# Remove NA values from a vector

I have a huge vector which has a couple of `NA` values, and I'm trying to find the max value in that vector (the vector is all numbers), but I can't do this because of the `NA` values.

How can I remove the `NA` values so that I can compute the max?

Trying `?max`, you'll see that it actually has a `na.rm =` argument, set by default to `FALSE`. (That's the common default for many other R functions, including `sum()`, `mean()`, etc.)

Setting `na.rm=TRUE` does just what you're asking for:

``````d <- c(1, 100, NA, 10)
max(d, na.rm=TRUE)
``````

If you do want to remove all of the `NA`s, use this idiom instead:

``````d <- d[!is.na(d)]
``````

A final note: Other functions (e.g. `table()`, `lm()`, and `sort()`) have `NA`-related arguments that use different names (and offer different options). So if `NA`'s cause you problems in a function call, it's worth checking for a built-in solution among the function's arguments. I've found there's usually one already there.

• This is a very bad idea. It fails and gives `-Inf` for a `d` of all NAs. Aug 1 '19 at 23:27
• @user3932000 Just to be clear for others, your complaint is really about how the base R function `max()` behaves (as, for instance, when doing `max(c(NA, NA)`). Personally, I think its behavior is reasonable; I expect it was constructed that way so that you get the expected result when doing things like `a <- c(NA, NA); b <- 1:4; max(c(max(a, na.rm = TRUE), max(b, na.rm = TRUE)))` Aug 2 '19 at 20:23
• @user3932000 Somewhat tangentially, one of R's many strengths as a data analysis platform is its sophisticated handling of missing data, the result of much careful thought on the part of its authors. (If you're interested in the subject, see here for a good discussion of some of the issues involved, from the point of view of programmers who were engaged in incorporating R-like `NA`-handling facilities in Python's excellent NumPy package.) Aug 2 '19 at 20:24
• @user3932000: is that answer really bad? What would you consider the maximum of the null set? Jan 29 '20 at 21:20
• @CliffAB It doesn't have a maximum. You can assign the max to be -∞ (and min to be +∞), but that's not always desired or intuitive. Also, when you remove all `NA`s from a vector of `NA`s, you would expect an empty vector, not -∞. Jan 29 '20 at 22:57

The `na.omit` function is what a lot of the regression routines use internally:

``````vec <- 1:1000
vec[runif(200, 1, 1000)] <- NA
max(vec)
#[1] NA
max( na.omit(vec) )
#[1] 1000
``````

Use `discard` from purrr (works with lists and vectors).

``````discard(v, is.na)
``````

The benefit is that it is easy to use pipes; alternatively use the built-in subsetting function `[`:

``````v %>% discard(is.na)
v %>% `[`(!is.na(.))
``````

Note that `na.omit` does not work on lists:

``````> x <- list(a=1, b=2, c=NA)
> na.omit(x)
\$a
[1] 1

\$b
[1] 2

\$c
[1] NA
``````

`?max` shows you that there is an extra parameter `na.rm` that you can set to `TRUE`.

Apart from that, if you really want to remove the `NA`s, just use something like:

``````myvec[!is.na(myvec)]
``````
• I think this is best. na.rm and na.omit add quite a bit of junk to the output. Sep 11 '17 at 17:31
• Except `na.omit` also has a dataframe method, so is more general. Feb 25 '19 at 22:24

You can call `max(vector, na.rm = TRUE)`. More generally, you can use the `na.omit()` function.

Just in case someone new to R wants a simplified answer to the original question

How can I remove NA values from a vector?

Here it is:

Assume you have a vector `foo` as follows:

``````foo = c(1:10, NA, 20:30)
``````

running `length(foo)` gives 22.

``````nona_foo = foo[!is.na(foo)]
``````

`length(nona_foo)` is 21, because the NA values have been removed.

Remember `is.na(foo)` returns a boolean matrix, so indexing `foo` with the opposite of this value will give you all the elements which are not NA.

I ran a quick benchmark comparing the two `base` approaches and it turns out that `x[!is.na(x)]` is faster than `na.omit`. User `qwr` suggested I try `purrr::dicard` also - this turned out to be massively slower (though I'll happily take comments on my implementation & test!)

``````microbenchmark::microbenchmark(
purrr::map(airquality,function(x) {x[!is.na(x)]}),
purrr::map(airquality,na.omit),
purrr::map(airquality, ~purrr::discard(.x, .p = is.na)),
times = 1e6)

Unit: microseconds
expr    min     lq      mean median      uq       max neval cld
purrr::map(airquality, function(x) {     x[!is.na(x)] })   66.8   75.9  130.5643   86.2  131.80  541125.5 1e+06 a
purrr::map(airquality, na.omit)   95.7  107.4  185.5108  129.3  190.50  534795.5 1e+06  b
purrr::map(airquality, ~purrr::discard(.x, .p = is.na)) 3391.7 3648.6 5615.8965 4079.7 6486.45 1121975.4 1e+06   c
``````

For reference, here's the original test of `x[!is.na(x)]` vs `na.omit`:

``````microbenchmark::microbenchmark(
purrr::map(airquality,function(x) {x[!is.na(x)]}),
purrr::map(airquality,na.omit),
times = 1000000)

Unit: microseconds
expr  min   lq      mean median    uq      max neval cld
map(airquality, function(x) {     x[!is.na(x)] }) 53.0 56.6  86.48231   58.1  64.8 414195.2 1e+06  a
map(airquality, na.omit) 85.3 90.4 134.49964   92.5 104.9 348352.8 1e+06   b
``````
• you should try `purrr:discard`
– qwr
Jun 16 '20 at 4:36