As mentioned by alistaire this is an *update join*. It is available with the `data.table`

package:

```
library(data.table)
setDT(df1)
setDT(df2)
df1[df2, on = "ID", x := ifelse(is.na(i.x), x, i.x)]
df1[df2, on = "ID", y := ifelse(is.na(i.y), y, i.y)]
df1
```

```
ID x y z
1: 1 a b c
2: 2 d b c
3: 3 a e c
4: 4 a b c
```

If there are many columns with replacement values, it might be worthwhile to follow www's suggestion to do the replacement after reshaping to long format where column names are treated as data:

```
library(data.table)
melt(setDT(df1), "ID")[
melt(setDT(df2), "ID", na.rm = TRUE), on = .(ID, variable), value := i.value][
, dcast(.SD, ID ~ variable)]
```

```
ID x y z
1: 1 a b c
2: 2 d b c
3: 3 a e c
4: 4 a b c
```

### Data

```
df1 <- fread(
"ID x y z
1 a b c
2 a b c
3 a b c
4 a b c")
df2 <- fread(
"ID x y
2 d NA
3 NA e")
```

`df2 %>% full_join(df1, by = 'ID', suffix = c('', '.1')) %>% mutate(x = coalesce(x, x.1), y = coalesce(y, y.1)) %>% select(-x.1, -y.1) %>% arrange(ID)`

. You could do the same in base R, if you like:`df3 <- merge(df2, df1, by = 'ID', all = TRUE, suffixes = c('', '.1')); df3$x[is.na(df3$x)] <- df3$x.1[is.na(df3$x)]; df3$y[is.na(df3$y)] <- df3$y.1[is.na(df3$y)]; df3[c('x.1', 'y.1')] <- NULL; df3`

– alistaire Dec 8 '17 at 1:35