My problem is that I have a large model, which is slow to load to memory. To test it on many samples, I need to run some C program to generating input features for model, then run R script to predict. It takes too much time to load the model every time.
So I am wondering
1) if there is some method to keep the model ( a variable in R) in the memory.
2) Can I run a separative process of R as a dedicated server, then all the prediction processes of R can access the variable in the server on the same machine.
The model is never changed during for all the prediction. It is a randomForest model stored in a .rdata file, which has ~500MB. Loading this model is slow.
I know that I can use parallel R (snow, doPar, etc) to perform prediction in parallel, however, this is not what I want, since it require me to change the data flow I used.
Thanks a lot.