I have some troubles with a code which take a huge amount of time to run.

for (k in 1:length(df_2L)) { 
  mat = matrix(99,nrow=dim(df_2L[[k]])[1],ncol= (dim(df_2L[[k]])[1]))
  for(j in 1:dim(df_2L[[k]])[1]) {
    for(i in 1:dim(df_2L[[k]])[1]) {
      if (df_2L[[k]][j] == df_2L[[k]][i]) {mat[i,j]<-1} 
      else {mat[i,j]<-0}
      }
    }
  assign(paste0("mat_2L_",k),mat)
  }

matall_2L_coassign <- lapply(ls(pattern="mat_2L_"),get)
matSum2L_coassign<-Reduce('+',matall_2L_coassign)

write.table(matSum2L_coassign,"matSum2L_coassign.txt",
            quote=F,row.names=F,col.names=F,dec=".",sep="\t")

Note that:

length(df_2L)[1]  
#[1] 38

and

dim(df_2L[[k]])[1] 
#[1] 503

one day later...

Some information on my data structure:

str(lapply(df_2L[1:2], head))
List of 2
 $ :Classes 'data.table' and 'data.frame':  6 obs. of  1 variable:
  ..$ V1: int [1:6] 1 1 1 1 1 1
  ..- attr(*, ".internal.selfref")=<externalptr> 
 $ :Classes 'data.table' and 'data.frame':  6 obs. of  1 variable:
  ..$ V1: int [1:6] 1 1 1 1 1 1
  ..- attr(*, ".internal.selfref")=<externalptr> 
up vote 3 down vote accepted

It seems that df_2L is a list (with length 38) of 1D arrays (with dimension 503).


In a loop nest, code optimization should start from inner layers to outer layers. You could replace

mat = matrix(99,nrow=dim(df_2L[[k]])[1],ncol= (dim(df_2L[[k]])[1]))
for(j in 1:dim(df_2L[[k]])[1]) {
  for(i in 1:dim(df_2L[[k]])[1]) {
    if (df_2L[[k]][j] == df_2L[[k]][i]) {mat[i,j]<-1} 
    else {mat[i,j]<-0}
    }
  }

by a vectorized beast:

mat <- outer(df_2L[[k]], df_2L[[k]], "==") + 0

By apply == with outer you get a FALSE/TRUE logical matrix, then the + 0 coerces it into a 0/1 binary matrix.


Now the transformed code has only a single loop.

for (k in 1:length(df_2L)) {
  mat <- outer(df_2L[[k]], df_2L[[k]], "==") + 0
  assign(paste0("mat_2L_",k),mat)
  }

matall_2L_coassign <- lapply(ls(pattern="mat_2L_"),get)

It is clear that you ultimately want to gather all temporary results into a list. Then, why not use lapply straightaway?

matall_2L_coassign <- lapply(df_2L, function (x) outer(x, x, "==") + 0L)

The final issue that is computation-related, is

matSum2L_coassign <- Reduce('+', matall_2L_coassign)

This is actually good enough.


Final code:

matall_2L_coassign <- lapply(df_2L, function (x) outer(x, x, "==") + 0L)
matSum2L_coassign <- Reduce('+', matall_2L_coassign)
write.table(matSum2L_coassign,"matSum2L_coassign.txt",
            quote=F,row.names=F,col.names=F,dec=".",sep="\t")

one day later...

Thanks for posting information on your data structure. So you actually have a list of data tables. In this case we have to first coerce it into a list of vectors (or 1D arrays).

## extract first variable of a data frame / table into a vector
df_2L <- lapply(df_2L, "[[", 1)

Then you can use my answer above.

  • 1
    Oh my god it is so fast compare to my first code!!! Thank you so much!! – CaroleGE Jul 13 at 11:22

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