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FAA Begins Test Flights For Boeing's Troubled 737 Max

A Boeing 737 Max heads to a landing past grounded 737 Max aircraft at Boeing Field following a test flight Monday in Seattle. The jet took off from Boeing Field earlier in the day, the start of three days of re-certification test flights that mark a step toward returning the aircraft to passenger service.

More than a year after the plane's grounding because of two deadly crashes, the FAA began a series of certification flights Monday, a big step toward allowing the 737 Max to fly passengers again.

(Image credit: Elaine Thompson/AP)

News : NPR https://ift.tt/3dOipts June 30, 2020 at 10:42AM

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