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Paper by Darrell Ulm: Virtual Parallelism by Self Simulation of the Multiple Instruction Stream Associative Model


The CiteSeer entry: "Virtual Parallelism by Self Simulation of the Multiple Instruction Stream Associative Model" (1995), Darrell Ulm. Research paper deals with relative power of the MASC model when simulating itself, and the algorithmic overhead to simulate.

Virtual Parallelism by Self Simulation of the Multiple Instruction Stream Associative Model, Darrell Ulm

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