DataDarling/AI-Proposal-Model-Compression-for-Low-Carbon-Ecological-Image-Classification-on-Edge-Devices
This paper proposes evaluating pruning and quantization techniques to reduce model size and inference cost while maintaining classification accuracy on ecological datasets such as iNaturalist.
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Mar 07, 2026
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