wassname 7eeaeed206 Verify all variants on bnb 4bit/8bit; HRA paper-faithful rewrite
- Test all 6 variants against bnb.Linear8bitLt + Linear4bit in smoke
- bnb-friendly (LoRA, IA3, HRA, DeLoRA): identity err <= 2.4e-4
- bnb-incompatible (PiSSA, DoRA): fail-loud TypeError as expected
- HRA: rewrite to paper-faithful input-side reflections (h <- (I-2vv^T)h),
  fixing previous broken output-side formulation
- IA3: bypass dtype upcast for bnb (params stay fp16/quantized)
- DeLoRA: explicit type check rejecting non-nn.Linear (incl. bnb)
- adapter: special-case bnb param assignment via .data
- Re-verified Qwen0.6B HRA probe: drop=20.7%, id_err=0, reload=0
2026-04-26 18:08:06 +08:00

lora-lite

Hackable PyTorch adapters for LoRA-family and small PEFT experiments.

lora-lite uses forward hooks instead of module replacement. Adapter parameters are plain nn.Parameters on the target layer, e.g. model.layers[5].self_attn.q_proj.lora_A.

Install

pip install -e git+https://github.com/wassname/lora-lite.git#egg=lora-lite

Quickstart

import torch, lora_lite as ll

model = MyTransformer()
cfg = ll.LoraLiteConfig(variant="lora", r=8, alpha=16, dtype=torch.bfloat16)
ll.attach(model, cfg)

opt = torch.optim.AdamW([p for p in model.parameters() if p.requires_grad], lr=1e-4)
# train...

ll.save(model, "adapter.pt")
ll.detach(model)
ll.load(model, "adapter.pt")

Does it work?

just check       # pytest + smoke + package build + metadata check
just bnb-smoke   # required CUDA bitsandbytes 4bit/8bit smoke
just qwen-probe  # Qwen/Qwen3-0.6B train/save-load probe

See docs/spec/20260426_lora_lite_plan.md for verification history and exact results.

Variants

Variant Support Notes
LoRA yes additive low-rank adapter
PiSSA yes, fp only mutates weight into W_res; quantized PiSSA intentionally fails
DeLoRA yes normalized additive adapter with learned scalar
IA3 yes output gate initialized to ones
DoRA yes, fp only reads dense weight for column-norm; quantized DoRA fails loudly
HRA yes output-side Householder reflection with identity gate; works on bnb
SSVD / OFT / ROAD no planned
S-steer / AntiPaSTO no should use data-calibrated group_init, not plain LoRA tests

Targeting

By default, lora-lite targets linear-like modules with in_features, out_features, and weight, excluding lm_head and embed_tokens.

Useful LoraLiteConfig fields:

  • target_roles: subset of ("reader", "writer", "inner"); () means all.
  • target_names: regex includes.
  • exclude_names: regex excludes.
  • layers: layer indices, matching .layers.<idx>. in module names.

This structural targeting is why LoRA, DeLoRA, and IA3 can run on bnb-style Linear4bit/Linear8bitLt modules. PiSSA is different because it edits the base weight.

Save format

Adapters are just:

torch.save({"cfg": cfg.to_dict(), "state": lora_state_dict}, "adapter.pt")

lora_state_dict contains full-path keys with "lora_" in the name. Missing or unexpected adapter keys fail on load.

Developer docs

See docs/developer_guide.md for the variant API, data-calibrated init, and adapter roadmap.

Citation

@misc{wassname2026loralite,
  title = {LoRA-Lite: A Hackable Adapter Library for Research},
  author = {Michael J. Clark},
  year = {2026},
  url = {https://github.com/wassname/lora-lite/}
}
S
Description
A hackable, single-file-per-variant LoRA library built on PyTorch forward hooks.
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