Комиссии в блокчейне Эфириума упали до пятилетнего минимума

investing.ruPublished on 2025-04-17Last updated on 2025-04-17

Эксперты Santiment предположили, что падение комиссионного вознаграждения в экосистеме Эфириума могло стать следствием общего снижения активности трейдеров, вызванного экономической неопределенностью в мире.

Директор по маркетингу Santiment Брайан Куинливан (Brian Quinlivan) в блоге компании написал, что уровень комиссий в сети Эфириума регулируется рыночным принципом спроса и предложения.

«Когда сеть активно используется, трейдеры повышают комиссии, чтобы их транзакции подтверждались быстрее. Это увеличивало средние затраты на операцию. Сейчас, при низкой активности, необходимости в высоких ставках нет, и комиссии падают», — объяснил он.

Снижение уровня комиссий отражает не только низкую заинтересованность, но и слабость второй по капитализации криптовалюты, чья рыночная стоимость упала на 15% за прошедший месяц и почти на 37% за прошедший год.

При этом эксперты Santiment видят в рыночной ситуации потенциал для восстановления.

Во-первых, снижение комиссий и цены актива в совокупности облегчают вход на крипторынок для новых участников, что может подстегнуть спрос, активность и стимулировать рост стоимости эфира с минимальным сопротивлением.

Во-вторых, с точки зрения разработчиков, уровень комиссий может стать идеальным временем для тестирования приложений и проведения транзакций с минимальными затратами, что может стимулировать разработку новых DeFi-протоколов и NFT-проектов.

Ранее сооснователь Эфириума Виталик Бутерин заявил, что ключевой проблемой приложений, создаваемых на базе экосистемы сети, является не их инфраструктура, а слабо выраженная социальная ценность.

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