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House Split On Immigration Might Be Good Politics For Some Moderate Republicans

In this May 28, 2014, file photo, then-California state Sen. Steve Knight, R-Palmdale, speaks at the Capitol in Sacramento, Calif.

California Republican Rep. Steve Knight is pushing for a vote on bipartisan immigration legislation. This puts him at odds with GOP leadership in the House during an election year.

(Image credit: Rich Pedroncelli/AP)

News : NPR https://ift.tt/2srzZhd May 31, 2018 at 01:40AM

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