В подвале Вроцлавского университета обнаружена подпольная майнинговая ферма

cryptonews.ruPublished on 2024-01-05Last updated on 2024-12-05

В подвале одного из старейших университетов Польши произошло задымление вентиляционной шахты, в результате чего сработала пожарная сигнализация. Прибывшие на место сотрудники спецслужб обнаружили незаконную майнинговую ферму.

Как сообщили представители правоохранительных органов, спрятанное в подвале юридического факультета Вроцлавского университета майнинговое оборудование было связано с внешними системами маршрутизации только беспроводным способом. Причиной задымления стало возгорание компьютерных устройств в результате короткого замыкания.

Изъятое оборудование было передано в Центральное бюро по борьбе с киберпреступностью Польши, которое возбудило уголовное дело и сейчас работает над установлением причастных лиц. В дополнение к обвинениям в незаконной коммерческой деятельности, виновные могут столкнуться со штрафами за кражу электроэнергии.

Это не первый случай, когда подпольные майнеры устанавливают оборудование в государственных учреждениях. Так, в прошлом году спецслужбы конфисковали устройства, установленные в вентиляционной шахте Высшего административного суда в Варшаве, что привело к ущербу в более чем 1 миллион злотых (233 000 евро или $242 000).

Ранее Национальное управление электроэнергетики Парагвая (ANDE) сообщило о закрытии крупной подпольной майнинговой фермы в Сальто-дель-Гуайра и конфискации 2 738 устройств для добычи криптовалют.

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