Following this post: multicore and data.table in R, I was wondering if there was a way to use all cores when using data.table, typically doing calculations by groups could be parallelized. It seems that
plyr allows such operations by design.
First thing to check is that
That's one reason data.table grouping is quick. But this approach doesn't lend itself to parallelization. Parallelizing means copying the data to the other threads, instead, costing time. But, my understanding is that
More often, so far, it's actually some gotcha that's biting in the
So the mantra is:
Further, point 1 from the same FAQ might be significant :
Also see footnote 3 in the data.table intro vignette :
That's trying to say "sure, parallel is significantly faster, but how long should it really take with an efficient algorithm?".
BUT if you've profiled (using
Of course there are many tasks where parallelization would be nice in data.table, and there is a way to do it. But it hasn't been done yet, since usually other factors bite, so it's been low priority. If you can post reproducible dummy data with benchmarks and Rprof results, that would help increase the priority.