AI RESEARCH
Fuzzy PyTorch: Rapid Numerical Variability Evaluation for Deep Learning Models
arXiv CS.LG
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We introduce Fuzzy PyTorch, a framework for rapid evaluation of numerical variability in deep learning (DL) models. As DL is increasingly applied to diverse tasks, understanding variability from floating-point arithmetic is essential to ensure robust and reliable performance. Tools assessing such variability must be scalable, efficient, and integrate seamlessly with existing frameworks while minimizing code modifications.