XPySom: High-Performance Self-Organizing Maps

Type of publication
Publication in Conference Proceedings/Workshop
Authors

Riccardo Mancini, Antonio Ritacco, Giacomo Lanciano, Tommaso Cucinotta. IEEE. 2020.

Conference / Journal
32nd International Symposium on Computer Architecture and High Performance Computing (SBAC-PAD)
Publisher
IEEE
Year of publication
2020
Place of publication
Porto, Portugal
Citation

Riccardo Mancini, Antonio Ritacco, Giacomo Lanciano, Tommaso Cucinotta. XPySom: High-Performance Self-Organizing Maps.

Abstract

In this paper, we introduce XPySom, a new open-source Python implementation of the well-known Self-Organizing Maps (SOM) technique. It is designed to achieve high performance on a single node, exploiting widely available Python libraries for vector processing on multi-core CPUs and GP-GPUs. We present results from an extensive experimental evaluation of XPySom in comparison to widely used open-source SOM implementations, showing that it outperforms the other available alternatives. Indeed, our experimentation carried out using the Extended MNIST open data set shows a speed-up of about 7x and 100x when compared to the best open-source multi-core implementations we could find with multi-core and GP-GPU acceleration, respectively, achieving the same accuracy levels in terms of quantization error.

DOI
https://doi.org/10.1109/SBAC-PAD49847.2020.00037
ISSN number
2643-3001