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How do you refer to variables in a data.table if the variable names are stored in a character vector? For instance, this works for a data.frame:

df <- data.frame(col1 = 1:3)
colname <- "col1"
df[colname] <- 4:6
df
#   col1
# 1    4
# 2    5
# 3    6

How can I perform this same operation for a data.table, either with or without := notation? The obvious thing of dt[ , list(colname)] doesn't work (nor did I expect it to).

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up vote 43 down vote accepted

Try :

DT = data.table(col1 = 1:3)
colname = "col1"

DT[, colname, with=FALSE]    # select
#    col1
# 1:    1
# 2:    2
# 3:    3

DT[, (colname) := 4:6]    # assign
#    col1
# 1:    4
# 2:    5
# 3:    6

The latter is known as a column plonk, because you replace the whole column vector by reference. If a subset i was present, it would subassign by reference. The parens around (colname) is a shorthand introduced in version v1.9.4 on CRAN Oct 2014. Here is the news item :

Using with=FALSE with := is now deprecated in all cases, given that wrapping
the LHS of := with parentheses has been preferred for some time.

colVar = "col1"
DT[, colVar:=1, with=FALSE]                   # deprecated, still works silently
DT[, (colVar):=1]                             # please change to this
DT[, c("col1","col2"):=1]                     # no change
DT[, 2:4 := 1]                                # no change
DT[, c("col1","col2"):=list(sum(a),mean(b)]   # no change
DT[, `:=`(...), by=...]                       # no change

See also Details section in ?`:=`:

DT[i,(colnamevector):=value]
# [...] The parens are enough to stop the LHS being a symbol

And to answer further question in comment, here's one way (as usual there are many ways) :

DT[, colname:=cumsum(get(colname)), with=FALSE]
#    col1
# 1:    4
# 2:    9
# 3:   15 

or, you might find it easier to read, write and debug just to eval a paste, similar to constructing a dynamic SQL statement to send to a server :

expr = paste0("DT[,",colname,":=cumsum(",colname,")]")
expr
# [1] "DT[,col1:=cumsum(col1)]"
> eval(parse(text=expr))
#    col1
# 1:    4
# 2:   13
# 3:   28

If you do that a lot, you can define a helper function EVAL :

EVAL = function(...)eval(parse(text=paste0(...)),envir=parent.frame(2))

EVAL("DT[,",colname,":=cumsum(",colname,")]")
#    col1
# 1:    4
# 2:   17
# 3:   45

Now that data.table 1.8.2 automatically optimizes j for efficiency, it may be preferable to use the eval method. The get() in j prevents some optimizations, for example.

Or, there is set(). A low overhead, functional form of :=, which would be fine here. See ?set.

set(DT,j=colname,value=cumsum(DT[[colname]]))
DT
#    col1
# 1:    4
# 2:   21
# 3:   66
share|improve this answer
1  
Thanks for the reply Matthew. The with=FALSE definitely solves part of my problem. In reality though, I want to replace the column with the cumsum of the column. Can I reference the column name by variable on the right-hand side of the assignment somehow? – frankc Sep 12 '12 at 16:48
    
Acutally, I just storded the cumsum externally with a different name that doesn't exist inside the dt and that works fine. – frankc Sep 12 '12 at 17:18
1  
But that would be whole extra line! Not very elegant :) But ok sometimes it's useful. In those cases best to start the variable name with ., or .. to avoid any potential masking if DT ever did contain that symbol as a column name in future (and stick to the convention that column names don't start with .). There are some feature requests to make it more robust to scope issues like that, such as adding .() and ..(). – Matt Dowle Sep 12 '12 at 17:27
1  
Note that you could use the quasi-perl type string interpolation of fn$ from the gsubfn package to improve the readability of the EVAL solution: library(gsubfn); fn$EVAL( "DT[,$colname:=cumsum($colname)]" ) . – G. Grothendieck Jan 14 '13 at 14:11
1  
@YAK Thanks. Done. – Matt Dowle Aug 18 '15 at 22:04

*This is not an answer really, but I don't have enough street cred to post comments :/

Anyway, for anyone who might be looking to actually create a new column in a data table with a name stored in a variable, I've got the following to work. I have no clue as to it's performance. Any suggestions for improvement? Is it safe to assume a nameless new column will always be given the name V1?

colname <- as.name("users")
# Google Analytics query is run with chosen metric and resulting data is assigned to DT
DT2 <- DT[, sum(eval(colname, .SD)), by = country]
setnames(DT2, "V1", as.character(colname))

Notice I can reference it just fine in the sum() but can't seem to get it to assign in the same step. BTW, the reason I need to do this is colname will be based on user input in a Shiny app.

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+1 for just working: I agree this must not be "the way" to do this, but having just spent like 45 minutes pouring over every SO post on this subject, this is the only solution that I have actually been able to get to work - thanks for taking the time to point it out! – neuropsych Jan 24 at 21:39
    
Glad I could help! Unfortunately, I never did find a more elegant solution directly using data.tables, although this 3 liner isn't terrible. In my scenario, I did realize a simpler alternative would have been to use tidyr to just make my data "long" instead of "wide", since based on user input, I could always filter on a single column rather than selecting from a set of columns. – efh0888 Jan 25 at 21:27

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