This does the trick, first create some data:

```
df = data.frame(round(matrix(runif(3*10), 10, 3)))
names(df) = c("A","B","C")
```

and for a solution:

```
sum(rowSums(df[c("A","B")]) == 2)
```

or:

```
sum(apply(df[c("A","B")] == 1, 1, all))
```

**EDIT** (Tyler Rinker):

I was curious about the three approaches considering speed and I figured Pauls first approach would be fastest but was wrong. On a 10,000 row data set using microbenchmark package (500 iterations):

```
## Unit: microseconds
## expr min lq median uq max neval
## LOGICAL() 386.725 397.455 412.1495 434.308 710.940 500
## APPLY() 31225.830 39327.696 42790.0280 46586.137 1169824.066 500
## ROWSUMS() 460.432 489.588 590.5840 621.373 7884.713 500
```