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I have several CSV files like so:

# ... thousands more rows ...

(In the actual case I'm working with, there are three files with a grand total of 1,408,378 rows.) For plotting, I want to reshuffle them into this format:

# etc

where 'label' is derived from the name of the CSV file; 'stream' is a serial number assigned to each combination of 'site', 'run', and 'id' within one file (so, unique only within 'label'); 'i' is the row number within each 'stream'; and 'dir' and 'payload' are taken directly from the original file. I also want to discard all but the first 20 rows of each stream. I know in advance that every cell in the CSV file (except the header) is a positive integer, and that 'dir' only ever takes the values 1 and 2.

I killed my initial attempt to do this, with plyr, because after more than an hour of computation it had run the R process up to 6GB of working set with no end in sight. The shiny new support for foreach parallelism in the latest plyr did not help: eight processes ran for 10 minutes of CPU time each and then it went back down to one process, which continued for another hour and, yep, blew out my RAM again.

So then I wrote myself a helper script in Python, with which I am far more fluent:

import sys
def processOne(fname):
    clusters = {}
    nextCluster = 1
    with open(fname + ".csv", "r") as f:
        for line in f:
            line = line.strip()
            if line == "site,run,id,payload,dir": continue
            (site, run, id, payload, dir) = line.split(',')
            clind = ",".join((site,run,id))

            clust = clusters.setdefault(clind,
                                        { "i":nextCluster, "1":0, "2":0 })
            if clust["i"] == nextCluster:
                nextCluster += 1

            clust[dir] += 1
            if clust[dir] > 20: continue


for fn in sys.argv[1:]: processOne(fn)

and invoked it from the R script:

all <- read.csv(pipe("python preprocess.py A B C", open="r"))

Done in five seconds.

So the question is: what's the proper way to do this in R? Not this specific task, but this class of problems. I nearly always need to shuffle the data around a bunch before analyzing it and it nearly always winds up being easier in some other language -- both for me to write the code and for the computer to execute it. Which leaves me feeling that I am only using R as an interface to ggplot2 and maybe I would save myself time in the long run if I learned matplotlib instead.

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2 Answers 2

R code to accomplish the desired steps:

--"where 'label' is derived from the name of the CSV file; "

filvec <- list.files(<path>)
for (fil in filvec) {  #all the statements will be in the loop body
  dat <- read.csv(fil)
  dat$label <- fil   # recycling will make all the elements the same character value

--" 'stream' is a serial number assigned to each combination of 'site', 'run', and 'id' within one file (so, unique only within 'label'); "

 dat$stream <- as.numeric( with(dat, interaction(site, run, id) ) )

--" 'i' is the row number within each 'stream'; "

dat$i <- ave(dat$site,     # could be any column since we are not using its values
             dat$stream,   # 'ave' passes grouped vectors, returns same length vector
             FUN= function(x) 1:length(x) )

--" and 'dir' and 'payload' are taken directly from the original file."

 # you can refer to them by name or column number

--"I also want to discard all but the first 20 rows of each stream. "

 out <- dat[dat$i <= 20,     # logical test for the "first 20"
             c('label','stream','dir','i','payload') ]  # chooses columns desired
     }  # end of loop

Actually at the moment this will overwrite the three 'dat' files. (So would mainly be useful for a onetime test run for speed check.) You could make that last call something like:

  assign(paste(fil, "out", sep="_"), dat[dat$i <= 20,
                                          c('label','stream','dir','i','payload') ] )
share|improve this answer
I believe that in your call to ave(), the line function(x) 1:length(x) needs instead to be FUN=function(x) 1:length(x) (the formal argument having to be explicitly given because it comes after ... in the list of formals). –  Josh O'Brien May 5 '12 at 20:01
Right. I keep forgetting that. –  BondedDust May 5 '12 at 20:09

The data.table package often speeds up operations on large-to-huge data.frames.

As an example, the code below takes three 500,000-row data.frames as input, and carries out all the transformations you described in ~2 seconds on my none-too powerful laptop.


## Create a list of three 500000 row data.frames
df <- expand.grid(site=1:2, run=1:2, id=1:2)
df <- data.frame(df, payload=1:1000, dir=rep(1, 5e5))
dfList <- list(df, df, df)
dfNames <- c("firstCSV", "secondCSV", "thirdCSV")

## Manipulate the data with data.table, and time the calculations
outputList <-
    lapply(1:3, FUN = function(ii) {
        label <- dfNames[ii]
        df <- dfList[[ii]]
        dt <- data.table(df, key=c("site", "run", "id"))
        groups <- unique(dt[,key(dt), with=FALSE])
        groups[, stream := seq_len(nrow(groups))]
        dt <- dt[groups]
        # Note: The following line only keeps the first 3 (rather than 20) rows
        dt <- dt[, head(cbind(.SD, i=seq_len(.N)), 3), by=stream]
        dt <- cbind(label,
                    dt[,c("stream", "dir", "i", "payload"), with=FALSE])
        df <- as.data.frame(dt)
output <- do.call(rbind, outputList)
##    user  system elapsed 
##    1.25    0.18    1.44 

## Have a look at the output
rbind(head(output,4), tail(output,4))

EDIT: On 5/8/2012, I cut run-time of the above by ~25% by substituting this line:

dt <- dt[, head(cbind(.SD, i=seq_len(.N)), 3), by=stream]

for these two:

dt <- cbind(dt, i = dt[, list(i=seq_len(.N)), by=stream][[2]])
dt <- dt[i<=3,]  # Note: This only keeps the 1st 3 (rather than 20) rows
share|improve this answer
Great. Btw, I'm working on := by group which'll simplify the cbind(dt,i=dt[...]) line. I guess you found that to be much faster than head(.SD,3). –  Matt Dowle May 8 '12 at 8:26
@MatthewDowle -- Actually, I just assumed anything involving .SD would be slower, but of course that can't actually be true. I just now tried head(.SD,3), and it's ~ 25% faster, so I've edited the answer accordingly. –  Josh O'Brien May 8 '12 at 16:24
@MatthewDowle -- Also, I'm thrilled to hear that you're working on making group and := work together. Even if it doesn't speed up anything at all, it'll make the syntax of many calls much simpler and more expressive, and will also lower the hump that beginning users need to get over. Thanks! –  Josh O'Brien May 8 '12 at 16:37
Great. The cbind of .SD will be copying all of the group's data each time though. How about just coping the head and adding i to that (since OP needs i): head(.SD,3)[,i:=seq_len(.N)]. That needs dev v1.8.1 for j to see .N. In v1.8.0 you have to pick a column: head(.SD,3)[,i:=seq_len(length(stream))]. –  Matt Dowle May 8 '12 at 16:42
Hi. That nested := is tested in v1.8.3 on R-Forge now; i.e., DT[,head(.SD,3)[,i:=seq_len(.N)],by=grp]. Perhaps not as needed now that := by group is done, but the use case might be when using .SDcols followed by a := by the same grouping. That could be done in one grouping now. –  Matt Dowle Oct 7 '12 at 7:08

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