I'm diving in the world of data.tables and so far enjoy the syntax, as I find I can do a lot more with writing a lot less. It is a bit exotic at times however.
Here's one thing I need to figure out--I know how to do joins, such as x[y], but what I need to do is a bit more complex (but still pretty simple!).
Our sales database suffers from many iterations of the same Rep's name, I keep a separate list that tells me when two names are actually the same rep. In for the $$'s it might have one or two versions of a particular rep's name (usually it's the first one, but sometimes someone's name may have been misspelled for for first few months of the year then corrected).
I'll provide two sample data.table's that I want to combine, I don't know HOW to get the result I want but I will also write out what I want to occur.
DT1 <- data.table(name=c("Bob Smith", "Robert Smith", "Mary Stone", "Maryanne Stone", "Jason Hasberg"), sales=c(12, 15, 23, 10, 11)) DT2 <- data.table(correctname=c("Bob Smith", "Maryanne Stone", "Jason Hasberg"), namechoice1=c("Robert Smith", "Mary Stone", "Jason Hasberg"), namechoice2=c("Bob Smith", "Maryanne Stone", NA))
name sales 1: Bob Smith 12 2: Robert Smith 15 3: Mary Stone 23 4: Maryanne Stone 10 5: Jason Hasberg 11
correctname namechoice1 namechoice2 1: Bob Smith Robert Smith Bob Smith 2: Maryanne Stone Mary Stone Maryanne Stone 3: Jason Hasberg Jason Hasberg NA
So in ENGLISH: If name in DT1 is either namechoice1, or namechoice2, then use correctname on that line item, then sum the sales for the various names under that name.
(watch out, I threw in a NA for Jason as very often the name doesn't need correcting)
correctname sales 1: Bob Smith 27 2: Maryanne Stone 33 3: Jason Hasberg 11
I'm hoping for an answer that is as few lines as possible, but perhaps there needs to be some further subsetting before the final sum can be calculated..
Looking forward to your answers, THANK YOU!!