# How to get the average of two columns using dplyr?

how to get the average of two columns of a data table using dplyr? For example, if my data if like below:

``````dt <- data.table(A=1:5, B=c(1,4,NA,6,8))
``````

I want to create a new column "Avg" which is the mean of column A and B for each row:

``````dt %>% mutate(Avg=mean(c(A, B), na.rm=T))
``````

But this code does not give me the correct result. How to do this? Thank you very much.

• The mean calculation is one step of all my calculations, I need to use dplyr for the other calculations. Dec 9, 2015 at 3:28

If you want to use dplyr to achieve this, I would suggest using the function `rowwise()`:

``````    R> library(dplyr)
R> dt <- data.table(A=1:5, B=c(1,4,NA,6,8))
R> j <- dt %>% rowwise() %>% mutate(Avg=mean(c(A, B), na.rm=T))
R> j
Source: local data frame [5 x 3]
Groups: <by row>

A     B   Avg
(int) (dbl) (dbl)
1     1     1   1.0
2     2     4   3.0
3     3    NA   3.0
4     4     6   5.0
5     5     8   6.5
``````

``````dt %>% mutate(Avg=rowMeans(cbind(A, B), na.rm=T))
``````

`mean` is not vectorized. It collapse all inputs to a single value. If you make a matrix with `cbind()`, you can use `rowMeans` to do the trick.

• This takes considerable less time. Nov 24, 2020 at 15:51

As the initial dataset is `data.table`, we could use `data.table` methods

``````dt[, Avg:= mean(unlist(.SD), na.rm=TRUE) , .1:nrow(dt)]
dt
#   A  B Avg
#1: 1  1 1.0
#2: 2  4 3.0
#3: 3 NA 3.0
#4: 4  6 5.0
#5: 5  8 6.5
``````