Democrat James Clyburn alleges Trump’s connection to Mother Emanuel AME Church shooting
Rep. James Clyburn Blames Donald Trump for Charleston Church Shooting
In a recent interview on CNN’s “State of the Union,” Rep. James Clyburn (D-SC) pointed fingers at former President Donald Trump for the tragic 2015 shooting at Mother Emanuel AME Church in Charleston, South Carolina. The attack, carried out by a white supremacist, resulted in the deaths of nine African-Americans.
When asked by CNN’s Jake Tapper if it was fair to connect the church shooting to Trump, Clyburn responded, “It is very clear that Donald Trump’s words, even before the events in Charlottesville, tie him to what happened at Mother Emanuel. That young man entered the church’s basement, joined the worshippers in Bible study, and committed this heinous act.”
Clyburn further emphasized the impact of Trump’s rhetoric, stating, “Trump’s response to the Charlottesville incident, where he claimed there were ‘good people on both sides,’ while individuals chanted anti-Semitic slogans, shows his support for such activities. This directly links him to the tragedy at Mother Emanuel.”
Despite the tragedy, Clyburn commended the resilience of the Charleston community, stating, “The people of Charleston and the families of the victims came together to rise above hate and strive for a more perfect union.”
Watch the interview below:
WILD: A historically illiterate Democrat Rep. Jim Clyburn says Donald Trump — who wouldn’t become president for another 18 months — is to blame for the horrific 2015 shooting at Mother Emanuel AME Church in Charleston… pic.twitter.com/wlD4MWzXtI
— Steve Guest (@SteveGuest) January 7, 2024
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