Temporal Scaling Law for Large Language Models
Recently, Large Language Models (LLMs) have been widely adopted in a wide range of tasks, leading to increasing attention towards the research on how scaling LLMs affects their performance. Existing works, termed Scaling Laws, have discovered that the final test loss of LLMs scales as power-laws wit...
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Zusammenfassung: | Recently, Large Language Models (LLMs) have been widely adopted in a wide
range of tasks, leading to increasing attention towards the research on how
scaling LLMs affects their performance. Existing works, termed Scaling Laws,
have discovered that the final test loss of LLMs scales as power-laws with
model size, computational budget, and dataset size. However, the temporal
change of the test loss of an LLM throughout its pre-training process remains
unexplored, though it is valuable in many aspects, such as selecting better
hyperparameters \textit{directly} on the target LLM. In this paper, we propose
the novel concept of Temporal Scaling Law, studying how the test loss of an LLM
evolves as the training steps scale up. In contrast to modeling the test loss
as a whole in a coarse-grained manner, we break it down and dive into the
fine-grained test loss of each token position, and further develop a dynamic
hyperbolic-law. Afterwards, we derive the much more precise temporal scaling
law by studying the temporal patterns of the parameters in the dynamic
hyperbolic-law. Results on both in-distribution (ID) and out-of-distribution
(OOD) validation datasets demonstrate that our temporal scaling law accurately
predicts the test loss of LLMs across training steps. Our temporal scaling law
has broad practical applications. First, it enables direct and efficient
hyperparameter selection on the target LLM, such as data mixture proportions.
Secondly, viewing the LLM pre-training dynamics from the token position
granularity provides some insights to enhance the understanding of LLM
pre-training. |
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DOI: | 10.48550/arxiv.2404.17785 |