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I have a program which pulls data out of a MySQL database, decodes a pair of binary columns, and then sums together a subset of of the rows within the pair of binary columns. Running the program on a sample data set takes 12-14 seconds, with 9-10 of those taken up by unlist. I'm wondering if there is any way to speed things up.

Structure of the table

The rows I'm getting from the database look like:

| array_length | mz_array        | intensity_array |
|--------------+-----------------+-----------------|
|           98 | 00c077e66340... | 002091c37240... |
|           74 | c04a7c7340...   | db87734000...   |

where array_length is the number of little-endian doubles in the two arrays (they are guaranteed to be the same length). So the first row has 98 doubles in each of mz_array and intensity_array. array_length has a mean of 825 and a median of 620 with 13,000 rows.

Decoding the binary arrays

Each row gets decoded by being passed to the following function. Once the binary arrays have been decoded, array_length is no longer needed.

DecodeSpectrum <- function(array_length, mz_array, intensity_array) {
  sapply(list(mz_array=mz_array, intensity_array=intensity_array),
         readBin,
         what="double",
         endian="little",
         n=array_length)
}

Summing the arrays

The next step is to sum the values in intensity_array, but only if their corresponding entry in mz_array is within a certain window. The arrays are ordered by mz_array, ascending. I am using the following function to sum up the intensity_array values:

SumInWindow <- function(spectrum, lower, upper) {
  sum(spectrum[spectrum[,1] > lower & spectrum[,1] < upper, 2])
}

Where spectrum is the output from DecodeSpectrum, a matrix.

Operating over list of rows

Each row is handled by:

ProcessSegment <- function(spectra, window_bounds) {
  lower <- window_bounds[1]
  upper <- window_bounds[2]
  ## Decode a single spectrum and sum the intensities within the window.
  SumDecode <- function (...) {
    SumInWindow(DecodeSpectrum(...), lower, upper)
  }

  do.call("mapply", c(SumDecode, spectra))
}

And finally, the rows are fetched and handed off to ProcessSegment with this function:

ProcessAllSegments <- function(conn, window_bounds) {
  nextSeg <- function() odbcFetchRows(conn, max=batchSize, buffsize=batchSize)

  while ((res <- nextSeg())$stat == 1 && res$data[[1]] > 0) {
    print(ProcessSegment(res$data, window_bounds))
  }
}

I'm doing the fetches in segments so that R doesn't have to load the entire data set into memory at once (it was causing out of memory errors). I'm using the RODBC driver because the RMySQL driver isn't able to return unsullied binary values (as far as I could tell).

Performance

For a sample data set of about 140MiB, the whole process takes around 14 seconds to complete, which is not that bad for 13,000 rows. Still, I think there's room for improvement, especially when looking at the Rprof output:

$by.self
                 self.time self.pct total.time total.pct
"unlist"             10.26    69.99      10.30     70.26
"SumInWindow"         1.06     7.23      13.92     94.95
"mapply"              0.48     3.27      14.44     98.50
"as.vector"           0.44     3.00      10.60     72.31
"array"               0.40     2.73       0.40      2.73
"FUN"                 0.40     2.73       0.40      2.73
"list"                0.30     2.05       0.30      2.05
"<"                   0.22     1.50       0.22      1.50
"unique"              0.18     1.23       0.36      2.46
">"                   0.18     1.23       0.18      1.23
".Call"               0.16     1.09       0.16      1.09
"lapply"              0.14     0.95       0.86      5.87
"simplify2array"      0.10     0.68      11.48     78.31
"&"                   0.10     0.68       0.10      0.68
"sapply"              0.06     0.41      12.36     84.31
"c"                   0.06     0.41       0.06      0.41
"is.factor"           0.04     0.27       0.04      0.27
"match.fun"           0.04     0.27       0.04      0.27
"<Anonymous>"         0.02     0.14      13.94     95.09
"unique.default"      0.02     0.14       0.06      0.41

