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00:19
@roganjosh I got my first post up about the situation, btw. zahlman.github.io/politics/the-psf/2024/07/31/…
00:51
Cabbage. Is there any way to substantially speed up the execution of the code below? It is very slow.
import functools
print = functools.partial(print, flush=True)

df['DATETIME'] = pd.to_datetime(df['DATETIME'])
df['year'] = df['DATETIME'].dt.year
df['month'] = df['DATETIME'].dt.month
df['day'] = df['DATETIME'].dt.day
df['hour'] = df['DATETIME'].dt.hour
df['minute'] = df['DATETIME'].dt.minute

values_array = np.empty_like(list_windows, dtype=float)

for i in range(windows.shape[0]):
    for j in range(windows.shape[1]):
        timestamp = windows[i, j]
        year = timestamp.year
        month = timestamp.month
windows is a NumPy array with (5843, 576) shape.
01:09
@Aran-Fey A while back I looked into whether Python had anything approaching a standard units package, the short answer is no, but I found pint to be the best of the lot (customizable numeric type, NumPy and pandas integration, handles uncertainties). Any of you use it? Or else which package?
(For my purposes, I wanted to also be able to extend it to whatever custom methods I wanted to define, e.g. calculating package volume(=depth x width x height), lookup shipping cost from a table of different volumes/ weights/ max dimensions/ classes of shipping, and returning a table of (cost + delivery time) options to the user), etc etc.
@Marco df is probably not your issue, but how big is df? When you import df, if using pd.read_csv you can directly read as datetimes, also you can use cache_dates. So never store the datetime as big series of string/object in the first place.
pint comes to mind for me, too.
hmmm

df:
[8415360 rows x 2 columns]
DATETIME object
SYM-H object
dtype: object
DATETIME FOO
0 2005-01-01 00:00 -2.0
1 2005-01-01 00:01 -2.0
2 2005-01-01 00:02 -3.0
3 2005-01-01 00:03 -3.0
4 2005-01-01 00:04 -3.0
... ... ...
8415355 2020-12-31 23:55 3.0
8415356 2020-12-31 23:56 3.0
8415357 2020-12-31 23:57 3.0
8415358 2020-12-31 23:58 3.0
8415359 2020-12-31 23:59 3.0
I'm guessing for i in range(windows.shape[0]): for j in range(windows.shape[1]): ... is your whale. Never iterate over a df with a for-loop, worse still nested for-loops. Use apply instead. for j in range(windows.shape[1]): lots of datetime extraction stuff looks like disguised application of your custom date-parsing logic. But if you don't need to srore the fields, why not define a custom function match_date() that operates directly on the datetime? ...
...and like I said above, always store datetimes natively as datetimes and pass them around as such, never as big ol strings/objects. Especially when caching would give them speedup.
Right...

