We use MASTIFF to compute the weight of Minimum Spanning Forest (MST) of MS-BioGraphs while ignoring self-edges of the graphs.
– MS1
Using machine with 24 cores.

MSF weight: 109,915,787,546
– MS50
Using machine with 128 cores.

MSF weight: 416,318,200,808
MS-BioGraphs
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