I'm trying to convert a data frame to xts object using the as.xts()-method. Here is my input dataframe q:

                      t x  
1  2006-01-01 00:00:00  1  
2  2006-01-01 01:00:00  2  
3  2006-01-01 02:00:00  3

    'data.frame':   10 obs. of  2 variables:
 $ t: POSIXct, format: "2006-01-01 00:00:00" "2006-01-01 01:00:00" "2006-01-01 02:00:00" "2006-01-01 03:00:00" ...  
 $ x: int  1 2 3 4 5 6 7 8 9 10

The result is:

> as.xts(q)
Error in as.POSIXlt.character(x, tz, ...) : 
  character string is not in a standard unambiguous format

This is the simplest example I can think of, so it's quite frustrating not getting it to work... Any help is appreciated!

  • You need to convert your time/date variable to be the rownames of the dataframe, then as.xts will work. The tibble:column_to_rownames("timevar") function will do it for you. Commented Apr 14, 2020 at 0:46

11 Answers 11


This is clearly documented --- xts and zoo objects are formed by supplying two arguments, a vector or matrix carrying data and Date, POSIXct, chron, ... type supplying the time information (or in the case of zoo the ordering).

So do something like

 qxts <- xts(q[,-1], order.by=q[,1])

and you should be set.

  • 3
    Thanks! You helped me a lot, although the answer was so simple! (It wasn't obvious to me, because I haven't used any of the time series packages before and somehow didn't get that from the documentation). But, thanks again!
    – user442446
    Commented Nov 28, 2010 at 15:04
  • 27
    I don't think it's all that obvious either considering that that the 'xts: Extensible Time Series' paper clearly claims that conversion from data.frame is possible.
    – frankc
    Commented Sep 28, 2011 at 19:53
  • 14
    Add me as another who doesn't think it's that "clearly documented" actually. But thanks to this answer I managed to figure something else out unrelated to the original question.
    – atomicules
    Commented Dec 5, 2011 at 12:47
  • 4
    @DamienB (and other commenters and up-voters), we are more than happy to accept contributions / patches that make the documentation clearer and/or less of a maze. The great thing about OSS is that you can make a difference (but voicing your opinion, without action, doesn't count). Commented Oct 10, 2012 at 14:24
  • 4
    @DamienB: I "@"ed you because you were most recent and you can only "@" one person in a comment (which sucks). I'm happy to work with contributors to help them really understand, but I cannot have their perspective on what needs clarification. Honest attempts, however imperfect, are greatly appreciated (e.g. see the xts FAQ on R-Forge, written by a SO question-asker). Commented Oct 12, 2012 at 0:38

Well, as.xts assumes by default that the dates are stored in the rownames of the data.frame. Hence the error message. A quick and dirty fix is:

rownames(q) = q[1]

But you get an extra column with the dates string. Ideally you would construct the data.frame with the dates as rownames to start with.

  • 3
    Probably should be: rownames(q) = q[[1]]
    – IRTFM
    Commented Oct 3, 2013 at 2:36
  • @42, what would be the difference?
    – Ahmadov
    Commented Sep 3, 2016 at 7:39
  • 2
    @Ahmedov q[1] would be list containing a vector. q[[1]] would just be the vector. Might not make a difference if [<-.rownames accepts a list but even if it does, not all class-specific assignment functions do so.
    – IRTFM
    Commented Sep 3, 2016 at 16:38
  • You can use tibble::column_to_rownames to set the rownames in a pipe. Commented Apr 14, 2020 at 0:48

Here's a solution using the tidyquant package, which contains a function as_xts() that coerces a data frame to an xts object. It also contains as_tibble() to coerce xts objects to tibbles ("tidy" data frames).

Recreate the data frame (note that the date-time class is used in "tidy" data frames, but any unambiguous date or date time class can be used):

> q
# A tibble: 3 × 2
                    t     x
               <dttm> <dbl>
1 2006-01-01 00:00:00     1
2 2006-01-01 01:00:00     2
3 2006-01-01 02:00:00     3

Use as_xts() to convert to "xts" class. Specify the argument, date_col = t, to designate the "t" column as the dates to use as row names:

> library(tidyquant)
> as_xts(q, date_col = t)
2006-01-01 00:00:00 1
2006-01-01 01:00:00 2
2006-01-01 02:00:00 3

The return is an xts object with the proper date or date-times as row names.


Here is a posible solution:

q <- xts::xts(q[,-1], order.by = q$t)
  • 1
    Hi, welcome to Stack Overflow. When answering a question that already has a few answers, please be sure to add some additional insight into why the response you're providing is substantive and not simply echoing what's already been vetted by the original poster. This is especially important in "code-only" answers such as the one you've provided.
    – chb
    Commented May 4, 2019 at 19:32

I defined an index with the length equal to the number of rows of my tibble. Only after defining the time sequence separately as shown with the example:

ti= seq(from = ymd_hm("2000-01-01 00:00"),
to = ymd_hm("2000-01-02 01:00"), by =  "30 min", tz = "UTC")

tbl <- tibble(t =ti,
    x = 1:length(t))

This code worked:

xts.tbl <- xts(tbl[,-1], order.by = ti)

However all data transformed into characters.


The reason, why it did not work now seems clear, xts does not accept tibbles and even if columns are selected they are still stored as Tibbles. Either the core data may be transformed to matrix ore a vector.The following code works: xls.tbl <- xls(tbl$x, order.by = tbl$t)


Try the following

q$t<-as.xts(q, order.by = as.Date(q$t), dateFormat="POSIXct")

You can simply do the following

qxts <- xts(q[,2],q$t)

Worked for me.


I ran into this as well, but my data date format was slightly different: yyyy-mm-dd as opposed to the OP, which is typical for financial data you download into R.
specifically, as an example: "2022-02-28".
As a result all the suggested solutions do not work.
What works is:

as.xts(q, order.by=as.Date(rownames(q), format = "%Y%m%d"))

assuming your data is in a typical dataframe with dates as rownames (if not, just replace q appropriately with data and date column)


For tibble or data.frame:

As in @psychonomics comment, one can use tk_xts:


qxts <- tk_xts(q)

For data.table:

as.xts(dt) is much faster than tk_xts(dt) for a data.table dt.

So a simple solution here is to first convert the data.frame to a data.table:


qxts <- as.xts(as.data.table(q))

Use read.zoo followed by as.xts. This:

  • does not need any additional packages other than those already being used
  • employs the whole object approach avoiding dealing with the internals of q


library(xts) # also pulls in zoo

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