# How to delete columns that contain ONLY NAs?

I have a data.frame containing some columns with all NA values. How can I delete them from the data.frame?

Can I use the function,

``````na.omit(...)
``````

One way of doing it:

``````df[, colSums(is.na(df)) != nrow(df)]
``````

If the count of NAs in a column is equal to the number of rows, it must be entirely NA.

Or similarly

``````df[colSums(!is.na(df)) > 0]
``````
• How can I delete columns having more than a threshold of NA? or in Percentage (lets say above 50%)? Commented Mar 9, 2015 at 7:01
• @lovedynasty Probably best to submit a separate question, assuming you haven't already since posting your comment. But anyway, you can always do something like `df[, colSums(is.na(df)) < nrow(df) * 0.5]` i.e. only keep columns with at least 50% non-blanks. Commented Apr 13, 2015 at 11:31
• People working with a correlation matrix must use `df[, colSums(is.na(df)) != nrow(df) - 1]` since the diagonal is always `1` Commented Oct 1, 2015 at 12:54
• Can use this with the dplyr (version 0.5.0) select_if function as well. `df %>% select_if(colSums(!is.na(.)) > 0)` Commented Nov 29, 2016 at 21:58
• @MadScone it is giving me syntax error at "," for df[, colSums(is.na(df)) != nrow(df)] and syntax error at "!" in df[colSums(!is.na(df)) > 0]. Am i missing something Commented Jan 29, 2020 at 12:58

Here is a dplyr solution:

``````df %>% select_if(~sum(!is.na(.)) > 0)
``````

Update: The `summarise_if()` function is superseded as of `dplyr 1.0`. Here are two other solutions that use the `where()` tidyselect function:

``````df %>%
select(
where(
~sum(!is.na(.x)) > 0
)
)
``````
``````df %>%
select(
where(
~!all(is.na(.x))
)
)
``````
• At ~15k rows and ~5k columns, this is truly taking forever. Commented Dec 12, 2017 at 14:58
• @EngrStudent Was it faster with the accepted answer's solution? Commented May 4, 2020 at 16:59
• It's been a number of years. I don't remember. DJV has a nice timing post below. Commented May 5, 2020 at 11:20
• Here is the same answer on one line (more practical for copy-paste): `dplyr::select(dplyr::where(~sum(!is.na(.x)) > 0))` Commented Oct 13, 2022 at 8:20

Another option is the `janitor` package:

``````df <- janitor::remove_empty(df, which = "cols")
``````

https://github.com/sfirke/janitor

• `janitor::remove_empty_cols()` is deprecated - use `df <- janitor::remove_empty(df, which = "cols")` Commented May 14, 2019 at 21:45
• even `remove_empty()` works Commented Mar 23, 2022 at 15:04
• I prefer this answer with @André.B's comment as the method in the selected answer above renames the columns to `V1`, `V2`, etc., but this method keeps the names of the columns as they are. Commented Aug 15, 2022 at 15:08

It seeems like you want to remove ONLY columns with ALL `NA`s, leaving columns with some rows that do have `NA`s. I would do this (but I am sure there is an efficient vectorised soution:

``````#set seed for reproducibility
set.seed <- 103
df <- data.frame( id = 1:10 , nas = rep( NA , 10 ) , vals = sample( c( 1:3 , NA ) , 10 , repl = TRUE ) )
df
#      id nas vals
#   1   1  NA   NA
#   2   2  NA    2
#   3   3  NA    1
#   4   4  NA    2
#   5   5  NA    2
#   6   6  NA    3
#   7   7  NA    2
#   8   8  NA    3
#   9   9  NA    3
#   10 10  NA    2

#Use this command to remove columns that are entirely NA values, it will leave columns where only some values are NA
df[ , ! apply( df , 2 , function(x) all(is.na(x)) ) ]
#      id vals
#   1   1   NA
#   2   2    2
#   3   3    1
#   4   4    2
#   5   5    2
#   6   6    3
#   7   7    2
#   8   8    3
#   9   9    3
#   10 10    2
``````

If you find yourself in the situation where you want to remove columns that have any `NA` values you can simply change the `all` command above to `any`.

• The data.frame has two type of columns: one in whohc all values are numbers and the other in which all values are NA Commented Apr 12, 2013 at 10:16
• So this will work then. It only removes columns were ALL values are `NA`. Commented Apr 12, 2013 at 10:16
• Good solution. I would do `apply(is.na(df), 1, all)` though just because it's slightly neater and `is.na()` is used on all of `df` rather than one row at a time (show be a bit faster). Commented Apr 12, 2013 at 10:29
• @MadScone good tip - does look neater. You should apply across columns not rows though. Commented Apr 12, 2013 at 10:40
• @MadScone Edits are locked after 5 minutes on comments. I shouldn't worry, it's no biggie!! :-) Commented Apr 12, 2013 at 10:55

Another option with `Filter`

``````Filter(function(x) !all(is.na(x)), df)
``````

NOTE: Data from @Simon O'Hanlon's post.

