Data-Aware Training Quality Monitoring and Certification for Reliable Deep Learning
Deep learning models excel at capturing complex representations through sequential layers of linear and non-linear transformations, yet their inherent black-box nature and multi-modal training landscape raise critical concerns about reliability, robustness, and safety, particularly in high-stakes ap...
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Zusammenfassung: | Deep learning models excel at capturing complex representations through
sequential layers of linear and non-linear transformations, yet their inherent
black-box nature and multi-modal training landscape raise critical concerns
about reliability, robustness, and safety, particularly in high-stakes
applications. To address these challenges, we introduce YES training bounds, a
novel framework for real-time, data-aware certification and monitoring of
neural network training. The YES bounds evaluate the efficiency of data
utilization and optimization dynamics, providing an effective tool for
assessing progress and detecting suboptimal behavior during training. Our
experiments show that the YES bounds offer insights beyond conventional local
optimization perspectives, such as identifying when training losses plateau in
suboptimal regions. Validated on both synthetic and real data, including image
denoising tasks, the bounds prove effective in certifying training quality and
guiding adjustments to enhance model performance. By integrating these bounds
into a color-coded cloud-based monitoring system, we offer a powerful tool for
real-time evaluation, setting a new standard for training quality assurance in
deep learning. |
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DOI: | 10.48550/arxiv.2410.10984 |