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Is In-Domain Data Really Needed? A Pilot Study on Cross-Domain
  Calibration for Network Quantization

Is In-Domain Data Really Needed? A Pilot Study on Cross-Domain Calibration for Network Quantization

16 May 2021
Haichao Yu
Linjie Yang
Humphrey Shi
    OOD
    MQ
ArXivPDFHTML

Papers citing "Is In-Domain Data Really Needed? A Pilot Study on Cross-Domain Calibration for Network Quantization"

1 / 1 papers shown
Title
QDrop: Randomly Dropping Quantization for Extremely Low-bit
  Post-Training Quantization
QDrop: Randomly Dropping Quantization for Extremely Low-bit Post-Training Quantization
Xiuying Wei
Ruihao Gong
Yuhang Li
Xianglong Liu
F. Yu
MQ
VLM
19
166
0
11 Mar 2022
1