[R] adding rows without loops
Rainer Schuermann
rainer.schuermann at gmx.net
Thu May 23 16:07:00 CEST 2013
Using the data generated with your code below, does
rbind( DF1, DF2[ !(DF2$X.TIME %in% DF1$X.TIME), ] )
DF1 <- DF1[ order( DF1$X.DATE, DF1$X.TIME ), ]
do the job?
Rgds,
Rainer
On Thursday 23 May 2013 05:54:26 Adeel - SafeGreenCapital wrote:
> Thank you Blaser:
>
> This is the exact solution I came up with but when comparing 8M rows even on
> an 8G machine, one runs out of memory. To run this effectively, I have to
> break the DF into smaller DFs, loop through them and then do a massive
> rmerge at the end. That's what takes 8+ hours to compute.
>
> Even the bigmemory package is causing OOM issues.
>
> -----Original Message-----
> From: Blaser Nello [mailto:nblaser at ispm.unibe.ch]
> Sent: Thursday, May 23, 2013 12:15 AM
> To: Adeel Amin; r-help at r-project.org
> Subject: RE: [R] adding rows without loops
>
> Merge should do the trick. How to best use it will depend on what you
> want to do with the data after.
> The following is an example of what you could do. This will perform
> best, if the rows are missing at random and do not cluster.
>
> DF1 <- data.frame(X.DATE=rep(01052007, 7), X.TIME=c(2:5,7:9)*100,
> VALUE=c(37, 42, 45, 45, 45, 42, 45), VALE2=c(29,24,28,27,35,32,32))
> DF2 <- data.frame(X.DATE=rep(01052007, 7), X.TIME=c(2:8)*100,
> VALUE=c(37, 42, 45, 45, 45, 42, 45), VALE2=c(29,24,28,27,35,32,32))
>
> DFm <- merge(DF1, DF2, by=c("X.DATE", "X.TIME"), all=TRUE)
>
> while(any(is.na(DFm))){
> if (any(is.na(DFm[1,]))) stop("Complete first row required!")
> ind <- which(is.na(DFm), arr.ind=TRUE)
> prind <- matrix(c(ind[,"row"]-1, ind[,"col"]), ncol=2)
> DFm[is.na(DFm)] <- DFm[prind]
> }
> DFm
>
> Best,
> Nello
>
> -----Original Message-----
> From: r-help-bounces at r-project.org [mailto:r-help-bounces at r-project.org]
> On Behalf Of Adeel Amin
> Sent: Donnerstag, 23. Mai 2013 07:01
> To: r-help at r-project.org
> Subject: [R] adding rows without loops
>
> I'm comparing a variety of datasets with over 4M rows. I've solved this
> problem 5 different ways using a for/while loop but the processing time
> is murder (over 8 hours doing this row by row per data set). As such
> I'm trying to find whether this solution is possible without a loop or
> one in which the processing time is much faster.
>
> Each dataset is a time series as such:
>
> DF1:
>
> X.DATE X.TIME VALUE VALUE2
> 1 01052007 0200 37 29
> 2 01052007 0300 42 24
> 3 01052007 0400 45 28
> 4 01052007 0500 45 27
> 5 01052007 0700 45 35
> 6 01052007 0800 42 32
> 7 01052007 0900 45 32
> ...
> ...
> ...
> n
>
> DF2
>
> X.DATE X.TIME VALUE VALUE2
> 1 01052007 0200 37 29
> 2 01052007 0300 42 24
> 3 01052007 0400 45 28
> 4 01052007 0500 45 27
> 5 01052007 0600 45 35
> 6 01052007 0700 42 32
> 7 01052007 0800 45 32
>
> ...
> ...
> n+4000
>
> In other words there are 4000 more rows in DF2 then DF1 thus the
> datasets are of unequal length.
>
> I'm trying to ensure that all dataframes have the same number of X.DATE
> and X.TIME entries. Where they are missing, I'd like to insert a new
> row.
>
> In the above example, when comparing DF2 to DF1, entry 01052007 0600
> entry is missing in DF1. The solution would add a row to DF1 at the
> appropriate index.
>
> so new dataframe would be
>
>
> X.DATE X.TIME VALUE VALUE2
> 1 01052007 0200 37 29
> 2 01052007 0300 42 24
> 3 01052007 0400 45 28
> 4 01052007 0500 45 27
> 5 01052007 0600 45 27
> 6 01052007 0700 45 35
> 7 01052007 0800 42 32
> 8 01052007 0900 45 32
>
> Value and Value2 would be the same as row 4.
>
> Of course this is simple to accomplish using a row by row analysis but
> with of 4M rows the processing time destroying and rebinding the
> datasets is very time consuming and I believe highly un-R'ish. What am
> I missing?
>
> Thanks!
>
> [[alternative HTML version deleted]]
>
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> PLEASE do read the posting guide http://www.R-project.org/posting-guide.html
> and provide commented, minimal, self-contained, reproducible code.
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