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Is it possible to get the same result of ret with aggregate or ddply in a more readable way?

time<-c("2013-08-05 15:44:19","2013-08-05 15:44:24","2013-08-05 15:45:19","2013-08-05 15:45:28")

df<-data.frame(time=as.POSIXct(time),col2=c(1,2,2,2),col3=LETTERS[1:4])
mm<-split(df,df[,"col2"])
ret<-lapply(mm, function(x){
              mt<-max(x[,"time"])
              idx<-x[,"time"]==mt
              x[idx,]
            }
           )
do.call("rbind",ret)
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4  
Maybe you could explain in plain english what you want to achieve ? –  juba Sep 19 '13 at 13:41

2 Answers 2

With plyr :

R> ddply(df, "col2", summarize, time=max(time))
  col2                time
1    1 2013-08-05 15:44:19
2    2 2013-08-05 15:45:28

With data.table :

R> dt <- data.table(df, key="col2")
R> dt[,list(time=max(time)),by=col2]
   col2                time
1:    1 2013-08-05 15:44:19
2:    2 2013-08-05 15:45:28
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2  
+1 for the data.table solution. plyr seems to be the slowest of all in my benchmarking on huge data. with data.table being the fastest. –  Arun Sep 19 '13 at 14:43
    
I knew the data.table solution would please you :-) –  juba Sep 19 '13 at 14:46

Using aggregate:

> aggregate(time~col2, FUN=max, data=df)[, c(2,1)]
                 time col2
1 2013-08-05 15:44:19    1
2 2013-08-05 15:45:28    2

with ddply

> ddply(df, .(col2), summarise, time=max(time))[, c(2,1)]
                 time col2
1 2013-08-05 15:44:19    1
2 2013-08-05 15:45:28    2

Just for fun, another base solution using lapply and split

> do.call(rbind, lapply(with(df, split(df, col2)),
+                       function(x) x[which.max(x$time), ]))
                 time col2
1 2013-08-05 15:44:19    1
2 2013-08-05 15:45:28    2

Update

The last solution works for your update

> do.call(rbind, lapply(with(df, split(df, col2)),
+                       function(x) x[which.max(x$time), ]))
                 time col2 col3
1 2013-08-05 15:44:19    1    A
2 2013-08-05 15:45:28    2    D
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Thx, if I would have more columns (I edit the start post) in df, how to select them for return value? And how could I return the result in the order of time? –  Klaus Sep 19 '13 at 14:24
    
Can you update your question with the info in your comment and make it reproducible? –  Jilber Sep 19 '13 at 14:24
    
I already updated it. –  Klaus Sep 19 '13 at 14:26
    
But now I am not sure if max is computing on the time column in aggregate(.~col2, FUN=max, data=df). –  Klaus Sep 19 '13 at 14:34

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