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I'm doing an iterative computation on a flow network during which I need to record how much each source contributes to the flow on each edge. The flow on any one edge is due to 2% of the sources on average, so I define vector< map<int, double> > flow, where flow[e][s] = f means that the flow on edge e due to source s is f. At each iteration, every f in flow gets updated.

The program's peak memory usage gets close to 4 GB. This works on (32-bit) Linux and OS X, but it crashes on Windows (which seems to impose a 2 GB per process limit).

How can I implement a disk-based data structure with a vector< map<int, double> > interface (or otherwise get around this problem)?

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up vote 2 down vote accepted

I have used STXXL for similar type scenarios. It might worth looking into.

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If the vector of maps is what's consuming all of the memory, is it absolutely necessary to have double for the data fields? Changing might help.

Otherwise, you might be able to use a memory map, although making it cross-platform compatible will be a bit of work, especially with the embedded data structure you have for your mappings.

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