e15ee6b62da478435bf54958bab2c2cf *DESCRIPTION
995c621b337637285a550cd91b38e783 *NAMESPACE
cc3e00457803e95c67f5e68c4f98ce86 *NEWS.md
6e1b83e185660adc33aab555236d57aa *R/00_global_vars.R
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35052c2c25957a2881ffe97494ba859b *R/augment-tk_augment_slidify.R
ca46acecbf8be2ee45520e605db08526 *R/augment-tk_augment_timeseries.R
7bf130b3ba02e8cd149344ceb71acefe *R/coersion-tk_tbl.R
b1b8a2297fc01c40a03a84061b498eef *R/coersion-tk_ts.R
3a58958cbc6e9b6dc849b391aed6e681 *R/coersion-tk_xts.R
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1ad046d7d148c195fd18c5fdc8e0e77c *R/zzz.R
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