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2:18 AM
4 hours later…
6:13 AM
A thread can be terminated while it is time.sleeping() right?
6:49 AM
I ask because I have this weird situation, I have following lines of code. and foo is a multiporcessing.Process(), but the output is process terminated. Alive True
self.log.info(f"Old process terminated. Alive: {foo.is_alive()}")
The weird thing is I can't reproduce it. I have following small test script. And the thread exits immediately, whereas on my dev system the process happily finished sleeping and then does what it was supposed to do
import multiprocessing
import time

def foo():
        counter = 0
        while True:
            counter += 1
    except Exception as e:

x = multiprocessing.Process(target=foo, daemon=True)

print(x is not None and x.is_alive())
print(x is not None and x.is_alive())

for i in range(5):
    print(f"Main: {i}")
I hope this is not again a case where the exact python version matters
maybe I am not getting something, but these are process right? not threads?
yes, why?
because youve been using the term thread in your messages above
"And the thread exits immediately," that was why I asked that, afaik a thread cant be abruptly terminated
7:05 AM
ah sorry my bad.
so, its processes in original problem or threads?
otherwise you can't terminate them :P
Also I wonder how long a wait is necessary for alive to be updated. The docs show following example. >>> p.terminate()
>>> time.sleep(0.1)
>>> print(p, p.is_alive()) but I can't wait that long. 0.01 worked on my system. But I wonder if there is more info about how long one has to wait. But that is a totally seperate issue. Right now I can't get the process to even terminate
hm, i suppose trying to get a small example that shows the behaviour will be the first main step. have you run this small script on the same machine and environment where the other script acts up?
Yeah, I'm trying to come up with an mvce. But everything I can think of is in the example above. I didn't run it on the target, but it's the same os and python version, so I should be good. But let me check just for sanity
yeah, just to eliminate that as a variable for sanity's sake
7:17 AM
Ok same result as on my pc. It must be something else. I'm afraid it has something todo with classes. Let me expand the mvce a bit
oh or maybe it's because the process is being started from a class method with the @identify_thread method. let's see
ok getting closer. It's the signal handler I defined for the main program. It swallows the terminate signal for the child process. Let's see how to make it not do that
ok, just calling kill fixes the issue :)
7:33 AM
@AndrasDeak Just give me a leg-up on which of my typing ramblings this relates to, please.
I've spent the last week fully mypy-typing one of my libraries, and even the stern Rulezzz Lawyer in me has the urge to introduce 'em to my friend stabbing stabbedy stab the knife.
me in alternate dimension: what are you talking about, typing is perfectly fine, it's a joy to use.
my code: `all_ze_vars: Any`
Oh yes, I'm looking forward to have to add useful information everywhere, like : any :D
@MisterMiyagi violence is not the answer. Well, unless the question is "What did Mahatma Gandhi oppose?"
I am begning to see more typed code lately, it is catching up
7:49 AM
@AndrasDeak "What a shame if something were to happen to this walrus operator..."
There are always exceptions...
Walrus operator could climb up a ledge and plummet onto the rocks below
On second thought, that would be quite a mess to clean up. Can't we release the poor fellas back into the wild?
Feed them type annotations or something...
8:09 AM
hi there, I found a confusing phenomenon. that I import a big object in memory and then delete it, but the usage of the memory doesn't release all that increased by importing. is it normal?
yes, depending on where you're looking at memory usage, python tends to "reserve" some memory beforehand for it's operations, which can be used or freed on demand but will appear "used" from outside
does that means if sometime my progress reach the peak usage of the memory. but most of the other time, the usage of the memory is much lower than that peak value, it will always show that the python program has used the peak value of memory?
8:24 AM
@baozilaji Yes. "Memory" is usually the maximum resident set size used by your program so far.
@Pherdindy come back when you have asked the service that you are scraping, needing a proxy service and fingerprinting avoidance
@MisterMiyagi ok, thanks a lot.
Right i'll take a look at how I can make things a win-win for all gonna look around
You don't have to make it a win-win.
9:06 AM
The ethics is tough checking it has lots of grey areas but upon looking at plenty of cases and opinions of others with respect to amazon the use case should be fine.
Just ask the service owners. No one else can say whether it's fine.
