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NYC Woman Blows The Lid Off This Whole 'Potato Skins' Sham

NYC Woman Blows The Lid Off This Whole 'Potato Skins' Sham A woman in the Bronx has called bullshit on a farce that's been allowed to go on too long: The bagged potato products TGI Fridays has been peddling as "skins," despite their patently being skinless chips. [ more › ] Gothamist https://ift.tt/2FHKwg6 March 29, 2019 at 01:01AM

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