hope am able to explain clearly what I would like to do.

I have a matrix

```
Z<-matrix(sample(1:40),ncol=4)
colnames(Z)<-c("value","A","B","C")
I would like to apply the following formula to each row in the dataset.
Process = value - rowmean (A,B,C)
------------------------------------
row-wise Standard deviation (A,B,C)
```

I thought of something like calculating everything separately like

Subsettting the data first

```
onlyABC<-Z[,1:3]
```

Then apply the rowMeans to each row

```
means<-apply(onlyABC,1,rowMeans)
```

And similarly compute standard deviation separately using

```
deviate<-apply(onlyABC,1,SD)
```

And then I do not know now how to subtract the value column in matrix 'z' from 'means' and then divide by 'deviate'.

Is there a simpler approach to do this?

As an example applying the formula to the first row will give:

```
row1 32-(19+35+4/3)
--------------
SD(19+35+4)
```

Similarly apply the formula to other rows as well and get a vector of size 10 in the end.

`matrix`

or`data.frame`

). once you have`means`

and`deviate`

just do`(Z[,1]-means)/deviate`

. such operation are vectorized in R. See Metrics's answer. – Michele Oct 15 '13 at 19:24