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 ...
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 ...
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, ...
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 ...
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 = ...
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( ...
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 ...
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 ...