1. bookVolumen 19 (2020): Heft 1 (July 2020)
16 Apr 2016
2 Hefte pro Jahr
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A Team-Compatibility Decision Support System for the National Football League

Online veröffentlicht: 29 Jun 2020
Volumen & Heft: Volumen 19 (2020) - Heft 1 (July 2020)
Seitenbereich: 60 - 101
16 Apr 2016
2 Hefte pro Jahr

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