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Get Free AccessDNN accelerators are often developed and evaluated in isolation without considering the cross-stack, system-level effects in real-world environments. This makes it difficult to appreciate the impact of System-on-Chip (SoC) resource contention, OS overheads, and programming-stack inefficiencies on overall performance/energy-efficiency. To address this challenge, we present Gemmini, an open-source*, full-stack DNN accelerator generator. Gemmini generates a wide design-space of efficient ASIC accelerators from a flexible architectural template, together with flexible programming stacks and full SoCs with shared resources that capture system-level effects. Gemmini-generated accelerators have also been fabricated, delivering up to three orders-of-magnitude speedups over high-performance CPUs on various DNN benchmarks. * https://github.com/ucb-bar/gemmini
Hasan Genc, Seah Kim, Alon Amid, Ameer Haj-Ali, Vighnesh Iyer, Pranav Prakash, Jerry Zhao, Daniel Grubb, Harrison Liew, Howard Mao, Albert Ou, Colin Schmidt, Samuel Steffl, John Wright, Ion Stoica, Jonathan Ragan‐Kelley, Krste Asanović, Borivoje Nikolić, Yakun Sophia Shao (2021). Gemmini: Enabling Systematic Deep-Learning Architecture Evaluation via Full-Stack Integration. , DOI: https://doi.org/10.1109/dac18074.2021.9586216.
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Type
Preprint
Year
2021
Authors
19
Datasets
0
Total Files
0
Language
en
DOI
https://doi.org/10.1109/dac18074.2021.9586216
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