Troubleshooting deep-learner training data problems using an evolutionary algorithm on Summit

IBM Journal of Research and Development(2020)

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摘要
Architectural and hyperparameter design choices can influence deep-learner (DL) model fidelity but can also be affected by malformed training and validation data. However, practitioners may spend significant time refining layers and hyperparameters before discovering that distorted training data were impeding the training progress. We found that an evolutionary algorithm (EA) can be used to troubl...
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