@JonClements Please, in the conversation that I will have with the moderator, I want this to be private, please, for privacy reasons. On another occasion that I talked with a moderator, this happened in this way: a room was created between me and him. Thanks.
Well, I guess I was redundant, of course it's for privacy reasons.
@Marco, you are saying that you would prefer to discuss this in a private room, rather than in the MetaPython room? I don't see how there are privacy issues at stake here, but I'm willing to create a private room if you feel strongly about it.
Hello. Yes, in a private room, please. Privacy in the sense that I feel more comfortable in a private conversation, that's all. But I will be able to talk to you only at the end of my day tomorrow, I'm about to sleep now (here it is 01:14 AM).
stackoverflow.com/questions/74219480 I get the impression there's something special about the combination of PyTorch and 3.11 that's making the question pop up? I could have sworn I've seen more like this, but I guess this looks canonical
it's similar to what we discussed once but for Pygame.
whenever a third-party library doesn't always keep up with the latest python and also comes with its own C binding/etc, then you get this kind of result.
I guess you could probably close the question in those cases, since usually it's up to the maintainer on github to do it, unless the OP want to add support for it themselves.
cv-plsdel-pls unclear, unfocused and no mre, and the existing answer is a wild guess stackoverflow.com/questions/28842485 thanks to the Community user for highlighting this. Got it on the 13th try
@JonClements Instead of using a list comprehension I just broke it down to the standard for-loop and just put a print statement to determine which .csv file failed to read into the dataframe.
I just did from df_merged_quotes = pd.concat([pd.read_csv(f, header=None) for f in quotes_list])
for f in quotes_list:
print(f)
quotes_csv = pd.read_csv(f, header=None)
To something like that and just eyeballed it then there was one extra cell in row 224 of that .csv file
@MisterMiyagi I think I was already talking along those lines in PCR, but I don't have the idea fully fleshed out. please contribute if you can
@Pherdindy fwiw: because print is a function in 3.x, which consistently returns None, we can do pd.concat([print(f) or pd.read_csv(f, header=None) for f in quotes_list])
obviously not production code, but maybe a time saver if you aren't using an actual debugger
(I don't)
another approach, which might look less hacky, is to wrap the iterator. something like
def traced(it):
for i, v in enumerate(it):
print(i)
yield v
which should then allow pd.concat([pd.read_csv(f, header=None) for f in traced(quotes_list)])
@JonClements I feel like a lot of it is annoying me. Too many errors from just one line of code. Haven't really found anything I particularly like about rust either. I might also be jumping in too fast... idk
it helps to understand what rust compiler is trying to save you from. i'd say read up on borrow checker and really "get" what it's after, it saves you a lot of pain with rust
You know how `pip freeze` output will show requirements as package names and version numbers, with stuff like `^`, `==` etc. in between? where is the "stuff" documented?
i think pip should release a feature where it save requirement file having os base structure. like when we do pip freeze it should provide option to add os wise dependency too
We're trying to move to >= by default to avoid dependency hell, and use < and != for known incompatibilities. Takes a while to get rid of old, bad advice...
@KarlKnechtel Using ^ and ~= breaks less in the short run, and the various dependency-release-tracking tools like dependabot make horribly specific dependency management look like active contributions at first glance.
IIRC poetry even suggests ^ as the preffered requirement type.
I mean, Python could have stepped up here and made it clear how the hell you're supposed to do dependency mgmt. There are way too many ways to handle dependencies
Or just package installations, even without dependencies
You basically supply a manifest of externally downloaded materials with the exact version numbers
in practice is that can be challenging as linux flavors have different tools, dependencies, etc
so in languages like C++ a popular strategy is to build everything into one dependency free static monolith, but that strategy doesn't for python for many reasons
@roganjosh Well, it depends on your needs. pip freezecan be the right tool for the job - if you want reproducible builds, and you know the OS and python version of the PC where your module will be installed...
so the real python deployment strategy would be called "have the user run some commands to satisfy their dependencies, and if they can't tell them to switch their OS"
When Guido was on Lex Fridman, there was a request for questions. I asked why it was chosen that dependency management was outsourced to other tools e.g. easy_install and then pip (and I think prior tools). Sadly it wasn't asked
@Aran-Fey It works until you need to install anything else by, you know, developing. Then it all hits the fan
I admit, using pip freeze can be finicky at times. But depending on your use cases, it's fine as a temporary solution to perhaps, an exponentially permanent problem.
I remember using it a lot on Linux when I made my own implementation (based on someone else) of pip bundle (since it's removed now on the latest pip version).
I would always take pipreqs over pip freeze just because it allows your own dependencies to be flexible in what they need, and it's a single CLI command. But it's still not totally ideal
I vaguely remember trying pipreqs, but my main reason not to switch to it was some complication when creating a requirements.txt file: stackoverflow.com/questions/57907655/…
with pip freeze, it's as easy as outputting stdout to a file. Don't know, but there might be an easy way with pipreqs too.
@roganjosh thanks for telling me about pipreqs didn't know about this. i am living this hell everytime when i have to set up existing project(x86 based) in my system (m1 chip). don't want to use docker though
@KarlKnechtel Only that's usually not how it works in practice. A program could be forward compatible with many dependency major releases just because they never touch the parts the program actually need. Or a patch release could break some edge case behaviour the program relied on.
There is a nice article by one of the PyPA folks (could have been posted here, not sure) how most assumptions on ^ and ~= offering stability are false in the long run. At least >= gives end users the chance to fix things on their end.