
@WayneWerner pass index=...?
I think it can be a column name
10:40
cbg
:>
Cabbage
@SarthakNegi I guess these rows don't have a unique ID. You could make a dict that indexes the db rows, with the key being a hash of the row & the value being a list of the row number for each row with that hash. Then loop over each Excel row, hash it and then compare it with the db rows corresponding to that hash.
Another option is a Bloom filter. That will be slower (especially if implemented in pure Python), but will consume much less RAM.
A strength of both of those options is that there are no false negatives, so you only need to do a db lookup if the test reports a possible positive match.
11:04
As if using a German keyword wasn't hard enough, using a German windows now. :-D
jpp
jpp
11:22
stackoverflow.com/questions/53426360/… dup (I can't VTC as it was reopened after I closed it)
@PM2Ring Hey thanks a lot.
11:42
>>> pd.DataFrame({'a':[1,2,3], 'b':[4,5,6]}, index=[7,8,9])
   a  b
7  1  4
8  2  5
9  3  6
@WayneWerner ^
@jpp I'll have to trust you that it's a good dupe target, since I don't know Pandas.
it is a good dupe target, I've just voted
exact dupe
if jpp's original target would've been that, I'd take jezrael's unhammering to meta
Wow. Jez just deleted his answer.
jpp
jpp
@AndrasDeak, Sadly, it wasn't, it was a (slightly more generic) "how to add groupby to a column". I went for more generic the first time because I thought it made sense. The groupby -> transform idiom is something that works for any Pandas method, so I wasn't picky.
I know
jpp
jpp
11:49
Not specific to this instance, it's nice when people comment when they unhammer, it takes a little effort / google-fu and it's good to know if we're doing it wrong.
IMHO, it's good to try & find a dupe target that's as specific as possible, but it's definitely a good idea to add more generic targets too. That can help future readers, and it may also help the OP if they actually have an XY problem.
jpp
jpp
@PM2Ring, Yup, agreed, best to have both IMO, best of both worlds for the googlers.
And adding a good generic dupe early can stop unnecessary answers. Unless the answerer has a hammer of course.
@AndrasDeak Agreed, but the danger is it may be unhammered if it's too generic. In that case, I try to get feedback from the OP before hammering, or hammer it & post a comment to let readers know I'm still searching for a more specific target.
well, yeah, hammer with generic while you look for a specific
11:58
Ideally, you post a comment saying "do the answers here help you?", and the OP hammers it themself. But that doesn't happen very often...
yup, especially since you need 250 rep for that
12:31
hello... I hope I am not interrupting. We have a linux server at work and I am a normal user there. They have python 3.4 and I need 3.6. Is there a way to install python 3.6 in my home directory and use it with pyenv?
yup
You can compile python 3.6 from source, I did just that on a computer cluster I use. And created a virtualenv in my home. Never used pyenv though, but I don't have a reason to believe that it wouldn't work
12:49
thanks I am compiling now. I also just found a tutorial thelazylog.com/install-python-as-local-user-on-linux
overriding the command python with your local python is probably not a good idea in terms of best practices
As far as I understand you don't have to mess with the path if you use an env. But I'm not sure
I recommend using non-standard python versions only through a virtualenv
you gain robustness against environment changes, and others can clearly see the dependency
13:10
Hi, this is embarrassing. I have a project folder called hf_collect. In it I have init.py and coin.py files. I have a function in init.py that I want to import in coin.py. In coin.py I say from . import my_func. I also have if __name__ == '__main__' in coin.py. When I run it, it tells me: ImportError: cannot import name 'my_func' from '__main__'. What seems to be the issue here?
Is it because it is a function?
how do your run coin.py?
both from IDE and from terminal. Same error
as python hf_collect/coin.py or python -m hf_collect.coin?
as python coin
works with the -m
how would I achieve that in the IDE?
@MisterMiyagi, thanks I did using pyenv. it makes sense. it can even activate the environment when you go into a folder. how cool
13:14
@isquared-KeepitReal Don't mix executable scripts with modules. If coin.py is part of a package (which it is, since you have an __init__.py), its purpose is to be imported, not executed
There are various hacks you can employ to make it "work", but I'd recommend moving all executable scripts out of the package
@Aran-Fey where can I read up on this?
tbh I don't think there's an actual comprehensive guide on this stuff. I learned from experience and from picking up bits and pieces of useful information from among the bad advice ("you can use sys.path.append(your_directory)") on various SO questions
@Aran-Fey what is a purpose of the project then? Is it not designed for execution?
