1

I'm trying to use the R code from this answer to convert a bunch of rdata files to CSV.

resave <- function(file){
  e <- new.env(parent = emptyenv())
  load(file, envir = e)
  objs <- ls(envir = e, all.names = TRUE)
  for(obj in objs) {
    .x <- get(obj, envir =e)
    message(sprintf('Saving %s as %s.csv', obj,obj) )
    write.csv(.x, file = paste0(obj, '.csv'))
  }
}

  resave('yourData.RData')

However on one of the files I'm getting this error:

Error in data.frame(`2` = list(pos = c(6506L, 6601L, 21801L, 21811L, 21902L,  : 
  arguments imply differing number of rows: 7670, 9729, 114, 2422
Calls: resave ... as.data.frame -> as.data.frame.list -> eval -> eval -> data.frame

I tried searching for the error message but I can't really make heads or tails of it.

Was that rdata file created improperly somehow?

Is there a better way I should convert arbitrary Rdata files to CSV? (I Don't know the names of the objects inside the files ahead of time.)

Update:

Here's what I'm seeing in that rdata file. If it's any help?? (Keep in mind I can't really edit the rdata files so I'm trying to figure out something that will convert them to CSV as is.)

> load("indiv8-hmmprob.RData")
> ls()
[1] "dataa"
> write.csv(dataa, file="greg.csv")
Error in data.frame(`2` = list(pos = c(6506L, 6601L, 21801L, 21811L, 21902L,  : 
  arguments imply differing number of rows: 7670, 9729, 114, 2422
> names(dataa)
[1] "2" "3" "4" "X"
> str(dataa)
List of 4
 $ 2:'data.frame':  7670 obs. of  23 variables:
  ..$ pos              : int [1:7670] 6506 6601 21801 21811 21902 21931 22487 24071 26674 26713 ...
  ..$ ref              : chr [1:7670] "C" "A" "G" "A" ...
  ..$ cons             : chr [1:7670] "T" "T" "A" "G" ...
  ..$ reads            : chr [1:7670] "ttt" "tttt" "AAAAA" "GGGGG" ...
  ..$ quals            : chr [1:7670] "FBB" "IIIB" "IFIII" "FFIII" ...
  ..$ A                : int [1:7670] 0 0 5 0 0 0 1 0 0 1 ...
  ..$ C                : int [1:7670] 0 0 0 0 0 0 0 0 2 0 ...
  ..$ G                : int [1:7670] 0 0 0 5 11 0 0 0 0 0 ...
  ..$ T                : int [1:7670] 3 4 0 0 0 10 0 2 0 0 ...
  ..$ N                : int [1:7670] 0 0 0 0 0 0 0 0 0 0 ...
  ..$ bad              : chr [1:7670] NA NA NA NA ...
  ..$ par1ref          : chr [1:7670] "C" "A" "G" "A" ...
  ..$ par2ref          : chr [1:7670] "T" "T" "A" "G" ...
  ..$ read             : Factor w/ 8397 levels "1","2","3","4",..: 2 2 3 3 3 3 4 7 9 9 ...
  ..$ count            : int [1:7670] 3 4 5 5 11 10 1 2 2 1 ...
  ..$ read_allele      : chr [1:7670] "T" "T" "A" "G" ...
  ..$ Pr(y| par1/par1 ): num [1:7670] 9.30e-04 5.69e-04 3.47e-04 1.42e-04 1.90e-08 ...
  ..$ Pr(y| par1/par2 ): num [1:7670] 4.58e-02 1.64e-02 2.41e-03 4.09e-03 8.89e-07 ...
  ..$ Pr(y| par2/par2 ): num [1:7670] 1.61e-01 8.40e-02 8.94e-03 2.09e-02 3.29e-06 ...
  ..$ est              : int [1:7670] 3 3 3 3 3 3 3 3 3 3 ...
  ..$ Pr( par1/par1 |y): num [1:7670] 4.67e-25 2.25e-27 1.98e-31 2.93e-32 2.82e-34 ...
  ..$ Pr( par1/par2 |y): num [1:7670] 2.95e-11 2.86e-11 2.49e-14 1.98e-14 1.08e-14 ...
  ..$ Pr( par2/par2 |y): num [1:7670] 1 1 1 1 1 ...
  ..- attr(*, "badpos")= int [1:11386] 21900 21905 22840 24029 27149 27170 28024 42187 46927 46990 ...
 $ 3:'data.frame':  9729 obs. of  23 variables:
  ..$ pos              : int [1:9729] 6001 22537 25304 27228 28817 28842 30540 48903 48938 48943 ...
  ..$ ref              : chr [1:9729] "A" "A" "A" "C" ...
  ..$ cons             : chr [1:9729] "A" "G" "T" "C" ...
  ..$ reads            : chr [1:9729] "," "GGG" "TTTTT" "," ...
  ..$ quals            : chr [1:9729] "F" "BBB" "BFFFF" "B" ...
  ..$ A                : int [1:9729] 1 0 0 0 0 0 0 0 0 0 ...
  ..$ C                : int [1:9729] 0 0 0 1 1 0 0 0 0 1 ...
  ..$ G                : int [1:9729] 0 3 0 0 0 0 0 0 0 0 ...
  ..$ T                : int [1:9729] 0 0 5 0 0 1 1 1 1 0 ...
  ..$ N                : int [1:9729] 0 0 0 0 0 0 0 0 0 0 ...
  ..$ bad              : chr [1:9729] NA NA NA NA ...
  ..$ par1ref          : chr [1:9729] "A" "A" "A" "C" ...
  ..$ par2ref          : chr [1:9729] "G" "G" "T" "T" ...
  ..$ read             : Factor w/ 10640 levels "1","2","3","4",..: 1 3 4 5 7 7 8 10 10 10 ...
  ..$ count            : int [1:9729] 1 3 5 1 1 1 1 1 1 1 ...
  ..$ read_allele      : chr [1:9729] "A" "G" "T" "C" ...
  ..$ Pr(y| par1/par1 ): num [1:9729] 0.969856 0.002707 0.000372 0.969639 0.969856 ...
  ..$ Pr(y| par1/par2 ): num [1:9729] 0.48995 0.0567 0.00228 0.48988 0.48995 ...
  ..$ Pr(y| par2/par2 ): num [1:9729] 0.01005 0.26071 0.00798 0.01012 0.01005 ...
  ..$ est              : int [1:9729] 1 3 3 1 1 1 1 3 1 3 ...
