-1
votes
1answer
74 views

Faster alternative to split-apply-combine

the short version Split-apply-combine with plyr::dlply seems to be inefficient because of the overhead required to split and combine. Am I mistaken, or is there a better/faster way? the long ...
3
votes
3answers
108 views

Need faster rolling apply function with start to stop indices

Below is the piece of code. It gives percentile of the trade price level for rolling 15-minute(historical) window. It runs quickly if the length is 500 or 1000, but as you can see there are 45K ...
3
votes
1answer
254 views

How can I improve the performance of my data cleaning code that currently uses ddply by using data.table?

I am trying to clean data using ddply but it is running very slowly on 1.3M rows. Sample code: #Create Sample Data Frame num_rows <- 10000 df <- data.frame(id=sample(1:20, num_rows, ...
16
votes
4answers
1k views

Trouble converting long list of data.frames (~1 million) to single data.frame using do.call and ldply

I know there are many questions here in SO about ways to convert a list of data.frames to a single data.frame using do.call or ldply, but this questions is about understanding the inner workings of ...
4
votes
6answers
1k views

faster way to create variable that aggregates a column by id

Is there a faster way to do this? I guess this is unnecessary slow and that a task like this can be accomplished with base functions. df <- ddply(df, "id", function(x) cbind(x, perc.total = ...
5
votes
2answers
453 views

How to rewrite a “sapply” command to increase performance?

I have a data.frame named "d" of ~1,300,000 lines and 4 columns and another data.frame named "gc" of ~12,000 lines and 2 columns (but see the smaller example below). d <- data.frame( ...
4
votes
2answers
739 views

idata.frame: Why error “is.data.frame(df) is not TRUE”?

I'm working with a large data frame called exp (file here) in R. In the interests of performance, it was suggested that I check out the idata.frame() function from plyr. But I think I'm using it ...
29
votes
5answers
4k views

R: speeding up “group by” operations

I have a simulation that has a huge aggregate and combine step right in the middle. I prototyped this process using plyr's ddply() function which works great for a huge percentage of my needs. But I ...