dask 2.8.0-0ubuntu4 source package in Ubuntu
Changelog
dask (2.8.0-0ubuntu4) focal; urgency=medium * Allow stderr in the autopkgtests. -- Dimitri John Ledkov <email address hidden> Wed, 20 Nov 2019 15:48:04 +0000
Upload details
- Uploaded by:
- Dimitri John Ledkov
- Uploaded to:
- Focal
- Original maintainer:
- Ubuntu Developers
- Architectures:
- all
- Section:
- misc
- Urgency:
- Medium Urgency
See full publishing history Publishing
Series | Published | Component | Section |
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Downloads
File | Size | SHA-256 Checksum |
---|---|---|
dask_2.8.0.orig.tar.gz | 2.4 MiB | eeaca21cb925faef7d142031bbf9eecc25546defc57b9c7bc899b6febe996583 |
dask_2.8.0-0ubuntu4.debian.tar.xz | 6.7 KiB | 05ae10bc95c9104f26860dcff0242a758d24def9857033ca277d59bb1e108eff |
dask_2.8.0-0ubuntu4.dsc | 2.9 KiB | 3ffd0e17b4cb92da942124adbcb56b54400e3e0c5db006407bc4680a45f3f87a |
Available diffs
- diff from 1.0.0+dfsg-2 (in Debian) to 2.8.0-0ubuntu4 (874.9 KiB)
- diff from 2.8.0-0ubuntu3 to 2.8.0-0ubuntu4 (622 bytes)
Binary packages built by this source
- python-dask-doc: Minimal task scheduling abstraction documentation
Dask is a flexible parallel computing library for analytics,
containing two components.
.
1. Dynamic task scheduling optimized for computation. This is similar
to Airflow, Luigi, Celery, or Make, but optimized for interactive
computational workloads.
2. "Big Data" collections like parallel arrays, dataframes, and lists
that extend common interfaces like NumPy, Pandas, or Python iterators
to larger-than-memory or distributed environments. These parallel
collections run on top of the dynamic task schedulers.
.
This contains the documentation
- python3-dask: Minimal task scheduling abstraction for Python 3
Dask is a flexible parallel computing library for analytics,
containing two components.
.
1. Dynamic task scheduling optimized for computation. This is similar
to Airflow, Luigi, Celery, or Make, but optimized for interactive
computational workloads.
2. "Big Data" collections like parallel arrays, dataframes, and lists
that extend common interfaces like NumPy, Pandas, or Python iterators
to larger-than-memory or distributed environments. These parallel
collections run on top of the dynamic task schedulers.
.
This contains the Python 3 version.