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I have a large R dataframe on which I need to look up rows based on two columns $start and $end efficiently many times. I imagine that the typical solution is O(N):

data[data$start <= start & data$end >= end, 1]

I would prefer to sort at least one of the columns and do more efficient O(log(N)) lookups. What inbuilt R methods exist to take advantage of ordering in a dataframe for lookup?

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4  
You could try the package data.table – James Dec 6 '11 at 11:48
4  
Are you actually finding this slow? How much data do you have? – hadley Dec 6 '11 at 11:58
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Since index lookups and subsetting are generally fast enough not to be a code bottleneck, it would be useful to provide a reproducible example with timings. – Richie Cotton Dec 6 '11 at 14:36
    
I've managed without indexes for now, but to answer the questions. I was working with a table of 300000 rows or ~500 tables of 500 rows and 10^7 range lookups. I will try out data.table the next time I have to run this code. – lyschoening Dec 13 '11 at 10:09

I realize that this is an old question. Just wanted to provide a link for those who come searching for fast lookups in R.

Lookup performance in R - Joseph Adler. I find it to be quite comprehensive for my needs. He advocates the double bracket notation ([[) and provides time comparisons for multiple alternatives.

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how would you get the entire row in the data frame using [[ ? – pldimitrov Aug 8 '14 at 7:19

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