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VIDEO: Rockefeller Center 'Die In' Sets Stage For Intensifying Climate Change 'Rebellion'

  
Extinction Rebellion NYC, a local branch of the international climate justice protest group, took part in the country's first day of coordinated day of action over the weekend, staging a die-in at Rockefeller Center's skating rink in Manhattan. Saturday's action was, in the words of the group, "Rebellion Day 1." [ more › ] Gothamist http://bit.ly/2G9NLhd January 30, 2019 at 12:13AM

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