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To get rid of a column named "foo" in a data.frame, I can do:

df <- df[-grep('foo',colnames(df))]

However, once df is converted to a data.table object, there is no way to just remove a column.

Example:

df=data.frame(id=1:100,foo=rnorm(100))
df2 <- df[-grep('foo',colnames(df))] # works
df3=data.table(df)
df3[-grep('foo',colnames(df3))] 

But once it is converted to a data.table object, this no longer works.

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12  
I prefer df$foo <- NULL to remove a single column. And you should use !grepl('foo',colnames(df)) instead. In the event you misspell the column name, your solution will remove all columns and !grepl will remove none. –  Joshua Ulrich Feb 8 '12 at 22:32
3  
@JoshuaUlrich, that is an amazing piece of advice!! It needs to be captured somewhere better than just a comment! –  Ricardo Saporta Mar 7 '13 at 4:10
    
@JoshuaUlrich: Why do you prefer df$foo <- NULL? It makes a copy of df, so it is a lot less efficient than df[, foo:=NULL], as in Josh's answer. –  naught101 Feb 12 at 1:16
    
@naught101: df is a data.frame, not a data.table, so df[, foo := NULL] is not possible. –  Joshua Ulrich Feb 12 at 2:36

6 Answers 6

up vote 63 down vote accepted

Any of the following will remove column foo from the data.table df3:

# Method 1 (and preferred as it takes 0.00s even on a 20GB data.table)
df3[,foo:=NULL]

# Method 2a -- A safe idiom for excluding columns matching a regular expression
df3 <- df3[, which(!grepl("^foo$", colnames(df3))), with=FALSE]

# Method 2b -- An alternative to 2a, also "safe" in the sense described below
df3 <- df3[, grep("^foo$", colnames(df3), invert=TRUE), with=FALSE]

data.table also supports the following syntax:

## Method 3 (could then assign to df3, 
df3[, !"foo", with=FALSE]  

though if you were actually wanting to remove column "foo" from df3 (as opposed to just printing a view of df3 minus column "foo") you'd really want to use Method 1 instead.

(Do note that if you use a method relying on grep() or grepl(), you need to set pattern="^foo$" rather than "foo", if you don't want columns with names like "fool" and "buffoon" (i.e. those containing foo as a substring) to also be matched and removed.)

Less safe options, fine for interactive use:

The next two idioms will also work -- if df3 contains a column matching "foo" -- but will fail in a probably-unexpected way if it does not. If, for instance, you use any of them to search for the non-existent column "bar", you'll end up with a zero-row data.table.

As a consequence, they are really best suited for interactive use where one might, e.g., want to display a data.table minus any columns with names containing the substring "foo". For programming purposes, Methods 1, 2a, and 2b are really the best options.

# Method 4a:
df3 <- df3[,-grep("^foo$", colnames(df3)), with=FALSE]

# Method 4b: 
df3 <- df3[, !grepl("^foo$", colnames(df3)), with=FALSE]
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1  
See my comment to the OP regarding -grep versus !grepl. –  Joshua Ulrich Feb 8 '12 at 22:36
    
@JoshuaUlrich -- Good point. I tried grepl() initally and it didn't work, as data.table columns can't be indexed by a logical vector. But I now realize that grepl() can be made to work by wrapping it with which(), so that it returns an integer vector. –  Josh O'Brien Feb 8 '12 at 23:38
1  
I didn't know that about indexing with data.table, but wrapping it in which is clever! –  Joshua Ulrich Feb 8 '12 at 23:59
4  
I didn't know that about data.table either; added FR#1797. But, method 1 is (almost) infinitely faster than the others. Method 1 removes the column by reference with no copy at all. I doubt you get it above 0.005 seconds for any size data.table. In contrast, the others might not work at all if the table is near 50% of RAM because they copy all but the one to delete. –  Matt Dowle Feb 9 '12 at 9:27
    
+1 for Method 1 - that's the quick/easy solution I was looking for. –  Robin Kraft Jan 3 '13 at 23:58

You can also user set for this, which avoids the overhead of [.data.table in loops:

dt <- data.table( a=letters, b=LETTERS, c=seq(26), d=letters, e=letters )
set( dt, j=c(1L,3L,5L), value=NULL )
> dt[1:5]
   b d
1: A a
2: B b
3: C c
4: D d
5: E e

If you want to do it by column name, which(colnames(dt) %in% c("a","c","e")) should work for j.

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I simply do it in the data frame kind of way:

DT$col = NULL

Works fast and as far as I could see doesn't cause any problems.

UPDATE: not the best method if your DT is very large, as using the $<- operator will lead to object copying. So better use:

DT[, col:=NULL]
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Very simple option in case you have many individual columns to delete in a data table and you want to avoid typing in all column names #careadviced

dt <- dt[, -c(1,4,6,17,83,104), with =F]

This will remove columns based on column number instead.

It's obviously not as efficient because it bypasses data.table advantages but if you're working with less than say 500,000 rows it works fine

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Here is a way when you want to set a # of columns to NULL given their column names a function for your usage :)

deleteColsFromDataTable <- function (train, toDeleteColNames) {

   for (myNm in toDeleteColNames)

   train <- train [,(myNm):=NULL,with=F]

   return (train)

}

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For a data.table, assigning the column to NULL removes it:

DT[,c("col1", "col1", "col2", "col2")] <- NULL
^
|---- Notice the extra comma if DT is a data.table

... which is the equivalent of:

DT$col1 <- NULL
DT$col2 <- NULL
DT$col3 <- NULL
DT$col4 <- NULL

The equivalent for a data.frame is:

DF[c("col1", "col1", "col2", "col2")] <- NULL
      ^
      |---- Notice the missing comma if DF is a data.frame

Q. Why is there a comma in the version for data.table, and no comma in the version for data.frame?

A. As data.frames are stored as a list of columns, you can skip the comma. You could also add it in, however then you will need to assign them to a list of NULLs, DF[, c("col1", "col2", "col3")] <- list(NULL).

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As to your question -- please read the data table FAQ –  mnel Mar 31 '14 at 22:05
    
@Arun I can't think of any situation with data.frames where the row and columns would be switched. That would be illogical. –  duHaas Mar 31 '14 at 22:42
    
@Arun I tagged you because your first comment made it seem like there were times at which you might call DF[column,row] so I just wanted to see if there actually were any instances where this happened. –  duHaas Mar 31 '14 at 22:57
    
Updated the answer to remove a typo. –  Contango Apr 2 '14 at 7:30

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