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Full text: VerifAI - Studie zur zielbasierten Standardisierung in der Prüfung und Zulassung intelligenter Entscheidungseinrichtungen von teilautonomen Überwasserfahrzeugen

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Fraunhofer Ch.L 
erif Al 
Bundesamt für Seeschifffahrt und Hydrographie 
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