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Toward Storage-Aware Learning with Compressed Data An Empirical Exploratory Study on JPEG

Published: August 18, 2025 | arXiv ID: 2508.12833v1

By: Kichang Lee , Songkuk Kim , JaeYeon Park and more

Potential Business Impact:

Saves phone space by smartly shrinking data.

On-device machine learning is often constrained by limited storage, particularly in continuous data collection scenarios. This paper presents an empirical study on storage-aware learning, focusing on the trade-off between data quantity and quality via compression. We demonstrate that naive strategies, such as uniform data dropping or one-size-fits-all compression, are suboptimal. Our findings further reveal that data samples exhibit varying sensitivities to compression, supporting the feasibility of a sample-wise adaptive compression strategy. These insights provide a foundation for developing a new class of storage-aware learning systems. The primary contribution of this work is the systematic characterization of this under-explored challenge, offering valuable insights that advance the understanding of storage-aware learning.

Country of Origin
🇰🇷 Korea, Republic of

Page Count
6 pages

Category
Computer Science:
Machine Learning (CS)