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I am using data.table to do some repeated lookups on a large dataset (45M rows, 4 int columns).

Here is what I want to do.

library(data.table)
# generate some data, u's can show up in multiple s's
d1 <- data.table(u=rep(1:500,2), s=round(runif(1000,1,100),0))
setkey(d1, u, s)

# for each u, I want to lookup all their s's
us <- d1[J(u=1), "s", with=F]
# for each of the s's in the above data.table, 
#   I want to lookup other u's from the parent data.table d1

# DOESN'T WORK:
otherus <- d1[J(s = us), "u", with=F]   

# THIS WORKS but takes a really long time on my large dataset:
otherus <- merge(d1, us, by='s') 

Merge works for my purpose but since my 'd1' >>> 'us', it takes a long time. At first I thought maybe I am using the merge from the base, but based on the docs it does look like data.table merge is dispatched is the class(first_arg to merge) is a data.table.

I am still getting used to data.table J() syntax. Is there a niftier way to accomplish this?

Thanks in advance.

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Ouch, those names are confusing. Shouldn't us refer to multiple u's, not multiple s's associated with a paticular u? Anyway, this sounds like graph theory to me. You're finding neighbors, right? IF so, you might want to look into the igraph package. –  Frank Feb 19 '14 at 18:53

2 Answers 2

You can change the key for that purpose.

setkey(d1,s,u)

After that command all u values for the same s value are grouped together.

        u   s
   1:  20   1
   2:  35   1
   3:  36   1
   4:  87   1
   5: 123   1
  ---        
 996: 208 100
 997: 262 100
 998: 352 100
 999: 430 100
1000: 455 100

Operations performed on the groups defined by the key columns usually work really fast, e.g.

d1[,mean(u),keyby='s']

If you need to do fast aggregation for both groups uand s, you could store two instances of the data.table. For one you use setkey(d1,u,s) and for the other setkey(d1,s,u). If you want to perform operations quickly on the groups defined by the values of u use the former data.table otherwise the latter.

share|improve this answer
    
Thanks @Georg. I've actually done that-- basically 2 copies of the data.table with different key combinations. The datasets are big & I need to do this in a foreach loop which I believe makes a copy for each 'worker' so the RAM fills up quickly. I was hoping there was another solution. Thanks for looking. –  user3053307 Feb 17 '14 at 21:41
1  
Well, maybe it is possible to store only the index columns uand s plus a row identifier in two data.tables to save memory and combine it somehow with the bigmemory package which allows to store matrices in shared memory. –  Georg Feb 17 '14 at 22:02

Will the following work?

d1 <- data.table(u=rep(1:500,2), s=round(runif(1000,1,100),0))
setkey(d1, u, s)
us <- d1[J(u=1), "s", with=F]
otherus <- merge(d1, us, by='s') 

setkey(d1,s)
otherus2 <- d1[us]
identical(otherus2, otherus)

setkey(d1, u, s)
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