Using Libraries of Approximate Circuits in Design of Hardware Accelerators of Deep Neural Networks
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- @InProceedings{Mrazek:2020:AICAS,
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author = "Vojtech Mrazek and Lukas Sekanina and Zdenek Vasicek",
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title = "Using Libraries of Approximate Circuits in Design of
Hardware Accelerators of Deep Neural Networks",
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booktitle = "2020 2nd IEEE International Conference on Artificial
Intelligence Circuits and Systems (AICAS)",
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year = "2020",
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pages = "243--247",
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abstract = "Approximate circuits have been developed to provide
good tradeoffs between power consumption and quality of
service in error resilient applications such as
hardware accelerators of deep neural networks (DNN). In
order to accelerate the approximate circuit design
process and to support a fair benchmarking of circuit
approximation methods, libraries of approximate
circuits have been introduced. For example, EvoApprox8b
contains hundreds of 8-bit approximate adders and
multipliers. By means of genetic programming we
generated an extended version of the library in which
thousands of 8- to 128-bit approximate arithmetic
circuits are included. These circuits form Pareto
fronts with respect to several error metrics, power
consumption and other circuit parameters. In our case
study we show how a large set of approximate
multipliers can be used to perform a resilience
analysis of a hardware accelerator of ResNet DNN and to
select the most suitable approximate multiplier for a
given application. Results are reported for various
instances of the ResNet DNN trained on CIFAR-10
benchmark problem.",
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keywords = "genetic algorithms, genetic programming",
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DOI = "doi:10.1109/AICAS48895.2020.9073837",
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month = aug,
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notes = "Also known as \cite{9073837}",
- }
Genetic Programming entries for
Vojtech Mrazek
Lukas Sekanina
Zdenek Vasicek
Citations