Виталик Бутерин хочет повысить прозрачность управления Ethereum

investing.ruPublished on 2024-09-29Last updated on 2024-09-29

Happycoin.club - Создатель Ethereum (ETH) Виталик Бутерин призвал к применению более чёткого и прозрачного подхода к управлению блокчейном. Он считает, что сообщество должно найти баланс между децентрализацией и сотрудничеством, объединив для этого все заинтересованные стороны для достижения общей цели.

Сейчас экосистема Ethereum построена на широком круге участников, включая пользователей, программистов, разработчиков сетей второго уровня. Все они работают над собственным видением будущего блокчейна, что может помешать построить целостную экосистему, считает Бутерин. Избежать этого поможет идея «выравнивания», которая подразумевает согласование общих ценностей, соблюдение единых стандартов и использование выпущенной в сети криптовалюты.

Виталик Бутерин

Достичь этого непросто, поэтому Бутерин предлагает сосредоточиться на отдельных моментах. Например, на открытом исходном коде, поскольку он обеспечивает безопасность благодаря проверке и снижает риск блокировки по собственной инициативе. Другим важным компонентом экосистемы являются открытые стандарты. Основатель Ethereum считает, что проекты должны быть совместимы с существующими стандартами, такими как ERC-20 или ERC-1271. По мере необходимости также следует разрабатывать новые стандарты.

Далее идёт децентрализация и безопасность. Бутерин полагает, что стартапам нужно минимизировать зависимость от централизованной инфраструктуры. Понять, насколько велика эта зависимость, помогут ответы вопросы. Например, что будет с сетью второго уровня, если сервера или команда разработчиков исчезнут.

Виталик Бутерин считает, что подобное «выравнивание» должно принести пользу не только отдельным проектам на базе блокчейна, но и всему криптосообществу. Он уверен, что скоро появится больше организаций, таких как L2beat, которые будут отслеживать, соответствуют ли проекты определённым критериям.

Читайте оригинальную статью на сайте Happycoin.club

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