I don't have performance issues at the moment thank goodness, and I do turn off my laptop regularly so no reason for me to look into that it appears. Interesting nonetheless
I'm curious whether anyone has an anecdote for why Stack Exchange and Stack Overflow are moving to CC BY-SA 4.0 is such a contested issue? I'm trying to plough through all the answers and comments but in my mind I'm just thinking "I just gave my answers for free"
I mean, I guess SO could flip their terms radically and start charging royalties for anyone using code they found on SO but outside of that dream world where such a thing would be possible to implement, I don't see any way it would impact contributions. Maybe that's why I'm not a Lawyer, though.
Perhaps your approach when answering is different, but mine starts at the lowest possible denomination. "I'll never get anything for this, I'm just bored and someone needs help" or along those lines. I suspect there is a case where this all terribly backfires and I'll say "Aha, I was blind to this issue"
Kinda disappointed I couldn't come up with a better riddle based on python's import mechanics, but here goes:
# You have a package with this __init__.py file.
# Unfortunately there is no "foo" submodule in this package,
# so the following import fails. How can you prevent
# an exception from being thrown without modifying the
# import or `sys.modules`?
from . import foo
Orphaned timestamps will always default to that date and it is perfectly rational for any kind of work you'd need to do if the date isn't already in the string
trying to make a regex to get date out of a string: example sometext_20190927.somethin.anything HOw can i extract on YYYYMMDD which is 20190927 in above case
It's been a long time since I've had a clean run of downvotes on a question and answers. Now one of the comments is that the OP had indentation issues on a question with a single line of code <head explodes>
Although I don't remember if <head explodes> is a self-closing tag. Since my embarrassment over </shrug> I'd better go with <head explodes/>
Hmm, am I correct in thinking that python has special-cased behavior for attribute access on classes? Like, if you do x.y on a non-class x, python checks the namespaces of x and every class in x's MRO. But if x is a class, it also checks all parent classes
Or is that just magic in type.__getattribute__ or something
Well, I guess it doesn't matter, since type is strongly coupled to the interpreter anyways
Attempts to trick CPython have failed miserably
class A:
x = 3
class M(type):
__bases__ = (A,)
class B(metaclass=M):
pass
print(type.__getattribute__(B, 'x'))
# AttributeError :(
Since the last import-based puzzle was so popular (*cough*), here's another one
# Create a module named "solution" that can be imported
# with `import solution` but not with `from solution import *`.
import solution
try:
from solution import *
except:
print('You win!')
Surprisingly enough, my question about the thread-safety of root.after is still unanswered, and there are indications of the answer being "it's unsafe"
@Aran-Fey It's interesting that Bryan has commented a few times but didn't offer up an answer. That's pretty strong confirmation that it's not a simple question.
i think it might work, i will need to convert my "string stream" to tuple though, since it gave me this error : TypeError: can only concatenate tuple (not "str") to tuple
@Aran-Fey Yesterday I said that after() was probably safe if all it did was append a function object to some internal to_run_later queue. But now that I look at the implementation, I'm pretty sure it's doing more than that. The self.tk.call is especially concerning, since AFAIK that's how the underlying tcl layer gets invoked
May as well be a signpost reading "Thread-Unsafe Land this way"
@kevin ok after some research, every string character takes about 22bytes, so you think if i do let's say len(output) and do that *22 and wait to accumulate all the data and then decode, it will work?
@Rozakos 22 bytes per character sounds a little too high to me. How did you get that number? sys.getsizeof? That includes header information that you won't be transmitting, so it's not a very useful measurement here.
@Skyler AFAIK you can't select non-grouped columns in a group-by query unless you wrap them in SUM or COUNT or AVERAGE or some other aggregate function
I don't suppose you have a sql statement that constructs the table and inserts that data into it? Otherwise I'm going to spend the next twenty minutes writing one myself before I can actually start on the problem
stackoverflow.com/questions/7745609/… looks relevant but I think all the approaches in the top answer require a primary key, which this table doesn't have
I would deliver a lecture here about asking SQL questions in a non-SQL room, if I hadn't spent all of yesterday asking questions about HTML/CSS in here. I'll just politely assume that you're performing all of these queries from Python using sqlite3
Considering how database operations tend to be the most performance-critical part of an application, I'm surprised that vendors are content to force their users to have a double select. Maybe there's some magic going on under the hood that makes it as efficient as the single-select approach that we wish existed.
