I think you will find that 'ifelse' is not a vector operation (its actually performing as a loop), and so it is orders of magnitudes slower than the vector equivalent. R favors vector operations, which is why apply, mapply, sapply are lightning fast for certain calculations.

Small Datasets, not a problem, but if you have an array of length 100k or more, you can go and cook a roast dinner before it finishes under any method involving a loop.

The below code should work.

For vector

```
minvalue <- 0
X[X < minvalue] <- minvalue
```

For Dataframe or Matrix.

```
minvalue <- 0
n <- 10 #change to whatever.
columns <- c(1:n)
X[X[,columns] < minvalue,columns] <- minvalue
```

Another fast method, via pmax and pmin functions, this caps entries between 0 and 1 and you can put a matrix or dataframe as the first argument no problems.

```
ulbound <- function(v,MAX=1,MIN=0) pmin(MAX,pmax(MIN,v))
```