The Silent Freeze: Predicting When Low-Precision Training Stops Learning

arXiv:2607.09800v1 Announce Type: new Abstract: Training in reduced floating-point precision can silently halt learning: when a gradient-descent weight update falls below half the unit in the last place (ULP) of the weight, it rounds away and that coordinate freezes while its gradient is still nonzero. The freeze is deterministic, governed by a per-coordinate half-ULP condition, and predictable from a high-precision trajectory and the target mantissa length alone, without low-precision data. In ...

arXiv cs.LG ·Zekai Shang ·
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