Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I need to convert date (m/d/y format) into 3 separate columns on which I hope to run an algorithm.(I'm trying to convert my dates into Julian Day Numbers). Saw this suggestion for another user for separating data out into multiple columns using Oracle. I'm using R and am throughly stuck about how to code this appropriately. Would A1,A2...represent my new column headings, and what would the format difference be with the "update set" section?

 update <tablename> set A1 = substr(ORIG, 1, 4), 
                       A2 = substr(ORIG, 5, 6), 
                       A3 = substr(ORIG, 11, 6), 
                       A4 = substr(ORIG, 17, 5); 

I'm trying hard to improve my skills in R but cannot figure this one...any help is much appreciated. Thanks in advance... :)

share|improve this question
up vote 8 down vote accepted

Given a text variable x, like this:

> x
[1] "10/3/2001"


> as.Date(x,"%m/%d/%Y")
[1] "2001-10-03"

converts it to a date object. Then, if you need it:

> julian(as.Date(x,"%m/%d/%Y"))
[1] 11598
[1] "1970-01-01"

gives you a Julian date (relative to 1970-01-01).

Don't try the substring thing...

See help(as.Date) for more.

share|improve this answer

I use the format() method for Date objects to pull apart dates in R. Using Dirk's datetext, here is how I would go about breaking up a date into its constituent parts:

datetxt <- c("2010-01-02", "2010-02-03", "2010-09-10")
datetxt <- as.Date(datetxt)
df <- data.frame(date = datetxt,
                 year = as.numeric(format(datetxt, format = "%Y")),
                 month = as.numeric(format(datetxt, format = "%m")),
                 day = as.numeric(format(datetxt, format = "%d")))

Which gives:

> df
        date year month day
1 2010-01-02 2010     1   2
2 2010-02-03 2010     2   3
3 2010-09-10 2010     9  10

Note what several others have said; you can get the Julian dates without splitting out the various date components. I added this answer to show how you could do the breaking apart if you needed it for something else.

share|improve this answer

Quick ones:

  1. Julian date converters already exist in base R, see eg help(julian).

  2. One approach may be to parse the date as a POSIXlt and to then read off the components. Other date / time classes and packages will work too but there is something to be said for base R.

  3. Parsing dates as string is almost always a bad approach.

Here is an example:

> datetxt <- c("2010-01-02", "2010-02-03", "2010-09-10")
> dates <- as.Date(datetxt) ## you could examine these as well
> plt <- as.POSIXlt(dates)  ## now as POSIXlt types
> plt[["year"]] + 1900      ## years are with offset 1900
[1] 2010 2010 2010
> plt[["mon"]] + 1          ## and months are on the 0 .. 11 intervasl
[1] 1 2 9
> plt[["mday"]] 
[1]  2  3 10
> df <- data.frame(year=plt[["year"]] + 1900, 
+                  month=plt[["mon"]] + 1, day=plt[["mday"]])
> df
  year month day
1 2010     1   2
2 2010     2   3
3 2010     9  10

And of course

> julian(dates)
[1] 14611 14643 14862
[1] "1970-01-01"
share|improve this answer
For easier reading, months are nicer as[plt[["mon"]] + 1] – Richie Cotton Nov 2 '10 at 14:34
Sure, but OP wanted numbers for Julian conversion... – Dirk Eddelbuettel Nov 2 '10 at 14:36

Hi Gavin: another way [using your idea] is:

The data-frame we will use is oilstocks which contains a variety of variables related to the changes over time of the oil and gas stocks. The variables are:

"bpV"    "bpO"    "bpC"    "bpMN"   "bpMX"   "emdate" "emV"    "emO"    "emC"  
"emMN"   "emMN.1" "chdate" "chV"    "cbO"    "chC"    "chMN"   "chMX" 

One of the first things to do is change the emdate field, which is an integer vector, into a date vector.


Next we want to split emdate column into three separate columns representing month, day and year using the idea supplied by you.

> dfdate <- data.frame(date=realdate)
year=as.numeric (format(realdate,"%Y"))
month=as.numeric (format(realdate,"%m"))
day=as.numeric (format(realdate,"%d"))

ls() will include the individual vectors, day, month, year and dfdate. Now merge the dfdate, day, month, year into the original data-frame [stocks].


"date"   "day"    "month"  "year"   "bpV"    "bpO"    "bpC"    "bpMN"   "bpMX"   "emdate" "emV"    "emO"    "emC"    "emMN"   "emMX" "chdate" "chV"   
"cbO"    "chC"    "chMN"   "chMX"

Similar results and I also have date, day, month, year as separate vectors outside of the df.

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.