Abstract
Abstract
Reproducibility of a deep-learning fully convolutional neural network is evaluated by training several times the same network on identical conditions (database, hyperparameters, and hardware) with nondeterministic graphics processing unit operations. The network is trained to model three typical time–space-evolving physical systems in two dimensions: heat, Burgers’, and wave equations. The behavior of the networks is evaluated on both recursive and nonrecursive tasks. Significant changes in models’ properties (weights and feature fields) are observed. When tested on various benchmarks, these models systematically return estimations with a high level of deviation, especially for the recurrent analysis which strongly amplifies variability due to the nondeterminism. Trainings performed with double floating-point precision provide slightly better estimations and a significant reduction of the variability of both the network parameters and its testing error range.
Funder
Direction Générale de l’Armement
Publisher
Cambridge University Press (CUP)
Subject
General Earth and Planetary Sciences,General Environmental Science
Reference46 articles.
1. Visualizing the loss landscape of neural nets;Li;Advances in Neural Information Processing Systems,2018
2. Estimation of numerical reproducibility on CPU and GPU
3. NVIDIA Corporation (2020a) CUDA Toolkit Documentation v11.1.0: 2.1.4. Results reproducibility. Available at https://docs.nvidia.com/cuda/archive/11.1.0/cublas/index.html#cublasApi_reproducibility (accessed 18 January 2021).
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