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This question already has an answer here:

Suppose that we have data.table like that:

1:  1    A    10
2:  1    B    10
3:  1    A    40
4:  2    B    20
5:  2    B    40

I need to generate the following aggregated data.table (numbers are sums of values for given TYPE and KEY):

    TYPE A    B
1:  1    50   10
2:  2    0    60

In a real life problem there are a lot of different values for KEY so it's impossible to hardcode them.

How can I achieve that?

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marked as duplicate by Chinmay Patil, mnel, Stephan, Sindre Sorhus, PassKit Apr 11 '13 at 9:29

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

See…. – Contango Apr 10 '13 at 10:28

One way I could think of is:

# to ensure all levels are present when using `tapply`
DT[, KEY := factor(KEY, levels=unique(KEY))]
DT[, as.list(tapply(VALUE, KEY, sum)), by = TYPE]
#    TYPE  A  B
# 1:    1 50 10
# 2:    2 NA 60
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