An intuitive script: `dplyr::select_if(~!all(is.na(.)))`. It literally keeps only not-all-elements-missing columns. (to delete all-element-missing columns).

``````> df <- data.frame( id = 1:10 , nas = rep( NA , 10 ) , vals = sample( c( 1:3 , NA ) , 10 , repl = TRUE ) )

> df %>% glimpse()
Observations: 10
Variables: 3
\$ id   <int> 1, 2, 3, 4, 5, 6, 7, 8, 9, 10
\$ nas  <lgl> NA, NA, NA, NA, NA, NA, NA, NA, NA, NA
\$ vals <int> NA, 1, 1, NA, 1, 1, 1, 2, 3, NA

> df %>% select_if(~!all(is.na(.)))
id vals
1   1   NA
2   2    1
3   3    1
4   4   NA
5   5    1
6   6    1
7   7    1
8   8    2
9   9    3
10 10   NA
``````

Because performance was really important for me, I benchmarked all the functions above.

NOTE: Data from @Simon O'Hanlon's post. Only with size 15000 instead of 10.

``````library(tidyverse)
library(microbenchmark)

set.seed(123)
df <- data.frame(id = 1:15000,
nas = rep(NA, 15000),
vals = sample(c(1:3, NA), 15000,
repl = TRUE))
df

MadSconeF1 <- function(x) x[, colSums(is.na(x)) != nrow(x)]

MadSconeF2 <- function(x) x[colSums(!is.na(x)) > 0]

BradCannell <- function(x) x %>% select_if(~sum(!is.na(.)) > 0)

SimonOHanlon <- function(x) x[ , !apply(x, 2 ,function(y) all(is.na(y)))]

jsta <- function(x) janitor::remove_empty(x)

SiboJiang <- function(x) x %>% dplyr::select_if(~!all(is.na(.)))

akrun <- function(x) Filter(function(y) !all(is.na(y)), x)

mbm <- microbenchmark(
"SimonOHanlon" = {SimonOHanlon(df)},
"SiboJiang" = {SiboJiang(df)},
"jsta" = {jsta(df)},
"akrun" = {akrun(df)},
times = 1000)

mbm
``````

Results:

``````Unit: microseconds
expr    min      lq      mean  median      uq      max neval  cld
MadSconeF1  154.5  178.35  257.9396  196.05  219.25   5001.0  1000 a
MadSconeF2  180.4  209.75  281.2541  226.40  251.05   6322.1  1000 a
BradCannell 2579.4 2884.90 3330.3700 3059.45 3379.30  33667.3  1000    d
SimonOHanlon  511.0  565.00  943.3089  586.45  623.65 210338.4  1000  b
SiboJiang 2558.1 2853.05 3377.6702 3010.30 3310.00  89718.0  1000    d
jsta 1544.8 1652.45 2031.5065 1706.05 1872.65  11594.9  1000   c
akrun   93.8  111.60  139.9482  121.90  135.45   3851.2  1000 a

autoplot(mbm)
``````

``````mbm %>%
tbl_df() %>%
ggplot(aes(sample = time)) +
stat_qq() +
stat_qq_line() +
facet_wrap(~expr, scales = "free")
``````

• Sometimes the first iteration is a JIT compiled, so it has very poor, and not very characteristic, times. I think it’s interesting what the larger sample size does to the right tails of the distribution. This is good work. Commented May 5, 2020 at 11:58
• I run it once again, wasn't sure I changed the plot. Regarding the distribution, indeed. I should probably compare different sample sizes when I'll have the time.
– DJV
Commented May 5, 2020 at 12:27
• if you qqplot (ggplot2.tidyverse.org/reference/geom_qq.html) one of the trends, such as "akrun" then I bet there is one point that is very different from the distribution of the rest. The rest represent how long it takes if you run it repeatedly, but that represents what happens if you run it once. There is an old saying: you can have 20 years of experience or you can have only one years worth of experience 20 times. Commented May 5, 2020 at 13:00
• very nice! I’m surprised by several samples being in the extreme tail. I wonder why it is that those are so much more costly. JIT might be 1 or 2 but not 20. Condition? Interrupts? Other? Thanks again for the update. Commented May 5, 2020 at 16:56
• You're welcome, thank you for the thoughts. Don't know, I actually allowed it to run "freely".
– DJV
Commented May 5, 2020 at 19:59

Try as follows:

``````df <- df[,colSums(is.na(df))<nrow(df)]
``````

Another option using the map_lgl function from the `purrr` package, which returns a logical vector and using the `[` to remove the columns with `all` NA. Here is a reproducible example:

``````set.seed(7)
df <- data.frame(id = 1:5 , nas = rep(NA, 5) , vals = sample(c(1:3,NA), 5, repl = TRUE))
df
#>   id nas vals
#> 1  1  NA    2
#> 2  2  NA    3
#> 3  3  NA    3
#> 4  4  NA   NA
#> 5  5  NA    3
library(purrr)
df[!map_lgl(df, ~ all(is.na(.)))]
#>   id vals
#> 1  1    2
#> 2  2    3
#> 3  3    3
#> 4  4   NA
#> 5  5    3
``````

Created on 2022-08-28 with reprex v2.0.2