I guess it makes sense to me that joining on an index would be faster than an arbitrary column, but I don't know what pandas does internally to support that
Actually, does "id" have implicit support as a reference to the index? Now I'm confused :/
dask isnt exactly for speed by itself, it should be slower than pandas. i think dask's selling point was that it could deal with data that wouldnt fit in memory, thus ruling out pandas
unless theres some multicore stuff, which i'll admit i didn't explore dask much, it should be slower on single core vs pandas
so if speed on simple tasks is your use case, dask isnt the tool for you
pandas is a first-pass, so there's plenty of learning on what has gone wrong on that. Other than spawning additional processes, I would have thought that dask could have built on the failings
Your OS doesn't run slow when you don't need to use swap, for example
thinking about it a bit further, isnt it the same problem though
how do you really determine the operations would be doable in memory until you either did them or calculated or estimated based on heuristics, with even then a chance of getting it wrong
and i imagine that even said heuristics would be at least some what time consuming (perhaps O(n) or so on to figure out lengths and stuff)
so yes, absolutely , if you switch to dask, you get an overhead no matter what
its why you shouldnt be using dask if your work can be done with just pandas
> Parallelism brings extra complexity and overhead. Sometimes it’s necessary for larger problems, but often it’s not. Before adding a parallel computing system like Dask to your workload you may want to first try some alternatives:
> In many workloads it is common to use Dask to read in a large amount of data, reduce it down, and then iterate on a much smaller amount of data. For this latter stage on smaller data it may make sense to stop using Dask, and start using normal Python again.
I am taking that to mean that they give pandas their blessing for small datasets
and okay. dask works off of disk, but has an option where you can explicitly tell it to "persist" in RAM. docs.dask.org/en/stable/…
that should clear everything up. so yeah, dask isnt guessing for you, and working off of disk by default
@AnttiHaapala I meant that for the image you posted above ^^ since I don't see some other db in that list, so got curious about their possible result in that benchmark
@AnttiHaapala I've seen the benchmarks and raised it at work to see if anyone has used it. It's on my list to play with, I'm just worried the API isn't going to cover all our common pandas work
At the moment I'm trying to slog through the official tutorial for Rust. I assume polars has apply for arbitrary python lambda? (I'm on my phone, I'll just check later :P )
@roganjosh yea I've not used it either other than just quickly checked, but... I'm doing serious data engineering and one of the biggest pain points I've got with pandas is that it is so contrary to import this when it comes to datatype conversions, and since this is arrow-native, then it will nicely map 1 on 1 to native parquet libraries...
Thanks for pointing it out... I'm definitely going to have to play with that... it's got some nice native functionality in it that I really wish pandas had...