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I have a large data file consisting of a single line of text. The format resembles

Cat    14  Dog    15  Horse  16

I'd eventually like to get it into a data.frame (so in the above example, I'd have two variables, Animal and Number). The number of characters in each "line" is fixed.

Any suggestions?

Edit: Thanks for all the suggestions. They solved the problem exactly as I asked. Unfortunately after running it I learned that I have missing data. However, the number of characters is still fixed. The example then becomes

Cat    14         15  Horse  16  

with each line containing 11 characters (including spaces), animals being the first 7 and numbers being the next four.

This revision has been posted as a new question: Importing one long line of data into R - With Blanks.

share|improve this question
5  
Congratulations: userNNNNNN: I think this might be a new record for the most rapid accumulation of workable answers in under 30 minutes. – 42- Dec 5 '11 at 18:43
    
Yep. I guess, if anything, we answered the "Any suggestions?" part of your question! – Josh O'Brien Dec 5 '11 at 18:49
    
You've moved the goalposts! Suggest you start a new question (and accept someone's answer as the answer by ticking it). – Spacedman Dec 5 '11 at 19:45
up vote 14 down vote accepted

This solution takes full advantage of scan()'s what argument, and seems simpler (to me) than any of the others:

x <- scan(file = textConnection("Cat 14 Dog 15 Horse 16"), 
          what = list(Animal=character(), Number=numeric()))

# Convert x (at this point a list) into a data.frame
as.data.frame(x)
#   Animal Number
# 1    Cat     14
# 2    Dog     15
# 3  Horse     16
share|improve this answer
    
+1 Well done. I've seen this paradigm before, but it didn't come to mind. – Andrie Dec 5 '11 at 19:15
    
@Andrie -- Thanks. Yeah, scan is pretty amazing. I just now took a peek under the hood of read.table (since scan is the engine for that). It's worth a glance. The third call to scan uses this same construction to read in the data (once each column's class has been determined). – Josh O'Brien Dec 5 '11 at 19:32
    
Minor nit: all dataframes are of class list, but are typeof dataframe, while items which are typeof list are also class list. as.data.frame leaves the class of x as list while changing its typeof to dataframe. – Carl Witthoft Dec 5 '11 at 20:50
    
@CarlWitthoft -- I agree there's some sublety here, but I think you've got that backwards. class(as.data.frame(list(1:4, 5:8))) returns a class of data.frame for me (which is why so many generic methods are able to dispatch a data.frame-specific method). typeof(as.data.frame(list(1:4, 5:8))) returns a typeof list, which is also as it should be. – Josh O'Brien Dec 5 '11 at 20:57
    
Yep, Josh, sorry for being braincramped and swapping the class and typeof values. – Carl Witthoft Dec 6 '11 at 1:17

Method 1: (extracting from long vector with seq()

> inp <- scan(textConnection("Cat 14 Dog 15 Horse 16"), what="character")
Read 6 items
> data.frame(animal = inp[seq(1,length(inp), by=2)], 
             numbers =as.numeric(inp[seq(2,length(inp), by=2)]))
  animal numbers
1    Cat      14
2    Dog      15
3  Horse      16

Method 2: (using the "what" argument to scan to greater effect)

> inp <- data.frame(scan(textConnection("Cat 14 Dog 15 Horse 16"), 
                     what=list("character", "numeric")))
Read 3 records
> names(inp) <- c("animals", "numbers")
> inp
  animals numbers
1     Cat      14
2     Dog      15
3   Horse      16

This is a refinement of the Method 2: (was worried about possibility of very long column names in the result from scan() so I read the help page again and added names to the what argument values:

inp <- data.frame(scan(textConnection("Cat 14 Dog 15 Horse 16"), 
                        what=list( animals="character", 
                                   numbers="numeric")))
Read 3 records
> inp
  animals numbers
1     Cat      14
2     Dog      15
3   Horse      16
share|improve this answer

Here is another approach

string <- readLines(textConnection(x))
string <- gsub("(\\d+)", "\\1\n", string, perl = TRUE)
dat    <- read.table(text = string, sep = "")
share|improve this answer

Here's one solution using a variety of tools/hacks, specifically:

  • strplit to split on space characters (\\s)
  • unlist to coerce the list returned by strsplit into a vector
  • matrix to turn the vector into the appropriate shape
  • data.frame to allow for columns of different mode
  • as.character and as.numeric to convert the Count column from a factor

Here's everything put together:

txt <- "Cat 14 Dog 15 Horse 16"

out <- data.frame(matrix(unlist(strsplit(txt, "\\s")), ncol = 2, byrow = TRUE, dimnames = list(NULL, c("Animal", "Count"))))
out$Count <- as.numeric(as.character(out$Count))
str(out)

'data.frame':   3 obs. of  2 variables:
 $ Animal: Factor w/ 3 levels "Cat","Dog","Horse": 1 2 3
 $ Count : num  14 15 16
share|improve this answer

Assuming that the white space is a delimiter, you can use the following mechanism:

  • Use scan to read the file
  • Convert the results to a matrix, then to a data.frame

The code:

x <- scan(file=textConnection("
Cat 14 Dog 15 Horse 16
"), what="character")

xx <- as.data.frame(matrix(x, ncol=2, byrow=TRUE))
names(xx) <- c("Animal", "Number")
xx$Number <- as.numeric(xx$Number)

The results:

xx

  Animal Number
1    Cat      1
2    Dog      2
3  Horse      3
share|improve this answer
    
I think you want an as.character() in there before the as.numeric() right? – Chase Dec 5 '11 at 18:32
    
ooo, didn't realize scan() would return a character vector like that, interesting! – Chase Dec 5 '11 at 18:39

One way:

# read the line
r <- read.csv("exa.Rda",sep=" ", head=F)
# every odd number index is an animal
animals <- r[,(1:ncol(r)-1)%%2==0]
# every even number index is a number
numbers <- r[,(1:ncol(r))%%2==0]
# flipping the animal row into a column
animals <- t(animals)
# flipping the number row into a column
numbers <- t(numbers)
# putting the data together
mydata <- data.frame(animals, numbers)
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