  ..$ Pr( par1/par1 |y): num [1:9729] 2.18e-10 2.82e-11 2.67e-11 2.65e-11 2.63e-11 ...
  ..$ Pr( par1/par2 |y): num [1:9729] 0.688 0.688 0.688 0.688 0.688 ...
  ..$ Pr( par2/par2 |y): num [1:9729] 0.312 0.312 0.312 0.312 0.312 ...
  ..- attr(*, "badpos")= int [1:13707] 25259 27250 27810 27880 27888 28836 30507 48975 55998 58734 ...
 $ 4:'data.frame':  114 obs. of  23 variables:
  ..$ pos              : int [1:114] 21119 21194 42177 64136 64146 74463 74465 74521 79860 79884 ...
  ..$ ref              : chr [1:114] "T" "T" "C" "C" ...
  ..$ cons             : chr [1:114] "C" "A" "Y" "Y" ...
  ..$ reads            : chr [1:114] "cCCCCCCCCCCCCCcc" "aa" "T" "T" ...
  ..$ quals            : chr [1:114] "IBFFBFBFFFFFFBBF" "FF" "F" "I" ...
  ..$ A                : int [1:114] 0 2 0 0 0 0 0 0 2 0 ...
  ..$ C                : int [1:114] 16 0 0 0 1 0 1 1 0 0 ...
  ..$ G                : int [1:114] 0 0 0 0 0 0 0 0 0 2 ...
  ..$ T                : int [1:114] 0 0 1 1 0 1 0 0 0 0 ...
  ..$ N                : int [1:114] 0 0 0 0 0 0 0 0 0 0 ...
  ..$ bad              : chr [1:114] NA NA NA NA ...
  ..$ par1ref          : chr [1:114] "T" "T" "C" "C" ...
  ..$ par2ref          : chr [1:114] "C" "A" "T" "T" ...
  ..$ read             : Factor w/ 130 levels "1","2","3","4",..: 3 3 6 8 8 10 10 10 14 14 ...
  ..$ count            : int [1:114] 16 2 1 1 1 1 1 1 2 2 ...
  ..$ read_allele      : chr [1:114] "C" "A" "T" "T" ...
  ..$ Pr(y| par1/par1 ): num [1:114] 9.34e-12 4.99e-03 1.00e-02 1.00e-02 1.00e-02 ...
  ..$ Pr(y| par1/par2 ): num [1:114] 4.56e-10 2.33e-01 4.90e-01 4.90e-01 4.90e-01 ...
  ..$ Pr(y| par2/par2 ): num [1:114] 9.04e-10 8.61e-01 9.70e-01 9.70e-01 9.70e-01 ...
  ..$ est              : int [1:114] 3 3 3 3 3 3 3 3 3 3 ...
  ..$ Pr( par1/par1 |y): num [1:114] 6.50e-24 4.49e-24 1.10e-26 2.53e-31 1.51e-31 ...
  ..$ Pr( par1/par2 |y): num [1:114] 1.56e-10 1.54e-10 5.77e-11 6.60e-12 6.59e-12 ...
  ..$ Pr( par2/par2 |y): num [1:114] 1 1 1 1 1 ...
  ..- attr(*, "badpos")= int [1:73] 16621 16638 34177 34180 74448 74464 78954 79664 80045 94170 ...
 $ X:'data.frame':  2422 obs. of  23 variables:
  ..$ pos              : int [1:2422] 34630 45427 70728 70744 166279 189892 207276 207424 213012 232229 ...
  ..$ ref              : chr [1:2422] "T" "G" "G" "C" ...
  ..$ cons             : chr [1:2422] "T" "G" "G" "C" ...
  ..$ reads            : chr [1:2422] "a" "..." "^F." "." ...
  ..$ quals            : chr [1:2422] "<" "IIF" "F" "B" ...
  ..$ A                : int [1:2422] 1 0 0 0 0 0 0 4 0 1 ...
  ..$ C                : int [1:2422] 0 0 0 1 1 0 2 0 0 0 ...
  ..$ G                : int [1:2422] 0 3 1 0 0 1 0 1 1 0 ...
  ..$ T                : int [1:2422] 0 0 0 0 0 0 0 0 0 0 ...
  ..$ N                : int [1:2422] 0 0 0 0 0 0 0 0 0 0 ...
  ..$ bad              : chr [1:2422] NA NA NA NA ...
  ..$ par1ref          : chr [1:2422] "T" "G" "G" "C" ...
  ..$ par2ref          : chr [1:2422] "A" "A" "A" "T" ...
  ..$ read             : Factor w/ 2433 levels "1","2","3","4",..: 1 6 8 8 13 16 18 18 19 20 ...
  ..$ count            : int [1:2422] 1 3 1 1 1 1 2 5 1 1 ...
  ..$ read_allele      : chr [1:2422] "A" "G" "G" "C" ...
  ..$ Pr(y| par1/par1 ): num [1:2422] 0.0105 0.2732 0.9699 0.9696 0.9699 ...
  ..$ Pr(y| par1/par2 ): num [1:2422] 0.4895 0.0642 0.49 0.4899 0.49 ...
  ..$ Pr(y| par2/par2 ): num [1:2422] 0.96856 0.00134 0.01005 0.01012 0.01005 ...
  ..$ est              : int [1:2422] 3 1 1 1 1 1 1 1 1 1 ...
  ..$ Pr( par1/par1 |y): num [1:2422] 1 1 1 1 1 ...
  ..$ Pr( par1/par2 |y): num [1:2422] 3.70e-08 2.00e-08 1.06e-08 1.06e-08 1.59e-09 ...
  ..$ Pr( par2/par2 |y): num [1:2422] 3.70e-18 9.35e-20 2.36e-23 2.23e-23 3.26e-26 ...
  ..- attr(*, "badpos")= int [1:2327] 34776 45619 86591 86607 166220 193151 193159 212997 232221 233552 ...
  • try including fill = T in your read/write.csv? that seems to work for me with different number of rows – James Tobin May 1 '14 at 18:14
  • Odd, so I did write.csv(.x, file = paste(obj, '.csv', sep=""), fill=T) and I'm getting the error: Error in write.table(.x, file = paste(obj, ".csv", sep = ""), fill = T, : unused argument(s) (fill = T) Calls: resave ... write.csv -> eval.parent -> eval -> eval -> write.table – Greg May 1 '14 at 18:23
  • Do you have a dataframe called 2 in your source .Rdata file? I've used that resave function a lot sans problems. Or your collection of names objs includes something you weren't expecting. I'd start by searching that list. – Carl Witthoft May 1 '14 at 18:57
  • I updated the question showing what's in the rdata file. There is one called 2. – Greg May 1 '14 at 19:26
3

