# calculating number of days between 2 columns of dates in data frame

I have a data frame which has two columns of dates in the format yyyy/mm/dd. I am trying to calculate the number of days between these two dates for each observation within the data frame (and create a new variable with this number of days in it).

So far I have tried using the answer given here:

Calculate the number of weekdays between 2 dates in R

but editing the code so that it calculates number of total days rather than just the number of week days. This just came up with error saying:

``````Error in del/by : non-numeric argument to binary operator
In Ops.factor(to, from) : - not meaningful for factors
``````

I have also attempted using this code:

``````finish <- as.Date(survey\$date, format="%yyyy/%mm/%dd")
start <- as.Date(survey\$tx_start, format="%yyyy/%mm/%dd")
date_diff<-as.data.frame(finish-start)
``````

with the plan of using "cbind" or something equivalent to combine the data frame "days" to my data frame "survey" which has data in it.

Although this does not give me any errors, the observations within the "finish" and "start" objects are all "NA_real_", and the date_diff data frame therefore has all the observations listed as NA.

If someone could point me in the right direction that would be great! All the other question I have found do not seem to be dealing with dates within variables but as individual dates, and applying those techniques to variables hasn`t been working for me.

• This code works for me. Not sure if it's suitable for your example: d1 = '2012-07-26'; d2 = '1970-12-25'; dd1 = as.Date(d1); dd2 = as.Date(d2); dd1-dd2; Jul 26, 2012 at 9:31
• My main issue is dealing with columns of dates though. I have 2 columns of dates, for which I want to calculate the number of days between these two as a third column. Your code works, but is there a way to adapt it so that it deals with columns of dates within a data frame? Jul 26, 2012 at 9:38
• Referencing d1 and d2 as matrix elements eg. survey\$date should work. Jul 26, 2012 at 9:44

Without your seeing your data (you can use the output of `dput(head(survey))` to show us) this is a shot in the dark:

``````survey <- data.frame(date=c("2012/07/26","2012/07/25"),tx_start=c("2012/01/01","2012/01/01"))

survey\$date_diff <- as.Date(as.character(survey\$date), format="%Y/%m/%d")-
as.Date(as.character(survey\$tx_start), format="%Y/%m/%d")
survey
date   tx_start date_diff
1 2012/07/26 2012/01/01  207 days
2 2012/07/25 2012/01/01  206 days
``````
• I have hundreds of variables, so have just used that command to show a small sample of the date output here structure(list(site = c(NA, NA, NA, NA, NA, NA), date = structure(2:7, .Label = c("", "2012/05/01", "2012/05/03", "2012/05/05", "2012/05/07", "2012/05/09", "2012/05/11", "2012/05/13", "2012/05/15", "2012/05/17", "2012/05/19", "2012/05/21",), class = "factor") Jul 26, 2012 at 9:47
• ran the: survey\$date_diff <- as.Date(survey\$date, format="%Y/%m/%d")- as.Date(survey\$tx_start, format="%Y/%m/%d") and that did exactly what I was needing. One thing, the new variable has e.g. "100 days" listed. I will be working out costs per day using this, will it use the 100 as a number if I divide costs by it, or how does R interpret the new variable? many thanks! Jul 26, 2012 at 9:53
• Since it appears that your dates are factor variables I added the conversion to type character to the code. Jul 26, 2012 at 9:54
• `survey\$date_diff<-as.numeric(survey\$date_diff)` Jul 26, 2012 at 9:56
• That`s excellent, does exactly what I needed! Many thanks for the help! Jul 26, 2012 at 10:00

You could find the difference between dates in columns in a data frame by using the function `difftime` as follows:

``````df\$diff_in_days<- difftime(df\$datevar1 ,df\$datevar2 , units = c("days"))
``````
• Use `as.double(difftime(df\$datevar1 ,df\$datevar2 , units = c("days")))` to get the numeric value expressed in the specified units (e.g., "3 days"<drtn> will become "3"<dbl>)). Feb 16, 2023 at 11:55

You need to use the as.Date formats correctly.

Eg.

``````x = '2012/07/25'
xd = as.Date(x,'%Y/%m/%d')
xd    # Prints "2012-07-25"
``````

R date formats are similary to *nix ones.

Doing a typeof(xd) shows it as a double ie. days since 1970.

In Ronald's example, if the date formats are different (as displayed below) then modify the `format` parameter

``````survey <- data.frame(date=c("2012-07-26","2012-07-25"),tx_start=c("2012-01-01","2012-01-01"))

survey\$date_diff <- as.Date(as.character(survey\$date), format="%Y-%m-%d")-
as.Date(as.character(survey\$tx_start), format="%Y-%m-%d")
``````

survey:

``````   date      tx_start     date_diff
1 2012-07-26     2012-01-01    207 days
2 2012-07-25     2012-01-01    206 days
``````

Following Ronald Example I would like to add that it should be considered if the origin and end dates must be included or not in the days count between two dates. I faced the same problem and ended up using a third option with apply. It could be memory inefficient but helps to understand the problem:

``````   survey <- data.frame(date=c("2012/07/26","2012/07/25"),tx_start=c("2012/01/01","2012/01/01"))

survey\$diff_1 <- as.numeric(
as.Date(as.character(survey\$date), format="%Y/%m/%d")-
as.Date(as.character(survey\$tx_start), format="%Y/%m/%d")
)

survey\$diff_2<- as.numeric(
difftime(survey\$date ,survey\$tx_start , units = c("days"))
)

survey\$diff_3 <- apply(X = survey[,c("date", "tx_start")],
MARGIN = 1,
FUN = function(x)
length(
seq.Date(
from = as.Date(x[2]),
to = as.Date(x[1]),
by = "day")
)
)
``````

This gives the following date differences:

``````        date   tx_start diff_1   diff_2 diff_3
1 2012/07/26 2012/01/01    207 206.9583    208
2 2012/07/25 2012/01/01    206 205.9583    207
``````
• I found this extremely helpful. I used the method for calculating `diff_2`, but I converted it using `as.integer`, which resulted in occasional off-by-one errors. I now realize that this is due to incorrect rounding. For example, 206.9583 is truncated to 206 when converting to integer instead of correctly rounding it up to 207. Jan 12, 2022 at 14:31