Andrew Gelman recently lamented the lack of an easy upgrade process for R (probably more relevant on Windows than Linux). Does anyone have a good trick for doing the upgrade, from installing the software to copying all the settings/packages over?

This suggestion was contained in the comments and is what I've been using recently. First you install the new version, then run this in the old verion:

#--run in the old version of R
packages <- installed.packages()[,"Package"]
save(packages, file="Rpackages")

Followed by this in the new version:

#--run in the new version
for (p in setdiff(packages, installed.packages()[,"Package"]))

11 Answers 11


Just for completeness, there are some ways to prevent you from having this problem. As Dirk said, save your packages in another directory on your computer.


You can change the default .Library value using the function .libPaths too


This will put this path as a first value in the .Library variable, and will make it the default.

If you want to automate this further, you can specify this in the Rprofile.site file, which you find in the /etc/ directory of your R build. Then it will load automatically every time R loads, and you don't have to worry about that any more. You can just install and load packages from the specified directory.

Finally, I have some small code included in my Rprofile.site allowing me to reinstall all packages when I install a new R version. You just have to list them up before you update to the new R version. I do that using an .RData file containing an updated list with all packages.


## Check necessary packages
load("G:\Setinfo\R\packagelist.RData") # includes a vector "pkgs"
installed <- pkgs %in% installed.packages()[, 'Package']
if (length(pkgs[!installed]) >=1){

I make the packagelist.RData by specifying .Last() in my Rprofile.site. This updates the package list if I installed some :

.Last <- function(){
  pkgs <- installed.packages()[,1]
  if (length(pkgs) > length(installed)){

When I install a new R version, I just add the necessary elements to the Rprofile.site file and all packages are reinstalled. I have to adjust the Rprofile.site anyway (using sum contrasts, adding the extra code for Tinn-R, these things), so it's not really extra work. It just takes extra time installing all packages anew.

This last bit is equivalent to what is given in the original question as a solution. I just don't need to worry about getting the "installed" list first.

Again, this doesn't work flawless if you have packages that are not installed from CRAN. But this code is easily extendible to include those ones too.

  • +1 Very helpful, thanks! I just used this to upgrade to 2.13... – Prasad Chalasani Apr 15 '11 at 15:55
  • 2
    @Prasad : Thx. The answer is a bit outdated though, R 2.12 and further automatically save the packages you install yourself somewhere in a standard library outside the main R tree. So all you have to do now is make sure you find that library and link to it, if that didn't happen by itself. – Joris Meys Apr 15 '11 at 15:58
  • @428790: Where can I find that library that you mention? – Daniel Krizian Oct 14 '13 at 9:46
  • @DanielKrizian Look at the default in the internal object .Library. In my case, it points back to the R installation folder if unchanged (which I particularly dislike, but well) – Joris Meys Oct 15 '13 at 20:50

This is an old question of course but there might be a new easy answer (working only for Windows), which I just found.


The best way of doing this is from the RGui system. All your packages will be transfered to the new folder and the old ones will be deleted or saved (you can pick either). Then once you open RStudio again, it immediately recognises that you are using an updated version. For me this worked like a charm,

More info on {installr} here.


  • 1
    What about packages installed through github? – skan Apr 22 '16 at 22:00
  • 5
    It should be mentioned that this is for Windows. – beroe Aug 10 '16 at 0:09

Two quick suggestions:

  1. Use Gabor's batchfiles which are said to comprise tools helping with e.g. this bulk library relocations. Caveat: I have not used them.