That answer was designed to handle object of class-'data.frame'. You only have an object of class-'list' which happens to have items that are dataframes. So there isn't an object with the name "2" in you workspace but there is an element in the 'dataa'-list that is named "2" and all of the other elements appear to also be dataframes, so why not use:

lapply( names(dataa), function(nam) write.csv( data[[nam]], file=paste0(nam, ".Rdata") ) )
  • This looks right; I might recommend doing foo<-dataa just to verify the list variable is OK. – Carl Witthoft May 2 '14 at 11:28
  • Thanks. The problem is I'm trying to figure out something general purpose since I don't know what will be in the rdata files ahead of time. Is there a way to generalize this answer? – Greg May 2 '14 at 13:02
  • @Greg, not really - you'll have to sort your list of objects by class and do things like unlist on list variables, etc. – Carl Witthoft May 2 '14 at 13:14
  • Update I think I got it working with your all'es code. But why is it printing the [[1]] NULL, etc after the file names? (see my answer for code and output) – Greg May 2 '14 at 17:24
0

I'll vote for the other answer, but here's some almost working code:

resave <- function(file){
  e <- new.env(parent = emptyenv())
  load(file, envir = e)
  obj <- get('dataa', envir =e)
  lapply( names(obj), function(nam) {
    write.csv( obj[[nam]], file=paste(nam, ".csv", sep="") )
    cat(sprintf('%s.csv
', nam) )
    }
   )
}
resave("indiv8-hmmprob.RData")

Here's the output. which works but it's throwing in some wierd printed stuff at the end, the [[1]] NULL, etc.

2.csv
3.csv
4.csv
X.csv
[[1]]
NULL

[[2]]
NULL

[[3]]
NULL

[[4]]
NULL
  • The "NULLs" are coming from the fact that lapply is being used with two functions, write.csv and cat, that each return NULL and so with each pass, there is no last evaluated result, i.e the results are NULL. – IRTFM May 2 '14 at 20:58

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