We are developing a deep-learning neural network system to discover and assess patterns in multimodal data gathered worldwide across all media fields for indicators of nuclear proliferation capabilities and activities, revolutionizing our data analytic capabilities to support national security, nonproliferation, cyber and space security, intelligence, and biosecurity.
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Feldman, Y., et al. 2018. "Toward a Multimodal-Deep Learning Retrieval System for Monitoring Nuclear Proliferation Activities." Journal of Nuclear Materials Management. LLNL-JRNL-751737.
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