ah, I've always used property decorators as an indicator that those students who are primarily Java programmers are starting to "get" Python - so wondered
I think my threading demo worked on the first attempt!
well, technically I had a couple of errors... 3rd attempt?
it felt like the first attempt, though. that's how you know I'm managing my expectations.
sleep result: 54127791
while result: 18861179
sleep allowed 2.86979891342 times work
done relative to while
on my linux machine
sleeping every second
that was python 2.7.6- here's 3.4.0:
sleep result: 47988771
while result: 11852428
sleep allowed 4.0488557281259165 times work
done relative to while
Python 2.7.10:
sleep result: 42420054
while result: 13833122
sleep allowed 3.06655677583 times work
done relative to while
Anyone want to try it on Windows? I'll make a gist...
Here's the gist, if people would run this on systems other than Ubuntu linux, varying Python versions, but especially RHEL and Windows, and post their results, that would be sweet: gist.github.com/aaronchall/1ecb40580e549923cdaa
Anyone around?
I wonder if I should write this up as a Q&A...
I'll wait for a windows and mac demo first, I want to ensure I have consistent results, I'm pretty sure RHEL would be the same, based on my spelunking through the sleep source.
Design question: I'm storing things like annual leave, public holidays, etc, and from that calculating how long projects will take. I'm not storing the end result at the moment, nor the data from intermediate steps that would maybe allow me to calculate other stuff (e.g. for this annual leave, these are the projects affected and by how much). Should I store more stuff, or just calculate off the source data each time?
Here's a different, more noob question: if I memoise something inside a web application, does the memoisation only stay in effect for the during of that request/response?
> For After events, the definitions of Before and After properties are straightforward: Before properties refer to settings that existed before the event occurred, and After properties refer to the settings that exist after the event has occurred. For Before events, however, Before properties refer to current item settings before the event occurs, while After properties refer to settings the item will have after the event occurs.
@poke yeah fair enough :) I'm just wondering if I can memoise certain things in the future then if the calculations share the same functions, I can do something like memoisation to cache the functions' results in the future
What kind of server do you use? E.g. Flask runs in its own process that persists between requests, so the memory stays intact (some server managers like uwsgi may start multiple application instances though).
Apache on the other hand will usually launch a new thread for each request, so you would have to use something else there. A common approach there would be memcached.
A thing I have just seen: putting "guru" in your self-description on a programming Q&A site. "Machine learning guru", no less. Not a great idea when you then start asking noob, unresearched, non-mcve questions, methinks.
[root@v00web00008l ~]# python thread_test_while_versus_sleep.py
sleep result: 57242968
while result: 27955628
sleep allowed 2.04763663331 times work
done relative to while
@AaronHall is this because the interpreter gets to not check back for a full second as opposed to evaluating pass continuously? (sorry for being too lazy to look at the disassembly, just woke up)
I expected that set(lst) would be faster since it could look at the size of the list and perform a single memory allocation for the set, as opposed to add(c) which would require log(len(lst)) allocations. But poking around in setobject.c, it looks like it doesn't actually bother, and set(lst) merely iterates through the list's elements, adding one item at a time.
So I guess the difference in efficiency falls on the Python for statement being slower than C's while loop
user559633
11:45 AM
Would would it be log(len(lst) allocations? wouldn't it either do N+1 allocations or do resizing when num elements is approaching the length of the array?
user559633
Also, sorry to jump topics slightly, but can someone point me to where list comprehensions are defined in the CPython source? I don't understand how it does the anonymous return ( e.g. [ x for x in somelist if x not == '1' ] does it create a temp var under the hood to append the results onto before returning? )
I'm assuming that sets work similarly to lists, in that when they need to become bigger, they double the size of their internal collection, so as to reduce the number of malloc calls the system has to handle. I don't know if that's actually true of sets though, just a guess.
i have been trying to mock a constructor with no luck as per stackoverflow.com/questions/31721503/…;, I got an answer that illustrates the issue I am having, i just cant get the subtlety involved.
