Ark Invest приобрела на просадке акции Coinbase, Circle и Bullish

investing.ruPubblicato 2025-11-20Pubblicato ultima volta 2025-11-20

Happycoin.club - Компания Ark Invest Кэти Вуд приобрела через два свои биржевых фонда акции криптокомпаний, увеличив позиции в организациях Coinbase, Circle и Bullish.

В отчёте Ark за вторник указано, что ARK Innovation ETF (ARKK) и ARK Fintech innovation ETF (ARKF) приобрели акции Coinbase Global на общую сумму $3 млн и акции Circle Internet Group на $3,1 млн. ARKF также приобрёл акции Bullish на сумму $1,1 млн.

Покупки произошли на фоне негативных результатов торгов акциями Coinbase и Circle: акции Coinbase закрылись с понижением на 0,82% до $261,79, в то время как Circle немного выросла на 0,013%, закрывшись на отметке $76,6.

За последние недели Ark значительно расширила свою долю в акциях криптовалютных компаний. В понедельник инвесткомпания приобрела акции Bullish на сумму $10,2 млн в трёх ETF. В прошлый четверг компания добавила акции Bullish на $7,28 млн, а также акции Circle на $15,56 млн и акции BitMine на $8,86 млн.

Ожидается, что позднее криптовалютная биржа Bullish, поддерживаемая миллиардером-инвестором Питером Тилем, опубликует свои результаты за третий квартал.

Читайте оригинальную статью на сайте Happycoin.club

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Ethereum Q1 2026 Report: Fees Decline, Users and Transaction Volume Hit New Highs

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Ethereum Q1 2026 Report: Fees Decline, Users and Transaction Volume Hit New Highs

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He Just Raised 2.7 Billion, and Li Fei-Fei Also Invested

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