Publication | Open Access
Demystifying Parallel and Distributed Deep Learning: An In-Depth Concurrency Analysis
212
Citations
208
References
2018
Year
EngineeringMachine LearningDistributed AlgorithmsComputer ArchitectureDistributed Ai SystemData ScienceDnn ArchitecturesEmbedded Machine LearningParallel ComputingDistributed ModelDistributed Deep LearningComputer EngineeringComputer ScienceDeep LearningNeural Architecture SearchDistributed ProcessingDeep Neural NetworksParallel LearningParallel ProgrammingData-level Parallelism
Deep Neural Networks (DNNs) are becoming an important tool in modern computing applications. Accelerating their training is a major challenge and techniques range from distributed algorithms to low-level circuit design. In this survey, we describe the problem from a theoretical perspective, followed by approaches for its parallelization. We present trends in DNN architectures and the resulting implications on parallelization strategies. We then review and model the different types of concurrency in DNNs: from the single operator, through parallelism in network inference and training, to distributed deep learning. We discuss asynchronous stochastic optimization, distributed system architectures, communication schemes, and neural architecture search. Based on those approaches, we extrapolate potential directions for parallelism in deep learning.
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