Building on the what we were discussing in the comments above, here is an example that you should be able to reproduce. *Be sure to save all of your work first, because this example deletes the objects in your current workspace.*

```
## SAVE ANY WORK YOU NEED TO BEFORE DOING THIS!
##
## Start with a clean workspace
##
rm(list=ls())
ls()
set.seed(1)
## Make up some data
A = rnorm(10000)
B = sample(letters, 10000, replace=TRUE)
C = matrix(50000, nrow=10000, ncol=5)
## The same data as a data.frame
temp.df = data.frame(A = A)
temp.df$B = B
temp.df$C = C
## The same data as a list
temp.list = list(A, B, C)
##
## How big is each object?
##
sort( sapply(ls(), function(x) { object.size(get(x)) }) )
# A B C temp.list temp.df
# 80040 81288 400200 561600 562304
sum(sort( sapply(ls(), function(x) { object.size(get(x)) }) )[1:3])
# [1] 561528
```

You can see that the difference in size is marginal, whether you are collecting your objects as a `list`

(recommended) or a `data.frame`

(not recommended for practical purposes, though a `data.frame`

*is* a `list`

with a `class`

of `data.frame`

.

See also: here and here.

`x = data.frame(A = 1:2, B = matrix(1:10, nrow=2, ncol=5))`

, but you will have trouble doing`x = data.frame(A = 1:2, B = matrix(1:10, nrow=5, ncol=2))`

; however,`x = list(A = 1:2, B = matrix(1:10, nrow=5, ncol=2))`

would not be a problem. – Ananda Mahto Jul 25 '12 at 6:23`x = data.frame(A = 1:2); x$B = matrix(1:10, nrow=2, ncol=5)`

works in terms of retaining the matrix structure in a`data.frame`

. – Ananda Mahto Jul 25 '12 at 6:38