Publication | Open Access
An Analysis of Deep Neural Network Models for Practical Applications
981
Citations
10
References
2016
Year
Artificial IntelligenceConvolutional Neural NetworkEngineeringMachine LearningRecurrent Neural NetworkImage AnalysisData ScienceSparse Neural NetworkEmbedded Machine LearningNeural Scaling LawMachine VisionMachine Learning ModelPractical ApplicationsComputer ScienceMedical Image ComputingDeep LearningNeural Architecture SearchPower ConsumptionModel CompressionComputer VisionDeep Neural Networks
Since the emergence of Deep Neural Networks (DNNs) as a prominent technique in the field of computer vision, the ImageNet classification challenge has played a major role in advancing the state-of-the-art. While accuracy figures have steadily increased, the resource utilisation of winning models has not been properly taken into account. In this work, we present a comprehensive analysis of important metrics in practical applications: accuracy, memory footprint, parameters, operations count, inference time and power consumption. Key findings are: (1) power consumption is independent of batch size and architecture; (2) accuracy and inference time are in a hyperbolic relationship; (3) energy constraint is an upper bound on the maximum achievable accuracy and model complexity; (4) the number of operations is a reliable estimate of the inference time. We believe our analysis provides a compelling set of information that helps design and engineer efficient DNNs.
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