# R: Fastest way to do row wise computation on multiple columns of a data frame

I have a data frame where I want to add another column that's a result of computation involving 3 other columns. The method I am using right now seems to be very slow. Is there any better method to do the same. Here is the approach I am using.

``````library(bitops)

GetRes<-function(A, B, C){
tagU <- bitShiftR((A*C), 4)
tagV <- bitShiftR(B, 2)

x<-tagU %% 2
y<-tagV %% 4

res<-(2*x + y) %% 4
return(res)
}

df <- data.frame(id=letters[1:3],val0=1:3,val1=4:6,val2=7:9)
apply(df, 1, function(x) GetRes(x[2], x[3], x[4]))
``````

My data frame is very big and it's taking ages to get this computation done. Can someone suggest me to do it better?

Thanks.

-

Everything you're doing is already vectorized which is much faster than any other alternative you'll be offered. You can just call this...

``````with(df, GetRes(val0, val1, val2))
``````

or this

``````GetRes(df\$val0, df\$val1, df\$val2)
``````

or this

``````GetRes(df[,2], df[,3], df[,4])
``````
-
+1, I wasn't aware that bitShiftL was vectorized function –  Chinmay Patil Apr 24 at 6:54

Try `mapply`

``````mapply(GetRes, df[,2], df[,3], df[,4])
``````

If you let us know which package `bitShiftR` is from, we can test it on bigger data to see if there is any performance boost.

UPDATE
Quick benchmarking shows, `mapply` is twice as fast as your `apply`

``````microbenchmark(apply(df[,2:4], 1, function(x) GetRes(x[1], x[2], x[3])), mapply(GetRes, df[,2], df[,3], df[,4]))
Unit: microseconds
expr     min       lq   median      uq      max neval
apply(df[, 2:4], 1, function(x) GetRes(x[1], x[2], x[3])) 196.985 201.6200 206.7515 216.187 1006.775   100
mapply(GetRes, df[, 2], df[, 3], df[, 4])  99.982 105.6105 108.7560 112.232  149.311   100
``````
-
Added. it is from `bitops` –  Rachit Agrawal Apr 24 at 5:53
And if `mapply`works faster, it might be also worth to use the parallel version of it: `library(parallel) ; mcapply(GetRes, df[,2], df[,3], df[,4], mc.cores=xxx)`, where `xxx`is the amount of cores in your computer. –  Daniel Fischer Apr 24 at 6:45