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I have multiple files to load and want to concatenate them together into 1 data frame. I am trying to use textConnection, but it is running very slowly. Here is what my data looks like when I load it into R:

"1995200008,10,1995,5190.61,73300"   
"1995200010,1,1995,6776.44,42652"   
"1995200011,11,1995,2315.83,4169"    
"1995200014,6,1995,9846.79,2113"    
"1995200017,8,1995,3978.93,2449"     
"1995200018,6,1995,3582.69,2449"    
"1995200022,7,1995,10409.18,2859"

I can not use read.csv because it is using a library to pull data from Hadoop. The double quotes are in the data.

Here is the code that I'm using:

tmp <- hdfs.read.text.file(filename)
tmp1 <- read.table(textConnection(tmp), sep = ",")

Does anyone know of a way that will run faster?

share|improve this question
1  
Have you tried readLines or scan? – Tyler Rinker Apr 19 '12 at 15:59
    
For what I'm doing those ideas will not work. Thanks for the idea. – Rick Gittins Apr 19 '12 at 17:31
1  
Would it also be slow if the data came from a normal file? If so, the speed problem could simply come from the size of the file: specifying the column types (colClasses) usually improves things. – Vincent Zoonekynd Apr 20 '12 at 0:06
    
Have you tried joining the files before the read.table()? – Sean Jul 16 '12 at 9:02
1  
I had the same problem with a 9 MB dataset, textConnection is really slow. Instead, I write it to a file and use read.csv(file) and that's much faster – Hudon Apr 28 '13 at 22:55

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