English

Per-Axis Weight Deltas for Frequent Model Updates

Machine Learning 2025-12-24 v1

Abstract

Serving many task-specialized LLM variants is often limited by the large size of fine-tuned checkpoints and the resulting cold-start latency. Since fine-tuned weights differ from their base model by relatively small structured residuals, a natural approach is to represent them as compressed deltas. We propose a simple 1-bit delta scheme that stores only the sign of the weight difference together with lightweight per-axis (row/column) FP16 scaling factors, learned from a small calibration set. This design preserves the compactness of 1-bit deltas while more accurately capturing variation across weight dimensions, leading to improved reconstruction quality over scalar alternatives. From a systems perspective, a streamlined loader that transfers packed deltas in a single operation per module reduces cold-start latency and storage overhead, with artifacts several times smaller than a full FP16 checkpoint. The method is drop-in, requires minimal calibration data, and maintains inference efficiency by avoiding dense reconstruction. Our experimental setup and source code are available at https://github.com/kuiumdjiev/Per-Axis-Weight-Deltas-for-Frequent-Model-Updates.

Keywords

Cite

@article{arxiv.2512.19720,
  title  = {Per-Axis Weight Deltas for Frequent Model Updates},
  author = {Stefan Kuyumdzhiev and Radostin Cholakov},
  journal= {arXiv preprint arXiv:2512.19720},
  year   = {2025}
}

Comments

10 pages, 2 figures, AI That Keeps Up: Workshop on Continual and Compatible Foundation Model Updates (CCFM), Neurips 2025

R2 v1 2026-07-01T08:37:28.968Z