Understanding Quantization of Optimizer States in LLM Pre-training: Dynamics of State Staleness and Effectiveness of State Resets explores This paper explores the effects of quantizing optimizer states in LLM pre-training and proposes a method for effective state resets.. Commercial viability score: 2/10 in LLM Training.
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