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I need to run very time-consuming approximation for posterior distribution. Thus, I desire to save the parameters' samples outside of R for future analysis.

My samples are in the form of matrices and vectors (each element of which is result from one simulation). Is there a way to save these matrices and vectors to file?

Relatedly, could you please comment on efficient workflow for these time consuming approximations? I find myself highlighting and running long codes repeatedly -- surely there is a better way to load, run, then save analyses?

Many thanks!

share|improve this question
You question is a little unspecific. Have you read ?saveRDS? – Roland Apr 23 '13 at 7:02
saveRDS saves a single object, right? Is there a way to save all of my matrices and vectors of results in one file? I want to be able to open this "file" and all of those matrices and vectors will be loaded into R to analyze (traceplots, quantile, etc.) – Heisenberg Apr 23 '13 at 7:16
Read the help page. It mentions alternatives, which save several objects or even the whole workspace. – Roland Apr 23 '13 at 7:19

Ahn has already provided you with your first answer.

saveRDS(obj, "obj.rds")
obj <- readRDS("obj.rds") 

Those commands present the basis for serialization in R.

As Roland mentioned, you can also save and load your entire workspace in the same manner:


With respect to workflow. I highly recommend that you get used to packaging EVERYTHING that you do in R. It's significantly more productive to take the extra step and package your work.

When you create a package skeleton, typically, data is stored in /extdata/data/obj.rds and then accessed after package load via:

obj <- readRDS(paste(path.package('package_name'),"/data/obj.rds"))
# R < 3.0.0 it's .path.package, not path.package

Generally, I store all of my analysis as functions. So then it's just a matter of running that function to get the desired results.

For example:

#' My Analysis Function
#' This function does x, y, and z. 
#' @param obj The name of the object...
#' @export your_analysis_fun

your_analysis_fun <- function(obj="name") {
 obj <- readRDS(paste(path.package('package_name'),"/data/",obj,".rds"))
 # the things you usually copy paste go here
 # ...

Documenting your code is also helpful, I've included a brief example of that above (Roxygen2). If you use RStudio, it's a simple matter of mashing Ctrl + Shift + B to build and reload your package and then run your function again as you make changes. They've done a great job of making the workflow paradigm for packages worthwhile. Recommend using git, too.

I cannot stress the importance of documenting your code enough. Coming back to a complicated analysis a year later is like smacking yourself in the face with a baseball bat if you haven't done your due diligence in writing documentation. Not to mention trying to pick up where someone else left off.

share|improve this answer
I used save to store all of my matrices and vectors. What is the difference between save, saveRDS, save.image? Also, what do you mean by "packaging" ? These may be basic questions, so if you could provide a link, I can read up myself too. Thanks for the point about using function! – Heisenberg Apr 23 '13 at 7:46
It's a long but worthwhile read: saveRDS saves an object. save, saves a workspace, save.image is just a wrapper for save for your entire workspace. – Brandon Bertelsen Apr 23 '13 at 7:47

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