In this scenario it is not so different than data.frame
data <- data[ menuitem != 'coffee' | amount > 0]
Delete/add row by reference it is to be implemented. You find more info in this question
Regarding speed:
1 You can benefit from keys by doing something like:
setkey(data, menuitem)
data <- data[!"coffee"]
which will be faster than data <- data[ menuitem != 'coffee']
. However to apply the same filters you asked in the question you'll need a rolling join (I've finished my lunch break I can add something later :-)).
2 Even without key data.table is much faster for relatively big table (similar speed for handful amount of rows)
dt<-data.table(id=sample(letters,1000000,T),var=rnorm(1000000))
df<-data.frame(id=sample(letters,1000000,T),var=rnorm(1000000))
library(microbenchmark)
> microbenchmark(dt[ id == "a"], df[ df$id == "a",])
Unit: milliseconds
expr min lq median uq max neval
dt[id == "a"] 24.42193 25.74296 26.00996 26.35778 27.36355 100
df[df$id == "a", ] 138.17500 146.46729 147.38646 149.06766 154.10051 100