Skip to content
GitLab
Projects Groups Topics Snippets
  • /
  • Help
    • Help
    • Support
    • Community forum
    • Submit feedback
  • Register
  • Sign in
  • EAR EAR
  • Project information
    • Project information
    • Activity
    • Labels
    • Members
  • Repository
    • Repository
    • Files
    • Commits
    • Branches
    • Tags
    • Contributor statistics
    • Graph
    • Compare revisions
  • Issues 0
    • Issues 0
    • List
    • Boards
    • Service Desk
    • Milestones
  • CI/CD
    • CI/CD
    • Pipelines
    • Jobs
    • Schedules
  • Deployments
    • Deployments
    • Releases
  • Wiki
    • Wiki
  • Activity
  • Graph
  • Create a new issue
  • Jobs
  • Commits
  • Issue Boards
Collapse sidebar
  • EAR_teamEAR_team
  • EAREAR
  • Wiki
  • Home

Home · Changes

Page history
EAR 4.2 inital release authored Jan 23, 2023 by Lluis Alonso's avatar Lluis Alonso
Show whitespace changes
Inline Side-by-side
Home.md
View page @ d3f5a26a
<img src="./images/logo.png" align="right" width="440"> <img align="right" src="./images/logo.png">
Energy Aware Runtime (EAR) package provides an energy management framework for super computers. EAR contains different components, all together provide three main services: Energy Aware Runtime (EAR) package provides an energy management framework for super computers.
EAR contains different components, all together provide three main services:
1. An **easy-to-use** and **lightweight** optimization service to automatically
select the optimal CPU, memory and GPU frequency according to the application and the node characteristics.
This service is provided by two components: the EAR Library (EARL) and the EAR Node Manager (EARD).
EARL is a smart component which is loaded next to the application and offers
application metrics monitoring and it can select the frequencies based on the
application behaviour on the fly.
The Library is loaded automatically through the EAR Loader (EARLO) and it can be easly integrated with different system batch schedulers (e.g., SLURM).
2. A complete **energy and performance accounting and monitoring system** mainly based
on relational SQL databases (MariaDB and PostgreSQL are currently supported).
The energy accounting system is configurable in terms of application details and
update frequency.
The EAR Database (EARDBD) is used to cache those metrics prior to DB insertions and optimize
the connectivity with the DB server.
Current EAR version already includes several report plugins for non-relational Databases such as EXAMON.
3. A **cluster energy manager** to monitor and control the energy consumed in
the system through the EAR Global Manager (EARGMD).
This control is configurable, it can dynamically adapt policy settings based on
global energy limits or just offer global cluster monitoring.
Visit the [architecture page](Architecture) for a detailed description of each
of these components.
The [user guide](User-guide) contains information about how to user EAR as an end
user in a production environment.
The [admin guide](Admin-guide) has all the information related to the installation
and setting up, as well as all core components details.
1. An **easy-to-use** and **lightweight optimization service** to automatically select the optimal CPU frequency according to the application and the node characteristics. This service is provided by two components: the EAR library (**EARL**) and the EAR daemon (**EARD**). EARL is a smart component which is loaded next to the application, intercepting MPI calls and selecting the CPU frequency based on the application behaviour on the fly. The library is loaded automatically through the EAR Loader (**EARLO**) and SLURM plugin (**EARPLUG**).
2. A complete **energy and performance accounting and monitoring system** based on SQL database (MariaDB and PostgreSQL are supported). The energy accounting system is configurable in terms of application details and update frequency. The EAR database daemon (**EARDBD**) is used to cache those metrics prior to DB insertions.
3. A **global energy management** to monitor and control the energy consumed in the system through the EAR global manager daemon (**EARGMD**). This control is configurable, it can dynamically adapt policy settings based on global energy limits or just offer global cluster monitoring.
Visit [the architecture page](Architecture) for a detailed description of each of these components.
## License ## License
EAR is an open source software and it is licensed under both the BSD-3 license and EPL-1.0 license. Full text of both licenses can be found in COPYING.BSD and COPYING.EPL files. EAR is a open source software and it is licensed under both the BSD-3 license and EPL-1.0 license. Full text of both licenses can be found in COPYING.BSD and COPYING.EPL files.
Contact: [ear-support@bsc.es](mailto:ear-support@bsc.es) Contact: [ear-support@bsc.es](mailto:ear-support@bsc.es)
...@@ -18,3 +43,8 @@ Contact: [ear-support@bsc.es](mailto:ear-support@bsc.es) ...@@ -18,3 +43,8 @@ Contact: [ear-support@bsc.es](mailto:ear-support@bsc.es)
[J. Corbalan, L. Alonso, J. Aneas and L. Brochard, "Energy Optimization and Analysis with EAR," 2020 IEEE International Conference on Cluster Computing (CLUSTER), 2020, pp. 464-472, doi: 10.1109/CLUSTER49012.2020.00067.](https://ieeexplore.ieee.org/document/9229570) [J. Corbalan, L. Alonso, J. Aneas and L. Brochard, "Energy Optimization and Analysis with EAR," 2020 IEEE International Conference on Cluster Computing (CLUSTER), 2020, pp. 464-472, doi: 10.1109/CLUSTER49012.2020.00067.](https://ieeexplore.ieee.org/document/9229570)
[J. Corbalan, O. Vidal, L. Alonso and J. Aneas, "Explicit uncore frequency scaling for energy optimisation policies with EAR in Intel architectures," 2021 IEEE International Conference on Cluster Computing (CLUSTER), 2021, pp. 572-581, doi: 10.1109/Cluster48925.2021.00089.](https://ieeexplore.ieee.org/document/9555970) [J. Corbalan, O. Vidal, L. Alonso and J. Aneas, "Explicit uncore frequency scaling for energy optimisation policies with EAR in Intel architectures," 2021 IEEE International Conference on Cluster Computing (CLUSTER), 2021, pp. 572-581, doi: 10.1109/Cluster48925.2021.00089.](https://ieeexplore.ieee.org/document/9555970)
[J. Corbalan, L. Alonso, C. Navarrete and C. Guillen, "Soft Cluster Powercap at SuperMUC-NG with EAR," 2022 IEEE 13th International Green and Sustainable Computing Conference (IGSC), Pittsburgh, PA, USA, 2022, pp. 1-8, doi: 10.1109/IGSC55832.2022.9969360](https://ieeexplore.ieee.org/document/9969360)
## Current version
This wiki corresponds has been updated to correspond to EAR version 4.2.
\ No newline at end of file
Clone repository
  • Home
  • User guide
    • Use cases
      • MPI applications
      • Non-MPI applications
      • Others
    • EAR data
    • Submission flags
    • Examples
    • Job accounting
    • Job energy optimization
  • Commands
    • Job accounting (eacct)
    • System energy report (ereport)
    • EAR control (econtrol)
    • Database management
    • erun
  • Environment variables
    • Support for Intel(R) speed select technology
  • Admin Guide
    • Architecture/Services
    • Quick installation guide
    • Installation from source
    • Installation from RPM
      • Requirements
    • Updating
    • Configuration
    • Starting services
    • Tools
    • Learning phase
    • Plug-ins
    • Supported systems
    • Powercap
  • Database
    • Database fields
    • Updating the database from previous EAR versions
  • CHANGELOG
  • FAQs
  • Known issues