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I am reading in large csv file using read.csv. Several websites suggest using colClasses to define the classes for each column to make the import process faster.

t = read.csv("pca.csv",header=TRUE,colClasses = classes)
Error in scan(file, what, nmax, sep, dec, quote, skip, nlines, na.strings,  : 
scan() expected 'a real', got 'NULL'

classes = c("numeric","integer")

I obviously have nulls in some of my data. Is there a way to use colClasses where "numeric" or "integer" include nulls? Also, any other tips on importing large datasets faster into R would be very helpful. I have all the data in a SQL db and i've tried using RODBC which is surprisingly slower than read.csv(). Thanks.

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Better not to use the variable 't', as it corresponds to the transpose function. Ditto for 'c'. –  Sean Jun 19 '12 at 20:12

1 Answer 1

up vote 7 down vote accepted

Use na.strings='NULL' in your call to read.csv.

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that worked! thanks –  elfty Jun 19 '12 at 20:12
    
no prob! don't forget to accept! –  Matthew Plourde Jun 19 '12 at 20:14
    
can also be na.strings='' –  Sean Jun 19 '12 at 20:17

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