  2. Don't install libraries within the 'filetree' of the installed R version. On Windows, I may put R into C:/opt/R/R-$version but place all libraries into C:/opt/R/library/ using the following snippet as it alleviates the problem in the first place:

$ cat .Renviron         # this is using MSys/MinGW which looks like Cygwin  
## Example .Renviron on Windows    
  • I wonder if transferring packages from, say, R 2.8 to R.9 causes any problems? Or will everything be fine as long as you do a update.packages in the new version? – Eduardo Leoni Sep 10 '09 at 1:09
  • I have been doing this for quite a while and have not had problems. R is typically "forward compatible". And IIRC only one upgrade (may have been R 1.9 -> R 2.0) required a rebuild of all libraries. – Dirk Eddelbuettel Sep 10 '09 at 2:32
  • That's very good to know. Thanks! – Eduardo Leoni Sep 10 '09 at 3:22
  • 5
    I also usually just copy my Library folder to my new installation and run update.packages. It seems to work fine. An optional install folder however is much more elegant. – kpierce8 Sep 10 '09 at 19:15
  • Just to point out - I've added an answer with R code performing Dirk's suggestion (for R windows users) – Tal Galili Apr 15 '11 at 8:16

The method suggested above will not completely work if you have packages that are not from CRAN. For example, a personal package or a package downloaded from a non-CRAN site.

My preferred method on Windows (upgrading 2.10.1 to 2.11.0):

  1. Install R-2.11.0
  2. Copy R-2.10.0/library/* to R-2.11.0/library/
  3. Answer "no" to the prompts asking you if it is okay to overwrite.
  4. Start R 2.11.0
  5. Run the R command update.packages()
  • 4
    Or update.packages(checkBuilt=TRUE) – Marek Apr 22 '10 at 15:38
  • 24
    Or update.packages(checkBuilt=TRUE, ask=FALSE) :-P – George Dontas Apr 22 '10 at 16:20

With respect to the solution given in the question, it might not be easy to run your older version of R if you have already installed the new version. In this case, you can still reinstall all missing packages from the previous R version as follows.

# Get names of packages in previous R version
old.packages <- list.files("/Library/Frameworks/R.framework/Versions/3.2/Resources/library")

# Install packages in the previous version. 

# For each package p in previous version...
    for (p in old.packages) {
      # ... Only if p is not already installed
      if (!(p %in% installed.packages()[,"Package"])) {
        # Install p 

(Note that the argument to list.files() in the first line of code should be the path to the library directory for your previous R version, where all folders of packages in the previous version are. In my current case, this is "/Library/Frameworks/R.framework/Versions/3.2/Resources/library". This will be different if your previous R version is not 3.2, or if you're on Windows.)

The if statement makes sure that a package is not installed if

  • It's already installed in the new R version, or
  • Has been installed as a dependency from a package installed in a previous iteration of the for loop.
  • This solved my issue, thanks! This question might sound a little dumb, but can I delete old libraries? – m_c Apr 27 '17 at 11:53

Following Dirk's suggestion, here is some R code to do it on windows: How to easily upgrade R on windows XP

Update (15.04.11): I wrote another post on the subject, explaining how to deal with common issues of upgrading R on windows 7


Two options:

  1. Implement my answer here
  2. If you use R under Eclipse with StatET, open Run Configurations, click on Console tab and in the box called R snippet run after startup add this line with your choice of directory: .libPaths("C:/R/library")

I am on Windows 8 and for some weird reason, I can never install packages using my internet connections.

I generally install it using the .zip file from CRAN.

After I went from R 3.2.5 to R 3.3.1.

I simply copied the packages from

C:\Path\to\packa\R\win-library\3.2 to C:\Path\to\packa\R\win-library\3.3.

And then I restarted the R session. Worked perfectly. I haven't checked if ALL the packages are functioning well. But, the ones I checked are working perfectly well. Hope this hack works for everybody.



The accepted answer might work if you have foresight, but I had already gotten rid of the old version so wasn't able to follow these directions. The steps described below worked for OSX upgrading from 2.1 and 3.1.

