Эксперт: в криптокошельках можно будет хранить документы

cryptonews.ruPubblicato 2024-05-22Pubblicato ultima volta 2024-09-22

  • Термин «криптокошелек» может исчезнуть к 2030 году, считает CEO Reown.
  • По мнению Джесс Хоулгрейв, в криптокошельках можно будет хранить документы.

Генеральный директор компании Reown (ранее WalletConnect) Джесс Хоулгрейв (Jess Houlgrave) считает, что термин «криптокошелек» может исчезнуть в течение следующих шести лет. Об этом сообщает Cointelegraph со ссылкой на ее слова на конференции TOKEN2049.

По мнению Хоулгрейв, к 2030 году криптокошельки превратятся в «жизненный центр». Она предположила, что через несколько лет в них будут храниться медицинские записи, документы об образовании и билеты.

CEO Reown признала, что некоторые могут скептически относиться к тому, чтобы связывать большую часть своей жизни с цифровым кошельком, однако «системы станут намного безопаснее, и теперь конфиденциальную информацию будет гораздо сложнее украсть».

«Это будет центр, состоящий из множества кошельков и аккаунтов, которые смогут взаимодействовать друг с другом, обмениваться информацией и управлять политикой друг друга», — пояснила Джесс Хоулгрейв.

Также она подчеркнула, что «это действительно правильная позиция на рынке для людей, которые хотят безопасности, хотя некоторые с этим не соглашаются».

Ранее мы сообщали, что убытки от хакерских атак в августе составили $313,86 млн.

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