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27th Edition of International Research Awards on NSGA |         25-26 June 2025 | Dubai United Arab Emirates



The International Research Awards on Network Science and Graph Analytics recognize outstanding contributions in studying the structure, behavior, and dynamics of complex networks, including social, biological, and transportation networks. These awards, presented by professional societies and academic organizations, honor early-career researchers and lifetime achievers for their scientific impact and innovation. Winners receive global recognition, a certificate, a medal, and a memento, with their profiles permanently listed online. The awards enhance reputations, set benchmarks, and foster collaboration by bringing together researchers and industry experts to advance interdisciplinary research in the field

International Research Awards on Network Science and Graph Analytics

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