Tether удвоит штат сотрудников к середине 2025 года

cryptonews.ruPublicado a 2023-09-09Actualizado a 2024-08-09

  • Эмитент стейблкоина USDT намерен увеличить количество персонала до 200 человек.
  • Удвоить число сотрудников планируют к середине 2025 года.
  • Новые специалисты должны будут усилить работу компании в области соблюдения нормативных требований и управления финансами.

Генеральный директор компании Tether Паоло Ардоино заявил, что эмитент стейблкоина USDT планирует удвоить штат сотрудников в ближайшие 12 месяцев. Об этом он сказал в интервью Bloomberg.

По словам CEO, фирма намерена увеличить численность персонала до 200 человек. Этой отметки Tether хочет достичь к середине 2025 года.

«Мы гордимся тем, что наша компания очень бережлива, и мы хотим оставаться бережливыми, потому что хотим быть гибкими. Мы очень тщательно подходим к найму людей, приглашая только высококлассных специалистов», — заявил Ардоино.

Компания намерена нанять специалистов, которые смогут повысить эффективность ее работы в направлении соблюдения нормативных требований. Помимо этого, Tether ищет сотрудников для финансового отдела, который управляет активами фирмы на $118 млрд.

Ардоино отметил, что эмитент USDT до недавнего времени располагал относительно небольшой командой. По его словам, это объясняется высоким уровнем автоматизации рабочих процессов.

К примеру, для мониторинга потенциальной незаконной деятельности на вторичном рынке USDT в основном требуются инструменты, которые во многом автономны. Именно по этой причине Tether в мае 2024 года объявила о партнерстве с аналитической компанией Chainalysis.

Отметим, что в начале августа эмитент стейблкоина USDT опубликовал финансовый отчет за первое полугодие. Согласно документу, чистая операционная прибыль фирмы за этот период составила $5,2 млрд.

Во II квартале 2024 года Tether Group заработала $1,3 млрд, а собственные активы компании увеличились на $520 млн.

Напомним, мы писали, что глава Tether анонсировал запуск нового продукта в экосистеме компании.

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