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I have a bundle of data .txt datasets, some of them go like this,

1.0
DOO
SB009101V 222429.80 2588228.00
12
GR 1 LIN
CALI 1 LIN
NPHI 1 LIN
PHIE 1 LIN
RHOB 1 LIN
DT 1 LIN
K_AIR 2 LOG
KLINK_PERM 1 LIN
GRAIN_DENSITY 1 LIN
POR 1 LIN
Core disc 0 No 1 Yes
Perforation disc 0 No 1 Yes
  222444.7  2588243.0  7381.00   -999.000     11.320   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000     0     0

Although this shows two lines of data it is actually one line only, first three numbers indicate X,Y,Z respectively, the other data corresponds to GR CALI NPHI PHIE RHOB DT K_AIR KLINK_PERM GRAIN_DENSITY POR Core Perforation respectively.

I want a code in R that converts the above data into something like this

Xcoord Ycoord Zcoord GR CALI NPHI PHIE RHOB DT K_AIR KLINK_PERM GRAIN_DENSITY POR Core Perforation
  222444.7  2588243.0  7381.00   -999.000     11.320   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000   -999.000     0     0

ignoring the first 4 lines of data, also some data sets have missing column names of CALI, K_AIR etc is there anyway to make a column for them and insert NA as values till n=nrow?

I have so far managed to edit them manually in excel and then manipulate the data by subsetting as required but i have over 400 data sets to work with. Any help/ direction?

Regards Shiva

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required data set – Shiva Abhishek A. Aug 8 '14 at 10:06
    
    
use skip from ?read.table – akrun Aug 8 '14 at 10:20

Something like this?

files <- list.files(path = "path/to/data/folder", pattern = ".dat", full.names = TRUE)
data <- lapply(files, read.table, skip = 16, col.names = c("Xcoord", "Ycoord", "Zcoord", "GR", "CALI", "NPHI", "PHIE", "RHOB", "DT", "K_AIR", "KLINK_PERM", "GRAIN_DENSITY", "POR", "Core", "Perforation"))

I think you can wrap an unlist around lapply to merge it to a single data frame.

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Not all files have 16 lines of vertical rows, so skip = 16 is not dynamic enough. – Shiva Abhishek A. Aug 9 '14 at 12:11

I have noticed that you have probably posted this question again, and in a different format. This is a public forum, and people are happy to help. However, it's your job to simplify life of others, and you are requested to put in some effort. Here is some advice on that.

Having said that, here is some code I have written to help you out.

Step0: Creating your first data set:

sink("test.txt")  # This will `sink` all the output to the file "test.txt"

# Lets start with some dummy data
cat("1\n")
cat("DOO\n")
cat(c(sample(letters,10),"\n"))
cat(c(sample(letters,10),"\n"))
cat(c(sample(letters,10),"\n"))
cat(c(sample(letters,10),"\n"))

# Now a 10 x 16 dummy data matrix:
cat(paste(apply(matrix(sample(160),10),1,paste,collapse = "\t"),collapse = "\n"))
cat("\n")

sink()            # This will stop `sink`ing.

I have created some dummy data in first 6 lines, and followed by a 10 x 16 data matrix.

Note: In principle you should have provided something like this, or a copy of your dataset. This would help other people help you.

Step1: Now we need to read the file, and we want to skip the first 6 rows with undesired info:

(temp <- read.table(file="test.txt", sep ="\t", skip = 6))

Step2: Data clean up: We need a vector with names of the 16 columns in our data:

namesVec <- letters[1:16]

Now we assign these names to our data.frame:

names(temp) <- namesVec
temp

Looks good!

Step3: Save the data:

write.table(temp,file="test-clean.txt",row.names = FALSE,sep = "\t",quote = FALSE)

Check if the solution is working. If it is working, than move to next step, otherwise make necessary changes.

Step4: Automating:

First we need to create a list of all the 400 files. The easiest way (to explain also) is copy the 400 files in a directory, and then set that as working directory (using setwd).

Now first we'll create a vector with all file names:

fileNameList <- dir()

Once this is done, we'll need to function to repeat step 1 through 3:

convertFiles <- function(fileName) {
  temp <- read.table(file=fileName, sep ="\t", skip = 6)
  names(temp) <- namesVec  
  write.table(temp,file=paste("clean","test.txt",sep="-"),row.names = FALSE,sep = "\t",quote = FALSE)
}

Now we simply need to apply this function on all the files we have:

sapply(fileNameList,convertFiles)

Hope this helps!

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