Provide advanced scheduling capability for OpenStack using a fairshare algorithm. This is a manager for synergy-service.
Go to file
Vincent Llorens 42bdd09212 Release v2.2.2
Change-Id: I41bbdc6a3df96424db2b69cc0d9e5c4befd8ee06
2016-12-14 10:57:17 +01:00
doc/source import project from launchpad 2016-06-02 15:04:52 +02:00
packaging Release v2.2.2 2016-12-14 10:57:17 +01:00
synergy_scheduler_manager Make SchedulerManager handle ERROR notifications. 2016-12-12 16:30:56 +00:00
.coveragerc import project from launchpad 2016-06-02 15:04:52 +02:00
.gitreview Added .gitreview 2016-03-23 08:36:50 +00:00
.testr.conf import project from launchpad 2016-06-02 15:04:52 +02:00
AUTHORS use pbr fully for easier package building 2016-10-17 13:51:42 +02:00
CONTRIBUTING.rst import project from launchpad 2016-06-02 15:04:52 +02:00
ChangeLog Release v2.2.2 2016-12-14 10:57:17 +01:00
HACKING.rst import project from launchpad 2016-06-02 15:04:52 +02:00
LICENSE import project from launchpad 2016-06-02 15:04:52 +02:00
MANIFEST.in import project from launchpad 2016-06-02 15:04:52 +02:00
README.rst Fix broken link to doc in README 2016-07-25 10:54:33 +02:00
babel.cfg import project from launchpad 2016-06-02 15:04:52 +02:00
requirements.txt fix: update required version of synergy-service 2016-12-12 14:22:12 +01:00
setup.cfg Scheduler managers enhanced 2016-10-28 15:27:04 +02:00
setup.py Remove versions for required packages 2016-10-27 11:18:30 +02:00
test-requirements.txt add more unit tests to managers 2016-06-16 17:32:37 +02:00
tox.ini Cleanup tox.ini: Remove obsolete constraints 2016-08-26 18:15:44 +02:00

README.rst

SYNERGY SCHEDULER MANAGER

The Scheduler Manager

Synergy is as a new extensible general purpose management OpenStack service. Its capabilities are implemented by a collection of managers which are specific and independent pluggable tasks, executed periodically or interactively. The managers can interact with each other in a loosely coupled way. The Scheduler Manager provides advanced scheduling (fairshare) capability for OpenStack. In particular it aims to address the resource utilization issues coming from the static allocation model inherent in the Cloud paradigm, by adopting the dynamic partitioning strategy implemented by the advanced batch schedulers.