Your project should generally have 2 parts: a package containing 99.99% of the code, and an executable script that imports the necessary bits and starts the program
like this for example
@Aran-Fey you are awesome. kudos to you
13:21
note that a package can have a __main__.py that is called when executing the package
e.g. `python -m hf_collect` would execute `hf_collect/__main__.py`
@MisterMiyagi thanks, that's also very useful for me
you might want to check out "entry_points", which allow automatic generation of executables
that is, when you install a package a specific type of "entry_points" is used to generate executables in OS specific places
@MisterMiyagi interesting. thank you
13:40
is there something like ``contextlib.ExitStack`` that directly and safely enters multiple contexts?

    with Stack(context_a, context_b, context_c):
        ...
with context_a, context_b, context_c: should work
sorry, forgot to add that I don't know the context managers statically. Rather something like:

        with Stack(*contexts):
            ...
I know! contextlib.ExitStack
that requires entering the contexts explicitly
does it not?
I don't think there's a way to do it in a single line
13:45
@MisterMiyagi you can use a loop
I need it for an API, I'd rather not have users mount each context by themselves
Martijn has a post about using a variable number of multiple contexts, don't know if that's applicable
Make a wrapper for contextlib.ExitStack then?
35
A: Combine two context managers into one

Martijn PietersDon't re-invent the wheel; this is not as simple as it looks. Context managers are treated as a stack, and should be exited in reverse order in which they are entered, for example. If an exception occurred, this order matters, as any context manager could suppress the exception, at which point t...

yup, uses ExitStack
that looks promising
I tried using ExitStack in enter but had problem with rollback on exceptions
the separate with looks nice indeed
thanks
13:53
no problem
@AndrasDeak So that works, but doesn't name the index. What I ended out doing was something more like this...
df = pd.DataFrame({
    'Indexy': ['this', 'that', 'other'],
    'One': [1,2,3],
    'Two': [4,5,6],
    'Five': [7,8,9],
}).set_index('Indexy')
I was looking for a way to do that on creation, but there really doesn't appear to be
14:08
>>> pd.DataFrame({'a':[1,2,3], 'b':[4,5,6]}, index=pd.Series([7,8,9], name='index_foo'))
           a  b
index_foo
7          1  4
8          2  5
9          3  6
creating a series just for this might be more trouble than it's worth
hm...
Yeah, I just tried using a dictionary instead of a series and that didn't work very well. I think I'll just use set_index
cbg
Does anyone know specifically how the numpy config is set? I've been fighting all day to get my code to run on more than one core. Now I've upgraded Anaconda to Python 3.7 and none of these directories contain MKL... The include_dirs don't even exist because mine are dated with the year 2017
np.show_config()
mkl_info:
    libraries = ['mkl_rt']
    library_dirs = ['C:/ProgramData/Anaconda3\\Library\\lib']
    define_macros = [('SCIPY_MKL_H', None), ('HAVE_CBLAS', None)]
    include_dirs = ['C:\\Program Files (x86)\\IntelSWTools\\compilers_and_libraries_2016.4.246\\windows\\mkl', 'C:\\Program Files (x86)\\IntelSWTools\\compilers_and_libraries_2016.4.246\\windows\\mkl\\include', 'C:\\Program Files (x86)\\IntelSWTools\\compilers_and_libraries_2016.4.246\\windows\\mkl\\lib', 'C:/ProgramData/Anaconda3\\Library\\include']
\o cbg
also no clue Rogan but some of the google results looks promising.
They haven't helped for the last 5 hours :'(
Prior to upgrading to 3.7, I did confirm that numpy was linked to MKL but even with 8 threads it was still using a whopping 13% of my CPU even on huge np.dot() calculations, which will be one theoretical core
14:46
@roganjosh OMP_NUM_THREADS/MKL_NUM_THREADS/OPENBLAS_NUM_THREADS etc envvars
try setting MKL_NUM_THREADS=8 for your process
That's the envvar I set
so try others
set ALL the variables!
I was able to get MKL to report to me via "verbose" but no number of threads pushed it above 13%.