df creation:
df_2005 = pd.read_csv('2005-FOO.dat.txt', delim_whitespace=True, skiprows=14, header=None, usecols=[0, 1, 6], names=['DATE', 'TIME', 'FOO'])
df_2006 = pd.read_csv('2006-FOO.dat.txt', delim_whitespace=True, skiprows=14, header=None, usecols=[0, 1, 6], names=['DATE', 'TIME', 'FOO'])
df_2007 = pd.read_csv('2007-FOO.dat.txt', delim_whitespace=True, skiprows=14, header=None, usecols=[0, 1, 6], names=['DATE', 'TIME', 'FOO'])
df_2008 = pd.read_csv('2008-FOO.dat.txt', delim_whitespace=True, skiprows=14, header=None, usecols=[0, 1, 6], names=['DATE', 'TIME', 'FOO'])
What should I change?
01:25
@Marco That whole nested assignment for i in range(windows.shape[0]): for j in range(windows.shape[1]): ... match date, filter and then assign every single element in values_array[i, j] iteratively is just nasty, also quadratic. If you're just assigning columns [:,2:575], you can do that in one expression.
I suggest you rethink how you're handling the datime, what's the most pleasant way to handle it? You could make the datetime the row-index (if you don't have an existing row-index, just move it into a new column). But here, it seems like the intent of your match code is to match Y-m-d-H-M and throw away the seconds, (milliseconds), timezone etc.
(You know pandas allows native left-joins with datetime as index. That would eliminate all of your match... values_array[i, j] = ... j-loop)
@smci Pint is really cool. I like the project. I don't think pint has typing support however.
@smci Ok, I'll try to adjust it, thanks a lot.
@Marco I already linked you the pd.read_csv manpage above, you can directly read as datetimes, use the date_format argument. You might also get speedup from turning on cache_dates. Try to never store the datetime as big series of string/object in the first place, where avoidable.
Ok, thank you very much.
01:36
After you get the datetime-reading working correctly on df_2005, you could read in all your csv files concatenated in one list-comprehension expression: pd.concat[pd.read_csv(f'{year}-FOO.dat.txt'...) for year in range(2005, 2015+1)]. Or at least as big a chunk of years as you can handle in each iteration.
i am new to python but not new to programming and working on a leetcode problem its a pretty simple one and I am getting a simple error
@smci Ok, nice!! Thanks!!
Yeah really try to avoid writing code like `match = df[(df['year'] == year) & (df['month'] == month) & (df['day'] == day) & (df['hour'] == hour) & (df['minute'] == minute)] ...
if not match.empty: ... store the column-vector of each of its fields.` Get comfortable with treating datetimes as first-class objects (they self-sort, you can format their representation, define date ranges on them and use pandas `isin` method or three-way comparisons, SQL joins on directly on datetimes). Actually I think you're not aware *pandas has a `.dt` accessor for directly extracting whatever subfield you wan
Most of the time if you're extracting and storing subfields of datetime (as new columns), you're doing something wrong.
@user883311 Ok, do you have a specific programming problem? ("Here's my code, it produces X, I expected Y"?)
@smci thanks for the reply I just posted the full explanation on stack overflow, for some reason sometimes when I access the same string at specific indexes it works and sometimes it doesnt
@user883311 Ok, we have a room rule here, you can't post a link to question within 48hrs after asking it on SO. (usually a question will get answered or closed before)
01:47
@smci Ok, thanks again. I'm sorry, but I often have difficulty programming efficiently. I knew about this .dt.
@smci sorry about that is it possible I can delete my message?
@user883311 No worries. One of the room moderators will take care of that whenver they log on next.
@smci thank you
@Marco use datetimes natively, use .dt accessor, don't store unnecessary derived fields back into a df, use vector assignments of all the columns in preference to nested for-loops, and SQL joins on datetime indices in preference to vector assignments.
You're both welcome
@smci Wow, very nice tips, I will try to always remember them. Thanks again.
01:59
@Marco (well ok, sometimes you want to separately extract and store the date field from the time field. Depending on whatever your code's main intent is.)
Fair enough.
@user883311 please keep in mind that it is not part of the purpose of Stack Overflow to solve programming problems for you; instead, we answer questions that are novel and help to build a Q&A library that can help everyone. It is almost never the right idea to come here because you need help figuring out what is wrong with the code. Instead, come here because you have figured out what is wrong, but don't understand why the wrong thing is wrong. (Or ask a how-to question.)
Oh and one more thing: always try to use a meaningful value (datetime/string/ID column) as row-index, try to avoid the default auto-numbered index. pandas has a lot of methods that handle the index specially. (The advanced version of that is multiindexes.)
@smci OK, noted!
Ty!
 
