Litcius/Paper detail

Differentiable Transportation Pruning

Yunqiang Li, Jan van Gemert, Torsten Hoefler, Bert Moons, Evangelos Eleftheriou, Bram-Ernst Verhoef

202312 citationsDOI

Abstract

Deep learning algorithms are increasingly employed at the edge. However, edge devices are resource constrained and thus require efficient deployment of deep neural networks. Pruning methods are a key tool for edge deployment as they can improve storage, compute, memory bandwidth, and energy usage. In this paper we propose a novel accurate pruning technique that allows precise control over the output network size. Our method uses an efficient optimal transportation scheme which we make end-to-end differentiable and which automatically tunes the exploration-exploitation behavior of the algorithm to find accurate sparse sub-networks. We show that our method achieves state-of-the-art performance compared to previous pruning methods on 3 different datasets, using 5 different models, across a wide range of pruning ratios, and with two types of sparsity budgets and pruning granularities.

Topics & Concepts

PruningComputer scienceDifferentiable functionSoftware deploymentEnhanced Data Rates for GSM EvolutionEdge deviceKey (lock)Deep learningArtificial neural networkBandwidth (computing)Artificial intelligenceDeep neural networksAlgorithmMachine learningMathematicsComputer networkComputer securityAgronomyMathematical analysisOperating systemCloud computingBiologyAdvanced Neural Network ApplicationsAnomaly Detection Techniques and ApplicationsDomain Adaptation and Few-Shot Learning