Hahaha, that's kinda the stage I'm at
I'm either going to try get openBLAS or give the Intel distro a whirl
Did you try the other envvars?
allegedly complete list stackoverflow.com/a/53224849/5067311
14:52
What in the world am I doing wrong here? I'm expecting 100, 100, 200 in the totals row
df = pd.DataFrame({
    'one': [202, 118, 178, 215],
    'two': [123, 167, 528, 698],
})
pct = df.apply(lambda x: 100 * (x/ x.sum())).round(2)
print(pct.append(pct.sum().rename('Total')).assign(Total=lambda d: d.sum(1)))
pct = pct.round(1)
print(pct.append(pct.sum().rename('Total')).assign(Total=lambda d: d.sum(1)))
If I move the round to pct.round(2).append(...) it works as expected...
but then it's not adding the rounded values
intuition says it's a floating point rounding thing...
where's "here"?
Hmm, I may try the OPENBLAS envvars but it's looking to MKL for that library. It didn't occur to me that this would be a var that MKL would care about
@roganjosh from what you're saying I suspect it's possible that it's not actually MKL being used
Yep, I'm inclined to think you're correct
otherwise I'd expect the MKL_* switch to work
14:55
@AndrasDeak So, my expectation is that when I add the rounded percents that I get 100%
Well, it did change the number of threads
@WayneWerner I can't see your code
oh, I reloaded
I can't see it either until now
14:56
thanks, you can delete the second version
^ can... okay there lol
this happens every once in a while
Anyway... so, there's here
and now will be here soon
14:59
Just looks like standard rounding error to me?
Yeah, that's what I'm thinking... but why, and how to I fix it? lol
you fix it by not working with truncated values
For column one you're rounding: down, up, up, up
It isn't really broken
can't you just print them truncated?
I need the percents rounded to the nearest 10th
I don't think it's a simple rounding error that I'm dealing with, because:
from decimal import Decimal
print(sum((Decimal('28.33'), Decimal('16.55'), Decimal('24.96'), Decimal('30.15'))))
if round was rounding the way that I want to be rounding, it should get to 100
instead that's 99.99
15:06
It is a rounding error
pct = df.apply(lambda x: 100 * (x/ x.sum()))#.round(2)
print(pct.append(pct.sum().rename('Total')).assign(Total=lambda d: d.sum(1)))
There is nothing wonky going on with the maths. A tie-break on a 5 being rounded up, not down, gives you a discrepancy
yup, 10.15 + 10.15 = 20.30, but 10.2+10.2=20.4
Yeah... so what do I need to tell it to do to round uh... scientifically?
that's also why banker's rounding became the default, so that on average averaging is fair
@WayneWerner it is scientific. Your expectations are off.
10 mins ago, by Andras Deak
can't you just print them truncated?
nobody would worry if the printed values add up to 100%+-precision, but you'd still have the "exact" values underneath
15:12
I don't think so? I'm trying to answer an actual question that requires the number to be accurate (not on average, but actually truely accurate)
the other option is to take your truncated values and rescale your 100% to that
"accurate" doesn't make sense when you're lopping off a load of digits
"I want my rounded value to be truly accurate"
so if I have 45% and 54%, that's a problem
because one of those answers is probably correct, but the other one absolutely is not
And right now, unless I'm misunderstanding something, my rounding errors are doing that
which is fine, I totally get that's how rounding typically works
To 1/10th of a percent
15:14
you can always choose an arbitrary number and assign to it the discrepancy :P
but we can look at that as people and clearly say that's not right and look at the underlying digits and fix it
so... I need to know how to tell my computer to do that, lol
Any fix would be fudging the numbers
@roganjosh yeah, but a misleading workaround is still a workaround
data[0] += 100 - sum(data) # there
good as new
it would be more fair to rescale the data so that the new sum is 100% but that can probably lead to different rounding issues again
15:18
Just pick the row at random so nobody can accuse you of bias :)
It's not bias - it's answering a question on a site that's actually got a correct answer lol
that's the problem
I need to match an output
see how the existing answer cheats/is lucky and repro that?
