I have recently discovered the wonders of the packages `bigmemory`

, `ff`

and `filehash`

to handle very large matrices.

How can I handle very large (300MB++) lists? In my work I work with these lists all day every day. I can do band-aid solution with `save()`

& `load()`

hacks everywhere but I would prefer a `bigmemory`

-like solution. Something like a `bigmemory`

`bigmatrix`

would be ideal, where I work with it basically identically to a `matrix`

except it takes up somethign like 660 bytes in my RAM.

These lists are mostly `>1000`

length lists of `lm()`

objects (or similar regression objects). For example,

```
Y <- rnorm(1000) ; X <- rnorm(1000)
A <- lapply(1:6000, function(i) lm(Y~X))
B <- lapply(1:6000, function(i) lm(Y~X))
C <- lapply(1:6000, function(i) lm(Y~X))
D <- lapply(1:6000, function(i) lm(Y~X))
E <- lapply(1:6000, function(i) lm(Y~X))
F <- lapply(1:6000, function(i) lm(Y~X))
```

In my project I will have `A,B,C,D,E,F`

-type lists (and even more than this) that I have to work with interactively.

If these were gigantic matrices there is a tonne of support. I was wondering if there was any similar support in any package for large `list`

objects.

`"lm"`

object content? If only the coefficients were needed, say, then it would be possible to represent each list of '"lm"` objects as a matrix. Also you might be able to use the faster`lm.fit`

:`sapply(1:6000, function(i) coef(lm.fit(cbind(1, X), Y)))`

– G. Grothendieck Sep 26 '12 at 2:17`sapply(1:3, function(i) coef(rq.fit(cbind(1, X), Y)))`

– G. Grothendieck Sep 26 '12 at 2:24