A log management component for OpenStack
Go to file
2021-06-03 02:34:32 +00:00
api-ref/source Initialize the Venus project 2020-11-11 08:19:55 +00:00
devstack Add devstack support 2021-03-16 09:33:36 +08:00
doc Initialize the Venus project 2020-11-11 08:19:55 +00:00
etc/venus delete mysql storage and use config file store data 2021-05-11 14:40:14 +08:00
releasenotes remove unicode from code 2021-01-03 16:08:28 +08:00
tools/config Initialize the Venus project 2020-11-11 08:19:55 +00:00
venus the call chian only return the orign data 2021-06-03 09:58:21 +08:00
.gitignore Add devstack support 2021-03-16 09:33:36 +08:00
.gitreview Added .gitreview 2020-11-10 02:23:44 +00:00
.zuul.yaml Add pep8 job for venus 2020-11-11 09:03:11 +00:00
CONTRIBUTING.rst fix the spelling mistake 2020-12-17 14:07:31 +08:00
HACKING.rst remove six in HACKING.rst 2021-01-07 10:18:54 +08:00
LICENSE Initialize the Venus project 2020-11-11 08:19:55 +00:00
MANIFEST.in Add devstack support 2021-03-16 09:33:36 +08:00
README.bak.rst Rename readme file 2020-11-20 07:38:37 +00:00
README.rst Hello Venus 2020-11-25 01:11:18 +00:00
requirements.txt Fix elasticsearch version issues 2021-06-02 14:18:54 +08:00
setup.cfg Merge "setup.cfg: Replace dashes with underscores" 2021-05-14 00:36:45 +00:00
setup.py Initialize the Venus project 2020-11-11 08:19:55 +00:00
test-requirements.txt Initialize the Venus project 2020-11-11 08:19:55 +00:00
tox.ini fix the spelling mistake 2020-12-17 14:07:31 +08:00

Hello Venus

An OpenStack Log Management Service.

About Venus

In light of the problems and needs of retrieval, storage and analysis etc. of logs on the OpenStack platform, we developed the OpenStack log management module Venus.

This project can provide a one-stop solution to log collection, cleaning, indexing, analysis, alarm, visualization, report generation and other needs, which involves helping operator or maintainer to quickly solve retrieve problems, grasp the operational health of the platform, and improve the level of platform management.

Additionally, this project plans to use machine learning algorithms to quickly locate IT failures and root causes, and improve operation and maintenance efficiency.