Abstract
This editorial presents the recent advances and challenges of deep learning. We reviewed
four main challenges: heterogeneity, copious size, reproducibility crisis, and explainability. Finally,
we present the prospect of deep learning in industrial applications.
Keywords:
Artificial intelligence, machine learning, deep learning, COVID-19 diagnosis, deep mind ANNs.
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