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Einführung: Zehn Thesen zu Big Data und Berechenbarkeit

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Berechenbarkeit der Welt?

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Der vorliegende Band ist ein Experiment. In einer thematischen und methodischen Breite, wie sie einst von Francis Bacon zu Anfang der modernen westlichen Wissenschaft eingefordert wurde, wie sie aber in der heutigen Wissenschaftslandschaft mit ihrer immer weiter fortschreitenden Spezialisierung kaum noch praktiziert wird, widmet er sich dem Thema Berechenbarkeit.

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Pietsch, W., Wernecke, J. (2017). Einführung: Zehn Thesen zu Big Data und Berechenbarkeit. In: Pietsch, W., Wernecke, J., Ott, M. (eds) Berechenbarkeit der Welt?. Springer VS, Wiesbaden. https://doi.org/10.1007/978-3-658-12153-2_1

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  • DOI: https://doi.org/10.1007/978-3-658-12153-2_1

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