Perhaps joining a table to itself on its primary key is really fast if you've got any kind of indexing
It's my running assumption that they do get optimised away
I was horrified recently just how slow INSERTS are into Postgres, though. I was trying to migrate from a poxy SQLite db and just had to cut the process after ~10 mins, then just upload a CSV
@Aran-Fey It does seem to be the case that class objects do attribute access differently compared to instance objects. If you look at the standard type hierarchy, the entries for "custom classes" and "class instances" both describe their attribute lookup strategy, and they aren't identical. In particular, only type objects search their MRO.
Ultimately a class instance attribute access will search its MRO too, but not directly -- it will ask its type to do the search
Current confidence that my assessment is correct: 75%
I'm inclined to say that attribute lookup is not special-cased for classes, in the sense that the bytecode interpreter does not go out of its way to see if the target of LOAD_ATTR is a type or not. It just calls PyObject_GetAttr without looking
You have an mxn array A(i,j), an nxp array B(j,k) and a pxm array B(k,i), and you want to form an m x n x k array D with elements D(i,j,k) = A(i,j)*B(j,k)*C(k,i). What's the fastest and least intermediate space consuming way of doing that? In other words not just creating m x n x k arrays from each of A, B, C with ones in the appropriate axis and then doing element-wise multiplication.
and "creating m x n x k arrays from each of A, B, C with ones in the appropriate axis and then doing element-wise multiplication" is not space-consuming if you use broadcasting
@Anush try doing it with CT = C.T.copy() before the timing bits, it might make the second one faster
which would mean that if you can create C with the transposed definition to begin with, that one could be faster (but I'd still stick with einsum even if this is the case)
(and of course using CT[:,None,:] as the last factor)
@Kevin Special methods like __getattribute__ are only executed when you're operating directly on an instance of the class where the method is defined; B.x goes through your __getattribute__ but B().x does not - it just goes through the __dict__s of all classes in B's MRO
I was under the impression that "goes through the dicts of all classes in the MRO" is done by __getattribute__ itself. And in fact this may be the case, but because of docs.python.org/3/reference/datamodel.html#special-lookup it's using type.__getattribute__ instead of Meta.__getattribute__.
"implicit special method lookup generally also bypasses the __getattribute__() method even of the object’s metaclass"
@Anush It needs some getting used to. The key thing is that None in an indexing expression injects a singleton dimension, so A[..., None] is A[:,:,None] which has size (m,n,1), B has size (n,p) which is broadcast compatible with (1,n,p) and the last term is reshaped to shape (m,1,p), so the three can then broadcast together to shape (m,n,p)
I think object.__getattribute__ and type.__getattribute__ are comprehensible to us mortals, but I think knowing when exactly they get called is pretty murky
...which leads us to How do I check if all elements in a list are the same?, whose accepted answer is too clever and causes lots of hashing: len(set(mylist)) == 1 instead of simply all(x == mylist[0] for x in mylist) . I upvoted the latter answer. But still don't want to use it as a dupe target.
@AndrasDeak No it's not, do you think hashing long (possibly unique) strings isn't wasting CPU time? esp. when it's avoidable. This ain't just hashing integers and one-letter character strings.
Huh, somehow hashing 999 character long strings is faster than hashing ints on my machine
In [4]: itr = ['x'*999] * 99999
In [5]: %timeit all(x == itr[0] for x in itr)
9.18 ms ± 15.3 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
In [6]: %timeit len(set(itr)) == 1
814 µs ± 3.86 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
In [7]: itr = [0] * 99999
In [8]: %timeit all(x == itr[0] for x in itr)
9.11 ms ± 53.3 µs per loop (mean ± std. dev. of 7 runs, 100 loops each)
In [9]: %timeit len(set(itr)) == 1
1.01 ms ± 4.36 µs per loop (mean ± std. dev. of 7 runs, 1000 loops each)
Shouldnt the lzma module be installed when i install python3.6 on ubuntu (16.04)? Its missing for some reason, and no other installed python versions (default v2 and v3.5) have it either..
will@x45j7:~$ python3
Python 3.6.8 (default, Aug 20 2019, 17:12:48)
[GCC 8.3.0] on linux
Type "help", "copyright", "credits" or "license" for more information.
>>> import lzma
>>>
Poll: If you see `super(__class__, __class__)` in someone's code, do you think they 1) have no idea what they're doing 2) know exactly what they're doing ?
Well, thinking about it, super() has no way of knowing whether it's in a staticmethod or not. The only time it can be sure is if the function doesn't take any arguments at all.
Which means I clearly don't fall into category #2 of this poll
If I'm reading the source right, hash is O(size of object) for both strings and integers, so I'm surprised to hear that big strings hash faster than tiny ints for you.
Maybe the set constructor is doing some fancy optimization that leads to fewer hash calls for the string case.
