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I have a dataset in which one of the variables date and time with the format 01JUN17:00:00:00. I am trying to analyze the effect of just the time of day on my data, so I would like to know if there is a way to separate the variable into two separate variables so I can isolate the time.

marked as duplicate by G. Grothendieck, Rui Barradas, divibisan, Lazar Ljubenović, tarleb Sep 14 at 18:48

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  • What you have there, does it correspond to 00:00 on 1 June 17? – ifly6 Sep 14 at 16:40
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    What is the structure of your data frame? Is that variable a string? If so then I suggest to convert it to datetime(as.POSIXct) and work with that...extract days, hours, ...etc – Sotos Sep 14 at 16:44
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    Use the package lubridate to parse the string into a Date object, and then extract the appropriate parts (date, time, month, year, etc.) from it – divibisan Sep 14 at 16:46
up vote 0 down vote accepted

I have a dataset in which one of the variables date and time with the format 01JUN17:00:00:00. I am trying to analyze the effect of just the time of day on my data, so I would like to know if there is a way to separate the variable into two separate variables so I can isolate the time.

The Tidyverse\Tidyr\Dplyr function separate() can do this. Separate your variable at the 8th character from the left.

library(tidyverse)
my_data <- tibble(my_date_time = c("01JUN17:00:00:00", "01JUN17:01:00:00", "01JUN17:02:00:00"))
my_data
my_data <- separate(data=my_data, col=my_date_time, into=c("my_date","my_time"), sep=8)
my_data
#the new columns are chracter strings, use the readr::parse_time() function to convert
my_data$my_time <- parse_time(my_data$my_time)
my_data

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