4

How do you load a dataset from an R package using the data() function, and assign it directly to a variable without creating a duplicate copy in your environment?

Put simply, can you do this without creating two identical dfs in your environment:

> data("faithful") # Old Faithful Geyser Data from datasets package

> x <- faithful 

> ls() # Now I have 2 identical dfs - x and faithful - in my environment
[1] "faithful" "x" 

> remove(faithful) # Now I've removed one of the redundant dfs

Try 1:

My first approach was to just assign data("faithful") to x. But data() returns a string. So now I have the df faithful and the character vector x in my environment.

> x <- data("faithful")
> x
[1] "faithful" # String, not the df "faithful" from the datasets package

> ls()
[1] "faithful" "x"  

Try 2: Tried to get a little more sophisticated in my second attempt.

> x <- get(data("faithful")) # This works as far as assignment goes

> ls() # However I still get the duplicate copy
[1] "faithful" "x"

A short note about my motivation for trying to do this. I have an R package with 5 very large data.frames - each having the same columns. I want to efficiently generate the same calculated columns on all 5 data.frames. So I want to use data() within a list() constructor to get the 5 data.frames into a list. Then I want to use llply() and mutate() from the plyr package to iterate over the dfs in the list and create the calculated columns for each df. But I don't want to have duplicate copies of the 5 large datasets sitting in my environment as this is within a Shiny App with a RAM limit.


edit: I was able to use both of @henfiber's methods from his answer to figure out how to lazy-load entire data.frames into a named list.

The first command here works for assigning a data.frame to a new variable name.

# this loads faithful into a variable x. 
# Note we don't need to use the data() function to load faithful
> delayedAssign("x",faithful) 

But I wanted to create a named list x with elements y = data(faithful), z=data(iris), etc.

I tried the below and it didn't work.

> x <- list(delayedAssign("y",faithful),delayedAssign("z", iris))
> ls()
[1] "x" "y" "z" # x is a list with 2 nulls, y & z are promises to faithful & iris

But I finally was able to construct a list of lazy-loaded data.frame objects in the following manner:

# define this function provided by henfiber
getdata <- function(...)
{
e <- new.env()
name <- data(..., envir = e)[1]
e[[name]]
}

# now create your list, this gives you one object "x" of class list
# with elements "y" and "z" which are your data.frames
x <- list(y=getdata(faithful),z=getdata(iris))
  • You could remove the data right after having it assigned to your list, something like data( "faithful" ); x <- faithful; rm( faithful ) – vaettchen Jun 20 '15 at 7:12
  • @vaettchen that's definitely an option. Just wondering if there technically exists a way to skip loading the extra copy into the environment. – aashanand Jun 20 '15 at 7:16
3

Using a helper function:

# define this function
getdata <- function(...)
{
    e <- new.env()
    name <- data(..., envir = e)[1]
    e[[name]]
}

# now load your data calling getdata()
x <- getdata("faithful")

Or using an anonymous function:

x <- (function(...)get(data(...,envir = new.env())))("faithful")

Lazy evaluation

You should also consider lazy loading your data adding LazyData: true in the DESCRIPTION file of your package.

If you use RStudio, after running data("faithful"), you'll see at the Environment panel that the "faithful" data.frame is called "promise" (another less common name is "thunk") and is greyed out. That means that it is lazily evaluated by R and not still loaded into memory. You can even lazy load the "x" variable with the delayedAssign() function:

data("faithful")              # lazy load "faithful"
delayedAssign("x", faithful)  # lazy assign "x" with a reference to "faithful"
rm(faithful)                  # remove "faithful"

Still nothing has been loaded into memory yet

summary(x)                    # now x has been loaded and evaluated

Learn more about lazy evaluation here.

  • Great edit! The edited code sounds really promising. I do use RStudio and noticed how promise magically turns into an object in memory even as I type the variable name on the command line or an open .R file. I'm working on a big refactor at the moment but once that's done I'll try your solution out. – aashanand Jun 20 '15 at 10:07
  • Take your time and pls share your feedback - and your shiny app if it's not a company secret :) – henfiber Jun 20 '15 at 10:19
  • Thank you. Your edit with delayedAssign was perfect. Although it doesn't really work for my idea of constructing a named list with values equal to the loaded datasets, it answers the question. – aashanand Jun 21 '15 at 7:11
  • 1
    Actually, you don't even need to do data("faithful") and rm(faithful). I tried delayedAssign("x", faithful) without any context and it just worked... – aashanand Jun 21 '15 at 7:14
  • @aashanand You're right! And since delayedAssign() all it does is to lazy eval() the expression in the second argument, then the following works also : x <- eval(faithful). An that could be simply the answer to your original question (load faithful but assign to x). – henfiber Jun 21 '15 at 9:39
2

Why not use a simple solution like this:

x <- list(y = datasets::faithful, z = datasets::iris )

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