Introduction to Hybrid Programming in HPC

Service description

https://events.prace-ri.eu/event/1009/ –> TENTATIVE (link is to the previous edition)

Most HPC systems are clusters of shared memory nodes. To use such systems efficiently both memory consumption and communication time has to be optimized. Therefore, hybrid programming may combine the distributed memory parallelization on the node interconnect (e.g., with MPI) with the shared memory parallelization inside of each node (e.g., with OpenMP or MPI-3.0 shared memory). This course analyzes the strengths and weaknesses of several parallel programming models on clusters of SMP nodes. Multi-socket-multi-core systems in highly parallel environments are given special consideration. MPI-3.0 has introduced a new shared memory programming interface, which can be combined with inter-node MPI communication. It can be used for direct neighbor accesses similar to OpenMP or for direct halo copies, and enables new hybrid programming models. These models are compared with various hybrid MPI+OpenMP approaches and pure MPI. Numerous case studies and micro-benchmarks demonstrate the performance-related aspects of hybrid programming.
Hands-on sessions are included on both days. Tools for hybrid programming such as thread/process placement support and performance analysis are presented in a "how-to" section. This course provides scientific training in Computational Science and, in addition, the scientific exchange of the participants among themselves.

 

Type of methodology: Combination of lecture and hands-on

Participants receive the certificate of attendance: If requested

Paid training activity for participants: No, it's free of charge

Participants prerequisite knowledge: C/C++ OR Fortran

Level
Intermediate
Advanced
Category
Training events
Service Start
Service End
Service valid until
Audience
Research and Academia
Industry
Location category
Language
English
Technical Domain
HPC
Parallel programming
Scientific programming
Format
Online, live
Initiative
Castiel and EuroCC
Country