AusLegalQA
AusLegalQA is a fine-tune of Mistral-8x7B-Instruct-0.1 using PEFT techniques, trained on the Open Australian Legal QA.
The model achieved an eval loss of 1.1391 on a subset of 100 prompts and answers from the original dataset.
The model was trained with the following hyperparameters for 3 epochs. The step with the lowest eval loss was selected (coinciding with end of epoch 2) and the resulting qLoRA (4 bits) was merged into the base model.
Hyperparameter | Value |
---|---|
Sequence length | 1024 |
Epochs | 2 |
Optimiser | AdamW |
Learning rate | 1e-4 |
Learning rate scheduler | Cosine |
Batch size | 1 |
Weight decay | 0.01 |
Warmup ratio | 0.05 |
LoRA rank | 64 |
LoRA alpha | 128 |
LoRA dropout | 0.1 |
LoRA target | q_proj,v_proj |
NEFTune alpha | 5 |
Flash Attention | on |
Strengths
The model is strong at summarisation and short-form answers with the key details. It is more likely to provide responses which assume the user is located in Australia. Ideal use-case is in a LLamaIndex/LangChain environment.
Limitations
Just as the base model it does not have any moderation mechanisms.
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