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# Find the index position of the first non-NA value in an R vector?

I have a problem where a vector has a bunch of NAs at the beginning, and data thereafter. However the peculiarity of my data is that the first n values that are non NA, are probably unreliable, so I would like to remove them and replace them with NA.

For example, if I have a vector of length 20, and non-NAs start at index position 4:

``````> z
[1]          NA          NA          NA -1.64801942 -0.57209233  0.65137286  0.13324344 -2.28339326
[9]  1.29968050  0.10420776  0.54140323  0.64418164 -1.00949072 -1.16504423  1.33588892  1.63253646
[17]  2.41181291  0.38499825 -0.04869589  0.04798073
``````

I would like to remove the first 3 non-NA values, which I believe to be unreliable, to give this:

``````> z
[1]          NA          NA          NA          NA          NA          NA  0.13324344 -2.28339326
[9]  1.29968050  0.10420776  0.54140323  0.64418164 -1.00949072 -1.16504423  1.33588892  1.63253646
[17]  2.41181291  0.38499825 -0.04869589  0.04798073
``````

Of course I need a general solution and I never know when the first non-NA value starts. How would I go about doing this? IE how do I find out the index position of the first non-NA value?

For completeness, my data is actually arranged in a data frame with lots of these vectors in columns, and each vector can have a different non-NA starting position. Also once the data starts, there may be sporadic NAs further down, which prevents me from simply counting their number, as a solution.

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Is there an efficient way to do this that stops searching when it finds the first one? – Alex Brown Jun 12 '13 at 16:59

Use a combination of `is.na` and `which` to find the non-NA index locations.

``````NonNAindex <- which(!is.na(z))
firstNonNA <- min(NonNAindex)

# set the next 3 observations to NA
is.na(z) <- seq(firstNonNA, length.out=3)
``````
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Dang, this was my second guess. Wanted to be fancy with `rle()` but I like this solution better. – Roman Luštrik Jul 24 '11 at 18:28
Perfect thanks. After some thought I came up with min((1:length(z))[!is.na(z)]), but of course this which idea is much better. Perfect – Thomas Browne Jul 24 '11 at 19:43
Is `firstNonNA <- NonNAindex[1]` faster? Would I run into some problem with using `[1]` vs. `min()`? – Florian Jenn Mar 11 '13 at 15:06
@FlorianJenn: yes, that would likely be faster, especially for larger vectors. I can't immediately think of a problem of using it over `min`. – Joshua Ulrich Mar 12 '13 at 16:00
@JoshuaUlrich: Thanks! – Florian Jenn Mar 12 '13 at 17:58

Similar idea to that of @Joshua, but using `which.min()`

``````## dummy data
set.seed(1)
dat <- runif(10)
dat[seq_len(sample(10, 1))] <- NA

## start of data
start <- which.min(is.na(dat))
``````

which gives:

``````> (start <- which.min(is.na(dat)))
[1] 4
``````

Use this to set `start:(start+2)` to `NA`

``````is.na(dat) <- seq(start, length.out = 3)
``````

resulting in:

``````> dat
[1]         NA         NA         NA         NA         NA
[6]         NA 0.94467527 0.66079779 0.62911404 0.06178627
``````
-
even cleaner. Thanks, and also for the continuation of the answer. – Thomas Browne Jul 24 '11 at 19:43
+1, but I'm not sure about cleaner. It's shorter but may be less clear to people who don't realize `which.min` coerces `TRUE` and `FALSE` to `1` and `0`, respectively. – Joshua Ulrich Jul 25 '11 at 2:45
@Joshua agreed, it also relies on the behaviour that which.min returns the first of any tied minima. Not sure shorter deserves the accept. – Gavin Simpson Jul 25 '11 at 6:43

I would do it something along the lines of

``````# generate some data
tb <- runif(10)
tb[1:3] <- NA

# I convert vector to TRUE/FALSE based on whether it's NA or not
# rle function will tell you when something "changes" in the vector
# (in our case from TRUE to FALSE)
tb.rle <- rle(is.na(tb))

# this is where vector goes from all TRUE to (at least one) FALSE