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I have an R script I want to use to parse a file and get some info out of it, but the file is 44 GB.

Can someone help me write this in a programming language that is faster in reading files?

The script is pretty simple:

ld <- read.table("plink-inter-chr---ld-window-r2-0.ld", header = T)
ldv1 <- do.call(rbind, strsplit(as.character(ld[,1]), "_"))
ldv4 <- do.call(rbind, strsplit(as.character(ld[,4]), "_"))
ld <- matrix(c(ldv1[,2], ldv4[,2], ld[,2], ld[,5], ld[,7]), ncol=5)
N <- 30
within <- numeric(N)
between <- numeric(N)
for(i in 1:N){
within[i] <- mean(as.numeric(ld[which(ld[,1] == i & ld[,2] == i),5]))
between[i] <- mean(as.numeric(ld[which(ld[,1] == i & ld[,2] != i),5]))
}
table <- matrix(c(within, between), ncol=2)
write.table(table, file = "within-between.tab", quote = FALSE, row.names = FALSE, col.names = FALSE)

And the file looks as such:

 CHR_A         BP_A SNP_A  CHR_B         BP_B SNP_B           R2           DP
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2210    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2419    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2524    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2587    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2799    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         2947    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         3142    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         3178    .            1            1
NODE_1_length_193190_coverage_19.3759_GC_24.97          919    . NODE_1_length_193190_coverage_19.3759_GC_24.97         3261    .            1            1

Thank you for your help, Adrian

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For those not fluent in R, can you give an example of what the output should look like? –  mob Jul 9 at 16:56
    
@AdrianP: What does your "Can someone help me write this in a programming language that is faster in reading files" mean? What languages do you know, and what help do you need? I imagine this is to do with your employment, and it would be very wrong of you to use and be paid for anyone else's efforts –  Borodin Jul 9 at 17:10
    
mysite.science.uottawa.ca/ncorradi/members.html I am doing my masters in science. I do get a bursary for doing my masters, but it is not employment in the traditional sense. I know a bit of perl and python. –  AdrianP. Jul 9 at 18:02

1 Answer 1

Some of the places in the R code that you are wasting time and being slowed down (and therefore could speed things up quite a bit) include:

You are reading character strings, converting them to factors, then converting them back to character strings. Look at the stringsAsFactors argument to read.table for how to avoid both conversions.

While you are at it, you may be able to gain some speed by specifying colClasses in read.table so that the function does not need to waste time guessing what each column should be.

After doing the string split you rbind everything together, but then only use 1 column from each of the resulting matrices. It may be quicker to just grab the number (or sequence of non "") after the first "", you can use the strapply function from the gsubfn package or just the regexpr and regmatches functions.

Using the cbind function to create the ld matrix may be faster than concatenating then rewrapping using matrix. Actually, why create the matrix in the first place, you don't use 2 of the columns and the others are used separately. This also converts your numeric to character that just need to be converted back later.

Running as.numeric in the loop is inefficient, you keep converting the same values over and over again, just do a single as.numeric on the whole matrix before the loop.

You don't need the calls to which since subscripting works fine on the logicals that which works on.

Fix the above and see how much that speeds up the results.

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