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Ahead Of Trump's Speech, A State Of Disunion On Capitol Hill

A view of the U.S. Capitol a day before the State of the Union address by President Trump.

One Republican lawmaker asked authorities to check the identification of immigrants coming as guests. A Democrat is bringing the candidate challenging House Speaker Paul Ryan to sit in the audience.

(Image credit: Brendan Smialowski/AFP/Getty Images)

News : NPR http://ift.tt/2rV0bnw January 31, 2018 at 01:33AM

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