213

I want to count the number of NA values in a data frame column. Say my data frame is called df, and the name of the column I am considering is col. The way I have come up with is following:

sapply(df$col, function(x) sum(length(which(is.na(x)))))  

Is this a good/most efficient way to do this?

0

17 Answers 17

437

You're over-thinking the problem:

sum(is.na(df$col))
6
  • Thank you for this. To expand this a little bit. In counting amount of arbitrary value, other than NA is writing a boolean function is.value and then using sum(is.value(df$col)) the way to go or is there a more concise direct syntax for this? Jun 4, 2014 at 2:11
  • 3
    Was too quick to ask. sum(df$col==value,na.rm=FALSE) does the trick. Jun 4, 2014 at 2:18
  • 4
    @user3274289: although you'll usually want na.rm=TRUE, because otherwise if df$col contains NAs, sum will return NA.
    – jbaums
    Jun 4, 2014 at 2:30
  • 1
    Sometimes I think I am over-thinking, till I got this answer...well, it's true...
    – Rugal
    Feb 29, 2016 at 4:40
  • 1
    you can also count non-NA values with sum(!is.na(df$col))
    – mschmidt
    Nov 24, 2022 at 7:31
102

If you are looking for NA counts for each column in a dataframe then:

na_count <-sapply(x, function(y) sum(length(which(is.na(y)))))

should give you a list with the counts for each column.

na_count <- data.frame(na_count)

Should output the data nicely in a dataframe like:

----------------------
| row.names | na_count
------------------------
| column_1  | count
4
  • 1
    To include the row names as a column, also run na_count$name<-rownames(na_count).
    – Matt
    Nov 13, 2015 at 17:02
  • 9
    na_count <-sapply(x, function(y) sum(is.na(y))) is a shorter alternative. Mar 26, 2016 at 10:19
  • 1
    Didn't work for me :( Had to change it to: na_count <- apply(x, function(y) sum(is.na(y)) , MARGIN = 2) Jul 27, 2017 at 9:36
  • I don't think we need to use both the sum and the length function (in the first na_count assignment)? Just length should be sufficient.
    – Yandle
    Feb 2, 2019 at 17:33
74

Try the colSums function

df <- data.frame(x = c(1,2,NA), y = rep(NA, 3))

colSums(is.na(df))

#x y 
#1 3 
1
  • 4
    If you are dealing with many colums, you can reach a nicer output with ´ colSums(is.na(df)) %>% as.data.frame() ´ or ´ as.data.frame(colSums(is.na(df))) ´
    – BMLopes
    Sep 30, 2020 at 19:39
39

A quick and easy Tidyverse solution to get a NA count for all columns is to use summarise_all() which I think makes a much easier to read solution than using purrr or sapply

library(tidyverse)
# Example data
df <- tibble(col1 = c(1, 2, 3, NA), 
             col2 = c(NA, NA, "a", "b"))

df %>% summarise_all(~ sum(is.na(.)))
#> # A tibble: 1 x 2
#>    col1  col2
#>   <int> <int>
#> 1     1     2

Or using the more modern across() function:

df %>% summarise(across(everything(), ~ sum(is.na(.))))
2
  • how would I get the NAs as a single number in total?
    – Ben
    Jun 8, 2022 at 9:26
  • 3
    @Ben - if you want to save the output as a separate column you need to supply the .names argument. This uses a glue specification, e.g.: df %>% summarise(across(everything(), ~ sum(is.na(.)), .names = "{.col}_na.count") will create a new column for each variable, with the number of NAs for that variable.
    – cjdbarlow
    Oct 19, 2022 at 2:32
24

If you are looking to count the number of NAs in the entire dataframe you could also use

sum(is.na(df))
16

In the summary() output, the function also counts the NAs so one can use this function if one wants the sum of NAs in several variables.

1
  • 2
    Worth noting that the summary output when used on a single column is useable, while its output from an entire data frame is character and the counts are difficult to extract if you need them later. See c(summary(mtcars)). Aug 20, 2016 at 19:11
11

A tidyverse way to count the number of nulls in every column of a dataframe:

library(tidyverse)
library(purrr)

df %>%
    map_df(function(x) sum(is.na(x))) %>%
    gather(feature, num_nulls) %>%
    print(n = 100)
3
  • 3
    You don't even need purrr: df %>% summarise_all(funs(sum(is.na(.)))) Oct 21, 2018 at 16:45
  • 2
    If you are lazy like me, you can write the same in @Abi K's answer in the somewhat shorter purrr syntax as: df %>% map_df(~sum(is.na(.))) or without dplyr as map_df(~sum(is.na(df)))
    – Agile Bean
    Apr 22, 2019 at 6:44
  • Best solution for me as it gives the best colnames to proceed Jan 2, 2023 at 15:37
8

This form, slightly changed from Kevin Ogoros's one:

na_count <-function (x) sapply(x, function(y) sum(is.na(y)))

returns NA counts as named int array

1
  • 1
    to get result as list: na_count <-function (x) lapply(x, function(y) sum(is.na(y)))
    – hute37
    Jan 9, 2016 at 18:33
6
sapply(name of the data, function(x) sum(is.na(x)))
1
  • 2
    See "Explaining entirely code-based answers". While this might be technically correct it doesn't explain why it solves the problem or should be the selected answer. We should educate in addition to help solve the problem. May 24, 2020 at 4:31
3

Try this:

length(df$col[is.na(df$col)])
0
3

User rrs answer is right but that only tells you the number of NA values in the particular column of the data frame that you are passing to get the number of NA values for the whole data frame try this:

apply(<name of dataFrame>, 2<for getting column stats>, function(x) {sum(is.na(x))})

This does the trick

1
  • There are some typos that make this code non-functional. Try this; apply(df, 2, function(x) sum(is.na(x))) Mar 7, 2016 at 9:49
3

I read a csv file from local directory. Following code works for me.

# to get number of which contains na
sum(is.na(df[, c(columnName)]) # to get number of na row

# to get number of which not contains na
sum(!is.na(df[, c(columnName)]) 

#here columnName is your desire column name
3

If you're looking for null values in each column to be printed one after the other then you can use this. Simple solution.

lapply(df, function(x) { length(which(is.na(x)))})
2

Similar to hute37's answer but using the purrr package. I think this tidyverse approach is simpler than the answer proposed by AbiK.

library(purrr)
map_dbl(df, ~sum(is.na(.)))

Note: the tilde (~) creates an anonymous function. And the '.' refers to the input for the anonymous function, in this case the data.frame df.

1
  • Nice and clean but the colname is quite messy. Do you have a nice solution to call is "count_NA"? Jan 2, 2023 at 15:34
2

Another option using complete.cases like this:

df <- data.frame(col = c(1,2,NA))
df
#>   col
#> 1   1
#> 2   2
#> 3  NA
sum(!complete.cases(df$col))
#> [1] 1

Created on 2022-08-27 with reprex v2.0.2

0

You can use this to count number of NA or blanks in every column

colSums(is.na(data_set_name)|data_set_name == '')
0

In the interests of completeness you can also use the useNA argument in table. For example table(df$col, useNA="always") will count all of non NA cases and the NA ones.

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