Kristopher and Gretchen Armstrong sit down with Josh to talk about their literary journal Tomorrow and Tomorrow, how it highlights artists from Bexley, the importance of mixtapes, and ghost stories that are too unsettling for the campfire.
Join writers and artists highlighted in Tomorrow and Tomorrow's "Ghosts" issue at Austen & Company (or virtually!) on November 4th for an evening of readings and conversation!
Special thanks to fo/mo/deep for lending us their song, "Bourbon Neat" for the podcast!
Find out about upcoming Bexley Public Library events at https://www.bexleylibrary.org
Follow Bexley Public Library across platforms @bexleylibrary
Stuff You Should Know
If you've ever wanted to know about champagne, satanism, the Stonewall Uprising, chaos theory, LSD, El Nino, true crime and Rosa Parks, then look no further. Josh and Chuck have you covered.
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