Grayscale公布雪崩AVAX的投资信托

币界网Опубликовано 2024-08-22Обновлено 2024-08-22

币界网报道:

Grayscale Investments推出了一个新的投资信托,专注于Avalanche AVAX代币。该信托旨在为更多的投资者提供Avalanche加密货币的敞口。它现在对每日订阅开放,其工作方式与比特币和以太坊信托等其他灰度资产基金相似。

Grayscale的产品和研究主管Rayhaneh Sharif Askary表示:“Grayscale Avalanche Trust的成立突显了Grayscale一直致力于为投资者提供创新机会,以获得加密生态系统中令人兴奋的发展。”。“通过其关键的战略合作伙伴关系和独特的多链结构,Avalanche在推进RWA代币化方面发挥着关键作用。”

Grayscale Investments是世界上最大的投资公司之一。它也是最近将加密货币纳入日常金融的最大支持者之一。该公司最近将Shiba Inu列为市值最高的加密货币网络。

Grayscale管理着一系列投资信托,这些信托提供各种加密货币的敞口。这些包括比特币、以太坊、Solana、莱特币、Zcash、Chainlink和Decentraland。投资者购买信托的股份,然后投资于基础加密货币。随着关于下一个可能获得ETF的加密货币的谣言四起,Grayscale的这一更新无疑引发了人们对AVAX的猜测。

截至发稿时,Avalanche AVAX本周上涨,并对灰度新闻做出了积极回应。该资产本周上涨22%,至24.48美元。它从加密货币整体看跌的月份反弹得非常好。

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Добро пожаловать на HTX.com! Мы сделали приобретение Avalanche (AVAX) простым и удобным. Следуйте нашему пошаговому руководству и отправляйтесь в свое крипто-путешествие.Шаг 1: Создайте аккаунт на HTXИспользуйте свой адрес электронной почты или номер телефона, чтобы зарегистрироваться и бесплатно создать аккаунт на HTX. Пройдите удобную регистрацию и откройте для себя весь функционал.Создать аккаунтШаг 2: Перейдите в Купить криптовалюту и выберите свой способ оплатыКредитная/Дебетовая Карта: Используйте свою карту Visa или Mastercard для мгновенной покупки Avalanche (AVAX).Баланс: Используйте средства с баланса вашего аккаунта HTX для простой торговли.Третьи Лица: Мы добавили популярные способы оплаты, такие как Google Pay и Apple Pay, для повышения удобства.P2P: Торгуйте напрямую с другими пользователями на HTX.Внебиржевая Торговля (OTC): Мы предлагаем индивидуальные услуги и конкурентоспособные обменные курсы для трейдеров.Шаг 3: Хранение Avalanche (AVAX)После приобретения вами Avalanche (AVAX) храните их в своем аккаунте на HTX. В качестве альтернативы вы можете отправить их куда-либо с помощью перевода в блокчейне или использовать для торговли с другими криптовалютами.Шаг 4: Торговля Avalanche (AVAX)С легкостью торгуйте Avalanche (AVAX) на спотовом рынке HTX. Просто зайдите в свой аккаунт, выберите торговую пару, совершайте сделки и следите за ними в режиме реального времени. Мы предлагаем удобный интерфейс как для начинающих, так и для опытных трейдеров.

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