Numpy, like Python float, uses the standard IEEE 754 nearest even rounding. But the decimal module lets you choose from a variety of rounding modes docs.python.org/3/library/decimal.html#rounding-modes
That's actually probably the best approach. Do you have a bigger sample than the one you shared? A random tie-break is next to useless on a small sample in terms of avoiding the issue in the majority of cases
15:22
No, that's literally the sample data lol
It's not meant to be rigorous in that case I don't think
but it's asking me to round every row to the nearest tenth of a percent
so I'm assuming that those percents have to add up to 100% - I know I was doing another exercise where I had rounding errors and ended out getting the answer wrong
Actually, I think I just spoke nonsense :)
Reasoning it out, there's still a 50% chance of a discrepancy regardless of sample size?
If every row is rounded to the nearest tenth of a percent, then the error in the sum has to be at least that big. If there are 10 rows, you should expect tbe error to be around 1 percent.
Hm. Now that I'm looking at it a lot closer...
I think they might actually be ignoring the rounding errors in one column -_-
cause they're asking me about the column that does naturally sum to 100%
shenanigans
ragenuclear.gif
On the plus side, my whole point of doing these things is so that I could learn pandas better (as well as re-learn statistics). So both of those things seem to be going well, even if it's a bit frustrating at the time lol
cbg @FélixGagnon-Grenier
... Anaconda with Python 3.7 seems completely borked. Numpy broken, pandas broken, but work fine inside Spyder. The same issues I have seen on SO recently.
15:57
weird
The fact that it wouldn't let me import pandas because I was missing the numpy dependency was one thing. Then to try launch numpy it told me I had a broken installation
And the best part is that now I'm trying to fix pandas with a fresh install, it's going to remove the MKL linkages I specifically just included when fixing numpy. I'm taking an early finish today, this is not good for my blood pressure :P
good times.
I've never used Anaconda, I'm assuming you're on a windows distro?
Yep
And generally it's pretty fantastic vs. everything else. But this is very wonky
16:20
That's super strange. When you say broken, it just doesn't run or what?
Pandas failed on import saying that numpy didn't even exist. Trying to import numpy spat out a load of errors and said "your installation of numpy is probably broken" (paraphrased, but it said "broken"), yet I was able to use it inside Spyder
The pandas error was along the lines of: github.com/jupyter-incubator/sparkmagic/issues/458
I can understand that libraries change and things break, but conda is usually pretty good in ensuring that what they ship is compatible, yet this was without me having installed anything
For MKL I've resorted to the unofficial binary, I just haven't managed to test yet because I keep getting my versions rolled back as I fix other modules. Nice cat and mouse chase :P
On the plus side, the binary dumps all the MKL DLLs into the numpy directory and, at least as of this minute, I have a numpy version configured to point at them.
@WayneWerner Borked: ibb.co/f4zqvV :P
16:48
Am I right in thinking it was Pandas 0.20 that deprecated .agg({})? The git discussions seem to indicate that, but that's the earliest whl I can find, and that will completely crash just about every part of my codebase.
that's true I think
groupby.agg that is
it should only raise a warning in 0.20
Was just about to ask that :)
still there in 0.23.4 pandas.pydata.org/pandas-docs/stable/generated/…, weird that it doesn't mention the deprecation
Hehe, this is horrible
groupby.agg => "agg is an alias for aggregate. Use the alias". df.aggregate => "agg is an alias for aggregate. Use the alias"
You not found parts of the documentation that continue to list arguments that don't even exist? :P
@roganjosh that should probably never happen
16:54
And yet it does. Let me try remember what method it was
please do, these things should be raised as issues or fixed in PRs
The top line e.g. DataFrameGroupBy.agg(arg, *args, **kwargs) for one method I found listed arguments that it didn't describe or even exist
I've had something similar with pyplot, only to be told that I was dumb and only one of plt.vlines vs ax.vlines exists and is documented. Or something like that
I mean, they didn't say I was dumb, that was merely the logical conclusion
Yeah, at the time I was against the clock :/
Do you have a working (!) version of pandas high enough to check whether it was actually deprecated?
There was a lot of pushback, and certainly I was holding my version below the deprecation because it's intuitive for me
0.23.4 here
deprecation shouldn't break anything (other than tests maybe)
the point of deprecation is to give users time to start using something else
16:58
But I'm wondering whether it was actually removed after a few versions or whether they're just going to keep going with it
By 0.23 I would have thought a deprecation should have translated to a deletion
In [9]: df.groupby('A').agg('min')
Out[9]:
   B         C
A
1  1 -1.516261
2  3  0.051482
doesn't even warn as far as I can tell
oh, only some cases seem to be deprecated
I still can't get it to warn. Oh well.
