# Add a column with count of NAs and Mean

I have a data frame and I need to add another column to it which shows the count of NAs in all the other columns for that row and also the mean of the non-NA values. I think it can be done in dplyr.

``````> df1 <- data.frame(a = 1:5, b = c(1,2,NA,4,NA), c = c(NA,2,3,NA,NA))
> df1
a  b  c
1 1  1 NA
2 2  2  2
3 3 NA  3
4 4  4 NA
5 5 NA NA
``````

I want to mutate another column which counts the number of NAs in that row and another column which shows the mean of all the NON-NA values in that row.

• This generally isn't a forum to ask us to write your code for you. What have you tried? Why do you want to use `dplyr`? FWIW, this can be done in base R quite easily any number of ways. One is: `df1\$na <- apply(is.na(df1), 1, sum)` Commented Feb 16, 2016 at 21:30
• The `dplyr` way is described here: stackoverflow.com/questions/21818181/… Commented Feb 16, 2016 at 21:42

``````library(dplyr)

count_na <- function(x) sum(is.na(x))

df1 %>%
mutate(means = rowMeans(., na.rm = T),
count_na = apply(., 1, count_na))

elected_cols <- c('b', 'c')

df1 %>%
mutate(means = rowMeans(.[elected_cols], na.rm = T),
count_na = apply(.[elected_cols], 1, count_na))
``````
• How would you modify this solution to work only on elected columns? For instance b & c?
– user319487
Commented Nov 21, 2017 at 7:31
• @radek - I updated the solution to answer your question. Commented Oct 2, 2020 at 14:38

As mentioned here https://stackoverflow.com/a/37732069/2292993

``````df1 <- data.frame(a = 1:5, b = c(1,2,NA,4,NA), c = c(NA,2,3,NA,NA))

df1 %>%
mutate(means = rowMeans(., na.rm = T),
count_na = rowSums(is.na(.)))
``````

to work on selected cols (the example here is for col a and col c):

``````df1 %>%
mutate(means = rowMeans(., na.rm = T),
count_na = rowSums(is.na(select(.,one_of(c('a','c'))))))
``````

You can try this:

``````#Find the row mean and add it to a new column in the dataframe
df1\$Mean <- rowMeans(df1, na.rm = TRUE)

#Find the count of NA and add it to a new column in the dataframe
df1\$CountNa <- rowSums(apply(is.na(df1), 2, as.numeric))
``````

I recently faced a variation on this question where I needed to compute the percent of complete values, but for specific variables (not all variables). Here is an approach that worked for me.

``````df1 %>%
# create dummy variables representing if the observation is missing ----
# can modify here for specific variables ----
mutate_all(list(dummy = is.na)) %>%
# compute a row wise sum of missing ----
rowwise() %>%
mutate(
# number of missing observations ----
n_miss = sum(c_across(matches("_dummy"))),
# percent of observations that are complete (non-missing) ----
pct_complete = 1 - mean(c_across(matches("_dummy")))
) %>%
# remove grouping from rowwise ----
ungroup() %>%
# remove dummy variables ----
dplyr::select(-matches("dummy"))
``````