Blockcast привлекает $2,85 млн от инвесторов

cryptonews.ruPubblicato 2019-12-15Pubblicato ultima volta 2024-10-15

Компания Blockcast объявила о завершении раунда финансирования на сумму $2,85 млн, который был возглавлен фондом Lattice. Среди других участников данного этапа по сбору средств такие крупные игроки, как AllianceDAO, Protocol Labs, Finality Capital, Zee Prime Capital, а также сооснователь Solana, Анатолий Яковенко. Это важный шаг в развитии Blockcast, который подтверждает доверие инвесторов к проекту, нацеленному на инновации в области интернет-инфраструктуры.

Одновременно с анонсом, Blockcast запустила версию V0 своего веб-портала для управления узлами сети. Он уже сейчас дает возможность пользователям взаимодействовать с системой и станет основным центром для регистрации и управления CDN (Content Delivery Network) PoP (Points of Presence). Площадка будет полезна как для коммерческих операторов, так и для глобального сообщества, открывая возможности для участия в работе децентрализованной сети.

Благодаря новому порталу, Blockcast планирует создать хаб для управления инфраструктурой CDN, что станет важным шагом для развития децентрализованных сетевых технологий. Это позволит улучшить управление и распространение данных через узлы, что в конечном итоге может привести к значительному повышению эффективности доставки контента в интернете. В будущем платформа продолжит развиваться, предоставляя более удобные и эффективные инструменты для операторов узлов.

Для того чтобы отблагодарить своих ранних сторонников, Blockcast организовала бонусную программу. Все пользователи, которые зарегистрируются на веб-портале и подпишутся на компанию в Twitter в течение 48 часов, получат 888 бонусных очков.

Основатель Blockcast, Оли Рамадан, назвал запуск портала «парадигмальной сменой» в инфраструктуре интернета. В интервью для программы Coverage Proved он подчеркнул, что участники Blockcast могут стать частью этого технологического прорыва, помогая формировать новую систему управления интернет-ресурсами, ориентированную на децентрализацию и участие сообщества.

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