I have asked the same question a few days ago ( click here), but didn't mention that a result using `data.table`

would be appreciated

The "aggregate-solution" works fine, even though it is pretty slow! I am searching for a faster way to solve this.

I want to reshape the following data.frame:

```
df <- data.frame(x=c("p1","p1","p2"),y=c("a","b","a"),z=c(14,14,16))
df
x y z
1 p1 a 14
2 p1 b 14
3 p2 a 16
```

so that it looks like this one:

```
df2 <- data.frame(x=c("p1","p2"),a=c(1,1),b=c(1,0),z=c(14,16))
x a b z
1 p1 1 1 14
2 p2 1 0 16
```

The variable `y`

in `df`

should be broken so that its elements are new variables, each dummy coded. All other variables (in this case just `z`

) are equal for each person (p1,p2 etc.). The only variable where a specific person p has different values is `y`

.

The reason I want this is because I need to merge this dataset with other ones by variable `x`

. Thing is, it needs to be one row per person (`p1`

,`p2`

etc).