# -*- coding: utf-8; mode: tcl; tab-width: 4; indent-tabs-mode: nil; c-basic-offset: 4 -*- vim:fenc=utf-8:ft=tcl:et:sw=4:ts=4:sts=4
python.versions 27 34 35 36 37 38
maintainers {stromnov @stromnov} openmaintainer
description Minimal task scheduling abstraction.
long_description Dask provides multi-core execution on larger-than-memory \
datasets using blocked algorithms and task scheduling. \
It maps high-level NumPy, Pandas, and list operations on \
large datasets on to many operations on small in-memory \
datasets. It then executes these graphs in parallel on a \
single machine. Dask lets us use traditional NumPy, \
Pandas, and list programming while operating on \
inconveniently large data in a small amount of space.
homepage https://github.com/dask/dask/
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checksums rmd160 94cce1974d6ad2830a6fd3d745cbe5d4100ff5ba \
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