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I'm just starting withddply and finding it very useful. I want to summarize a data frame and also get rid of some rows in the final output based on whether the summarized column has a particular value. This is like HAVING as well as GROUP BY in SQL. Here's an example:

input = data.frame(id=     c( 1, 1, 2, 2, 3,   3),
                   metric= c(30,50,70,90,40,1050),
                   badness=c( 1, 5, 7, 3, 3,  99))
intermediateoutput = ddply(input, ~ id, summarize,
                           meanMetric=mean(metric),
                           maxBadness=max(badness))
intermediateoutput[intermediateoutput$maxBadness < 50,1:2]

This gives:

  id meanMetric
1  1         40
2  2         80

which is what I want, but can I do it in a single step within the ddply statement somehow?

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4  
If you're not already heavily committed to plyr then you might benefit from going directly to dplyr which is the new and improved version. –  Ben Jul 16 '14 at 13:47
2  
Just make sure you don't have them both loaded at the same time –  David Arenburg Jul 16 '14 at 13:52

1 Answer 1

up vote 8 down vote accepted

You should try with dplyr. It is faster, and the code is much easier to read and understand, especially if you use pipes (%>%) :

input %>%
    group_by(id) %>%
    summarize(meanMetric=mean(metric), maxBadness=max(badness)) %>%
    filter(maxBadness <50) %>%
    select(-maxBadness)

Following @Arun comment, you can simplify the code this way :

input %>%
    group_by(id) %>%
    filter(max(badness)<50) %>%
    summarize(meanMetric=mean(metric))
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1  
Is there an equivalent way in dplyr for as.data.table(input)[, list(meanMetric=mean(metric)[max(badness) < 50]), by=id]? –  Arun Jul 16 '14 at 14:05
1  
Yes you're right @Arun (as always !). The code can be simplified because you don't have to compute the maxBadness variable for filtering. Added it as an edit, I think this is more or less the equivalent of your data.table code. –  juba Jul 16 '14 at 15:29

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