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Some background: I am developing a program that allows the user to upload csv files. Currently, I am testing a dataset that looks like:

Type    Date    Lively  Count
sm  1/13/2010   10  10
sm  1/14/2010   10  20
sm  2/15/2010   20  30
am  4/16/2010   5   42
am  1/17/2010   10  34
am  3/18/2010   40  54
sm  1/19/2010   10  65
sm  4/20/2010   5   67
sm  3/21/2010   40  76
sm  3/21/2010   70  76

When the user imports this, everything is fine. My import method is:

dataset <- read.csv(input$file$datapath)
dataset <- na.omit(dataset)

However, let's say the user saved the above table in Excel, saving it as a csv. Then he deleted the last two columns.

Type    Date    
sm  1/13/2010   
sm  1/14/2010       
sm  2/15/2010   
am  4/16/2010   
am  1/17/2010   
am  3/18/2010   
sm  1/19/2010   
sm  4/20/2010   
sm  3/21/2010   
sm  3/21/2010   

If I looked at the str() of this table, the last 2 columns wold now contain NA values because in Excel, the columns have already been formatted. I can't take in these NA values, as they mess up my program later on. I'd like to get rid of them. My na.omit() doesn't seem to do anything about the NAs.

I have found a solution using

dataset[is.na(dataset)] <- c("")

to replace these columns with blank chars, but this could mess me up later when I'm checking which columns of the uploaded dataset are characters!

Does anyone have a better solution (telling the user to upload the file in another Excel sheet is not an option )?

share|improve this question
up vote 2 down vote accepted

To remove columns containing only NA:

dataset [,colSums(is.na(dataset )) <nrow(dataset),drop=FALSE]
share|improve this answer
Oooh, very nice, thank you very much sir. Just a small syntax issue: nrow(dataset) instead of nrow(dat) – user2522217 Aug 13 '13 at 23:35
@user2522217 thanks! I update the typo. – agstudy Aug 13 '13 at 23:38

I prefer this solution to remove all columns that have only missing values,

dataset[,sapply(dataset, function(x)!all(is.na(x)))]
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