* feat: move to uv first * fix: update doc to uv first * fix: merge dev/tests into uv pyproject * fix: update docker docs to match current config * fix: migrate examples to readme * fix: add llmcompressor to conflict * feat: rec uv sync with lockfile for dev/ci * fix: update docker docs to clarify how to use uv images * chore: docs * fix: use system python, no venv * fix: set backend cpu * fix: only set for installing pytorch step * fix: remove unsloth kernel and installs * fix: remove U in tests * fix: set backend in deps too * chore: test * chore: comments * fix: attempt to lock torch * fix: workaround torch cuda and not upgraded * fix: forgot to push * fix: missed source * fix: nightly upstream loralinear config * fix: nightly phi3 long rope not work * fix: forgot commit * fix: test phi3 template change * fix: no more requirements * fix: carry over changes from new requirements to pyproject * chore: remove lockfile per discussion * fix: set match-runtime * fix: remove unneeded hf hub buildtime * fix: duplicate cache delete on nightly * fix: torchvision being overridden * fix: migrate to uv images * fix: leftover from merge * fix: simplify base readme * fix: update assertion message to be clearer * chore: docs * fix: change fallback for cicd script * fix: match against main exactly * fix: peft 0.19.1 change * fix: e2e test * fix: ci * fix: e2e test
2.2 KiB
2.2 KiB
Finetune Qwen3-Next with Axolotl
Qwen3-Next represents the next-generation foundation models optimized for extreme context length and large-scale parameter efficiency. The series introduces architectural innovations including Hybrid Attention (Gated DeltaNet + Gated Attention), High-Sparsity MoE with 1:50 activation ratio, and Multi-Token Prediction for enhanced performance and inference acceleration.
This guide shows how to fine-tune it with Axolotl with multi-turn conversations and proper masking.
Getting started
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Install Axolotl following the installation guide.
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Install Cut Cross Entropy to reduce training VRAM usage.
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Install FLA for improved performance
uv pip uninstall causal-conv1d && uv pip install flash-linear-attention==0.4.1
- Run the finetuning example:
axolotl train examples/qwen3-next/qwen3-next-80b-a3b-qlora.yaml
This config uses about ~47 GiB (no target experts) and ~71GiB (target experts) VRAM.
Let us know how it goes. Happy finetuning! 🚀
TIPS
- For inference, you can experiment with
temperature: 0.7,top_p: 0.8,top_k: 20, andmin_p: 0. - You can run a full finetuning by removing the
adapter: qloraandload_in_4bit: truefrom the config. See Multi-GPU section below. - Read more on how to load your own dataset at docs.
- The dataset format follows the OpenAI Messages format as seen here.