An oracle for guiding large-scale model/hybrid parallel training of convolutional neural networks

Otros/as autores/as

Universitat Politècnica de Catalunya. Doctorat en Arquitectura de Computadors

Universitat Politècnica de Catalunya. Departament d'Arquitectura de Computadors

Barcelona Supercomputing Center

Universitat Politècnica de Catalunya. CAP - Grup de Computació d'Altes Prestacions

Fecha de publicación

2021

Resumen

Deep Neural Network (DNN) frameworks use distributed training to enable faster time to convergence and alleviate memory capacity limitations when training large models and/or using high dimension inputs. With the steady increase in datasets and model sizes, model/hybrid parallelism is deemed to have an important role in the future of distributed training of DNNs. We analyze the compute, communication, and memory requirements of Convolutional Neural Networks (CNNs) to understand the trade-offs between different parallelism approaches on performance and scalability. We leverage our model-driven analysis to be the basis for an oracle utility which can help in detecting the limitations and bottlenecks of different parallelism approaches at scale. We evaluate the oracle on six parallelization strategies, with four CNN models and multiple datasets (2D and 3D), on up to 1024 GPUs. The results demonstrate that the oracle has an average accuracy of about 86.74% when compared to empirical results, and as high as 97.57% for.


Peer Reviewed


Postprint (published version)

Tipo de documento

Conference lecture

Lengua

Inglés

Publicado por

European Network of Excellence on High Performance and Embedded Architecture and Compilation (HiPEAC)

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Derechos

Open Access

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E-prints [73021]