yeah. i tried using base64 to encode it—but received a similar "this is not json serializable" error, indicating that there's something pretty different
@AmagicalFishy It's hard to help without knowing what your code is doing. We have pieces and fragments like "file", "base64" and "JSON", but no real idea what you want to do. A Minimal, Complete, and Verifiable Example would probably help.
Actually, now that I look at it again, they seem to be using 2**n indentation (where n is the indentation level). Maybe there is method to the madness! ;)
@AMF: You can't seralize bytes with json. What you can do, though, is decode the result of b64encode into a string, which can then be jsonified safely.
I'm only curious about this because I've watched the debate over the singleton with PM 2Ring over several days. It's nothing more than curiosity for me, I'm just trying to work out where your own boundaries lie :)
@AmagicalFishy There is a very small difference in dictionaries: in both versions, dictionaries with string keys are in arbitrary order, but in 2.7 that arbitrary order will usually be the same across separate runs, while in 3.5 they'll usually be different across different runs. Either way, if your code relies on either behavior, your code is wrong, so this rarely matters. The difference in the strings within the dicts is a lot bigger.
ah, hm. I bet that's what's causing my problem. do you happen to know if the difference in str would make serializing... weirder? (it sounds like, from what you said, it should actually be easier to serialize strings in python 3)
Because, if performance is no issue, why would you use a new approach to answer a question when it can be solved with for loops and it becomes less readable
Well, it's almost always be easier to serialize strings correctly in Python 3, but it's often easier to serialize things incorrectly (but it still works for pure ASCII) in Python 2.
ah, alright. i'm going to construct a minimum-working-example and, if i can't figure out what's causing it, i'll ask an official question :D ty for your help
@OneRaynyDay Yeah, but for that, you usually don't want 0; you want to generate a random number that you can publish in your paper and set the environment variable to.
@AmagicalFishy One of the things that often catches people porting 2.7 code to 3.x (or dual-version) is the small handful of bytes-to-bytes and unicode-to-unicode encodings. And I think you mentioned base-64 earlier, which is one of them. In 3.x, you can't encode bytes or decode unicode. But the change is always simple once you know that's the issue—e.g., instead of s.encode('base64') you do base64.b64encode(s), which works correctly in both 3.x and 2.7.
@wim You're a more experienced programmer than me, but you came back to chat to announce that you used a new method, that you'd never used, to solve a problem that can be solved with a really basic approach for someone new to programming. But you reprimand PM for what you consider an anti-pattern (I'm using that term loosely).
Even though np.array is actually a factory function, people loosely talk about the np.array type instead of the np.ndarray type all the time. Even Numpy's tutorials. Even the repr for an array is a call to the factory, not the class constructor.
I mean, I have a list/array (1 gigabyte) of @dataclass derived objects that I need to assert the type of when I'm passing it to other functions. Not sure whats the best way to keep the type signature as I'm refactoring...
@Mikhail Python does not have a "homogenous list" type; you just use a list and don't stick incompatible types in it. You can statically check it by using type annotations, but you can't, and generally don't want to, dynamically check it.
@wim maybe "reprimanded" is not the right word, but you're holding a downvote over his head. And again, I only want to discuss this in terms of what I see in chat, nothing personal. I'm just struggling to see the difference between the two situations on a fundamental level.
The matrix docs used to say that you rarely need it, and it's only there because Python doesn't have separate matmul and mul operators. It's weird that now that Python has @ (and it works on ndarray), the docs for matrix don't try to warn you away that much.
@abarnert Okay, so what is the type annotation when you need to assert that your list of objects (or any other container) is of a the same custom class...
Agreed, I've taken that code a bit out of context. So if a solution exists that uses that code, which I think is much more readable, would it not be prudent to test its speed first since it definitely wins on readability?
There should be a good reason for the OP not to use a for loop instead of set().union(*lst)
@wim There are languages where nd as a syllable onset cluster is valid. Of course English-natives sound like they have a speech impediment when trying to speak those languages, so…
@AmagicalFishy JSON only knows a few types—strings, ints, etc.—which does not include arbitrary byte-strings. The only reason it works in 2.7 is that bytes and str are the same type.
