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I know this should be straightforward, but I am having problems splitting a data frame with ddply.

ID = c(1,1,1,2,2,2,2,3,4,4,4,4)
date = c("4th Nov","4th Nov","5th Nov","5th Nov","6th Nov","7th Nov","7th Nov","8th Nov","6th Nov","6th Nov","7th Nov","7th Nov")
df<-data.frame(ID,date)

All I want is to work out the number of unique IDs I have in a very large dataset (so in the example above I would just get 4). The numbers in my real dataset are not continuous though, so I can't just work out the maximum.

I have been trying to get the code to split the dataframe so each unique ID will just be included once in the new dataframe, and then I was hoping just to count the number of rows to give me the total. Perhaps I don't even need ddply - could I just do this in one line of code?

Sorry for my ignorance, and thanks in advance for your help!

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3 Answers 3

up vote 3 down vote accepted

The quickest and easiest way is to use length and unique on your vector of IDs:

> length(unique(df$ID))
[1] 4
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That's great - thanks so much! –  KT_1 Jan 27 '12 at 11:40

You don't need ddply here but here is solution with ddply:

nrow(ddply(df,.(ID),head,1))
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this worked for me:

records=ddply(
              df, .(date),
              summarise,
              days=length(unique(ID))              
              )
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