2022
DOI: 10.3390/electronics11101525
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Distributed Deep Learning: From Single-Node to Multi-Node Architecture

Abstract: During the last years, deep learning (DL) models have been used in several applications with large datasets and complex models. These applications require methods to train models faster, such as distributed deep learning (DDL). This paper proposes an empirical approach aiming to measure the speedup of DDL achieved by using different parallelism strategies on the nodes. Local parallelism is considered quite important in the design of a time-performing multi-node architecture because DDL depends on the time requ… Show more

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