I just started using R, and came across data.table. I found it brilliant.

A very naive question: Can I ignore data.frame to use data.table to avoid syntax confusion between two packages?

  • 13
    See the data.table faq specifically 1.8 and 2.17. There will be cases where other packages may rely some strange coding that falls down, but I haven't come across any (that haven't been fixed already).
    – mnel
    Nov 29, 2012 at 3:51
  • @mnel I think your comment is the answer. Nov 29, 2012 at 7:24
  • 2
    So this was 2.5 years ago... has anyone found something for which data.frame must be used yet?? May 3, 2015 at 15:20

1 Answer 1


From the data.table FAQ

FAQ 1.8 OK, I'm starting to see what data.table is about, but why didn't you enhance data.frame in R? Why does it have to be a new package?

As FAQ 1.1 highlights, j in [.data.table is fundamentally different from j in [.data.frame. Even something as simple as DF[,1] would break existing code in many packages and user code. This is by design, and we want it to work this way for more complicated syntax to work. There are other differences, too (see FAQ 2.17).

Furthermore, data.table inherits from data.frame. It is a data.frame, too. A data.table can be passed to any package that only accepts data.frame and that package can use [.data.frame syntax on the data.table.

We have proposed enhancements to R wherever possible, too. One of these was accepted as a new feature in R 2.12.0 :

unique() and match() are now faster on character vectors where all elements are in the global CHARSXP cache and have unmarked encoding (ASCII). Thanks to Matthew Dowle for suggesting improvements to the way the hash code is generated in unique.c.

A second proposal was to use memcpy in duplicate.c, which is much faster than a for loop in C. This would improve the way that R copies data internally (on some measures by 13 times). The thread on r-devel is here : http://tolstoy.newcastle.edu.au/R/e10/devel/10/04/0148.html.

What are the smaller syntax differences between data.frame and data.table

  • DT[3] refers to the 3rd row, but DF[3] refers to the 3rd column
  • DT[3, ] == DT[3], but DF[ , 3] == DF[3] (somewhat confusingly in data.frame, whereas data.table is consistent)
  • For this reason we say the comma is optional in DT, but not optional in DF
  • DT[[3]] == DF[, 3] == DF[[3]]
  • DT[i, ], where i is a single integer, returns a single row, just like DF[i, ], but unlike a matrix single-row subset which returns a vector.
  • DT[ , j] where j is a single integer returns a one-column data.table, unlike DF[, j] which returns a vector by default
  • DT[ , "colA"][[1]] == DF[ , "colA"].
  • DT[ , colA] == DF[ , "colA"] (currently in data.table v1.9.8 but is about to change, see release notes)
  • DT[ , list(colA)] == DF[ , "colA", drop = FALSE]
  • DT[NA] returns 1 row of NA, but DF[NA] returns an entire copy of DF containing NA throughout. The symbol NA is type logical in R and is therefore recycled by [.data.frame. The user's intention was probably DF[NA_integer_]. [.data.table diverts to this probable intention automatically, for convenience.
  • DT[c(TRUE, NA, FALSE)] treats the NA as FALSE, but DF[c(TRUE, NA, FALSE)] returns NA rows for each NA
  • DT[ColA == ColB] is simpler than DF[!is.na(ColA) & !is.na(ColB) & ColA == ColB, ]
  • data.frame(list(1:2, "k", 1:4)) creates 3 columns, data.table creates one list column.
  • check.names is by default TRUE in data.frame but FALSE in data.table, for convenience.
  • stringsAsFactors is by default TRUE in data.frame but FALSE in data.table, for efficiency. Since a global string cache was added to R, characters items are a pointer to the single cached string and there is no longer a performance benefit of converting to factor.
  • Atomic vectors in list columns are collapsed when printed using ", " in data.frame, but "," in data.table with a trailing comma after the 6th item to avoid accidental printing of large embedded objects. In [.data.frame we very often set drop = FALSE. When we forget, bugs can arise in edge cases where single columns are selected and all of a sudden a vector is returned rather than a single column data.frame. In [.data.table we took the opportunity to make it consistent and dropped drop. When a data.table is passed to a data.table-unaware package, that package is not concerned with any of these differences; it just works.

Small caveat

There will possibly be cases where some packages use code that falls down when given a data.frame, however, given that data.table is constantly being maintained to avoid such problems, any problems that may arise will be fixed promptly.

For example

  • base::unname(DT) now works again, as needed by plyr::melt(). Thanks to Christoph Jaeckel for reporting. Test added.
  • An as.data.frame method has been added for ITime, so that ITime can be passed to ggplot2 without error, #1713. Thanks to Farrel Buchinsky for reporting. Tests added. ITime axis labels are still displayed as integer seconds from midnight; we don't know why ggplot2 doesn't invoke ITime's as.character method. Convert ITime to POSIXct for ggplot2, is one approach.
  • To my understanding of what is-a means, the code breaking semantic differences, mean that saying a data.table is a data.frame, only confuses me. Code that uses one needs to be edited before using the other correctly.
    – Chris
    Aug 27, 2021 at 20:42

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