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  4. Efficient deep neural network acceleration through FPGA-based batch processing
 
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Efficient deep neural network acceleration through FPGA-based batch processing

Publikationstyp
Conference Paper
Date Issued
2016
Sprache
English
Author(s)
Posewsky, Thorbjörn  
Ziener, Daniel  
Institut
Eingebettete Systeme E-13  
TORE-URI
http://hdl.handle.net/11420/6273
Article Number
7857167
Citation
International Conference on Reconfigurable Computing and FPGAs, ReConFig: 7857167 (2016)
Contribution to Conference
International Conference on Reconfigurable Computing and FPGAs, ReConFig 2016  
Publisher DOI
10.1109/ReConFig.2016.7857167
Scopus ID
2-s2.0-85015001527
Deep neural networks are an extremely successful and widely used technique for various pattern recognition and machine learning tasks. Due to power and resource constraints, these computationally intensive networks are difficult to implement in embedded systems. Yet, the number of applications that can benefit from the mentioned possibilities is rapidly rising. In this paper, we propose a novel architecture for processing previously learned and arbitrary deep neural networks on FPGA-based SoCs that is able to overcome these limitations. A key contribution of our approach, which we refer to as batch processing, achieves a mitigation of required weight matrix transfers from external memory by reusing weights across multiple input samples. This technique combined with a sophisticated pipelining and the usage of high performance interfaces accelerates the data processing compared to existing approaches on the same FPGA device by one order of magnitude. Furthermore, we achieve a comparable data throughput as a fully featured x86-based system at only a fraction of its energy consumption.
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