Hmm ok, that's good to know. Thanks. I'll go for a higher binary then (watch it have been deprecated and then brought back in at a later version by popular demand lol)
Ah no, hold on, it was the use of a dictionary in agg I think
df.groupby('A').agg({'B': 'min'})
That's the functionality I make use of
@roganjosh still works, no warning even
"dict of column names -> functions (or list of functions)." should be the deprecated feature
Cool, thanks for testing for me
but the lack of warning might be due to ipython, I'm not sure
no, no warning outside it either
17:15
hi, does anyone know what is the difference between asyncio.create_task() and asyncio.get_event_loop().create_task() ?
why maybe someone if exist method to us modules from odoo into django ..thanks
I can only see one deprecation/future warning here and that's not it
Well, I now have my app up and running so we're about to find out. from pandas.core.groupby import DataError was the only issue I had
Nope, not deprecated; anything I wrote in 0.19 is still valid in 0.23.4 other than that import :)
@isquared-KeepitReal you can run asyncio.get_event_loop().create_task() without a running loop
it will create a new one in this case
asyncio.create_task() raises a RuntimeError instead
@MisterMiyagi I had task = asyncio.create_task(my_func) and started the coroutine straight away. But using this method I could not KeyboardInterrupt. However, when I create a loop and then create a task through that loop everything works. So I was wondering what is the difference
17:29
did you start your loop in another thread?
@MisterMiyagi nope
note that if you just want to do async programming, I can highly recommend the trio library if you find asyncio confusing
so you had a asyncio.run(stuff) somewhere in your main thread?
@roganjosh Huh! The deprecation is there on the 0.23.x branch but not on master. Compare 0.23.x with master.
@MisterMiyagi correct
may have been refactored elsewhere
17:31
@MisterMiyagi yes, just aync
for humans and snake people lol
@AndrasDeak 2077 lines (1704 sloc) vs 5129 lines (4170 sloc). Wut.
one major refactor from 0.22.x to 0.23.x (core/pandas/groupby.py -> core/pandas/groupby/groupby.py), then another refactor from there to master
if I had more time and motivation I'd see if 0.22.x raises a warning then 0.23.x then master
Yep, makes sense, was discovering the discrepancy while you were already hot on the trail :)
there's no point in a deprecation that isn't visible
17:39
I lied: my simulation has just ended and .as_matrix() is next in the firing line. Meh, I can live with that getting deprecated :)
Matrix? As in np.matrix?
pandas.pydata.org/pandas-docs/stable/generated/… and it does have the deprecation warning in the docs
> Return is NOT a Numpy-matrix, rather, a Numpy-array.
phew!
I only knew about .values
but someone should tell them that .values is a property, not a method......
17:44
That's the problem with a bloated API I guess. It's whatever you hit first that works, I found that method.
too bad I don't have time for PRs
LOL, I've just spotted that :)
18:12
return{'https': choice(list(map(lambda x:x[0]+':'+x[1],list(zip(map(lambda x:x.text, soup.findAll('td')[::8]),map(lambda x:x.text, soup.findAll('td')[1::8]))))))}. MY EYES!!
... Python
Actually, I think that's the most confusing one-liner I have seen on SO to date. I can't even begin to comprehend what it does and it's off putting enough that I cba trying to break it down
18:33
That's horrible. And inefficient, since it calls soup.findAll twice. At least it could use attrgetter instead of that lambda
@roganjosh You haven't read enough of Ajax's posts. :p
Not gonna lie, that name was in mind :P
Maybe if there was a # You can try this before it, it would all have been clear :P
@IMCoins ah, didn't realise you're from Paris. I was there at the weekend. To summarise the trip in one word: "queue" :)
There are too many people on this earth, and especially in this town haha
Too bad I could have met someone from SO
We went to the tower, queued to get into the compound. Then saw there was a queue for tickets, which would then allow you to join the queue for either the stairs or the lift
The stairs are the best.
Waaaaaayyyyy less queue
And 4x cheaper haha
I hope you had a great time though !
