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Tsunami Hits Indonesia, Leaving More Than 300 Dead

Medical team members help patients outside a hospital after an earthquake and a tsunami hit Palu, on Sulawesi island on September 29, 2018.

Hospitals and rescuers are struggling to deal with the aftermath of a 7.5 magnitude earthquake that triggered an unexpected tsunami that struck the Indonesian island of Sulawesi.

(Image credit: Muhammad Rifki /AFP/Getty Images)

News : NPR https://ift.tt/2Ra66Oa September 29, 2018 at 07:49PM

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