Announcing Stack Overflow Documentation

We started with Q&A. Technical documentation is next, and we need your help.

Whether you're a beginner or an experienced developer, you can contribute.

Sign up and start helping → Learn more about Documentation →

I have an example dataframe:

a <- c("08/11/2012 15:45","08/11/2012 15:51",
       "09/11/2012 09:02","10/11/2012 15:45",
       "14/11/2012 15:45")  
b <- c(1:5)  
df1 <- data.frame(a,b)

I want to use a summary-type function to inform me which unique dates I have in my df1. Is there a way of using a function that only looks at a part of a column? (i.e. the date not the time). For example, using the example above, R would report:

share|improve this question
up vote 1 down vote accepted

I upvoted Roland's answer because it gave you what you requested, but I'm not sure it gives you what is needed for most effective use of R's facilities. You should be converting your date-time input into date-time objects and then extracting from them what you need. You should also be learning to use dates in the YYYY-MM-DD format because they will be less ambiguous for you, your clients, and any collation functions that you may employ.

?strptime # for input of datetime variable
?strftime # for formatting output of datetime variables
a <- c("08/11/2012 15:45","08/11/2012 15:51",
        "09/11/2012 09:02","10/11/2012 15:45",
        "14/11/2012 15:45")  
 b <- c(1:5)  
 df1 <- data.frame(a=strptime(a, format="%d/%m/%Y %H:%M") ,b)
 unique(strftime(df1$a, format="%d/%m/%Y") )
#[1] "08/11/2012" "09/11/2012" "10/11/2012" "14/11/2012"

In answer to the question about how to split by unique dates, I would create a list with the split function:

spl.dfrm <- split(df1,  strftime(df1$a, format="%d/%m/%Y") )

You can access indivdial dataframe elements either by numer or by name. The names will be the character values of the format operation, so the first one would be:

share|improve this answer
Many thanks @DWin for the suggestion. I have now done this and want to subset my original dataframe by these unique dates (i.e. so my file is now in four parts). I tried df2 <- subset(df1,a=="2012-11-08") - but this is not working. Where am I going wrong? – KT_1 Dec 2 '12 at 23:08
Many thanks for that @DWin that's perfect. If I had the original dataframe (Df1), and I wanted to get rid of rows that were after a certain time (i.e. 11/11/2012 15:47), how would I do this? I would want the very last value of the dataframe to be deleted (leaving the first 4 observations). – KT_1 Dec 3 '12 at 10:02
It is possible to do numerical comparsisons with datetime objects, so either saying df1[ df1$a1 < df1$a1[5] , ] or calculating a reference datetime value: df1[ df1$a1 < strptime("11/11/2012 15:47", format= "%d/%m/%Y %H:%M"), ] . The first argument to "[" is often an expression that returns a logical vector. – 42- Dec 3 '12 at 18:34
Thanks for this - its perfect @DWin! As we are going to have to do this process > 1000 times, I was wonderding whether there was any way of R automating this process - splitting and then exporting all the dataframes that are unique days for each file? – KT_1 Jan 16 '13 at 15:57
I don't exactly understand. If the question is how to retrieve unique dates from text files, there are lots of worked examples showing how to loop through all the files in a directory or all the files that match a pattern and applying some process or another. If the first column of all text files were the dates it could be as simple as: dts<-lapply(list.files(), function(fil) unique(read.table(fil)[[1]]))). – 42- Jan 16 '13 at 17:23

Convert to Date variable:

#[1] "2012-11-08" "2012-11-09" "2012-11-10" "2012-11-14"

#[1] "08/11/2012" "09/11/2012" "10/11/2012" "14/11/2012"
share|improve this answer

Use regular expressions. In your example you can do

unique(sub('^(../../....).*', '\\1', df1$a))
share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.