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Look At This Big Ass Subway Iguana Who Thinks He's A Dog

Look At This Big Ass Subway Iguana Who Thinks He's A Dog We've seen emotional support hens and dead sharks and ducks on leashes and ravenous raccoons all cram onto express trains in order to commute to work or whatever the Animal Farm equivalent is. Some of them were cute, some of them were memorable, and some of them were just weird as heck. But none of them—and I mean NONE of them—had the integrity, the physical presence, and the audacity of Iggy, the big ass iguana spotted on the subway this week. [ more › ] Gothamist https://ift.tt/2OpQHKS September 28, 2018 at 10:45PM

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