I would like to multiply several columns in my data frame by a vector of values. The specific vector of values changes depending on the value in another column.

--EDIT--

What if I make the data set more complicated, i.e., more than 2 conditions and the conditions are randomly shuffled around the data set?

Here is an example of my data set:

```
df=data.frame(
Treatment=(rep(LETTERS[1:4],each=2)),
Species=rep(1:4,each=2),
Value1=c(0,0,1,3,4,2,0,0),
Value2=c(0,0,3,4,2,1,4,5),
Value3=c(0,2,4,5,2,1,4,5),
Condition=c("A","B","A","C","B","A","B","C")
)
```

Which looks like:

```
Treatment Species Value1 Value2 Value3 Condition
A 1 0 0 0 A
A 1 0 0 2 B
B 2 1 3 4 A
B 2 3 4 5 C
C 3 4 2 2 B
C 3 2 1 1 A
D 4 0 4 4 B
D 4 0 5 5 C
```

If `Condition=="A"`

, I would like to multiply columns 3-5 by the vector `c(1,2,3)`

. If `Condition=="B"`

, I would like to multiply columns 3-5 by the vector `c(4,5,6)`

. If `Condition=="C"`

, I would like to multiply columns 3-5 by the vector `c(0,1,0)`

. The resulting data frame would therefore look like this:

```
Treatment Species Value1 Value2 Value3 Condition
A 1 0 0 0 A
A 1 0 0 12 B
B 2 1 6 12 A
B 2 0 4 0 C
C 3 16 10 12 B
C 3 2 2 3 A
D 4 0 20 24 B
D 4 0 5 0 C
```

I have tried subsetting the data frame and multiplying by the vector:

```
t(t(subset(df[,3:5],df[,6]=="A")) * c(1,2,3))
```

But I can't return the subsetted data frame to the original. Is there any way to perform this operation without subsetting the data frame, so that other columns (e.g., Treatment, Species) are preserved?