# R can't convert NaN to NA for large data frame

I have a decent size data set of ~ 60 columns that was accidentally populated with `NaN`'s instead of `NA`'s. The column types are a mix of character, numeric, factor, integer. I need to convert the `NaN`'s to `NA`'s as they are screwing up the works on several functions including linear regression. I am aware of how to change an individual column from this question here:

R can't convert NaN to NA

but am curious if there is a way to do this for a full data frame without losing the vector types. Any suggestions or is this a manual job?

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It's probably petty of me but I do notice that you didn't accept any of the offered answers to that question. –  BondedDust Mar 7 '12 at 23:26
@DWin: You're right, thanks for the reminder. –  screechOwl Mar 7 '12 at 23:53

Would this work ? ( It should for numeric, integer, character and factor vectors.)

``````as.data.frame( lapply(dat, function(col) {
if (is.numeric(col)) { is.na(col) <- is.nan(col); return(col)} else {
if (is.character(col) || is.factor(col) )  {
is.na(col) <- col == "NaN"; return(col)} else {
return(col)                                                                }
}
}
)

dat <-
structure(list(tester1 = structure(c(1L, 1L, 2L, 3L, 1L, 2L,
4L), .Label = c("2", "3", "4", "NaN"), class = "factor"), tester2 = c(2,
2, 3, 4, 2, 3, NaN)), .Names = c("tester1", "tester2"), row.names = c(NA,
-7L), class = "data.frame")

# Produced:

tester1 tester2
1       2       2
2       2       2
3       3       3
4       4       4
5       2       2
6       3       3
7    <NA>      NA
``````
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Using the above sample dataset. Try this:

``````CMBv = colnames(dat)

dat[CMBv] = lapply(dat[CMBv], function(x){ifelse(is.nan(x), NA,x)} )
``````
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Would

``````gsub(pattern, replacement, x, ignore.case = FALSE, perl = FALSE,
fixed = FALSE, useBytes = FALSE)
``````

Work?

Maybe you would need a mix with `apply`. Could you provide a small example so I can try to implement it?

Thanks.

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