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This is a more focussed question based on another question I have open at Vectorize/Speed up Code with Nested For Loops

Basically, I want to speed up the execution of this code. I was thinking of using one of the apply family of functions. The apply function would have to use/perform the following:

Input: loop over regions 1 to 10; vectors sed and borewidth with preallocated dimensions filled with NAs

Process: fill data in each of sed and borewidth in the manner implemented in the inner for loop

Output: sed and borewidth vectors

Assumptions (h/t Simon Urbanek): the begin, finish points of each row are contiguous, sequential and for each region, begin at 0.

Code is as below:

for (region in 1:10) {             
    # subset standRef and sample by region code
    standRef.region <- standRef[which(standRef$region == region),]
    sample.region <- sample[which(sample$region == region),]

    for (i in 1:nrow(sample.region))
    {
        # create a dataframe - locations - that includes: 
        # 1) those indices of standRef.region in which the value of the location column is greater than the value of the ith row of the begin column of sample.region
        # 2) those indices of standRef.region in which the value of the location column is less than the value of the ith row of the finish column of sample.region
        locations <- standRef.region[which((standRef.region$location > sample.region$begin[i]) & (standRef.region$location < sample.region$finish[i])),]
        sed[end_tracker:(end_tracker + nrow(locations))] <- sample.region$sed[i]   
        borewidth[end_tracker:(end_tracker + nrow(locations))] <- sample.region$borewidth[i]

        # update end_tracker to the number of locations rows for this iteration
        end_tracker <- end_tracker + nrow(locations)                
    }
    cat("Finished region", region,"\n")            
}      

Sample Data for borewidth andsed. Edit: corrected formatting error in dput

structure(list(region = c(1L, 1L, 1L, 1L, 2L, 2L, 2L, 2L, 2L), 
begin = c(0L, 2253252L, 7091077L, 9120205L, 0L, 135094L, 
941813L, 5901391L, 6061324L), finish = c(2253252L, 7091077L, 
9120205L, 17463033L, 135094L, 941813L, 5901391L, 6061324L, 
7092402L), sed = c(3.31830840984048, 1.38014704208403, 6.13049140975458, 
2.10349875097134, 0.48170587509345, 0.13058713509175, 9.13509713513509, 
6.13047153058701, 3.81734081501503), borewidth = c(3L, 5L, 
2L, 1L, 1L, 1L, 2L, 4L, 4L)), .Names = c("region", "begin", 
"finish", "sed", "borewidth"), class = "data.frame", row.names = c(NA, 
-9L))

TIA.

share|improve this question
    
split and lapply will help with the outer loop. You may also want to consider merge-ing the 2 data frames to do this without explicit loops if its possible. – James Jan 2 '12 at 13:56
    
some (dummy) data would make it a lot easier for us to help you. – Thierry Jan 2 '12 at 14:16
    
@Thierry, some sample data up. The reference data - standRef - is provided in dput format in stackoverflow.com/questions/8691966/…. Thanks – Kaleb Jan 2 '12 at 14:40
    
@James I've tried using sapply by putting the code above into a function foo1 and calling it from vecOfData <- sapply(vecOfData, function(x) foo1(1:10)), where vecOfData <- c(sed, borewidth). However, this just seems to loop through each element in sedand then borewidth -- over a million iterations! -- rather than treating each vector as an element.How can I use split in the context above? Thanks. – Kaleb Jan 2 '12 at 14:45
1  
Please give us code to generate the datasets that will work with a simple copy-paste. The structure() generates just one data.frame. Is that sed or borewidth? And we don't have the sample data.frame (which can be confused with the sample() function). – Thierry Jan 2 '12 at 15:19
up vote 4 down vote accepted

With some extra assumptions based on the data you posted (incl. the other question), this is one way you could do it:

index <- unlist(lapply (unique(standRef$region), function(reg) {
   reg.filter <- which(standRef$region == reg)
   samp.filter <- which(sample$region == reg)
   samp.filter[cut(standRef$location[reg.filter],c(0L,sample$finish[samp.filter]),labels=F)]
}))
sed <- sample$sed[index]
borewidth <- sample$borewidth[index]

The extra assumption is that your samples are contiguous, sequential (all your examples were) and start at 0. This allows us to use cut() on the $finish instead of treating each interval separately. One difference is that you code left gaps at the breaks, but I'm assuming that was not intentional.

share|improve this answer
    
Does this replace all of my code above, or does it fit into a particular part of it? Sorry for being a bit dense on that: I've never heard of many of the functions you're using. Thanks. Re: assumptions: contiguous -- yes should be; sequential: yes; start at 0 for a given region: yep. – Kaleb Jan 2 '12 at 18:14
3  
It replaces all your code. unique(standRef$region) gives you all the regions, so the function runs over all regions as reg. For each region it splits the location for the region into pieces given by finish using cut(). That gives you the index within the region, so the trick is to map back into the full-size sample by plugging it in samp.filter[..] which gives you the index in sample. Since the order is preserved you can just concatenate the result (via unlist) to give you full mapping from each row in sample to the rows in standRef. – Simon Urbanek Jan 2 '12 at 19:54
    
Tested the code on my datasets. Two observations: it works and it's fast, very fast. Thankyou!!! Any tips on how to speed up the rest of the code at stackoverflow.com/questions/8691966/…?? The blazing speed of this section is incongruent with the rest. Thanks again! – Kaleb Jan 2 '12 at 21:02
    
In the other question you may want to create just one file instead of looping over all the files - read.table is fairly slow in general. But even if you don't do that you can replace all the outer code with just one lapply: lapply(data_files, function(file) { ...; sample$sed[index] }) - it is a typical example of a misplaced loop. – Simon Urbanek Jan 2 '12 at 21:33
    
How - within function(file) - do I 1) update sediment.df and other dataframes? 2) return the sediment.df and other dataframes? Is unlist needed again? Thanks. – Kaleb Jan 2 '12 at 22:34

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