Рост сложности майнинга биткоина достигает нового исторического максимума

cryptonews.ruPublished on 2025-11-24Last updated on 2025-11-24

За последние 24 часа сложность майнинга биткоина выросла на 3.2%, достигнув нового исторического максимума, согласно данным аналитических платформ. Этот пересчет отражает увеличение вычислительных мощностей сети, поскольку все больше майнеров присоединяются к конкуренции за добычу блоков. Текущая сложность составляет около 129.7 триллиона хешей, что подчеркивает нарастающую конкуренцию и укрепление безопасности сети биткоина. Этот рост связан с увеличением хешрейта сети, который недавно превысил 847 EH/s, что свидетельствует о значительных инвестициях в новое оборудование и расширение майнинговых операций.

Повышение сложности майнинга оказывает двойственное влияние на майнеров. С одной стороны, оно укрепляет безопасность сети, делая атаки на блокчейн более затруднительными, так как требуется больше вычислительных ресурсов для нахождения нового блока. С другой стороны, рост сложности снижает прибыльность майнинга, особенно для небольших участников, использующих менее эффективное оборудование. После халвинга в апреле 2024 года, когда награда за блок сократилась, майнеры столкнулись с дополнительным давлением из-за увеличения операционных затрат, включая расходы на электроэнергию и оборудование. Некоторые компании, такие как CleanSpark, адаптируются, используя возобновляемые источники энергии и наращивая свои резервы биткоинов, в то время как менее эффективные майнеры могут быть вытеснены с рынка.

Этот рост сложности также отражает долгосрочный восходящий тренд в экосистеме биткоина, несмотря на временные корректировки. Например, в июне 2025 года сложность слегка снизилась с пика в 126.9 триллиона до 126.4 триллиона, но текущий скачок подтверждает устойчивый интерес к майнингу. Эксперты отмечают, что такие изменения могут стимулировать инновации, включая переход на более энергоэффективные ASIC-майнеры или использование альтернативных стратегий, таких как майнинг других криптовалют на совместимом оборудовании. В условиях, когда цена биткоина остается выше $90,000, майнинг все еще остается прибыльным для крупных игроков, но дальнейшее увеличение сложности может усилить давление на рынок, особенно если цена криптовалюты начнет снижаться.

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