Journal ArticleOpen Access
FINN- <i>R</i>
Author Affiliations
Xilinx (Ireland), Northeastern University, Eastern University, Xilinx (United States)
Published InACM Transactions on Reconfigurable Technology and Systems
Year2018
Citations404
Abstract
Convolutional Neural Networks have rapidly become the most successful machine-learning algorithm, enabling ubiquitous machine vision and intelligent decisions on even embedded computing systems. While the underlying arithmetic is structurally simple, compute and memory requirements are challenging. One of the promising opportunities is leveraging reduced-precision representations for inputs, activations, and model parameters. The resulting scalability in performance, power efficiency, and storage footprint provides interesting design compromises in exchange for a small reduction in accuracy. FPGAs are ideal for exploiting low-precision inference engines leveraging custom precisions to achieve the required numerical accuracy for a given application. In this article, we describe the second generation of the FINN framework, an end-to-end tool that enables design-space exploration and automates the creation of fully customized…
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Fields & Keywords
Physical SciencesComputer ScienceComputer Vision and Pattern RecognitionAdvanced Neural Network ApplicationsParallel Computing and Optimization TechniquesCCD and CMOS Imaging SensorsArtificial intelligenceComputer engineeringComputer architectureMachine learningEmbedded systemTelecommunicationsDatabaseOperating systemGeometry