I have 2 large matrices, representing human genomic data, that I would like to use firstly for identifying what sites in the genome are different enough to be useful, and then to perform deconvolution analysis (probably some modified maximum likelihood algorithm). The data are tXm (where t is the number of tissues ~100 and m are the number of sites, on the order of 10million) and nxm (where n is the number of people, also in the hundreds). As of right now the matrices are dense, with, by nature, very little zeros.

I am new to working with this size of data, does anyone have any suggestions for what would be the most efficient way to store and perform operations on these sized matrices?

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