Is there any way to speed up the load of rdf files into Sesame? I have files ranging in size from a few of MB to a couple of GB in N-triple format. I have tried the three first approaches in Sesame Cook Book, but to no avail. I loaded a ~700MB file in 17 hours by splitting the input file at every 500,000th line (approach 2 in the cook book). Sesame is running on a commodity machine with Windows 7.
Bonus part: I want to perform inference on the data, but store the inferred data in a separate sesame repository (or alternatively in another context/graph in the same repository). Essentially I want to store the data in two versions, one which is "regular" rdf and one which is optimized for certain queries - hence the need for storing them separately. I have been looking at the CustomGraphQueryInferencer, but have not figured out if I can use this to store the data separately. Furthermore, the CustomGraphQueryInferencer seems to slow down the load time greatly, thus making it very unattractive. Any alternative solutions?