18:45
Yeah, you only have to do 2 of the 3 main queues and then a little one on top :P
Yeah, it was good fun. I went nearly 15 years ago, was an impromptu trip out. If I find myself out there again I shall give you a shout :)
Nowadays I'm not here often as you might have noticed, but I guess the ping pushes something on my phone even if im disconnected
You must have the all-singing-and-no-dancing app that's basically only good for pushing notifications
I knew you weren't used to Paris when you said : the tower
I knew you'd know what I meant rather than having to think about spelling Eiffel :P
I meant nobody visits the tower once you're acquainted haha
It's not even gracious in my opinion. But it makes a great radio tower :p
18:54
I went up it when I visited the first time, I think it's something you have to do, but at least it was midweek then
I don't think there's an equivalent in Manchester. Go to the Temple of Convenience; the underground toilet converted into a pub? :P
19:24
I think I remember a part of sopython.com with room endorsed libraries/packages but can't seem to find it? Did I just dreamvent it?
Not seen it myself, what are you after?
In this case looking for a postgresql thing. Guess I'll pick one of these.
Is this intended behaviour?
import pandas as pd

df = pd.DataFrame({'a': [1, 2, 3], 'b': ['10.2%', '5.3%', '79.6%']})

df['b'] = df['b'].str[:-1].astype(float).round(-1)
print(df)
It doesn't look to be documented. I was trying to see if I could .round() to an integer and instead, round(0) gives 1 d.p. and round(-1) starts rounding by whole 10's?
@FélixGagnon-Grenier wiki.postgresql.org/wiki/Psycopg2
I haven't ever seen the others used I don't think
:P
yeah, it seemed to rank high on googling "python postgresql"
> applications that create and destroy lots of cursors and make a conspicuous number of concurrent INSERTs or UPDATEs.
> conspicuous
some lols were had
With your profile pic, I thought you'd be going for inconspicuous. You're missing the glasses + fake nose combo for total anonymity
19:53
Help on method round in module pandas.core.series:

round(decimals=0, *args, **kwargs) method of pandas.core.series.Series instance
    Round each value in a Series to the given number of decimals.

    Parameters
    ----------
    decimals : int
        Number of decimal places to round to (default: 0).
        If decimals is negative, it specifies the number of
        positions to the left of the decimal point.
i.e. Series.round documents it
I'm confused. Why is it not covered here?
oversight, probably
    def _dict_round(df, decimals):
        for col, vals in df.iteritems():
            try:
                yield _series_round(vals, decimals[col])
            except KeyError:
                yield vals
it falls back on series.round probably
Right ok, that makes sense. I'm looking in the wrong place. Thanks
The more time I'm spending in the source code of Pandas, the more curious I become about why we hail this as integral to data science
It started with a few core ideas that they pushed into C with Cython and now it just looks like an explosion of convenience methods
it's not unreasonable to look for it in the df.round docs at least
Not sure what you mean, sorry?
df.round is what led me to the source. I needed series.round I guess
My other comment was in general; most of the methods are just iterating dictionaries and not using numpy at all under the covers
20:06
I was reflecting on "I'm looking in the wrong place". The docs should have mentioned it. The code not necessarily.
The docs are generated from the code, though?
Isn't this from Sphinx?
uuuuh yeah, you're right
I guess I meant docstring vs actual code
20:33
^ closed. Thanks.
21:21
I have a code in C, and learning Python for first time. Can anyone help me to impliment a C code in Python?
Actually I am not getting how I can implement the switch-case in Python.
@taritgoswami there is no such construct. The closest we have is if/elif/else. What is your question?
No idea what that site is but the long loading time made me nervous so I closed it.
I am doing some set operation implementation. Though I know there are built in functions in Python for operation on sets.
@roganjosh or a dispatch dict
21:27
@roganjosh You can trust this site:)
That statement makes me trust it less :P
Ok, is there any other place where I can upload it?
pastebin? I decided to have another go and it just keeps loading
Same website, but interective mode
Ok, that works
Yup, beyond my C -foo to see a clean Python equivalent, sorry.
There certainly will be one, I just muddle through with vague ideas of what's going on when I read C
21:38
Ok
I'm not the downvoter on the two answers but I'm curious what would throw except BlaBlaBlaError:. Maybe the BlackSheep has no wool.
01:00 - 22:0022:00 - 00:00

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