$by.total
                     total.time total.pct self.time self.pct
"ProcessAllSegments"      14.66    100.00      0.00     0.00
"do.call"                 14.50     98.91      0.00     0.00
"ProcessSegment"          14.50     98.91      0.00     0.00
"mapply"                  14.44     98.50      0.48     3.27
"<Anonymous>"             13.94     95.09      0.02     0.14
"SumInWindow"             13.92     94.95      1.06     7.23
"sapply"                  12.36     84.31      0.06     0.41
"DecodeSpectrum"          12.36     84.31      0.00     0.00
"simplify2array"          11.48     78.31      0.10     0.68
"as.vector"               10.60     72.31      0.44     3.00
"unlist"                  10.30     70.26     10.26    69.99
"lapply"                   0.86      5.87      0.14     0.95
"array"                    0.40      2.73      0.40     2.73
"FUN"                      0.40      2.73      0.40     2.73
"unique"                   0.36      2.46      0.18     1.23
"list"                     0.30      2.05      0.30     2.05
"<"                        0.22      1.50      0.22     1.50
">"                        0.18      1.23      0.18     1.23
".Call"                    0.16      1.09      0.16     1.09
"nextSeg"                  0.16      1.09      0.00     0.00
"odbcFetchRows"            0.16      1.09      0.00     0.00
"&"                        0.10      0.68      0.10     0.68
"c"                        0.06      0.41      0.06     0.41
"unique.default"           0.06      0.41      0.02     0.14
"is.factor"                0.04      0.27      0.04     0.27
"match.fun"                0.04      0.27      0.04     0.27

$sample.interval
[1] 0.02

$sampling.time
[1] 14.66

I'm surprised to see unlist taking up so much time; this says to me that there might be some redundant copying or rearranging going on. I'm new at R, so it's entirely possible that this is normal, but I'd like to know if there's anything glaringly wrong.

Update: sample data posted

I've posted the full version of the program here and the sample data I use here. The sample data is the gziped output from mysqldump. You need to set the proper environment variables for the script to connect to the database:

  • MZDB_HOST
  • MZDB_DB
  • MZDB_USER
  • MZDB_PW

To run the script, you must specify the run_id and the window boundaries. I run the program like this:

Rscript ChromatoGen.R -i 1 -m 600 -M 1200

These window bounds are pretty arbitrary, but select roughly a half to a third of the range. If you want to print the results, put a print() around the call to ProcessSegment within ProcessAllSegments. Using those parameters, the first 5 should be:

[1] 7139.682 4522.314 3435.512 5255.024 5947.999

You probably want want to limit the number of results, unless you want 13,000 numbers filling your screen :) The simplest way is just add LIMIT 5 at the end of query.

share|improve this question
    
unlist creates names by default, which can take a bit of time and quite a bit of memory. The problem is likely when it's called by simplify2array, but it's impossible to tell without a reproducible example. –  Joshua Ulrich Jul 20 '12 at 2:35
2  
From the Rprof, I'd say it was the sapply in DecodeSpectrum, and that a solution is to add USE.NAMES=FALSE or replace the sapply with unlist(lapply(...), use.names=FALSE) or even lapply(...) if it is not less convenient to work with lists rather than matricies. –  Martin Morgan Jul 20 '12 at 2:44
    
@JoshuaUlrich I've uploaded the complete code here and the data that I'm using here. The data is a gziped SQL output from mysqldump. You configure the connection by setting the environment variables MZDB_HOST, MZDB_DB, MZDB_USER, and MZDB_PW. –  haxney Jul 20 '12 at 15:57
    
Oh, I forgot, you also have to specify a run_id, which, if you are importing the file I provided, will be 1. Also, to test setting the window, you can set the upper and lower window bounds. All together, I call the script with Rscript ChromatoGen.R -i 1 -m 600 -M 1200 -b 10 –  haxney Jul 20 '12 at 16:13
1  
@MartinMorgan Adding USE.NAMES=FALSE to sapply didn't seem to change things. –  haxney Jul 20 '12 at 16:45

1 Answer 1

up vote 0 down vote accepted

I've figured it out!

