Large‐scale environmental data science with ExaGeoStatR
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DOI: 10.1002/env.2770
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- Angstmann, Marius & Gärtner, Stefan & Angstmann, Marius, 2023. "Abriss, Neubau oder Sanierung - CO₂-Emissionen im Gebäudesektor: Nicht nur sparsamer, sondern auch weniger," Forschung Aktuell 09/2023, Institut Arbeit und Technik (IAT), Westfälische Hochschule, University of Applied Sciences.
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