Антон Горелкин: ФНС гарантирует сохранность данных майнеров

cryptonews.ruPublished on 2024-05-07Last updated on 2025-02-07

Заместитель председателя комитета Госдумы по информационной политике, связи и информации Антон Горелкин обсудил с Федеральной налоговой службой (ФНС) вопрос защиты данных майнеров и заявил, что ведомство гарантирует их сохранность.

Горелкин подчеркнул, что к нему поступает множество вопросов от представителей майнинговых компаний, касающихся сохранности критически важной информации, в частности, адресов криптовалютных кошельков. Утечка таких данных может представлять угрозу, поскольку адреса криптокошельков могут быть использованы для отслеживания транзакций недружественными странами.

«В ФНС меня заверили что информация о намайненной криптовалюте и адресах-идентификаторах хранится в закрытой внутренней системе с ограниченным доступом. Доступ к этим данным серьезно ограничен даже внутри ведомства, а извне его получить практически невозможно», — сообщил Горелкин.

По его словам, хотя специалисты по информационной безопасности утверждают, что любые данные могут быть украдены, в налоговой службе уверены, что их внутренние системы надежно защищены от взлома.

Ранее Антон Горелкин сообщил, что российские чиновники объявили майнеров главным источником проблем и угрозой для энергосистемы.

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