Been looking at cases like the popular HiQ and LinkedIn where they are competing companies, in my case I am getting publicly available information. I just don't know any policies and a company moving at such pace will definitely have a lot of mess and miscommunication
@Pherdindy We already told you multiple times. It's crystal clear.
> Dear [Server Owner],

I've been scraping your website using [Proxy Service]. They told me this is perfectly fine and legal. This is just to double-check that this is indeed the case. May I keep scraping your server?
Best regards,


PS. may I also get around your fingerprinting? Thanks.
there, I even wrote the email for you
The ethics is clear as day. If they explicitly forbid you from scraping, it's unethical (and illegal). If they don't explicitly forbid you from scraping but proactively hinder your scraping (for which you'd need a proxy service and learn about fingerprinting), it's unethical. No grey area whatsoever.
End of debate.
Is there a proper dupe for "why can I use a generator only once"? My Friend Google found many hits but they were all rather meh.
you posted some other target to stackoverflow.com/questions/67367223/… :P
might as well go on a closing spree, sensei
I admire the nerves and patience you all have
Actually I found that second one and was pretty unhappy with the proposed dupes.
yeah, I just clicked through
10:15 AM
There are lots of questions that are about some specific iterator like map or reversed, and the answers are either very specific to that or basically "because that's THE ITERATOR LAW!".
well it is...
in the canon we only have file descriptors sopython.com/canon/100/…
Right. I feel like having separate explanations per iterator kind – files, generators, container iterators – would make some sense.
Hm. I might just dump another answer onto one of the dupe candidates.
FWIW, I was dupe-hunting for this question. The current dupe seems like another case of "it answers the question if you already know the answer".
11:19 AM
I have a function do_until_not_fail(do_stuff, times=3, wait_time=3) but the arguments to times and wait time are completely random chosen between 1-10 for both values. It feels kinda wonky and I wonder what the right way to do this would be.
I don't think there's a "correct" way to do it.
If that's a general utility that just gets a function, there's no way to choose sane defaults for it, because the meaningful defaults would depend on the function passed.
the two universal defaults I can think of are times=1 and times=inf, the latter being a much saner choice
Arguably if the user calls do_until_not_fail with no times argument then they should not be surprised at a potential infinite loop
The defaults are 1 and 1 currently. But I mean more like I chose random values when calling the function. It's often http request, I guess I could improve it by just having a max wait time and let the request library somehow figure itself out what the best way is to split max_time into multiple requests
Hi there guys. @AndrasDeak you beast I'm just seeing what you did yesterday!
that's quite a recent name change
I saw you float into the room as Pedro
11:28 AM
yeah I finally took the time to remove facebook association and create email+pwd login :P
"do until not fail" gives me similar vibes to a checkbox labeled "deactive this feature". Such unnecessary negation
lupus's been by nickname online since 1997 :D
dude this pythran thing seems to be awesome
simple + funny website
I like it despite the funny
@lupus you should consider adding your avatar to your profile manually, then
hahahahah :P
I'll try it out
facebook spies on users so decent browsers block facebook-hosted avatars
11:32 AM
just after creating normal login I had an error while trying to change pwd, so I'm waiting a while before making any changes but thanks for the tip!
I thought it was strange the avatar was still on.
what browser you use ?
ah ok.
Mine doesn't block that O.o
But I also have NoScript that explicitly blocks everything facebook
@Aran-Fey I thought it was the enhanced tracking protection, but then maybe not
somewhat related discussion: meta.stackoverflow.com/questions/384864/…
dude, I was the owner of a small magento ecommerce a few years ago. Google and facebook own the internet by this point :(
11:35 AM
@Aran-Fey well I did not name it, I just use it.
11:48 AM
dude @AndrasDeak this is some serious matrix magic going on here, I didn't even know that kinda stuff was possible! this is fully vectorized, right? First I'll implement it to test it out, but next I'll go on to understand everything u did there :P
I really appreciate it man!
