Messari сократила персонал на 15%

cryptonews.ruPublicado a 2023-08-11Actualizado a 2025-01-11

Исследовательская фирма Messari сократила персонал на 15%, сфокусировавшись на ключевых направлениях, сообщает The Block.

«Ранее на этой неделе мы внесли некоторые изменения в нашу организационную структуру, чтобы оптимизировать бизнес и существенно ускорить рост, который мы наблюдаем среди наших основных продуктовых линеек», — отметил глава компании Эрик Тернер в разговоре с изданием.

Знакомый с ситуацией источник сообщил, что компания также не продлила контракты с рядом внештатных сотрудников — что часто практикуется в начале года.

Основанная в 2018 году Messari является одной из самых известных исследовательских фирм в индустрии. Компания публикует аналитические отчеты о развивающихся секторах криптоиндустрии, предоставляет ценовые данные и ежегодно проводит конференцию Mainnet в Нью-Йорке.

В 2021 году Messari привлекла инвестиции на $21 млн, а в 2022 — на $35 млн при оценке в $300 млн.

Экс-глава фирмы Райан Селкис планировал нанять 1000 аналитиков, однако в июле 2024 года покинул пост.

Вероятно, причиной стали заявления основателя Messari касательно покушения на Дональда Трампа. Согласно CoinDesk, он эмоционально отреагировал на инцидент в ряде постов, а также повторил антиммиграционную политику движения кандидата в президенты США.

Сокращения персонала не редкость в индустрии: ранее в декабре крупнейший майнинг-пул Foundry снизил численность сотрудников на 27% — с 274 до 200 человек.

Напомним, в конце прошлого года существенно сократили персонал такие известные игроки, как Kraken и dYdX.

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