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A Machine Learning Approach to Mapping Streaming Workloads to Dynamic Multicore Processors

机译:一种将流工作负载映射到动态多核处理器的机器学习方法

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摘要

Dataflow programming languages facilitate the design of data intensive programs such as streaming applications commonly found in embedded systems. They also expose parallelism that can be exploited using multicore processors which are now part of the mobile landscape. In recent years a shift has occurred towards heterogeneity (e.g. ARM big. LITTLE) and reconfigurability. Dynamic Multicore Processors (DMPs) bridge the gap between fully reconfigurable processors and homogeneous multicore systems. They can re-allocate their resources at runtime to create larger more powerful logical processors fine-tuned to the workload.
机译:数据流编程语言有助于设计数据密集型程序,例如嵌入式系统中常见的流应用程序。它们还揭示了可以使用多核处理器(现在已成为移动环境的一部分)加以利用的并行性。近年来,已经发生了向异构性(例如ARM big.LITTLE)和可重新配置性的转变。动态多核处理器(DMP)弥补了完全可重新配置的处理器与同类多核系统之间的鸿沟。他们可以在运行时重新分配资源,以创建针对工作负载进行微调的更大,更强大的逻辑处理器。

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