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Dec
3
comment What's the fastest way to merge/join data.frames in R?
Both answers provide valuable information, worth reading both (though only one can be "accepted").
Dec
1
comment What's the fastest way to merge/join data.frames in R?
I appreciate also the comment about the "aggregation" case. Although this is different than the "merge" setup in the question, it is very relevant. I would have actually asked about it in a separate question, but there is already one here stackoverflow.com/questions/3685492/… . You might want to contribute to that one as well, as based on the results above, the sqldf solution might beat all the existing answers there ;)
Dec
1
comment What's the fastest way to merge/join data.frames in R?
Thank you, Gabor. Excellent points, I made some adjustments via comments to the original question. Actually I guess the order might change even in the "merge" case depending on the relative sizes of the tables, multiplicity of keys etc. (that's why I said I'm not sure if my example is representative). Nonetheless, it's nice to see all the different solutions to the problem.
Dec
1
comment What's the fastest way to merge/join data.frames in R?
The proper way to do the sqldf way is pointed out below by Gabor: create only one index (say on d1) and use d1.main instead of d1 in the select statement (otherwise it won't use the index). Timing is in this case 13.6 sec. Building indexes on both tables is actually not necessary in the data.table case either, just do "dt2 <- data.table(d2)" and the timing will be 3.9 sec.
Dec
1
comment What's the fastest way to merge/join data.frames in R?
Thank you, Marek. Some explanation of why this is so fast (builds an index/hash table) can be found here: tolstoy.newcastle.edu.au/R/help/01c/2739.html
Oct
30
comment R: speeding up “group by” operations
Indeed, but it remains the fastest though. It would be nice to have an option in ddply to operate on data.tables or use data.tables under the hood (I just discovered data.table by looking for solutions to the very same problem, but I would prefer a more ddply-like syntax for this case).