3 hours later…
 
1 hour later…
06:13
Why does this not fail a test?
self.assertCountEqual({"a": {"b": 1}}, {"a": {"b": 2}})
Or even this:
self.assertCountEqual({"a": {"b": 1}}, {"a": ["a"]})
Why would it? The sequence elements (i.e. dict keys) are the same.
> Test that sequence first contains the same elements as second, regardless of their order.
ow, weirdly assertEqual does fail over those
06:49
Well, they aren’t equal…
07:24
assertCountEqual only looks at the "outer layer", it sees that both dicts have a key "a" and is happy. assertEqual looks at the whole thing and sees that {"b": 1} is different from {"b": 2}
 
1 hour later…
08:35
Is there a way to partially bind generics? IE I wish to make a "TupleKeyDict" which would be:
TupleKeyDict = dict[(str, str), T]
Where T could be anything, this is in python 3.11 so not the new syntax for generics possible yet
08:51
Wouldn't that have to be dict[tuple[str, str], ...]?
And why not Any in the second position?
It might be implicit anyway. Does dict[tuple[str, str]] not work?
based on the docs TKD = dict[tuple[str, str], T] should work, and then you can do TKD[float] to substitute the typevar, it seems. See docs.python.org/3.11/library/stdtypes.html#generic-alias-type
 
2 hours later…
10:37
@AndrasDeak--СлаваУкраїні I just want to have a utility that I can specify later
    to do something like:

    def myFun(): ->DifficultToSpecifyDict[int]:
        return {("a", "b"), 1}
    def myFun2(): -> DifficultToSpecifyDict[str]:
        return {("a", "b"), "hello world"}
@paul23 So what I wrote should work as per Python docs. Go try it?
 
1 hour later…
 
8 hours later…
19:37
TIL pint, what a surreal name lol, albeit accurate I suppose.

- turns a few pages from the dictionary for using fancy words.
AAB
AAB
19:52
cbg
Say I am creating a service that controls access to sqlite3db CRUD ops
does it make sense to never close a connection to the database?
I mean whenever I get a json payload from a client I am going to do the operation
why open and close each time?
20:13
is that service going to be the only thing accessing the DB?
@AAB just use the sqlalchemy engine which will handle the connection pool for you
Unless you have some quirks, you're reinventing the wheel and context managers do not work as you expect (they won't close the connection). Context managers with SQLA will correctly release the connection back to the pool
It doesn't sound like the question is "how do I ensure the connection is closed?". It sounds like the question is "do I really need to close the connection?".
And the answer is "no". The pool from SQLA will just take the whole headache away before it starts by managing the connection pool
It won't fix concurrence issues inherent with SQLite3 but it's a decent start
Basically, it'll open a pool at the start of the process and you can snag connections from that pool, and release back, without thinking too much. So it does answer "why open and close each time?"; don't- use the managed pool of connections
20:36
pypistats.org/packages/wheel This seems a bit strange. It's like some major client on Python 3.9 suddenly stopped needing or wanting to build wheels using Setuptools. But overall Setuptools downloads didn't see the same effect
(there's been a recent spike in Setuptools downloads because of the issue with 72.0.0 I imagine)
(no, that doesn't seem right. It started too long ago)
also, a heads-up: Numpy appears to have dropped 3.8 support early
@KarlKnechtel Pretty suspicious that this coincides with the Linux numbers dropping. I'd guess something got deprecated there.
well no, linux thoroughly dominates the numbers for all the major packages. Presumably, it's from industrial tooling setups, doing CI and such
so it's not surprising if the 3.9 clients were overwhelmingly on linux, I think
if the ratio changed, that's a little interesting, but.
Yes, that's what I mean.
Like, them sciency folks just EOL'd RHEL7 from a few hundred datacenters. If a major player does that, it's going to be visible.
let me guess: 1,5-diamino-pentane
(or pentane-1,5-diamine, I never know which one is the new naming scheme)
Boo, not named in the answer.
That's your chance at 15 upvotes of fame!
nah, nobody's gonna top "don't let your victim rot in your car"
@AndrasDeak--СлаваУкраїні I just remembered the common name: cadaverine <3
21:09
@MisterMiyagi the top answer should surely mention " bin juice" or it doesn't get my vote
 
1 hour later…
22:29
This error is very annoying: github.com/mwaskom/seaborn/issues/3462

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