@Aran-Fey Because it isn't: source-code of Objects/unicodeobject.c. Hashing long strings is O(N). Hence, hashing long unique strings is wasteful, especially so when it's avoidable. Your benchmark didn't prove anything, other than that you cached one hash result on one string and used it 99999 times.
@Aran-Fey Certainly I think you won't be able to come to a conclusion like "approach X is better than approach Y in all situations". But perhaps you can determine which one should be used on a case-by-case basis
@Aran-Fey I stated above I was talking about hashing long (possibly unique) strings, so if code might need to handle those, then len(set(mylist)) == 1 trick is inferior to simply all(x == mylist[0] for x in mylist) . That's what I already said.
e.g. "I've got a list that usually contains 10,000 referentially identical strings, but 0.1% of the time one of the values is a different string": use the set approach. "I have a list that usually contains unique integers, but 0.1% of the time they're all identical": use the all() approach.
I'm making a point about scaleability: testing a toy algorithm on bullshit data then posting it as the universal algorithm to do X in all cases is bad - yet there it is as the top answer in How do I check if all elements in a list are the same?. I'm the person who's pointing out this breaks on long strings. I didn't "assume" a list of long strings.
@AndrasDeak It's not a "short, clear question". It's a short, misleading question It has a misleadingly over-general title. But the example only shows single-character data, which is a terrible testcase, ignore scaleability, and what with caching and interning, will give falsely optimistic benchmarks. Most Python users on SO seem to be unaware hashing is O(N), so unless the strings are short and all the data fits in memory, bad for scaleability.
... Should I just leave a comment saying so? or edit the title? or add an answer showing it breaks? My motivation was to improve it to use it as a dupe target.
@PaulMcG Thanks for backing me up Paul. So, what should we do? There's a wider picture that users (including me) aren't sure that hashing is O(N), hence hashing a list of M long strings is in general non-scaleable O(MN) (unless you assume tons of duplication, and caching).
I have a hard enough time doing that myself :P Good luck to them!
If I posted on the understanding that my contribution will be limited to a particular library, I'd be furious. But like I said later on, I post with the lowest expectation. I don't think SO could make commercial value out of disparate bits of content
Identifying the page element corresponding to a question - 2/10 Determining how much rep the author has - 3/10 Removing the element - 2/10 Monitoring the page every 1000 ms to see if the "x new questions" button has appeared or changed numbers - 4/10 Monitoring the page using the DOM mutation event framework instead, which is more responsive - 6/10 Determining the rep of the author of a question that would appear if you clicked the "x new questions" button - ???/10 Altering the HTML of the "x new questions" button to decrement its number or remove it entirely - 6/10
???/10 can be anywhere between 3 (question's HTML is present in DOM and merely hidden) to 10 (question's data exists nowhere on the page, and is retrievable only via an obfuscated API request with dynamic credentials specific to each user session)
filtering out questions from all 1 rep users will, rarely, cause one to miss brilliant questions from users who are asking their first question
But really, the odds that a skilled user who will quickly attain high rep and add to the site starts off by asking rather than answering are pretty small, probably has not happened
@user76284 Use one of the np.ndarray methods, rather than doing a (Python) assign on a range of cells. For example, look into methods like np.put. It helps if you tell us more about the array you're trying to create: what structure does it have? triangular? sparse? semi-sparse? How large is it?
@user76284: don't say "array slice" if you mean "tensor slice", least of all in connection with "vectorize" or else you'll just get generic advice about (2D) numpy arrays. stackoverflow.com/questions/58140866/… . Anyway, please see the PyTorch doc on tensor slice assignment.
@wim Sounds nice. Could you please post a screenshot or snippet so we can see what it looks like?
@Aran-Fey 'horribly slow' is a subjective term. On arbitrary data we'd have to compute the hash on at least the first two items, hence O(N) - even though we don't need to; hasing is an overkill over a simple string compare, for long strings. Remember, unlike string comparison, hashing won't do early termination at the first character mismatch. The point stands very much. len(set(mylist)) == 1 is too clever for its own good, it's for toy data. Use string compare. That's all.
I think a more realistic problem is using the all solution on a bunch of nested objects whose __eq__ implementation is horribly slow and __hash__ implementation doesn't exist/is significantly faster
@Kevin Uhuh. On a very-non-priority basis, I will do the perfplot curves (on 2.7, 3.6, 3.7, 3.4) for hashing runtime for random string and/or unicode data, with length N as the x-axis. Should be fun for a rainy day.
@Aran-Fey That's a good point too, although in data science comparing long strings is going to be far far more common than arbitrary nested Python objects; but we agree there is no universal best solution for performance, so that target needs to be improved. What sort of cases can you imagine where __eq__ would be horribly slow? How deep would the nesting need to be?