November 2019
Intermediate to advanced
304 pages
8h 40m
English
As the demand increases regarding the quantity of data and resource requirements for parallel computations, legacy approaches may not perform well. So far, we have seen how big data development has become famous and is the most followed approach by enterprises due to the same reasons. DL4J supports neural network training, evaluation, and inference on distributed clusters.
Modern approaches to heavy training, or output generation tasks, distribute training effort across multiple machines. This also brings additional challenges. We need to ensure that we have the following constraints checked before we use Spark to perform distributed training/evaluation/inference: