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Distributed Training and Inference of Deep Learning Models for Multi-Modal Land Cover Classification
2020
Remote Sensing
Deep Neural Networks (DNNs) have established themselves as a fundamental tool in numerous computational modeling applications, overcoming the challenge of defining use-case-specific feature extraction processing by incorporating this stage into unified end-to-end trainable models. Despite their capabilities in modeling, training large-scale DNN models is a very computation-intensive task that most single machines are often incapable of accomplishing. To address this issue, different
doi:10.3390/rs12172670
fatcat:amoqucrxdzez5nejfp2iajs2o4