Ралли биткоина до $93,000 обеспечило трейдеру прибыль $6,85 млн

cryptonews.ruPublicado a 2022-06-20Actualizado a 2024-11-20

Аналитики платформы Lookonchain заявили о том, что неизвестный трейдер смог получить $6,85 млн прибыли на фоне ралли биткоина. По их данным, с 6 по 8 ноября он продал 619 WBTC ($46,44 млн) по $75 029 и заработал $8,85 млн.

Биткоин

Однако после продажи котировки первой криптовалюты смогли преодолеть отметку $80 000. Трейдер принял решение откупить 562 WBTC ($45,46 млн) по $80 895. 19 ноября он продал активы, в момент, когда курс биткоина смог достичь отметки в $93 000 уже за $52,3 млн.

Как подсчитали эксперты, трейдер смог за короткий период получить более $6,85 млн чистой прибыли. По мнению аналитиков, трейдер выждал удачный момент, предполагая, что курс цифрового золота сможет продемонстрировать восходящее ралли.

Его расчёт оказался верным, что и позволило инвестору получить многомиллионную прибыль. В данном случае речь не идёт об инсайдерской торговле или иных приёмах, позволяющих участникам рынка за короткий срок заработать состояние. Этот трейдер просто воспользовался трендом на рынке и завершил сделку в плюсе.

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