dask is a Python library to provide parallelism and scaling via drop-in replacement for numpy, pandas and scikit-learn (or at least, a subset of their functionality).
- However the current dask tag-wiki excerpt [*] makes no mention whatsoever of Python/numpy/pandas nor performance nor scaling (!!), merely the super-vague, language-agnostic, marketing-buzzword-sounding (and you could make comparable vague claims of Fortran compilers):
Dask is a flexible parallel computing library for analytic computing. It supports dynamic task scheduling optimized for computation as well as big data collections.
That's kind of D- grade: by not mentioning Python/numpy/pandas nor performance, the tag-wiki gives no insight into "which community of which language uses this and why would anyone ever use it?", and also will not be easily found by SO or Google search, hence tagging will be suboptimal, also dask questions on SO will not get seen, and machines won't understand the equivalence between dask <-> pandas. Also, that definition is overstatement; dask is not a fully-featured package for "analytic computing" and probably never will come close to that; it's a limited backend to numpy, pandas and some parts of scikit-learn.
- [*] (yes if you click through to the full tag info page it is marginally better and mentions some but not all of the keywords, and not terse enough, and not sure we need all the URLs. There was some major reverting on that info page.)
The one-line warts-and-all tl;dr in the pandas community would be more like:
"Dask is a higher-performance, native, parallel, scalable, dynamic-task-scheduling drop-in backend replacement for numpy/pandas, well at least a subset of it, it breaks on some functionality, and you have to rewrite your code down to that subset to get the performance gains, also debuggability allegedly takes a major hit".
- That's more accurate but less politic; and I don't know if it's considered bad behavior to say "Y is a higher-performance drop-in replacement for X", explicitly mentioning the other package, even though that's one of the key points here.
Dask natively scales Python: Dask provides advanced parallelism for analytics, enabling performance at scale for the tools you love
...which is maybe a C+ grade offering, even when we replace "the tools you love" with "numpy/pandas/scikit-learn". It does mention "native" and "Python" which is good, but not the rest.
Last,
dask
supports out-of-memory datasets, but then so does pandas with HDFS, so hard to comment on how much better dask is for that.
So: how specifically to improve the dask tag-wiki? Your suggestions please.