12:20 PM
@lupus yes, but the unaccelerated vectorized version is slower than the loopy one with lists
It might also be worth pythranizing the loopy one, as that is sometimes faster
I don't understand what you mean exactly by 'unaccelerated vectorized'.
hey guys I am reading through some really old python code does <> signify != if yes which is better to use
I have just finished testing here. My first version took avg 475s for this test. Cython version 422s and this new one 380s
@Kwsswart this is old python indeed, removed on python 3.
it does signify !=
Thank you so can replace all occurances of <> with != without problem
if you are running python 3 yes
12:26 PM
excellent thank you
go into terminal and type python --version
@Kwsswart <> is a syntax error now
@lupus vectorized is what the new function is like. No loops, just numpy arrays. Acceleration is feeding that function through pythran or numba or ...
I noticed that I have basically been handed a old python program and been told to make it work and turn it into a library for my company to use xD going to be very fun ^^
@Kwsswart ugh
start with the 2to3 tool perhaps
Thats what I am thinking try to convert everything to what I know and read it until I understand whatg was the intention and then go from there ... There is a tool to help convert 2 to 3?
12:30 PM
after properly understanding these techniques you applied, I think I'll be able to do a better data structure for the task and make this function simpler. you think I should try the fully unvectorized function too? because that's an entirely different rabbit hole for me
absolutely. if there's a lot of number crunching involved, specifically number crunching of the same "kind" on multiple data points, vectorization is the way to go. (edit: i just realised you wrote unvectorized. oops)
(regarding the exact form and methods applied in the loop)
@Kwsswart yes, called 2to3 docs.python.org/3/library/2to3.html
It can only do so much, but that's still something
thank you will definitely look at it
I see @ParitoshSingh! I got curious at the first place because I realized math.log and math.prod were faster than their numpy equivalents in my tests, so I tried a lot of stuff (before andras provided a better function)
12:34 PM
numpy will tend to be slow if you have few data points.
vectorization truly shines when you have a lot of numbers to crunch through. that's really where you see gains. so small tests with tiny arrays wont really show you the difference.
@lupus it might end up faster, as I said. But there are always micro-optimizations to be made. In general, vectorization lets you make the most of numpy. But your current use case of small function with millions of calls means that answers start getting blurry. Try what you can and see what sticks.
You could for instance try pulling the last dimension of the 3d array first, because arr[..., 0] is not contiguous in memory by default, but arr[0, ...] is.
Or swapping the n and m dimensions throughout. These are the potential micro-optimizations I mentioned.
oh i never really thought of that before. that's going to melt my brain, thanks AD.
12:54 PM
I see Andras! This implementation got even higher speed for my previously 25min (no acceleration) > 22min Cython> 15min now
there's a few dimensions I can tweak here to go further!
and I suppose one of them is trying cython and pypy too with the same function, right?
stackoverflow.com/questions/4160770/… In all seriousness import x as _ and then using _(input) just feels very weird, but I guess this is how django does translations
@lupus I have no experience with those, but sure
I see :)
oh sorry this last test was taking 1h40 with no accel
12:57 PM
@Hakaishin It's – sadly – a standard idiom for i18n. Even the python docs use it.
u work with amazon lambda @AndrasDeak?
my partner (who developed the mathematical function itself) is telling people we're gonna need a supercomputer to run this lmao
Any reason for that choice? Is it more efficient or something? Like why not just name it something sensible like translate() or localize()
@Hakaishin "Why didn't they do <sensible thing> for the web?"
No idea, but it's weird
@Hakaishin because implicit is better than explicit..... right?
12:59 PM
@lupus no. And could you please spell out words? It makes text easier to read.
while I have your attention :D Does the line from django.utils.translation import ugettext_lazy as _ do something if _ is never used? Just by being imported? Pycharm tells me _ is not used, but I'm afraid of deleting it because we don't have unit tests. but I want to get rid of the warning
Imports can have side-effects so this needs a django answer
source code looks innocent enough to me. though i must admit i don't even see the ugettext here
If the module has no ugettext function, and yet that name is still importable, then it can't be totally innocent
aye, or i assume it has gotten a name change in a recent version. i didn't investigate further. (there are other ones with similar names such as gettext_lazy there)
1:13 PM
github.com/django/django/blob/main/django/utils/translation/… looks like it's doing something interesting with __getattr__ and importing itself... As the comment says, here be dragons
@AndrasDeak what you mean? the "u" expression I employed?
