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How can I read an Excel file directly into R? Or should I first export the data to a text- or CSV file and import that file into R?

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Yes; it's possible. –  Joshua Ulrich May 23 '11 at 15:22
It's possible, but not very trivial. I never see a reason not to export to a text file first. –  Sacha Epskamp May 23 '11 at 15:23
I don't think it's that hard (see below) –  Ben Bolker May 23 '11 at 15:24
@Sacha Epskamp: What are the drawbacks of reading directly form Excel? –  waanders May 23 '11 at 15:32
Pretty much installing perl. It's not hard or anything but it makes your code less reproducible. –  Sacha Epskamp May 23 '11 at 15:35

11 Answers 11

up vote 24 down vote accepted

Yes. See the relevant page on the R wiki. Short answer: read.xls from the gdata package works most of the time (although you need to have Perl installed on your system -- usually already true on MacOS and Linux, but takes an extra step on Windows, i.e. see http://strawberryperl.com/). There are various caveats, and alternatives, listed on the R wiki page.

The only reason I see not to do this directly is that you may want to examine the spreadsheet to see if it has glitches (weird headers, multiple worksheets [you can only read one at a time, although you can obviously loop over them all], included plots, etc.). But for a well-formed, rectangular spreadsheet with plain numbers and character data (i.e., not comma-formatted numbers, dates, formulas with divide-by-zero errors, missing values, etc. etc. ..) I generally have no problem with this process.

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There are a lot of potential problems to consider that I've run into personally. Fields with numbers with comma's need to be stripped and converted to numeric in R. Fields with "-" need to be recoded to NA. Overall recommendation is to really look at your numbers in Excel and ensure that they are being translated correctly into R. –  Brandon Bertelsen May 23 '11 at 17:06
Can't argue with "you really need to look at your numbers" ... what is the issue with "-" fields? does na.strings="-" address the problem? How many of these issues are generic and how many of them (e.g. numeric fields with commas) can be addressed with other tools such as XLConnect ...? –  Ben Bolker May 23 '11 at 18:26
That comment was directed to the OP, not at you Ben, my fault for bad placement. –  Brandon Bertelsen May 23 '11 at 18:39
Hmm. Why the downvote? –  Ben Bolker Sep 12 '13 at 17:41
Wasn't me!..... –  Brandon Bertelsen Sep 12 '13 at 20:09

Let me reiterate what @Chase recommended: Use XLConnect.

The reasons for using XLConnect are, in my opinion:

  1. Cross platform. XLConnect is written in Java and, thus, will run on Win, Linux, Mac with no change of your R code (except possibly path strings)
  2. Nothing else to load. Just install XLConnect and get on with life.
  3. You only mentioned reading Excel files, but XLConnect will also write Excel files, including changing cell formatting. And it will do this from Linux or Mac, not just Win.

XLConnect is somewhat new compared to other solutions so it is less frequently mentioned in blog posts and reference docs. For me it's been very useful.

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Thanks for the overview. I'll have to check this one out too. –  Brandon Bertelsen May 23 '11 at 17:04

I've had good luck with XLConnect: http://cran.r-project.org/web/packages/XLConnect/index.html

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file.name <- "file.xls"
sheet.name <- "Sheet Name"

## Connect to Excel File Pull and Format Data
excel.connect <- odbcConnectExcel(file.name)
dat <- sqlFetch(excel.connect, sheet.name, na.strings=c("","-"))

Personally, I like RODBC and can recommend it.

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Caveat: ODBC can sometimes be tricky to get running on platforms other than Windows. –  JD Long May 23 '11 at 16:52
Very very true. –  Brandon Bertelsen May 23 '11 at 17:03
@JD Long and even on windows it's a PITA. No sexy time for me and ODBC on 64 bit W7... –  Roman Luštrik Aug 15 '11 at 7:38
Loading required package: RODBC Error in odbcConnectExcel(file.name) : odbcConnectExcel is only usable with 32-bit Windows –  andrekos Oct 7 '13 at 7:20

I have used xlsxpackage. It changed my workflow with Excel and R. No more annoying pop-ups asking, if I am sure that I want to save my Excel sheet in .txt format. The package also writes Excel files.

