CryptoQuant: Капитуляция майнящих биткоин подходит к концу

cryptonews.ruPubblicato 2022-01-20Pubblicato ultima volta 2024-08-20

Аналитики компании CryptoQuant заявили: индикатор Hash Ribbons сигнализирует о том, что крупные майнеры переходят на более энергоэффективное оборудование и возвращаются на рынок.

30-дневная скользящая средняя индикатора Hash Ribbons пересекла 60-дневную скользящую среднюю на графике CryptoQuant. По мнению представителей компании, такое положение часто совпадает с минимальной ценой биткоина и дает возможность инвесторам войти на рынок на более выгодных условиях.

«Индикатор Hash Ribbons указывает, что капитуляция майнеров близка к завершению. Снижение прибыли из-за увеличения вычислительной мощности и уменьшения вознаграждения за блок заставляет компании вкладывать средства в более энергоэффективное оборудование и центры по обработке данных», — объяснили аналитики.

Эксперты CryptoQuant считают, что майнеры продолжат придерживаться выбранной стратегии диверсификации инвестиций, ожидая роста стоимости первой криптовалюты к концу года до $70 000 и выше.

В CryptoQuant ожидают, что мелкие майнеры постепенно будут покидать рынок, поскольку у них отсутствуют средства для приобретения дорогостоящего оборудования, и на рынке начнут формироваться конгломераты крупных участников.

Ранее специалисты инвестиционной компании VanEck описали возможные способы повышения доходов биткоин-майнеров, указав, что компании смогут получать до $14 млрд ежегодно, сдав часть своих центров по обработке данных в аренду разработчикам искусственного интеллекта.

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