@lupus yes
And the "me2" earlier
@Kevin thanks for the info, I think I will let dragons sleep and leave that line there
@ParitoshSingh Oh, you're right, removed in January github.com/django/django/commit/…
Detective Kevin solves another one! :)
1:22 PM
> Draco dormiens nunquam titillandus.
haha best change protection, just put a comment with there be dragons here and nobody will look further :D
Hmm, is there a way to view the complete file as it existed prior to this change? I don't see an obvious link on that diff page
@Kevin blames are there...somewhere
I love abbreviations on a chat context. But they gotta be unambiguous.
1:26 PM
@Kevin you can click the 3 dots next to it. click view file. then click history. then click the version one before this one.
i dont know if there's a way to do it with fewer steps
Ok, both of those get me to what I wanted. Thanks
@ParitoshSingh clock icon to the right of the current commit at the top
I poked the dragons with a stick, and produced some initial findings. The Trans class exists so that this module can be imported before Django's settings.USE_I18N attribute is properly loaded. It essentially provides an extra layer of indirection so that the settings object is inspected only when uggettext (et al) is called, not when it is defined or imported.
But this is curious, because my first reaction to from django.utils.translation import ugettext_lazy as _ was "importing something without using it could be done in order to force a lazy-loading object to actually load earlier than usual". But merely importing uggettext won't cause anything to actually load. So it really does seem like the import doesn't do anything.
Kevin if you are in the mood for shenanigans :P I create a process using multiprocessing.Process() now later I call .kill() on it, because my signal handler which I need already swallows sigterm so I can't use terminate. Now unfortunately I also am stuck on 3.6.6 and kill was added in 3.7 :( any idea how to easily backport .kill()? I guess I could find the pid and use os.system("kill -9 pid"), but I was hoping for something more elegant
1:42 PM
Sorry Hakaishin, I can't help, because I'm too busy helping Hakaishin
@Kevin I think you are gonna need a lot of evidence to convince me to delete that line. Yes I hate warnings, but I also hate being virtually yelled at for breaking things. So the dragons kinda scared me and I decided to leave the line. At least until we have more tests aka never
@Hakaishin There isn't really an alternative. You can do it properly and use os.kill, but that's it.
@Hakaishin Valid
# foo.kill()
thanks, kill is already better than os.system("kill") :D it's not as ugly as I thought
If I had to backport kill(), the first thing I'd try is, look up the implementation on cpython's github and see if I can literally copy-paste it into my code
Actually finding the implementation of kill in the repo may be a pain in the butt since the generic name makes it hard to search for, and being related to OS-specific behavior means it's probably defined multiple times within a rat's nest of #ifdefs spread across ten source files
1:49 PM
I'd assume it's Python code, actually.
Yeah, I'm being pessimistic
I think you can just monkeypatch this one.
Right, I was just looking at that. If the_process._popen exists in 3.6.6, then this is a promising approach
It does.
All this just to avoid shelling out to kill? You guys are crazy
1:55 PM
I just work here
I just crazy here
Well I'm with Aran here, I just used os.kill :D
Also this has been the easiest warning to fix ever :D I wish every warning was this easy to fix: flake8rules.com/rules/W605.html
2:27 PM
Were there any changes in Python 3.9 that affected floating-point rounding? I took a stab at this question, but I don't have a real answer.
Does it occur without using pandas?
Looking at the patch notes, this seems to be the most promising one: PEP 617, CPython now uses a new parser based on PEG;
That should only affect reading source code, not how objects behave.
how does floating point rounding result in 2 new elements? genuine question, rolling window takes more "windows" based on that?
that's the kicker, isn't it?
