Companion data of a Systematic Mapping Study of Programming Languages for Data-Intensive HPC Applications

Contributors
  • Vasco Amaral
  • Beatriz Norberto
  • Miguel Goulão
  • Marco Aldinucci
  • Siegfried Benkner
  • Andrea Bracciali
  • Paulo Carreira
  • Edgars Celms
  • Luís Correia
  • Clemens Grelck
  • Helen Karatza
  • Christoph Kessler
  • Peter Kilpatrick
  • Ilias Mavridis
  • Sabri Pllana
  • Ana Respício
  • José Simão
  • Luís Veiga
Publication date 24-10-2019
Description
As the current existing literature on the topic of HPC is very dispersed, we performed a Systematic Mapping Study (SMS) in the context of the European COST Action cHiPSet. This literature study maps characteristics of various programming languages for data-intensive HPC applications, including category, typical user profiles, effectiveness, and type of articles. We organised the SMS in two phases. In the first phase, relevant articles are identified employing an automated keyword-based search in eight digital libraries. This lead to an initial sample of 420 papers, which was then narrowed down in a second phase by human inspection of article abstracts, titles and keywords to 152 relevant articles published in the period 2006--2018. The analysis of these articles enabled us to identify 26 programming languages referred to in 33 of relevant articles. This document is the data companion for a paper published elsewhere and presents a detailed list of the selected papers. Besides, the document also presents the form of our questionnaire-based survey. We also include the filled in questionnaires and raw data of the referred survey. To validate the SMS results we conducted a survey (in November 2018) with 28 HPC experts involved in the cHiPSet COST action to which we added, in October 2019, 29 HPC experts which were not involved in that COST action. Participants were recruited through convenience sampling, and contacted directly by the authors. In total, we received 57 filled survey forms.
Publisher Zenodo
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Document type Dataset
Related publication Programming languages for data-Intensive HPC applications: A systematic mapping study
DOI https://doi.org/10.5281/zenodo.3518028
Other links https://zenodo.org/record/3518028
Permalink to this page
Back