J. Jahn, S. Kobbe, Santiago Pagani, Jian-Jia Chen, J. Henkel
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Runtime resource allocation for software pipelines
Systems continue to comprise a rapidly growing number of cores on a single chip to gain performance benefits from parallel processing. A key challenge is how their computational resources can be used efficiently, which depends to a large degree on how their resources are allocated to the applications. In this paper, we describe our current research for addressing this challenge and highlight current and upcoming hurdles that need to be addressed.