UPDATED: To get the directory for your most recent version (instead of typing in 3.1 or 3.2) you can use the below commands. The second one converts directly to the R-variable, skipping . and .. and .DS_Store, use:

OLD=$(ls -d /Library/Frameworks/R.framework/Versions/*.* |tail -n 2 | head -n 1)Resources/library/
echo "packages = c(\"`ls $OLD | tail +4| paste -s -d ',' - | sed -E 's|,|\",\"|'g`\")" | tr -d "/" 

(Add |pbcopy to the end to copy it directly to your Mac clipboard)

Then within R you can paste that variable that is generated. Once that is defined in the new version of R, you can loop through the installed packages from the instructions above...

for (p in setdiff(packages, installed.packages()[,"Package"]))
   install.packages(p, dependencies=TRUE, quiet=TRUE, ask=FALSE)

for me this page is good https://www.r-statistics.com/2013/03/updating-r-from-r-on-windows-using-the-installr-package/ or another option is just install the new option and at final you put, for example in windows in my pc

.libPaths(c( "D:/Documents/R/win-library/3.2", "C:/Program Files/R/R-3.2.3/library", "C:/Program Files/R/R-3.2.0/library", "D:/Documents/R/win-library/2.15" )

every path of last version in my case i always put the first path is "D:/Documents/R/win-library/3.2" that is fixed and then i put the other because you do not need copy or move any packages, in my sugest just call it


linux + bash + debian + apt users:

  1. If you're installing/upgrading to the newest version of R, then we may assume you have root permissions. Note that the call to curl below assumes you are already interested in the 'sid' version i.e.

    • cat /etc/apt/sources.list | grep 'sid' || exit 1

    although this could easily be replaced with a recent stable release e.g. buster.

  2. As we're using apt to install R, this needs to be done by root i.e. using sudo. Here, R packages are also installed by root, and thus permissible to place in /usr/local/.

  3. The array of R packages is clearly not exhaustive, but meant to provide a mix between those in r-recommended and those packages which have been less fortunate to date.

  4. The debian packages installed in the process below are also neither essential (for using r-base) nor exhaustive but provide a no. of 'add-ons' which are important for a reasonable no. of R packages.

Place the following in R.sh:

sudo apt update && sudo apt --yes full-upgrade
sudo apt install --yes libappstream4 curl
## ov1 = online version
ov1=$(curl --silent --url https://packages.debian.org/sid/r-base |
    grep 'meta name=\"Keywords\"' |
    grep --only-matching '[0-9].*[0-9]') ; echo $ov1
## command -v = print a description of COMMAND similar to the `type' builtin
## && = then do
command -v 'R --version' &&
    lv1=$(R --version |
              grep --only-matching '[0-9\.]*[0-9]' |
              ## || = otherwise
              head -1) ||
if dpkg --compare-versions "$lv1" 'lt' "$ov1" 
then ## declare -a = indexed array
     declare -a deb1=('r-base' 'r-base-dev' 'r-recommended')
     for i in "${deb1[@]}"
     do sudo apt install --yes "$i"
### certain Debian packages are required by 'R' so best have these first
sudo apt install --yes ccache libcairo2-dev libxml2-dev libcurl4-openssl-dev \
     libssl-dev liblapack-dev libssl-dev
declare -a pkg1=('data.table' 'ggplot2' 'survival' 'knitr' 'devtools' 'roxygen2')
## installing as 'root' so these are installed in
Rscript -e ".libPaths()[1]"
for i in "${pkg1[@]}"
do sudo Rscript -e "install.packages('$i', dependencies=TRUE)"
### other useful additions
sudo apt install --yes libblas-dev libboost-dev libarmadillo-dev \
     jags pandoc pandoc-citeproc 
sudo apt update && sudo apt full-upgrade

Then execute it, e.g. assuming in directory already: source R.sh.

Installing packages (whether debian or R) one-by-one in a loop from shell is somewhat inefficient, but allows for simpler tracing of errors, IMHO. May take some time depending on the no. of R packages, so maybe simplest to let run overnight...

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