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Is it possible to have multiple data frames to be stored into one data structure and process it later by each data frame? i.e. example

df1 <- data.frame(c(1,2,3), c(4,5,6))
df2 <- data.frame(c(11,22,33), c(44,55,66))

.. then I would like to have them added in a data structure, such that I can loop through that data structure retrieving each data frame one at a time and process it, something like

 for ( iterate through the data structure) # this gives df1, then df2
    write data frame to a file

I cannot find any such data structure in R. Can anyone point me to any code that illustrates the same functionality?

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up vote 10 down vote accepted

Just put the data.frames in a list. A plus is that a list works really well with apply style loops. For example, if you want to save the data.frame's, you can use mapply:

l = list(df1, df2)
mapply(write.table, x = l, file = c("df1.txt", "df2.txt"))

If you like apply style loops (and you will, trust me :)) please take a look at the epic plyr package. It might not be the fastest package (look data.table for fast), but it drips with syntactic sugar.

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Beat me! You can also "iterate" through your list of data.frames with lapply. – Justin Sep 4 '12 at 18:02
Might be worth adding a line or two of code, as @Justin's answer had, just for completeness. – joran Sep 4 '12 at 18:08
I added an example of how to use mapply to save the data.frames using write.table. – Paul Hiemstra Sep 4 '12 at 18:15

Lists can be used to hold almost anything, including data.frames:

## Versatility of lists
l <- list(file(), new.env(), data.frame(a=1:4))

For writing out multiple data objects stored in a list, lapply() is your friend:

ll <- list(df1=df1, df2=df2)
## Write out as *.csv files
lapply(names(ll), function(X) write.csv(ll[[X]], file=paste0(X, ".csv")))
## Save in *.Rdata files
lapply(names(ll), function(X) {
    assign(X, ll[[X]]) 
    save(list=X, file=paste0(X, ".Rdata"))
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+1, and list can even hold radically different objects, such as a data.frame as a first element, a list as the second element, and the outcome of lm as a third object. – Paul Hiemstra Sep 4 '12 at 18:14
@PaulHiemstra -- Glad you didn't mind me adding this. I just know what a time-saver those file-writing constructs would have been to me when I was an R neophyte... – Josh O'Brien Sep 4 '12 at 18:17

What you are looking for is a list. You can use a function like lapply to treat each of your data frames in the same manner sperately. However, there might be cases where you need to pass your list of data frames to a function that handles the data frames in relation to each other. In this case lapply doesn't help you.

That's why it is important to note how you can access and iterate the data frames in your list. It's done like this:

mylist[[data frame]][column,row]

Note the double brackets around your data frame index. So for your example it would be

df1 <- data.frame(c(1,2,3), c(4,5,6))
df2 <- data.frame(c(11,22,33), c(44,55,66))

mylist[[1]][1,2] would return 4, whereas mylist[1][1,2] would return NULL. It took a while for me to find this, so I thought it might be helpful to post here.

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