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Justice Department Sides Against Harvard In Racial Discrimination Lawsuit

Harvard University is facing legal action over its admissions policies, and the U.S. Department of Justice is supporting the lawsuit

The Justice Department says Harvard has "failed to show that it does not unlawfully discriminate against Asian-Americans." Harvard says it doesn't discriminate against any group.

(Image credit: Darren McCollester/Getty Images)

News : NPR https://ift.tt/2LGVan9 August 30, 2018 at 10:52PM

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