Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Ladder Up, Memory Down: Low-Cost Fine-Tuning With Side Nets

About

Fine-tuning large language models (LLMs) is often limited by the memory available on commodity GPUs. Parameter-efficient fine-tuning (PEFT) methods such as QLoRA reduce the number of trainable parameters, yet still incur high memory usage induced by the backward pass in the full model. We revisit Ladder Side Tuning (LST), a rarely explored PEFT technique that adds a lightweight side network, and show that it matches QLoRA's compute scaling slope while cutting peak memory by 50\%. Across different downstream benchmarks spanning natural language understanding, mathematical and LLM-critic tasks, LST has competitive performance with QLoRA's accuracy on average while being much more memory-efficient. This efficiency enables fine-tuning of 7B-parameter models on a single 12 GB consumer GPU with 2k-token contexts, requiring no gradient checkpointing\textemdash conditions under which QLoRA exhausts memory. Beyond memory efficiency, we also establish scaling laws showing that LST scales similarly to QLoRA. We exploit Ladder's architectural flexibility by introducing xLadder, a depth-extended variant that increases effective depth via cross-connections and shortens chain-of-thought (CoT) at fixed parameter count. Ladder is strong when memory is the bottleneck; xLadder builds on this by enabling deeper reasoning without additional memory overhead.

Estelle Zheng, Nathan Cerisara, S\'ebastien Warichet, Emmanuel Helbert, Christophe Cerisara• 2025

Related benchmarks

TaskDatasetResultRank
Mathematical ReasoningMinerva
Pass@129.4
138
Mathematical ReasoningAIME 25
pass@18
65
Mathematical ReasoningAMC23
Pass@147.5
43
Mathematical ReasoningMATH 500
Pass@168.9
25
Mathematical ReasoningAIME24
Pass@18
23
Math ReasoningOlympiadBench
Pass@1 Accuracy34.3
19
Showing 6 of 6 rows

Other info

Follow for update