This is more of a efficiency problem when calling r functions using rpy2 from multithreads.
The task of the r functions basically load a model file from disk and use the model to classify time series. However collecting the input time series is done using python by polling from the database (which will be updated by some web services). Once the python code detect a new time serial it will create a worker process, where rpy2 is used to call r functions to do the classification task.
Let python do the classification task is NOT an option for us. My main concern is the overhead when loading the model file. Clearly I do NOT want the file being read once each time a new time serial is classified. So the question is -
How can I load the model file just once, and the in-memory model object can be re-used when the same r function being called though rpy2?
My initial intention is load the model file into python and pass it as parameter each time the r function is called. But this will introduce extra cost of copying the model parameters (say the size is not negligible).
Your help will be very appreciated!