Contribution to a conference proceedings FZJ-2022-03547

http://join2-wiki.gsi.de/foswiki/pub/Main/Artwork/join2_logo100x88.png
Speed-Up of Machine Learning for Sound Localization via High-Performance Computing

 ;  ;  ;  ;

2022
IEEE

26th International Conference on Information Technology (IT), IT, ZabljakZabljak, Montenegro, 16 Feb 2022 - 19 Feb 20222022-02-162022-02-19 IEEE 1-4 () [10.1109/IT54280.2022.9743519]

This record in other databases:

Please use a persistent id in citations:   doi:

Abstract: Sound localization is the ability of humans to determine the source direction of sounds that they hear. Emulating this capability in virtual environments can have various societally relevant applications enabling more realistic virtual acoustics. We use a variety of artificial intelligence methods, such as machine learning via an Artificial Neural Network (ANN) model, to emulate human sound localization abilities. This paper addresses the particular challenge that the training and optimization of these models is very computationally-intensive when working with audio signal datasets. It describes the successful porting of our novel ANN model code for sound localization from limiting serial CPU-based systems to powerful, cutting-edge High-Performance Computing (HPC) resources to obtain significant speed-ups of the training and optimization process. Selected details of the code refactoring and HPC porting are described, such as adapting hyperparameter optimization algorithms to efficiently use the available HPC resources and replacing third-party libraries responsible for audio signal analysis and linear algebra. This study demonstrates that using innovative HPC systems at the Jülich Supercomputing Centre, equipped with high-tech Graphics Processing Unit (GPU) resources and based on the Modular Supercomputing Architecture, enables significant speed-ups and reduces the time-to-solution for sound localization from three days to three hours per ANN model.


Contributing Institute(s):
  1. Jülich Supercomputing Center (JSC)
Research Program(s):
  1. 5111 - Domain-Specific Simulation & Data Life Cycle Labs (SDLs) and Research Groups (POF4-511) (POF4-511)
  2. RAISE - Research on AI- and Simulation-Based Engineering at Exascale (951733) (951733)
  3. PhD no Grant - Doktorand ohne besondere Förderung (PHD-NO-GRANT-20170405) (PHD-NO-GRANT-20170405)

Appears in the scientific report 2022
Database coverage:
OpenAccess
Click to display QR Code for this record

The record appears in these collections:
Dokumenttypen > Ereignisse > Beiträge zu Proceedings
Workflowsammlungen > Öffentliche Einträge
Institutssammlungen > JSC
Publikationsdatenbank
Open Access

 Datensatz erzeugt am 2022-09-29, letzte Änderung am 2022-10-01


Dieses Dokument bewerten:

Rate this document:
1
2
3
 
(Bisher nicht rezensiert)