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Scaling Laws for Differentially Private Language Models

Authors :
McKenna, Ryan
Huang, Yangsibo
Sinha, Amer
Balle, Borja
Charles, Zachary
Choquette-Choo, Christopher A.
Ghazi, Badih
Kaissis, George
Kumar, Ravi
Liu, Ruibo
Yu, Da
Zhang, Chiyuan
Publication Year :
2025

Abstract

Scaling laws have emerged as important components of large language model (LLM) training as they can predict performance gains through scale, and provide guidance on important hyper-parameter choices that would otherwise be expensive. LLMs also rely on large, high-quality training datasets, like those sourced from (sometimes sensitive) user data. Training models on this sensitive user data requires careful privacy protections like differential privacy (DP). However, the dynamics of DP training are significantly different, and consequently their scaling laws are not yet fully understood. In this work, we establish scaling laws that accurately model the intricacies of DP LLM training, providing a complete picture of the compute-privacy-utility tradeoffs and the optimal training configurations in many settings.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2501.18914
Document Type :
Working Paper