Author:
Wu Haoze,Isac Omri,Zeljić Aleksandar,Tagomori Teruhiro,Daggitt Matthew,Kokke Wen,Refaeli Idan,Amir Guy,Julian Kyle,Bassan Shahaf,Huang Pei,Lahav Ori,Wu Min,Zhang Min,Komendantskaya Ekaterina,Katz Guy,Barrett Clark
Abstract
AbstractThis paper serves as a comprehensive system description of version 2.0 of the Marabou framework for formal analysis of neural networks. We discuss the tool’s architectural design and highlight the major features and components introduced since its initial release.
Publisher
Springer Nature Switzerland
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