Summary of Ptq4sam: Post-training Quantization For Segment Anything, by Chengtao Lv et al.
PTQ4SAM: Post-Training Quantization for Segment Anythingby Chengtao Lv, Hong Chen, Jinyang Guo, Yifu Ding, Xianglong…
PTQ4SAM: Post-Training Quantization for Segment Anythingby Chengtao Lv, Hong Chen, Jinyang Guo, Yifu Ding, Xianglong…
Quantifying the Capabilities of LLMs across Scale and Precisionby Sher Badshah, Hassan SajjadFirst submitted to…
Three Quantization Regimes for ReLU Networksby Weigutian Ou, Philipp Schenkel, Helmut BölcskeiFirst submitted to arxiv…
Network reconstruction via the minimum description length principleby Tiago P. PeixotoFirst submitted to arxiv on:…
Gradient-based Automatic Mixed Precision Quantization for Neural Networks On-Chipby Chang Sun, Thea K. Årrestad, Vladimir…
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