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Biden projected to win South Carolina Democratic presidential primary

Former U.S. Vice President Joe Biden is projected to win the South Carolina Democratic presidential primary on Saturday and is expected to defeat rival Bernie Sanders decisively for his first victory of the 2020 election campaign, according an analysis of exit polls by Edison Research.
Reuters: Top News https://ift.tt/38eiS5o March 01, 2020 at 03:01AM

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