I have a series of image frames to be processed each of which requires a largish amount of data from disk to be in memory (there is a ~60Gb+ complete data set from which to draw from, but exact numbers at the moment are a moving target). Each frame should have a reasonable amount of crossover in terms of the data-set required to work from.
I was considering implementing an LRU cache that would load ‘chunks’ of data as there is a very nice emphasis on the locality of each single piece of data – i.e. if I’m using data ‘c’ then ‘a’, ‘b’, ‘d’ and ‘e’ are very likely to be used if not now but very soon.
Three possibly interesting points:
I know the complete set of data required for each frame to be processed from the get go.
I can process frames non-sequentially
The data set required in RAM for frame 10 could not only be exactly the same for not only frames 9 and 11 (especially in the case of large ‘chunks’) but also for random frames in the set yet to be processed. 110, 324, etc…
The last point is where an LRU cache could become unnecessarily inefficient – I’d possibly be loading and unloading the same data sets more than I needed too.
I could develop my own ‘look-ahead’ / ‘next-best-fit’ algorithm – a sort of an inverted cache, where I load data according to an optimized scheme where it should be used as many times as needed, then deleted and never loaded again (all used up!).
But I’m wondering if there are already any optimized work-horse algorithms that fit the bill already?
As I mentioned, I can process frames non-sequentially but I’d rather not get into processing non-sequentially at the pixel level if possible.