Unchaining in Design-Space Optimization of Streaming Applications

2013 
Data-streaming applications are frequently pipelined and deployed on hybrid systems to meet performance requirements and resource constraints. With freedom in the design of algorithms and architectures, the search complexity can explode. A popular approach to reducing search complexity is to decompose the search space while preserving optimality. We present a novel decomposition technique called unchaining that partitions the problem such that the resulting sub problems are less complex. Thanks to unchaining, the number of sub problems from the decomposition is linear in the number of chained blocks in the variable-constraint matrix (instead of being their product). Finally, we present a queueing network model and the quantitative search space reduction for a real world implementation of a bio sequence search application called BLASTN.
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