sleep is implemented differently for each platform, from my reading of the source. Some platforms are interruptable, some aren't. But it's not equivalent to a high level Python while loop.
user559633
@AaronHall yeah, exactly. my understanding is that pass is still handled in bytecode as opposed to sleep which only hangs out on the interpreter for the boundaries (starting/ending sleep)
@Kevin TTBOMK, Python sets use the same strategy as dicts, since sets are basically dicts with keys but no values. Laurent Luce has a great article on Python dictionary implementation. I read that article a few months ago, but I must confess I don't remember the details. :)
yep - one of those numbers is 10 times the other, but for nearly all practical purposes they are both nothing. Still - yes - you can format them as you wish...
@PM2Ring Skimming through that, it looks like dicts (and consequently, sets) have a resize strategy similar to lists: when the internal table is 2/3rds full, it doubles the size of the table until it's larger than four times the number of currently occupied slots.
So I'd expect number of memory allocations to be approximately logarithmic in that case as well
In hindsight, it would be kind of hard to pre-allocate the size of a set, since you don't know how many duplicates the list contains, so if you just create an internal table of len(lst) items, you might end up with a table that's far too large.
@VigneshKalai You don't need to be good at C. You just need to know that the Python interpreter is a virtual machine that runs much slower than your machine's real CPU. So a for loop written in Python's going to be much slower than a for loop running in native machine code.
Executive summary: set(lst) and for item in lst: my_set.add(item) do the same thing, but the first one does it in C and the second one does it in Python. The number of memory allocations is the same, but the first way is faster, just because it's C.
@poke I see. :p FWIW, I did study French in high school, but that was several decades ago, and I don't remember "imprévisible". And I didn't bother Googling, or checking if the OP's location was in their profile. So your cheeky revision comment is entirely justified. :)
import timeit
f = open('test.txt', 'w')
for i in range(1,10):
f.write(str(i))
f.close()
def d():
rf = open('test.txt', 'r')
a=set(rf.readlines())
def e():
rf = open('test.txt', 'r')
a = set()
for l in rf:
a.add(l)
print timeit.timeit(d,number=1000)
print timeit.timeit(e,number=1000)
I am so p*ssed off with this windows laptop at work I might throw it out of the window rock star style. Something out of the 40 (yes 40) automated updates this month has bust the wireless authentication in some subtle way. Why, oh, why, oh why? hereendeththerant
So it looks like there's a 50-50 chance that my Python+aurelia approach will be selected to replace a colleague's Java code. "hey what if I this is neat" ideas feel less comfortable when the threat of production-level responsibilities looms.
Weird. I can't reproduce the OP's bug with .decode('windows-1251'). My code's not identical to theirs, since I'm using Python 2's urllib2 Request, not Python 3's urllib request.Request. But both the .read() methods return byte streams (allegedly). stackoverflow.com/q/31723929/4014959
@PM2Ring I think what's going on there is that the OP knows the webpage is in windows-1251 from reading the source, but didn't know that could be passed to decode
They don't actually say they hit an exception using .decode('windows-1251'), just that the webpage has that encoding.
@PM2Ring: dunno. Since it's an encode which is throwing the error, if we believe his error message when he tried to decode with 1251, it's probably the print which is throwing, no?
So my working theory is that the original decode failed because it wasn't the right encoding; when the OP used the right decoding, the print failed because the terminal encoding doesn't support it.
@DSM Ok. I'll ask the OP what encoding their terminal is using. And I probably should ask what OS they're doing this on. And hopefully we'll get an answer. :)
@AaronHall I thought your while vs sleep test was just a theoretical exercise. Are you telling us that your colleagues would seriously defend the use of a while busy loop over a sleep call?
I created the trap myself. There was a call to sleep in the suggested while loop. :( I don't know how I missed it. :D Well I do know, I saw the comment in a mangled email and didn't look directly at the review request.
I like a car with more than a half inch of ground clearance, so I don't scrape my undercarriage on the slightest imperfections on the road, or get wedged on the bottom of a slope.