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I'm wondering if anyone knows of a way to import data from a "big" xlsx file (~20Mb). I tried to use xlsx and XLConnect libraries. Unfortunately, both use rJava and I always obtain the same error:

> library(XLConnect)
> wb <- loadWorkbook("MyBigFile.xlsx")
Error: OutOfMemoryError (Java): Java heap space

or

> library(xlsx)
> mydata <- read.xlsx2(file="MyBigFile.xlsx")
Error in .jcall("RJavaTools", "Ljava/lang/Object;", "invokeMethod", cl,  : 
   java.lang.OutOfMemoryError: Java heap space

I also tried to modify the java.parameters before loading rJava:

> options( java.parameters = "-Xmx2500m")
> library(xlsx) # load rJava
> mydata <- read.xlsx2(file="MyBigFile.xlsx")
Error in .jcall("RJavaTools", "Ljava/lang/Object;", "invokeMethod", cl,  : 
   java.lang.OutOfMemoryError: Java heap space

or after loading rJava (this is a bit stupid, I think):

> library(xlsx) # load rJava
> options( java.parameters = "-Xmx2500m")
> mydata <- read.xlsx2(file="MyBigFile.xlsx")
Error in .jcall("RJavaTools", "Ljava/lang/Object;", "invokeMethod", cl,  : 
   java.lang.OutOfMemoryError: Java heap space

But nothing works.

Does anyone have an idea?

Thank you in advance!

share|improve this question
5  
Have you considered saving your data into a more universal format, e.g. csv? – flodel Oct 2 '13 at 23:12
3  
gdata is another option. I believe it is not java based, but I could be mistaken. – Ricardo Saporta Oct 3 '13 at 0:22
2  
Why is it that big? Lots of rows (do you need them all?), lots of columns (do you need them all?), lots of individual sheets (do you need them all?), one high-resolution embedded image (you don't need that...)? For spreadsheet and other binary files the size of the file in bytes is often not a useful measure of how big the data in it really is. – Spacedman Oct 3 '13 at 6:56
3  
gdata works... very slowly, about 7 min by sheet but it works. – user2722443 Oct 3 '13 at 21:22
3  
I've been working on importing a colleague's monstrous, formula-laden Excel file (150 MB), and gdata was the only Excel package that could pull it off. As here, Java-based packages ran out of memory; openxlsx segfaulted. gdata took 30 minutes per sheet, but it got the job done. – Matt Parker Aug 29 '14 at 15:24

I stumbled on this question when someone sent me (yet another) Excel file to analyze. This one isn't even that big but for whatever reason I was running into a similar error:

java.lang.OutOfMemoryError: GC overhead limit exceeded

Based on @Dirk Eddelbuettel's comment in a previous answer I installed the openxlsx package (http://cran.r-project.org/web/packages/openxlsx/). and then ran:

library("openxlsx")
mydf <- read.xlsx("BigExcelFile.xlsx", sheet = 1, startRow = 2, colNames = TRUE)

It was just what I was looking for. Easy to use and wicked fast. It's my new BFF. Thanks for the tip @Dirk E!

BTW, I don't want to poach this answer from Dirk E, so if he posts an answer, please accept it rather than mine!

share|improve this answer
    
I tried so many methods to read a big .xslx file, but nothing seemed to work for me. I was getting an error when I was using Schaun Wheeler's function at github, and could not figure out how to use the perl command in gdata for my computer. 'openxlsx" is such a life saver for me. Thanks @Dirk Eddelbuettel and Orville Jackson. – nasia jaffri Oct 27 '14 at 15:31
    
Do you know of another solution? I can't find a way to open .xls files with openxlsx – user1987097 Jan 7 '15 at 14:44
    
You could try the read.xls function in the gdata package. Never used it myself but worth a shot. – orville jackson Jan 8 '15 at 21:33

@flodel's suggestion of converting to CSV seems the most straightforward. If for whatever reason, that's not an option, you can read in the file in chunks:

 require(XLConnect)
 chnksz <- 2e3
 s <- <sheet>
 wb <- loadWorkbook(<file>, s)
 tot.rows <- getLastRow(wb)
 last.row =0
 for (i in seq(ceiling( tot.rows / chnksz) )) {
    next.batch <- readWorksheet(wb, s, startRow=last.row+i, endRow=last.row+chnksz+i)
    # optionally save next.batch to disk or 
    # assign it to a list. See which works for you. 
 } 
share|improve this answer
    
Unfortunately, the loadWorkbook command generates an "OutOfMemoryError". With the same idea, I tried mydata.chunk = read.xlsx2(file="MyBigFile.xlsx", sheetIndex=1, startRow=1, endRow=10), but it's still the same error. – user2722443 Oct 3 '13 at 21:43
    
@user2722443, are you saving the portions you've read in, then removing them from memory? also try running gc() in each for loop. It will slow you down, but clear out some memory. Incidentally, are you sure that converting to CSV is out of the quesiton? – Ricardo Saporta Oct 3 '13 at 21:43
    
@{Ricardo Saporta} in fact the mydata.chunk = read.xlsx2(file="MyBigFile.xlsx", sheetIndex=1, startRow=1, endRow=10) generates an "OutOfMemoryError". So I can't remove anything. Concerning the CSV conversion, it's not totally out of the question but it's an external operation (before loading in R). – user2722443 Oct 10 '13 at 20:04

As mentioned in the canonical Excel->R question, a recent alternative which has emerged comes from the readxl package, which I've found to be quite fast, compared with, e.g. openxlsx and xlsx.

That said, there's a definite limit of spreadsheet size past which you're probably better off just saving the thing as a .csv and using fread.

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I found this thread looking for an answer to the exact same question. Rather than try to hack an xlsx file from within R what ended up working for me was to convert the file to .csv using python and then import the file into R using a standard scanning function.

Check out: https://github.com/dilshod/xlsx2csv

share|improve this answer
1  
... which is what has been available for a decade in the gdata package for R (but using Perl behind the scenes). – Dirk Eddelbuettel Jun 19 '14 at 0:56
    
when i worked on the problem using gdata it was unacceptably slow. this python scripts converts large xlsx files extremely quickly – Aaron Jun 19 '14 at 1:16
1  
How is this answer different from @flodel's suggestion mentioned in another answer? IMHO RODBC has few advantages over intermediate CSV format. – mlt Jun 19 '14 at 1:28
4  
There is also a new kid on the block: openxlsx which uses just Rcpp and nothing but C++ code--and claims to be very fast. Not sure how refined it is. – Dirk Eddelbuettel Jun 19 '14 at 1:29

I also had the same error in both xlsx::read.xlsx and XLConnect::readWorksheetFromFile. Maybe you can use RODBC::odbcDriverConnect and RODBC::sqlFetch, which uses Microsoft RODBC, which is much more efficient.

share|improve this answer
options(java.parameters = "-Xmx2048m")  ## memory set to 2 GB
library(XLConnect)

allow for more memory using "options" before any java component is loaded. Then load XLConnect library (it uses java).

That's it. Start reading in data with readWorksheet .... and so on. :)

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