batdetect2/docs/source/how_to/fine-tune-from-a-checkpoint.md

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# How to fine-tune from a checkpoint
Use this guide when you want to continue from an existing checkpoint instead of training a fresh model config.
## Use `--model` for checkpoint-based training
Pass a checkpoint with `--model`.
Do not combine `--model` with `--model-config`.
```bash
batdetect2 train \
path/to/train_dataset.yaml \
--val-dataset path/to/val_dataset.yaml \
--model path/to/model.ckpt \
--training-config path/to/training.yaml
```
## Keep targets and preprocessing aligned
If you override targets or audio-related settings while fine-tuning, validate that they still match the checkpoint and your dataset.
Mismatches here can produce confusing failures or invalid comparisons.
## Decide what question the fine-tune should answer
Common fine-tuning goals are:
- adapting to local recording conditions,
- adapting to a new label set,
- improving performance on a narrower deployment context.
Make that goal explicit before comparing results.
## Evaluate after fine-tuning
Always compare the fine-tuned checkpoint against a held-out dataset.
Use the same evaluation setup when comparing before and after.
## Related pages
- Training tutorial: {doc}`../tutorials/train-a-custom-model`
- Evaluate a test set: {doc}`../tutorials/evaluate-on-a-test-set`
- Train command reference: {doc}`../reference/cli/train`