Notice: file_put_contents(): Write of 7010 bytes failed with errno=28 No space left on device in /var/www/group-telegram/post.php on line 50 Михаил Хазин | Telegram Webview: hazinOpen/1628 -
Вышел очередной макроэкономический обзор Фонда Хазина: https://fondmx.pro/itogi-... ************************************** **************************************
Полная версия доступна в закрытом канале по подписке с помощью бота
Вышел очередной макроэкономический обзор Фонда Хазина: https://fondmx.pro/itogi-... ************************************** **************************************
Полная версия доступна в закрытом канале по подписке с помощью бота
BY Михаил Хазин
Warning: Undefined variable $i in /var/www/group-telegram/post.php on line 260
But the Ukraine Crisis Media Center's Tsekhanovska points out that communications are often down in zones most affected by the war, making this sort of cross-referencing a luxury many cannot afford. DFR Lab sent the image through Microsoft Azure's Face Verification program and found that it was "highly unlikely" that the person in the second photo was the same as the first woman. The fact-checker Logically AI also found the claim to be false. The woman, Olena Kurilo, was also captured in a video after the airstrike and shown to have the injuries. The War on Fakes channel has repeatedly attempted to push conspiracies that footage from Ukraine is somehow being falsified. One post on the channel from February 24 claimed without evidence that a widely viewed photo of a Ukrainian woman injured in an airstrike in the city of Chuhuiv was doctored and that the woman was seen in a different photo days later without injuries. The post, which has over 600,000 views, also baselessly claimed that the woman's blood was actually makeup or grape juice. The original Telegram channel has expanded into a web of accounts for different locations, including specific pages made for individual Russian cities. There's also an English-language website, which states it is owned by the people who run the Telegram channels. For example, WhatsApp restricted the number of times a user could forward something, and developed automated systems that detect and flag objectionable content.
from br