Just to make sure base R isn't entirely ignored (or to make you appreciate the syntax of "plyr" and "data.table" for these types of problems)...

Two options:

### Option 1: Use `ave`

to do the "aggregation" and `unique`

to slim down the output

```
unique(within(d1, {
code1 <- ave(code1, PatID,
FUN=function(x) paste(unique(x), collapse = ","))
location <- ave(location, PatID, FUN=function(x) x[1])
}))
# PatID code1 location
# 1 1 1,2,3 a
# 4 2 1,2,8 d
# 6 4 7 f
```

### Option 2: Get `aggregate`

and `merge`

working together

```
merge(
aggregate(code1 ~ PatID, d1,
function(x) paste(unique(x), collapse = ",")),
aggregate(location ~ PatID, d1, function(x) x[1]))
# PatID code1 location
# 1 1 1,2,3 a
# 2 2 1,2,8 d
# 3 4 7 f
```

The closest purely `aggregate`

solution I can think of is as follows:

```
aggregate(cbind(code1, as.character(location)) ~ PatID, d1,
function(x) cbind(paste(unique(x), collapse = ","),
as.character(x[1])))
# PatID code1.1 code1.2 V2.1 V2.2
# 1 1 1,2,3 1 a,b,c,g a
# 2 2 1,2,8 1 d,e,h d
# 3 4 7 7 f f
```

It gives you all the information you were interested in, and a decent amount of information you weren't interested in too...