2024
DOI: 10.14778/3648160.3648182
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MetaStore: Analyzing Deep Learning Meta-Data at Scale

Huayi Zhang,
Binwei Yan,
Lei Cao
et al.

Abstract: The process of training deep learning models produces a huge amount of meta-data, including but not limited to losses, hidden feature embeddings, and gradients. Model diagnosis tools have been developed to analyze losses and feature embeddings with the aim to improve the performance of these models. However, gradients, despite carrying rich information that is potentially relevant for model interpretation and data debugging, have yet to be fully explored due to their size and complexity. Each single gradient h… Show more

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