The right way to handle this depends on what that b'123ABC' represents. If it's ASCII text, use json.dumps(b'123ABC'.decode('ascii')). If it's Latin-1 text, or UTF-8 text, or text in your default encoding, just change the decode argument.
OK, that's fine—base64 output is ASCII, so decode('ascii') is what you want. (Unless you need dual-version 2.7/3.4+ code, or 3.3+, and the performance cost might matter.)
@wim all I can take from this whole thing is "don't teach newbies about singletons but I'll answer a question using a method I've never encountered, in an experienced programming life, to solve a simple problem". Now I'll put this discussion to bed from my side :)
@wim Anyway, I was thinking of southern Chinese languages. One of my fellow students in grad school was a native speaker of… now I can't remember, except that to me the name of the language sounded a lot like Ndndnd from Futurama, but to her it sounded completely different of course, and I think it was considered a dialect of Mien in China but a separate language in Laos and Thailand.
Also, Laos was called something "Thousand Elephant Land" in her language, which was something like "Ndzaangz", which my ears just gave up on.
If you want something that will raise KeyError after it's built, but not while you're building it, I'd use setdefault rather than building a defaultdict and then copying it / changing its __class__ / hiding its __missing__ / using a custom defaultdict subclass with a flag to flip back and forth / etc.
right but the type could be called array, the initialiser could be called array, and the low-level initializer that is not for public use could be _ndarray or whatever
@wim With the rising-falling tone it's some crazy function that only divakar would know how to use, but with the falling-rising tone, it means "erase my hard drive".
I suspect the only reason Numpy doesn't use array for the type is that its design goes back to before builtin type/class unification. The same way int used to be a factory function for types.IntType, etc.
So, I have a function signature like do_correlation(connections_in : List[Connection]... but it looks like PyCharm's code hinting can't infer that connections_in[0] is a Connection object, is there some trick to providing it with more information?
@Mikhail Does Mypy infer it? In a simple case, it definitely does. So what we need to figure out is whether (a) your case is actually not simple enough for type inference (and then we can figure out why, and what to do about it…), or (b) it is, but you need a newer version of PyCharm (that may exist yet).
For example, in this code, Mypy will infer that c is a namedtuple with an attribute named a:
Connection = collections.namedtuple('Connection', ('a', 'b'))
def spam(cs: typing.List[Connection]) -> None:
for c in cs:
print(c.a)
The point is that Mypy is the reference implementation for Python's static typing rules, and PyCharm is a separate implementation that's better in some ways, but more complicated and not quite as guaranteed to be complete and correct. So you need to figure out whether the problem is with your code, or with PyCharm.
And if you can't provide a MCVE for others to debug for you, you have to run it through Mypy and report back.
The only benefit I've seen is when you're porting 2.x code, and you didn't bother to keep track of which strings and bytes and which are strings, adding the annotations as you figure out each one is the only sane way to keep track of them.
Beyond that, it's sometimes useful as documentation, but I rarely bother running a verifier on it. When I'm just passing around lists of lists of whatever… that's usually because I want to be passing around lists of lists of whatever—often because I'm handling some kind of dynamic data, like a JSON response that's far more complicated than the part I need, or an HTML tree from a flaky site, etc.
And when I see other people's code with annotations, 90% of the time they've made things far stricter than they actually need to be, for no benefit. Like a function that takes any iterable of integral values, and in fact in most non-testing use cases you're going to be passing it a generator expression as that iterable, but someone annotated it as taking List[int], so you either have to fix that, or disable type checks on it.
@abarnert The guidance I was given for type hints was "return types as specific as possible and parameters as permissive as possible", which, so far, works ok.
I would agree though that the main gain I get from it is documentation
@Arne That's good guidance, but in practice the people who most like type hinting seem to be the ones least apt to follow that advice. Basically, people who'd rather be coding in Java or Go or some other language where the static type system is just strong enough to get the worst of both worlds (frequently manages to prevent you from writing the obvious code you want, often fails to prevent you from writing code that's wrong but compiles anyway).
I work close to a team that writes scala, and one of them linked me an article that basically claimed "meaningful variable names are code smell, you should have typed them well enough that you can call everything a,b,c,.. and still have readable code." Reading that was very upsetting.
The following discussion where I tried to claim that this might not be true for python, and typing is not what 'finally makes it a proper programming language' even more so =(