This might seem like a similar question which was asked in this URL (http://stackoverflow.com/questions/10718455/apply-pca-on-very-large-sparse-matrix).

But I am still not able to get my answer for which i need some help. I am trying to perform a PCA for a very large dataset of about 700 samples (columns) and > 4,00,000 locus (rows). I wish to plot ¨samples¨ in the biplot and hence want to consider all of the 4,00,000 locus to calculate the principal components.

I did try using `princomp()`

, but I get the following error which says,

```
Error in princomp.default(transposed.data, cor = TRUE) :
'`princomp`' can only be used with more units than variables
```

I checked with the forums and i saw that in the cases where there are less units than variables, it is better to use `prcomp()`

than `princomp()`

, so i tried that as well, but i again get the following error,

```
Error in cor(transposed.data) : allocMatrix: too many elements specified
```

So I want to know if any of you could suggest me any other good option which could be best suited for my very large data. I am a beginner for statistics, but i did read about how PCA works. I want to know if there are any other easy-to-use R packages or tools to perform this?

variablesand rows correspond toobservations. Don't you have 700 variables (or dimensions) and 4,000,000 observations (or points)? If so, then you should not transpose your data before passing it to`princomp`

. – flodel Sep 28 '12 at 0:08