https://bugzilla.redhat.com/show_bug.cgi?id=2258912
Bug ID: 2258912
Summary: Review Request: libgedit-amtk - Gedit Actions, Menus,
and Toolbars Kit
Product: Fedora
Version: rawhide
Hardware: All
OS: Linux
Status: NEW
Component: Package Review
Severity: medium
Priority: medium
Assignee: nobody(a)fedoraproject.org
Reporter: yselkowi(a)redhat.com
QA Contact: extras-qa(a)fedoraproject.org
CC: package-review(a)lists.fedoraproject.org
Target Milestone: ---
Classification: Fedora
Spec URL: https://yselkowitz.fedorapeople.org/libgedit-amtk.spec
SRPM URL:
https://yselkowitz.fedorapeople.org/libgedit-amtk-5.8.0-1.fc40.src.rpm
Description: Amtk is the acronym for “Actions, Menus and Toolbars Kit”. It is a
basic GtkUIManager replacement based on GAction. It is suitable for both a
traditional UI or a modern UI with a GtkHeaderBar. (This is a rename of the
current amtk package to match upstream, needed for Gedit 46.)
Fedora Account System Username: yselkowitz
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https://bugzilla.redhat.com/show_bug.cgi?id=2271996
Bug ID: 2271996
Summary: Review Request: baler - Machine learning based data
compression tool
Product: Fedora
Version: rawhide
Hardware: All
OS: Linux
Status: NEW
Component: Package Review
Severity: medium
Priority: medium
Assignee: nobody(a)fedoraproject.org
Reporter: mattias.ellert(a)physics.uu.se
QA Contact: extras-qa(a)fedoraproject.org
CC: package-review(a)lists.fedoraproject.org
Target Milestone: ---
Classification: Fedora
Spec URL: https://www.ellert.se/review/baler.spec
SRPM URL: https://www.ellert.se/review/baler-1.4.0-1.fc41.src.rpm
Description:
Baler is a tool used to test the feasibility of compressing different
types of scientific data using machine learning-based auto-encoders.
Baler provides you with an easy way to:
1. Train a machine learning model on your data
2. Compress your data with that model. This will also save the
compressed file and model
3. Decompress the file using the model at a later time
4. Plot the performance of the compression/decompression
Fedora Account System Username: ellert
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