ie Zukunft des Übersetzerberufs im Zeitalter der künstlichen Intelligenz. Ergebnisse einer Umfrage unter polnischen Übersetzern, Übersetzungstrainers und Studierenden der Übersetzung

Marek Łukasik

Abstract


Der Beitrag enthält das Abstract ausschließlich in englischer Sprache.


Schlagworte


Künstliche Intelligenz; neuronale maschinelle Übersetzung; professionelle Übersetzung; Übersetzungsstudien

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Literaturhinweise


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DOI: http://dx.doi.org/10.17951/lsmll.2024.48.3.25-39
Date of publication: 2024-10-07 11:52:24
Date of submission: 2024-05-22 00:42:05


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