The problem was in the sapply() call. sapply does a fair amount of renaming and property setting which slows things down massively for arrays of this size. Replacing DecodeSpectrum with the following code brought the sample time from 14.66 seconds down to 3.36 seconds, a 4-fold increase!

Here's the new body of DecodeSpectrum:

DecodeSpectrum <- function(array_length, mz_array, intensity_array) {
  ## needed to tell `vapply` how long the result should be. No, there isn't an
  ## easier way to do this.
  resultLength <- rep(1.0, array_length)

  vapply(list(mz_array=mz_array, intensity_array=intensity_array),
         readBin,
         resultLength,
         what="double",
         endian="little",
         n=array_length,
         USE.NAMES=FALSE)
}

The Rprof output now looks like:

$by.self
               self.time self.pct total.time total.pct
"<Anonymous>"           0.64    19.75       2.14     66.05
"DecodeSpectrum"        0.46    14.20       1.12     34.57
".Call"                 0.42    12.96       0.42     12.96
"FUN"                   0.38    11.73       0.38     11.73
"&"                     0.16     4.94       0.16      4.94
">"                     0.14     4.32       0.14      4.32
"c"                     0.14     4.32       0.14      4.32
"list"                  0.14     4.32       0.14      4.32
"vapply"                0.12     3.70       0.66     20.37
"mapply"                0.10     3.09       2.54     78.40
"simplify2array"        0.10     3.09       0.30      9.26
"<"                     0.08     2.47       0.08      2.47
"t"                     0.04     1.23       2.72     83.95
"as.vector"             0.04     1.23       0.08      2.47
"unlist"                0.04     1.23       0.08      2.47
"lapply"                0.04     1.23       0.04      1.23
"unique.default"        0.04     1.23       0.04      1.23
"NextSegment"           0.02     0.62       0.50     15.43
"odbcFetchRows"         0.02     0.62       0.46     14.20
"unique"                0.02     0.62       0.10      3.09
"array"                 0.02     0.62       0.04      1.23
"attr"                  0.02     0.62       0.02      0.62
"match.fun"             0.02     0.62       0.02      0.62
"odbcValidChannel"      0.02     0.62       0.02      0.62
"parent.frame"          0.02     0.62       0.02      0.62

$by.total
                     total.time total.pct self.time self.pct
"ProcessAllSegments"       3.24    100.00      0.00     0.00
"t"                        2.72     83.95      0.04     1.23
"do.call"                  2.68     82.72      0.00     0.00
"mapply"                   2.54     78.40      0.10     3.09
"<Anonymous>"              2.14     66.05      0.64    19.75
"DecodeSpectrum"           1.12     34.57      0.46    14.20
"vapply"                   0.66     20.37      0.12     3.70
"NextSegment"              0.50     15.43      0.02     0.62
"odbcFetchRows"            0.46     14.20      0.02     0.62
".Call"                    0.42     12.96      0.42    12.96
"FUN"                      0.38     11.73      0.38    11.73
"simplify2array"           0.30      9.26      0.10     3.09
"&"                        0.16      4.94      0.16     4.94
">"                        0.14      4.32      0.14     4.32
"c"                        0.14      4.32      0.14     4.32
"list"                     0.14      4.32      0.14     4.32
"unique"                   0.10      3.09      0.02     0.62
"<"                        0.08      2.47      0.08     2.47
"as.vector"                0.08      2.47      0.04     1.23
"unlist"                   0.08      2.47      0.04     1.23
"lapply"                   0.04      1.23      0.04     1.23
"unique.default"           0.04      1.23      0.04     1.23
"array"                    0.04      1.23      0.02     0.62
"attr"                     0.02      0.62      0.02     0.62
"match.fun"                0.02      0.62      0.02     0.62
"odbcValidChannel"         0.02      0.62      0.02     0.62
"parent.frame"             0.02      0.62      0.02     0.62

$sample.interval
[1] 0.02

$sampling.time
[1] 3.24

It's possible that some additional performance could be squeezed out of messing with the do.call('mapply', ...) call, but I'm satisfied enough with the performance as is that I'm not willing to waste time on that.

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