Experimental Verification and Analysis of Dynamic Loop Scheduling in Scientific Applications

04/30/2018
by   Ali Mohammed, et al.
0

Scientific applications are often irregular and characterized by large computationally-intensive parallel loops. Dynamic loop scheduling (DLS) techniques improve the performance of computationally-intensive scientific applications via load balancing of their execution on high-performance computing (HPC) systems. Identifying the most suitable choices of data distribution strategies, system sizes, and DLS techniques which improve the performance of a given application, requires intensive assessment and a large number of exploratory native experiments (using real applications on real systems), which may not always be feasible or practical due to associated time and costs. In such cases, simulative experiments are more appropriate for studying the performance of applications. This motivates the question of How realistic are the simulations of executions of scientific applications using DLS on HPC platforms? In the present work, a methodology is devised to answer this question. It involves the experimental verification and analysis of the performance of DLS in scientific applications. The proposed methodology is employed for a computer vision application executing using four DLS techniques on two different HPC plat- forms, both via native and simulative experiments. The evaluation and analysis of the native and simulative results indicate that the accuracy of the simulative experiments is strongly influenced by the approach used to extract the computational effort of the application (FLOP- or time-based), the choice of application model representation into simulation (data or task parallel), and the available HPC subsystem models in the simulator (multi-core CPUs, memory hierarchy, and network topology). The minimum and the maximum percent errors achieved between the native and the simulative experiments are 0.95

READ FULL TEXT
research
10/15/2019

An Approach for Realistically Simulating the Performance of Scientific Applications on High Performance Computing Systems

Scientific applications often contain large, computationally-intensive, ...
research
03/22/2018

SCISPACE: A Scientific Collaboration Workspace for File Systems in Geo-Distributed HPC Data Centers

Future terabit networks are committed to dramatically improving big data...
research
11/19/2022

Block size estimation for data partitioning in HPC applications using machine learning techniques

The extensive use of HPC infrastructures and frameworks for running data...
research
04/17/2023

Serverless Approach to Sensitivity Analysis of Computational Models

Digital twins are virtual representations of physical objects or systems...
research
12/04/2019

SimAS: A Simulation-assisted Approach for the Scheduling Algorithm Selection under Perturbations

Many scientific applications consist of large and computationally-intens...
research
03/12/2021

Performance Exploration of Virtualization Systems

Virtualization has gained astonishing popularity in recent decades. It i...
research
05/21/2018

Performance Reproduction and Prediction of Selected Dynamic Loop Scheduling Experiments

Scientific applications are complex, large, and often exhibit irregular ...

Please sign up or login with your details

Forgot password? Click here to reset