I am trying to better understand utilizing keyd `data.table`

s. After reading the documentation I think I understand how to speed up subsetting when using one key. For example:

```
DT = data.table(x=rep(c("ad","bd","cd"),each=3), y=c(1,3,6), v=1:9)
```

Option one:

```
DT[x == "ad"]
```

Option two:

```
setkey(DT,x)
DT["ad"]
```

In this case option one is much slower than option two, because the data.table uses the key to seach more efficiently (using a binary search vs. a vector scan, which I do not understand but I will trust is faster.)

In the case of aggregating on a subset of the data using a by statement, what is the fastest way to define the key? Should I key the column that I am using to subset the data, or the column that defines the groups? For example:

```
setkey(DT,x)
DT[!"bd",sum(v),by=y]
```

or

```
setkey(DT,y)
DT[!"bd",sum(v),by=y]
```

Is there a way to utilize a key for both `x`

and `y`

?

**EDIT**

Does setting the key to both `x`

and `y`

perform two vector searches? i.e:

```
setkey(DT,x,y)
```

**EDIT2**

Sorry, what I *meant* to ask was will the call `DT[!"bd",sum(v),by=y]`

perform two binary scans when DT is keyed by both x and y?

fasterthan option two, i.e. if all you're doing is a single look-up and don't have a key set yet, a simple vector scan is going to be faster – eddi Nov 14 '13 at 19:38`setkey`

sorts all the columns (going last to first), and so will atleastperform`nrows * num_keycols`

operations – eddi Nov 14 '13 at 19:56`data.table`

package. I have read the 10 min intro, FAQ, and most of the documentation. I've also been browsing a lot of SO questions, but I am still feeling iffy overall. – dayne Nov 14 '13 at 20:01`x,y`

it will just do one binary search for the`!"bd"`

part. There is no binary search involved in the`by`

expression afaik (there is a sort there that is sometimes avoided, e.g. if you did`by=x`

, but not in this case). – eddi Nov 14 '13 at 20:05