I can't read pandas well enough to be able to tell what that chain of methods is doing at the point of mean()
2:36 PM
@python_user the OP's code* is doing a lot of things. it's the consequence of unique that you're looking at, not the mean
you could say that this mcve isn't as good as it could be
well, no, it's mean()
if mean() gave the same results then unique would provide one of each
I assumed mean would give some float like values
unique should by no rights consider "close" values as the same
@python_user ah, I see
the 2 values arent being produced. they're being "swallowed/hidden" due to the unique
the result of the calculation is different, yes, but the 2 new values arent being produced there
I am just going to stay in the sidelines and see how this rolls out
2:38 PM
@ParitoshSingh I don't see what you mean
@AndrasDeak im trying to answer "how does floating point rounding result in 2 new elements? genuine question, rolling window takes more "windows" based on that?"
now that i re-read it, i realise there's a lot of wires that can potentially be crossed in this convo.
it's possibly something like (2021 * 2) / 2 !=2021 for some reason
which would be weird, because you know, powers of two
but I don't see the numbers that go into mean, because of the pandas thing
i think im going to investigate this
2:40 PM
honestly I'm just too lazy to install pandas in my main env to paste part of the code
I can replicate both results, minus representation rounding, by using float32 and float64 dtypes respectively.
It's probably worth checking the numpy version as well.
and the blas version...?
Right, that as well. I think I'll be in the secret Miyagi cave, doing crazy typing stuff instead.
i cannot repro
i dont think its python version itself per se
I just installed the most recent versions of Pandas and NumPy for 3.8 and 3.9, and now they're giving the same result, so it's not a Python version issue.
Just deleted my answer
2:54 PM
My guess is that one of Pandas or Numpy changed its default dtype from 32 to 64 bit.
Personally, I blame astroparticle physics and their data destroying death rays from space.
@MisterMiyagi no way
well, no way for numpy
we're still stuck with "default int on windows is 32-bit"
Anyone willing to step up and defend the honour of Pandas?
ofcourse not, im not that foolish
3:12 PM
No obvious changes to float math in pandas.pydata.org/docs/whatsnew/v0.25.2.html or 0.25.3
i think 0.25.1 pandas causes the behaviour, either directly or indirectly
that's as far as ive gotten
Then check issues with that version
oh, github lets you see issues with a specific version? i suppose this is uncharted territory for me, i don't know how to do that
You can view the 0.25.x branch from the "branches" menu, but I don't know if you can see issues specific to 0.25.x from there
Clicking the issues link just takes you to the main issues page
No. Just add it to the search keys...
3:21 PM
Nice, I wondered whether search could filter like that.
It's "not as bad as SO search"
low bar over there
It will still only find mentions. Issues are not tagged with versions normally.
this is super useful to know, thanks
3:50 PM
i couldn't find the exact issue but at least i've found something the OP can use, so i shall leave it at that for now. strangely enough, this seems to be specific to using ..rolling..mean and as far as i can tell, mean by itself is otherwise fine
That sounds reasonable
It reminded me of github.com/numpy/numpy/issues/11216 which is different, but similar vibes
And the rolling distinguishes equal terms due to floats, hence my chat.stackoverflow.com/transcript/message/52744301#52744301 musing
And why I wanted to see the input of mean()
4:32 PM
@ParitoshSingh "I made a few python environments and was able to reproduce this behaviour using two python 3.7 environments" as-in, "cloned" envs on the same system?
If that's the case that the method is just unstable... that's quite terrifying (even if the version is now obsolete)
Ah, nm, I realise that you mention the version you're using at the top of the printouts. Sorry
4:58 PM
yeah two different environments with different pandas versions, let me rephrase it
4 hours later…
8:35 PM
Wow this room is dead sometimes
The defib is next to the emergency exit
Defrib*. Not sure why my phone had an opinion on the spelling there
My phone was right :/ I shouldn't ask questions
it's short for defibrillator, de+fibrillator, stopping things like ventricular fibrillation
8:53 PM
I know what it means, but my spelling is known to be bad. I managed to get myself tangled badly there
Jun 18 '20 at 19:33, by roganjosh
@MisterMiyagi it helps that I got a re-run and could spell it correctly (after twice using "gravitars") :P Fun fact: I was part of a government experiment on teaching kids to read and I can't spell for poop. It'd be nice if I'd come out of it with superpowers but all I get are red squiggly lines under everything I write.
I could see def + rib being a thing. Chest, ribs, something like that :D
@roganjosh because you can't read so you can't find the spellcheck option in the menu, right? :P
Defib isn't really a word, and I don't always get corrections on my phone that make sense
I don't make assumptions when it comes to English...
If I trusted everything my phone suggested... that'd be a fun conversation!
@roganjosh Why do red... squiggly lines appear... everytime... you are near!
8:59 PM
<3 now someone gets me

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