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When are 1.58 bits enough? A Bottom-up Exploration of BitNet
  Quantization

When are 1.58 bits enough? A Bottom-up Exploration of BitNet Quantization

8 November 2024
Jacob Nielsen
Lukas Galke
Peter Schneider-Kamp
    MQ
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Papers citing "When are 1.58 bits enough? A Bottom-up Exploration of BitNet Quantization"

1 / 1 papers shown
Title
Continual Quantization-Aware Pre-Training: When to transition from 16-bit to 1.58-bit pre-training for BitNet language models?
Continual Quantization-Aware Pre-Training: When to transition from 16-bit to 1.58-bit pre-training for BitNet language models?
Jacob Nielsen
Peter Schneider-Kamp
Lukas Galke
MQ
61
1
0
17 Feb 2025
1