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BLoad: Enhancing Neural Network Training with Efficient Sequential Data Handling

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arxiv 2310.10879 v2 pith:YII4AGPI submitted 2023-10-16 cs.LG cs.DC

BLoad: Enhancing Neural Network Training with Efficient Sequential Data Handling

classification cs.LG cs.DC
keywords trainingnetworkneuralsizeschallengeefficientmodelsscheme
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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The increasing complexity of modern deep neural network models and the expanding sizes of datasets necessitate the development of optimized and scalable training methods. In this white paper, we addressed the challenge of efficiently training neural network models using sequences of varying sizes. To address this challenge, we propose a novel training scheme that enables efficient distributed data-parallel training on sequences of different sizes with minimal overhead. By using this scheme we were able to reduce the padding amount by more than 100$x$ while not deleting a single frame, resulting in an overall increased performance on both training time and Recall in our experiments.

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