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Despite widow's tearful plea, judge grants bond to ex-cop who killed her husband

A white former Atlanta police officer charged with felony murder in the death of African American Rayshard Brooks was granted a bond of $500,000 on Tuesday.ABC News: Top Stories https://ift.tt/3dRJn3s July 01, 2020 at 05:05AM

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Solving Van der Pol equation with ivp_solve

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