@xjcl You mean you want your pandas 2.x code (not just the tests?) to support both old and new versions of df.stack()? Why? Isn't that overkill? Why not migrate to future_stack behavior now in pandas 2.1/2? In pandas once some new change becomes stable, I generally switch to using it.
Hello, my first time trying the chat function here.
it is said that using _ as your temporary variable in a for loop means you don't care about returning the values during iteration but just want to iterate a number of times. The question then is, the values are still held by the _ even if you don't print it. Does this make it any better than using a normal variable? Or is it just convention to use _ when you don't want to return a value from a for loop for instance
@journpy "Or is it just convention to use _ when you don't want to return a value from a for loop for instance" spot on. You can see for _ in range(20): print(_) prints as expected.
Additionally _ means last value in the Python REPL.
@Peilonrayz thanks for this. is this convention any better memory wise since _ still holds the value during iteration? I'm thinking a better implementation would be _ to discard values during iteration if at all possible. PS: I'm aware of the _ in a REPL returning the previous result.
@journpy it's not used exclusively in loops, I also use it in function signatures or unrolling expressions to also signal "I don't care about the values here" and also avoid cluttering my namespace
@Peilonrayz yeah, same as with any other name. _ isn't special in that regard. it just doesn't make sense with other names because you're overwriting it in the same statement.
@smci The first part, I have no issue with. I have done similar things all over my libraries in the past as things evolve. But to eventually remove back-compat on a data processing step (as they then did in V3.0) is a bit more problematic since a) there is no clear way to get the same output as you built your pipeline around and b) it's easy to run on the assumption that you've got the default new_fangled_behaviour=False when in fact that param doesn't even exist
And now I feel bad because I've tangentially justified naming things like boto3's list_objects_v2. Still, if you can't maintain basic behaviour in a back-compat fashion, perhaps a new, very similar, method is called for
@roganjosh This is weird, they're planning to go to pandas 3.0 in 4/2024 already; only a year after pandas 2.0. They must be feeling tons of heat from polars.
polars seems to have precipitated a major shake-up with pandas. "We need to get our arse in gear" is all that says
It's no good, though, if they bust their API in the process. It is challenging to transfer to polars sometimes (as I've increasingly found for certain things I know exactly how to do in pandas) but if pandas makes itself a moving target then it's a wasted effort - the stable df library already exists
@roganjosh My glass is half-full, I look forward to them fixing and enhancing things. I wouldn't upgrade even a minor pandas version in a production environment, though, without tests. They need to have soom good roadmap talks/presentations for 2.x -> 2.3, 2.4 -> 3.x -> 4.x
pandas 2.2 * Improved PyArrow support * Integrating the Apache ADBC Driver * Adding case_when to the pandas API * Copy-on-Write (will become default in 3.0)
Grr, argg, I had an article that I debated linking to you where polars worked with arrow to change the string representation to improve performance. I've lost it for now
No, I haven't. polars is in the driving seat, pandas is playing catch-up
unstructured libmagic python-magic python-magic-bin i want to install getting error ERROR: Could not find a version that satisfies the requirement python-magic-bin (from versions: none) ERROR: No matching distribution found for python-magic-bin
sory i will rephrase it . !pip3 install unstructured libmagic python-magic python-magic-bin . i am trying to install above command getting error No matching distribution found for python-magic-bin . can you please guide .
Fair enough :) Going forwards, I've chosen to just pin the pandas version and figure out (sometimes frustratingly) how to do it in polars for anything new I write. In that sense, it doesn't matter to me where pandas goes
@roganjosh Right. Don't plan to ride pandas stream of updates as casually as before.
PSA: i was just reminded (again) that 0**0 = 1, not 0. In computing Munchhausen numbers, which is a benchmark where Lua (/JIT) people used to show Python being slower.