However, I find read.xlsx function slow, when opening large Excel files. read.xlsx2 function is considerably faster, but does not quess the vector class of data.frame columns. You have to use colClasses command to specify desired column classes, if you use read.xlsx2 function. Here is a practical example:

read.xlsx("filename.xlsx", 1) reads your file and makes the data.frame column classes nearly useful, but is very slow for large data sets. Works also for .xls files.

read.xlsx2("filename.xlsx", 1) is faster, but you will have to define column classes manually. A shortcut is to run the command twice (see the example below). character specification converts your columns to factors. Use Dateand POSIXct options for time.

coln <- function(x){y <- rbind(seq(1,ncol(x))); colnames(y) <- colnames(x)
rownames(y) <- "col.number"; return(y)} # A function to see column numbers

data <- read.xlsx2("filename.xlsx", 1) # Open the file 

coln(data)    # Check the column numbers you want to have as factors

x <- 3 # Say you want columns 1-3 as factors, the rest numeric

data <- read.xlsx2("filename.xlsx", 1, colClasses= c(rep("character", x),
rep("numeric", ncol(data)-x+1)))
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Another solution is the xlsReadWrite package, which doesn't require additional installs but does require you download the additional shlib before you use it the first time by :


Forgetting this can cause utter frustration. Been there and all that...

On a sidenote : You might want to consider converting to a text-based format (eg csv) and read in from there. This for a number of reasons :

  • whatever your solution (RODBC, gdata, xlsReadWrite) some strange things can happen when your data gets converted. Especially dates can be rather cumbersome. The HFWutils package has some tools to deal with EXCEL dates (per @Ben Bolker's comment).

  • if you have large sheets, reading in text files is faster than reading in from EXCEL.

  • for .xls and .xlsx files, different solutions might be necessary. EG the xlsReadWrite package currently does not support .xlsx AFAIK. gdata requires you to install additional perl libraries for .xlsx support. xlsx package can handle extensions of the same name.

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the HFWutils package has some tools for dealing with Excel date formats ... –  Ben Bolker May 23 '11 at 18:30
@Ben Thx for the tip, I'll include it in my answer. I didn't try to be complete though, as the wiki page the accepted answer links to is already rather complete. But it doesn't mention the HFWutils package. –  Joris Meys May 23 '11 at 21:00
-1; See my answer. TL:DR: Excel does not save a full precision dataset to csv (or the clipboard). Only the visible values are retained. –  rpierce Oct 8 '14 at 20:03

And now there is readxl:

The readxl package makes it easy to get data out of Excel and into R. Compared to the existing packages (e.g. gdata, xlsx, xlsReadWrite etc) readxl has no external dependencies so it's easy to install and use on all operating systems. It is designed to work with tabular data stored in a single sheet.

readxl is built on top of the libxls C library, which abstracts away many of the complexities of the underlying binary format.

It supports both the legacy .xls format and .xlsx

readxl is not currently available from CRAN, but you can install it from github with:

# install.packages("devtools")



# read_excel reads both xls and xlsx files

# Specify sheet with a number or name
read_excel("my-spreadsheet.xls", sheet = "data")
read_excel("my-spreadsheet.xls", sheet = 2)

# If NAs are represented by something other than blank cells,
# set the na argument
read_excel("my-spreadsheet.xls", na = "NA")

Note that while the description says 'no external dependencies', it does require the Rcpp package, which in turn requires Rtools (for Windows) or Xcode (for OSX), which are dependencies external to R. Though many people have them installed for other reasons.

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it is now available on CRAN. –  Ben Bolker 2 days ago

Just gave the package openxlsx a try today. It worked really well (and fast).


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As noted above in many of the other answers, there are many good packages that connect to the XLS/X file and get the data in a reasonable way. However, you should be warned that under no circumstances should you use the clipboard (or a .csv) file to retrieve data from Excel. To see why, enter =1/3 into a cell in excel. Now, reduce the number of decimal points visible to you to two. Then copy and paste the data into R. Now save the CSV. You'll notice in both cases Excel has helpfully only kept the data that was visible to you through the interface and you've lost all of the precision in your actual source data.

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Expanding on the answer provided by @Mikko you can use a neat trick to speed things up without having to "know" your column classes ahead of time. Simply use read.xlsx to grab a limited number of records to determine the classes and then followed it up with read.xlsx2


# just the first 50 rows should do...
df.temp <- read.xlsx("filename.xlsx", 1, startRow=1, endRow=50) 
df.real <- read.xlsx2("filename.xlsx", 1, 
                      colClasses=as.vector(sapply(df.temp, mode)))
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"Error: object 'read.xlsx' not found". Nice answer. –  aaa90210 Dec 3 '14 at 9:08

Hadley Wickham (of ggplot and plyr fame) recently released a package for reading xls and xlsx files into R. Even though this question is old, it probably should be updated with this information.

The package can be found here: https://github.com/hadley/readxl

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