Publication | Open Access
SCALE-Sim: Systolic CNN Accelerator Simulator
194
Citations
29
References
2018
Year
Convolutional Neural NetworkEngineeringMachine LearningAdvanced ComputingComputer ArchitectureDeep Learning KernelsSimulationData ScienceHigh-performance ArchitectureParallel ComputingSystolic ArraysComputer EngineeringComputer ScienceDeep LearningNeural Architecture SearchHardware AccelerationDomain-specific AcceleratorParallel ProgrammingCase Studies
Systolic Arrays are one of the most popular compute substrates within Deep Learning accelerators today, as they provide extremely high efficiency for running dense matrix multiplications. However, the research community lacks tools to insights on both the design trade-offs and efficient mapping strategies for systolic-array based accelerators. We introduce Systolic CNN Accelerator Simulator (SCALE-Sim), which is a configurable systolic array based cycle accurate DNN accelerator simulator. SCALE-Sim exposes various micro-architectural features as well as system integration parameters to the designer to enable comprehensive design space exploration. This is the first systolic-array simulator tuned for running DNNs to the best of our knowledge. Using SCALE-Sim, we conduct a suite of case studies and demonstrate the effect of bandwidth, data flow and aspect ratio on the overall runtime and energy of Deep Learning kernels across vision, speech, text, and games. We believe that these insights will be highly beneficial to architects and ML practitioners.
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