Spatial data science languages: commonalities and needs
Abstrak
Recent workshops brought together several developers, educators and users of software packages extending popular languages for spatial data handling, with a primary focus on R, Python and Julia. Common challenges discussed included handling of spatial or spatio-temporal support, geodetic coordinates, in-memory vector data formats, data cubes, inter-package dependencies, packaging upstream libraries, differences in habits or conventions between the GIS and physical modeling communities, and statistical models. The following set of recommendations have been formulated: (i) considering software problems across data science language silos helps to understand and standardise analysis approaches, also outside the domain of formal standardisation bodies; (ii) whether attribute variables have block or point support, and whether they are spatially intensive or extensive has consequences for permitted operations, and hence for software implementing those; (iii) handling geometries on the sphere rather than on the flat plane requires modifications to the logic of simple features, (iv) managing communities and fostering diversity is a necessary, on-going effort, and (v) tools for cross-language development need more attention and support.
Topik & Kata Kunci
Penulis (11)
Edzer Pebesma
Martin Fleischmann
Josiah Parry
Jakub Nowosad
Anita Graser
Dewey Dunnington
Maarten Pronk
Rafael Schouten
Robin Lovelace
Marius Appel
Lorena Abad
Akses Cepat
- Tahun Terbit
- 2025
- Sumber Database
- DOAJ
- DOI
- 10.5311/JOSIS.2025.31.462
- Akses
- Open Access ✓