Scripts to Train and Evaluate Chat Models
Fine-tuning
In the handbook, we provide three main ways to align LLMs for chat:
- Full fine-tuning on a multi-GPU machine with DeepSpeed ZeRO-3 (tested on an 8 x A100 (80GB) node).
- LoRA fine-tuning on a single consumer 24GB GPU (tested on a RTX 4090).
- LoRA fine-tuning on a multi-GPU machine with DeepSpeed ZeRO-3 (tested on a 2 x A100s (80GB)).
In practice, we find comparable performance for both full and LoRA fine-tuning, with the latter having the advantage of producing small adapter weights that are fast to upload and download from the Hugging Face Hub. Here's the two general commands to fine-tune your models:
# Full training with ZeRO-3 on 8 GPUs
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml scripts/run_{task}.py recipes/{model_name}/{task}/config_full.yaml
# LoRA training on a single GPU
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/multi_gpu.yaml --num_processes=1 scripts/run_{task}.py recipes/{model_name}/{task}/config_lora.yaml
# LoRA training with ZeRO-3 on two or more GPUs
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml --num_processes={num_gpus} scripts/run_{task}.py recipes/{model_name}/{task}/config_lora.yaml
Here {task} refers to type of training you wish to run (SFT, DPO, etc), while {model_name} refers to the choice of recipe in the recipes/ directory. For example, to replicate Zephyr 7B you can run:
# Step 1 - train SFT policy
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml scripts/run_sft.py recipes/zephyr-7b/sft/config_full.yaml
# Step 2 - align with DPO
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml scripts/run_dpo.py recipes/zephyr-7b/dpo/config_full.yaml
By default, these scripts will push each model to your Hugging Face Hub username, i.e. {username}/{model_name}-{task}. You can override the parameters in each YAML config by appending them to the command as follows:
# Change batch size, number of epochs etc
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml scripts/run_{task}.py recipes/{model_name}/{task}/config_full.yaml --per_device_train_batch_size=42 --num_train_epochs=5
By default all training metrics are logged with TensorBoard. If you have a Weights and Biases account and are logged in, you can view the training metrics by appending --report_to=wandb, e.g.
ACCELERATE_LOG_LEVEL=info accelerate launch --config_file recipes/accelerate_configs/deepspeed_zero3.yaml scripts/run_{task}.py recipes/{model_name}/{task}/config_full.yaml --report_to=wandb
Launching jobs on a Slurm cluster
If you have access to a Slurm cluster, we provide a recipes/launch.slurm script that will automatically queue training jobs for you. Here's how you can use it:
sbatch --job-name=handbook_{task} --nodes=1 recipes/launch.slurm {model_name} {task} {precision} {accelerator}
Here {model_name} and {task} are defined as above, while {precision} refers to the type of training (full vs LoRA) and {accelerator} refers to the choice of 🤗 Accelerate config in recipes/accelerate_configs. Here's a concrete example to run SFT on 1 node of 8 GPUs:
sbatch --job-name=handbook_sft --nodes=1 recipes/launch.slurm zephyr-7b sft full deepspeed_zero3
You can scale the number of nodes by increasing the --nodes flag; in these cases we recommend also scaling up the per-device batch size or number of gradient accumulation steps to keep the global batch size constant (and thus replicate our results).
Note: the configuration in recipes/launch.slurm is optimised for the Hugging Face Compute Cluster and may require tweaking to be adapted to your own compute nodes.