not sure about experienced python dev's opinion. BUt i know many people who found official documentation as manual but not as a guide. SO docs feel more involving and guided
@idjaw I love the official Python tutorial. However, it's not aimed at raw beginners. OTOH, the SO Documentation isn't (wasn't) really suitable as a tutorial since a good tutorial must have some linear structure. It can have hyperlinks too, but it needs a sane linear progression, or people following it just end up as cargo-culters.
"An error occurred. I know this because it printed False" is way less useful than "An error occurred on line 17 and the message is AttributeError: widget instance has no attribute frobnicate"
-_-
I removed my question by accident.
Can anyone figure why my code below fails two test cases o this problem: hackerrank.com/challenges/validating-postalcode ?
import re
m=re.findall(
r"^([1-9])(\d)(?!\1)(\d)(?!\2)(\d)(?!\3)(\d)(?!\4)(\d)$",
input())
try:
print(bool(m[0]))
except:
print(False)
@Kevin I'm not allowed to use the if statement, hence try... except...
Well I mean in this specific instance there can only be at most one match because you're using ^ and $ and you're not in multiline mode, but in general findall can return an unlimited number of results
If you use re.match, then you could just bool the result directly - matches always bool to True, and re.match returns None if not a match, and bool(None) gives False. We are quibbling about your control flow, but I think it most likely your re has issues, which is why I suggested that perhaps more playing around with it would be useful.
@GitGud I have to strongly agree with Kevin. It's not good to use a "naked" except clause, it can catch things you don't expect to catch, like accidental NameErrors. The only reason it's permitted in Python is so you can have it at the end of a chain of named except clauses, and then it should raise the exception it catches (or possibly a different exception), possibly after printing &/or logging an error message.
@PM2Ring I don't need anymore convincing. I did what I thought was best at the time. But as Paul said, the issue here is probably the regex. This is further supported by my last code failing the same test cases.
I wonder what are the odds that Git Gud is now thinking "that's great and all but my priorities right now are getting it working first, and getting it idiomatic second, so all this design advice is going to waste". I'd say... 80%.
@GitGud Understood. The regex is the main issue. The except thing is just an aside. But we've seen lots of situations where the use of naked except has made code harder to debug because it hides the error messages. And in the worst case, it can allow totally erroneous code to inflict damage on your system.
@AndrasDeak Thanks, but that does exactly the same thing. No errors or anything, just the same result. It's weird. if I do df.groupby(['pk', 'name'])['quantity', 'transaction_amount'] then I can see the column "transaction_amount" but as soon as I do `sum()` all that's left are the indexes and the `quantity` column.
I realize I could do this differently in multiple steps, but it seems like I should be able to do it all at once(especially since sum(axis=1) will do ALL columns)
communicating with a DB. we originally had a complicated SQL query getting all of our data, and I simplified the query and stuck the results in a dataframe and it's a lot faster
This is giving me an idea here. We are generating reports from large sets of data that is being pulled between two huge data sources that require communication with different APIs
I'm right now thinking if pandas would be a good candidate to improve its performance and provide a good solution for this
the end result is a report to be provided to business people
@PM2Ring I was able to reach my mate, the one who is doing the coding initiative aiming at women. He's willing to share a feedback with me. I'll try to do a translation of his post, if he manages to publish one.
I have a large dict (~300,000 keys, total size ~ 100 MB), let's call it dict1. I do foo=dict1.keys() and use foo a few times in my code. I sometimes also directly use dict1.keys() in my code (basically to go through the whole list). Will I be able to save time if I create a new list with the elements being that of dict1.keys() and use this in my code? My thinking was that doing .keys() operation on this huge dictionary every time, would be making the code slow. Am i right?
I have a feeling you're matching all codes that have zero alternating repetitive digit pairs, when you're supposed to match all codes that have zero or one alternating repetitive digits pairs.
That was weird.... usually when someone comes into the room, their avatar drops down from the top into position, but just now I saw a white box, and David's avatar just pop in...
@user1993 If you're using Python 2, then you should save the list returned by dict1.keys() if you need to access it several times. But in Python 3, dict1.keys() returns a View object that directly accesses the data from dict1, it doesn't create a new list, so it's very fast & efficient.
In high school french I perpetually struggled with all the little two letter particles which is really kind of ridiculous because they pop up everywhere, as little particles tend to do
In Python 2 you can get the same thing with dict1.viewkeys(). OTOH, you often don't need to do that. Eg, if you want to iterate over the keys you can just do for k in dict1:
But never learning them never really hindered my understanding because I could usually use context clues to determine whether the particular one I was looking at meant of | to | from | by | at | etc
I finally figured out @GitGud 's regex - those are lookaheads, but they don't define new groups and they don't consume any characters (hence the name "lookahead") - so only 6 digit characters will match, within the negative-lookahead-of-previous-group constraints.
@Kevin You can specify repeat counts & ranges. And if you try hard, you can even get them to do simple arithmetic, in unary. For example, here's a regex that detects composite numbers: stackoverflow.com/questions/3296050/…
@idjaw I see but I think the au was meant to be used in this context: For a French speaker the sequence (DISH) à/au/à la/aux (INGREDIENT) indicates that the dish contains or was made with the ingredient. But in the show they use du to show off Dexter's poor french skills.
I think we scared off GitGud with our complaints of silent excepts and now that we've actually examined his regex and have valuable advice, he's already run for the hills
Lesson: stay within pinging range so when the perpetually distracted regulars finally get around to being actually helpful, you can benefit from their labor.
@PM2Ring thanks! even then, even if the view object directly accesses the dict, is it slower than running through a list? I guess my question is - is the list of keys of a dictionary a proper list itself, in which case, accessing it would be no different than accessing a new list containing just the keys
on my run last night I ignored a small pain in my heel, thinking it was a pebble....turns out a small thorn got in from the bottom of my shoe and was poking out.
I was running for several KM with that thing jabbing my heel. Things were not pretty afterwards
@user1993 Think of the View object as a portal to the dict's internal list of keys. I doubt that iterating over it would be slower than iterating over a normal list of the keys.
@PaulMcG Ok, so it is possible, but the length of the regex is proportional to the number of unique permutations of "ABB". So if I had said "exactly ten As and exactly seventeen Bs", the resulting regex would not fit within the confines of your hard drive.
When one asks "is it possible to X", one must accept the possibility that the answer is "yes, if you have more memory than there are atoms in the observable universe"
I suspect that there are additional implicit requirements in this question and that the first handful of answers will be met with the reply, "oh, but I don't want to use a for block | enumerate | manual indexing"
A fine ideal, but remember that "Pythonic" does not perfectly overlap with "using loads of list comprehensions and cool toys from the realm of functional programming"