A Minimally Invasive Approach Towards “Ecosystem Hacking” With Honeybees
Martin Stefanec(University of Graz), Thomas Schmickl(University of Graz), Barry Lennox(University of Manchester), Hande Alemdar(Middle East Technical University), Daniel Nicolas Hofstadler(University of Graz), Erol Şahi̇n(Middle East Technical University), Farshad Arvin(Durham University), Tomáš Krajník(Czech Technical University in Prague), Ali Emre Turgut(KU Leuven)
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