2.7 KiB
Finetune Ministral3 with Axolotl
Ministral3 is a family of open-weight models from MistralAI found on HuggingFace. This guide shows how to fine-tune it with Axolotl with multi-turn conversations and proper masking.
Please see Thinking and Vision for their respective fine-tuning.
Thanks to the team at MistralAI for giving us early access to prepare for these releases.
Note: This is still experimental given it is based on transformers v5 RC.
Getting started
-
Install Axolotl from source following the installation guide.
-
Install Cut Cross Entropy to reduce training VRAM usage.
-
Swap to the Axolotl transformers v5 branch
cp examples/ministral3/ministral3-3b-qlora.yaml ministral3-3b-qlora.yaml git fetch git checkout transformers-v5 # Install packages for transformers v5 pip install -e . -
Run the fine-tuning:
axolotl train ministral3-3b-qlora.yaml
Let us know how it goes. Happy finetuning! 🚀
Tips
- We recommend adding the same/similar SystemPrompt that the model is tuned for. You can find this within the repo's files titled
SYSTEM_PROMPT.txt. - You can run a full finetuning by removing the
adapter: qloraandload_in_4bit: truefrom the config. - Read more on how to load your own dataset at docs.
- The text dataset format follows the OpenAI Messages format as seen here.
Thinking
Ministral3 2512 model supports thinking capabilities, enabling Chain-of-Thought reasoning with explicit thinking steps.
📚 See the Thinking fine-tuning guide →
Vision
Ministral3 2512 model also supports vision capabilities.
📚 See the Vision fine-tuning guide →
Optimization Guides
Please check the Optimizations doc.
Limitations
We only support the mistral-common tokenizer for Supervised Fine-tuning at the moment and for type: chat_template only.
In addition, we do not support overriding tokens yet.
Related Resources
Future Work
- Add parity to Preference Tuning, RL, etc.
- Add parity to other tokenizer configs like overriding tokens.