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Interview: Kurt Vile Doesn't Want To Be In A Rush

Interview: Kurt Vile Doesn't Want To Be In A Rush Kurt Vile likes to take his time. He says it's the closest thing he has to a mantra for making music: "You just can't be in a rush," he told Gothamist. "As long as you're hypnotized in some sort of groove or just getting off the pretty notes. All those things, just don't be in a rush. Just be there in the moment." [ more › ] Gothamist https://ift.tt/2TXnRld November 28, 2018 at 10:53PM

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