Understanding Reuse, Performance, and Hardware Cost of DNN Dataflow
Hyoukjun Kwon(Georgia Institute of Technology), Prasanth Chatarasi(Georgia Institute of Technology), Michael Pellauer(Nvidia (United States)), Angshuman Parashar(Nvidia (United States)), Vivek Sarkar(Georgia Institute of Technology), Tushar Krishna(Georgia Institute of Technology)
Cited by 289
Abstract
The data partitioning and scheduling strategies used by DNN accelerators to leverage reuse and perform staging are known as dataflow, which directly impacts the performance and energy efficiency of DNN accelerators. An accelerator micro architecture dictates the dataflow(s) that can be employed to execute layers in a DNN. Selecting a dataflow for a layer can have a large impact on utilization and energy efficiency, but there is a lack of understanding on the choices and consequences of dataflow, and of tools and methodologies to help architects explore the co-optimization design space.
Related Papers
No related papers found
Powered by citation graph analysis