Search

link to homepage

Institute for Advanced Simulation (IAS)

Navigation and service


Cross-sectional team Application Optimization

pThe cross-sectional team "Application Optimization" is responsible for the optimization and petascaling of applications in terms of performance, efficiency and parallel I/O. We provide users with knowledge and proper tools sets for their work on the Jülich HPC systems. We strongly interact with the Simulation Laboratories as well as the Cross-sectional teams "Methods and Algorithms" and "Performance Analysis".

Know-How and Focal Points

We are experienced in parallelisation libraries like MPI and OpenMP and are also investigation PGAS languages. We know about specialities of the local HPC systems and this makes it possible for us to guide the users in optimization strategies on the Jülich systems, e.g. for compiler and memory usage, task mapping, and I/O.

We collaborate with users in the need of on-demand support, but we also offer close long-term collaborations with user projects to optimize their applications on the Jülich HPC systems, e.g. to implement parallel I/O or a hybrid parallelisation.

We focus on assisting users to choose optimal parameters for their simulations, this leads to our interest in benchmarking:

  • We monitor and benchmark standard simulation software packages.
  • We perform evaluations and parameter studies of selected user applications.
  • We benchmark new architectures and develop system benchmarks.

With this work we also assist the system administrators in evaluating the system behaviour.

Training

We emphasize on equipping users with knowledge for their usage of HPC systems:

  • We provide courses in MPI, OpenMP, and Parallel I/O.
  • We organize the bi-yearly introductory course to the Jülich supercomputer systems.
  • We collaborate in the Extreme Scaling Workshops as well as in PATC Training Events (e.g. PRACE Spring and Autumn School).

Research and Development

Our main research interest is the optimization of parallel I/O, this has led to the library SIONlib, which implements efficient parallel I/O of task-local data from massively parallel applications.

In addition, we have a strong interest in tool development with focus on application monitoring, optimization and benchmarking. We are currently working on the following projects:

  • LLview in Eclipse PTP - Batch system and job monitoring
  • JUBE - Benchmarking Environment

Due to our benchmarking activities we also develop system benchmarks:

  • Scalable MPI point-to-point benchmark Linktest

Collaborations with EU and national funded projects

  • PRACE - Partnership for Advanced Computing in Europe
  • EIC - Exascale Innovation Centre
  • DEEP-Projects - Dynamic Exascale Entry Platform
  • EoCoE - Energy Oriented Centre of Excellence
  • BEAM-ME - Implementation of acceleration strategies from mathematics and computational sciences for optimizing energy system models

Industry Collaborations

  • TenneT - Design and implementation of a specialised cluster system in context of electric energy distribution: Press release

Servicemeu

Homepage

Logo

 

 

 

YOUR OPINION MATTERS!

 

Dear visitor,

To make our website suit your needs even more and to give it a more appealing design, we would like you to answer a few short questions.

Answering these questions will take approx. 10 min.

Start now Close window

Thank you for your support!

 

In case you have already taken part in our survey or in case you have no time to take part now, you can simply close the window by clicking "close".

If you have any questions on the survey, please do not hesitate to contact: webumfrage@fz-juelich.de.

 

Your Team at Forschungszentrum Jülich

 

Note: Forschungszentrum Jülich works with the market research institute SKOPOS to anonymously conduct and analyze the survey. SKOPOS complies with the statutory requirements on data protection as well as with the regulations of ADM (Arbeitskreis Deutscher Markt- und Sozialforschungsinstitute e.V.) and ESOMAR (Europäische Gesellschaft für Meinungs- und Marketingforschung). Your data will not be forwarded to third parties.