Exploring the Relation Between Two Levels of Scheduling Using a Novel Simulation Approach

11/04/2018
by   Ahmed Eleliemy, et al.
0

Modern high performance computing (HPC) systems exhibit a rapid growth in size, both "horizontally" in the number of nodes, as well as "vertically" in the number of cores per node. As such, they offer additional levels of hardware parallelism. Each such level requires and employs algorithms for appropriately scheduling the computational work at the respective level. The present work explores the relation between two scheduling levels: batch and application. Understanding this relation is important for improving the performance of scientific applications, that are scheduled and executed in batches on HPC systems. The relation between batch and application level scheduling is understudied in the literature. Understanding the relation and interaction between these two scheduling levels requires their simultaneous analysis during operation. In this work, such an analysis is performed via simultaneous simulation of batch and application level scheduling for a number of scenarios. A generic simulation approach is presented that bridges two existing simulators from the two scheduling levels. A novel two-level simulator that implements the proposed approach is introduced. The two-level simulator is used to simulate all combinations of three batch scheduling and four application scheduling algorithms from the literature. These combinations are considered for allocating resources and executing the parallel jobs of two batches from two production HPC systems. The results of the scheduling experiments reveal the strong relation between the two scheduling levels and their mutual influence. Complementing the simulations, the two-level simulator produces standard parallel execution traces, which can visually be examined and which illustrate the execution of different jobs and, for each job, the execution of its tasks at node and core levels, respectively.

READ FULL TEXT

page 18

page 20

research
03/24/2021

Towards Accommodating Real-time Jobs on HPC Platforms

Increasing data volumes in scientific experiments necessitate the use of...
research
04/22/2022

nOS-V: Co-Executing HPC Applications Using System-Wide Task Scheduling

Future Exascale systems will feature massive parallelism, many-core proc...
research
02/14/2020

An optimal scheduling architecture for accelerating batch algorithms on Neural Network processor architectures

In neural network topologies, algorithms are running on batches of data ...
research
08/01/2021

Webots.HPC: A Parallel Robotics Simulation Pipeline for Autonomous Vehicles on High Performance Computing

In the rapidly evolving and maturing field of robotics, computer simulat...
research
05/29/2019

Evaluation of pilot jobs for Apache Spark applications on HPC clusters

Big Data has become prominent throughout many scientific fields and, as ...
research
03/03/2021

Distributed statistical inference with pyhf enabled through funcX

In High Energy Physics facilities that provide High Performance Computin...
research
09/21/2022

POAS: A high-performance scheduling framework for exploiting Accelerator Level Parallelism

Heterogeneous computing is becoming mainstream in all scopes. This new e...

Please sign up or login with your details

Forgot password? Click here to reset