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HiRA causal language modeling fine-tuning
This example demonstrates how to fine-tune a causal language model with HiRA adapters using the Alpaca-style instruction data from yahma/alpaca-cleaned. The script mirrors the common LoRA flow and shows how to configure HiRA-specific parameters such as the Hadamard modulation rank (r) and dropout.
Running the script
python examples/hira_finetuning/hira_finetuning.py \
--base_model meta-llama/Meta-Llama-3-8B-Instruct \
--data_path yahma/alpaca-cleaned \
--output_dir hira-alpaca \
--hira_r 16 \
--hira_dropout 0.05 \
--learning_rate 3e-4 \
--num_epochs 3
The default target modules cover the attention projections and MLP blocks typically present in decoder-style architectures. Adjust them if your base model uses different module names.