TY - CONF
AU - Fabian, Hoppe
AU - Gutiérrez Hermosillo Muriedas, J. P.
AU - Tarnawa, Michael
AU - Philipp, Knechtges
AU - Hagemeier, Björn
AU - Krajsek, Kai
AU - Alexander, Rüttgers
AU - Markus, Götz
AU - Comito, Claudia
TI - Engineering a large-scale data analytics and array computing library for research: Heat
PB - Electronic Communications of the EASST
M1 - FZJ-2025-03345
SP - 1-26
PY - 2025
AB - Heat is a Python library for massively-parallel and GPU-accelerated arraycomputing and machine learning. It is developed by researchers for researchers,with the ultimate goal to make multi-dimensional array processing and machinelearning for scientists (almost) as easy on a supercomputer as it is on a workstationwith NumPy or scikit-learn. This paper highlights the relevance of this project to theresearch software engineering community by giving a short, but illustrative overviewof Heat and discusses its role in the context of related libraries with a specific focuson its research software aspects.
T2 - Fourth Conference on Research Software Engineering in Germany, deRSE24
CY - 5 Mar 2024 - 7 Mar 2024, Würzburg (Germany)
Y2 - 5 Mar 2024 - 7 Mar 2024
M2 - Würzburg, Germany
KW - Multi-dimensional Arrays (Other)
KW - Machine learning (Other)
KW - Data Science (Other)
KW - Data analytics (Other)
KW - High-Performance Computing (Other)
KW - Parallel Computing (Other)
KW - GPUs (Other)
KW - Big Data (Other)
KW - Research Software (Other)
LB - PUB:(DE-HGF)8 ; PUB:(DE-HGF)7
DO - DOI:10.14279/eceasst.v83.2626
UR - https://juser.fz-juelich.de/record/1044789
ER -