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Lets say I have a data.table with these columns


for a total of 72 columns. Let's call it rawtable

I want to reshape it so I have


for a total of just these 5 columns where the hour column will contain whichever hour from the original 72 that it should be. Let's call it newshape

The way I'm doing it now is to use rbindlist with 24 items where each item is the proper subset of the bigger data.table. Like this (except I'm leaving out most of the hours in my example)

 rawtable[,list(nodeID, Hour=1, aaa=hour1aaa, bbb=hour1bbb, ccc=hour1ccc)], 
 rawtable[,list(nodeID, Hour=2, aaa=hour2aaa, bbb=hour2bbb, ccc=hour2ccc)], 
 rawtable[,list(nodeID, Hour=24, aaa=hour24aaa, bbb=hour24bbb, ccc=hour24ccc)]))

Here is some sample data to play with


Using my rbindlist approach gives the desired result but, as with most things I do with R, there is probably a better way. By better I mean more memory efficient, faster, and/or uses less lines of code. Does anyone have a better way to achieve this?

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This is a classic reshape problem, though I'm not sure this really harnesses the efficiency of the data.table structure:



   nodeID hour  aaa   bbb   ccc
1:      1    1 12.4 61.10  -4.2
2:      2    1 32.0 65.33  54.0
3:      1    2 12.2 12.20   5.6
4:      2    2  1.2  5.70 101.9
5:      1   24 45.2 23.00  98.0
6:      2   24  8.5  7.90  32.3

@Arun's answer over here: may also be useful if you can adapt it to your current data.

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+1 I don't think that there would be much of a problem with base R reshape. It always bugs me that reshape doesn't go to the trouble to figure out the varying = list(...) part, especially when you have to specify v.names in those cases. – A Handcart And Mohair Aug 20 '13 at 2:23
@AnandaMahto - a small price to pay I suppose. You could always do keynames <- c("aaa","bbb","ccc") and use lapply(keynames,grep,names(rawtable)) in the varying and keynames in the v.names part. It is a bit of an inconvenience though. – thelatemail Aug 20 '13 at 2:36
I have defined a vectorized grep for such purposes in my functions: vGrep <- Vectorize(grep, "pattern", SIMPLIFY = FALSE). – A Handcart And Mohair Aug 20 '13 at 2:46
Thanks for the suggestions. I changed the 2 data points listed above to runif(1e6,min=-10,max=10) for the vars and 1:1e6 for nodeID then did system.time on reshape. It came back with 5.8 vs rbindlist approach of 0.19. This doesn't surprise me as reshape isn't very fast in my experience compared to reshape2 and I'm not aware of an analog in reshape2 for the times/timevar argument in reshape. – Dean MacGregor Aug 20 '13 at 15:02

One option is to use merged.stack from my package "splitstackshape". This function, stacks groups of columns and then merges the output together. Because of how the function creates the "time" variable, you can specify whatever you wanted to strip out from the column names. In this case, we want to strip out "hour", "aaa", "bbb", and "ccc" and have just the numbers remaining.

## Make sure you're using at least 1.2.0
# [1] ‘1.2.0’
merged.stack(rawtable, id.vars="nodeID", 
             var.stubs=c("aaa", "bbb", "ccc"), 
#    nodeID .time_1  aaa   bbb   ccc
# 1:      1       1 12.4 61.10  -4.2
# 2:      1       2 12.2 12.20   5.6
# 3:      1      24 45.2 23.00  98.0
# 4:      2       1 32.0 65.33  54.0
# 5:      2       2  1.2  5.70 101.9
# 6:      2      24  8.5  7.90  32.3
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