You can also use `colSums`

or `rowSums`

, e.g.:

```
rowSums(cbind(x, y), na.rm = T)
# [1] 7 7 11 13 15
colSums(rbind(x, y), na.rm = T)
# [1] 7 7 11 13 15
```

Benchmarks; surprisingly `colSums`

works the fastest:

```
microbenchmark::microbenchmark(fn_replace(x, y),
fn_rowSums(x, y),
fn_colSums(x, y),
fn_coalesce(x, y))
# Unit: milliseconds
# expr min lq mean median uq max neval
# fn_replace(x, y) 121.4322 130.99067 174.1531 162.2454 183.1781 385.7348 100
# fn_rowSums(x, y) 143.0654 146.20815 172.5396 149.3953 179.0337 370.1625 100
# fn_colSums(x, y) 96.8848 99.46521 121.5916 106.8800 140.9279 298.1607 100
# fn_coalesce(x, y) 259.2923 310.16915 357.0241 326.1245 360.9110 595.9711 100
## Code to generate x, y and functions for benchmark:
fn_replace <- function(x, y) {
replace(x, is.na(x), 0) + replace(y, is.na(y), 0)
}
fn_rowSums <- function(x, y) {
rowSums(cbind(x, y), na.rm = T)
}
fn_colSums <- function(x, y) {
colSums(rbind(x, y), na.rm = T)
}
fn_coalesce <- function(x, y) {
dplyr::coalesce(x, rep(0, length(x))) +
dplyr::coalesce(y, rep(0, length(y)))
}
n_rep <- 1e6
x <- as.numeric(rep(c(1, NA, 3:5, NA, NA, 5), n_rep))
y <- as.numeric(rep(c(NA, 6:9, NA, 3, 4), n_rep))
```