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Examples of using peft with trl to finetune 8-bit models with Low Rank Adaption (LoRA)

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Examples of using peft with trl to finetune 8-bit models with Low Rank Adaption (LoRA)

The notebooks and scripts in this examples show how to use Low Rank Adaptation (LoRA) to fine-tune models in a memory efficient manner. Most of PEFT methods supported in peft library but note that some PEFT methods such as Prompt tuning are not supported. For more information on LoRA, see the original paper.

Here’s an overview of the peft-enabled notebooks and scripts in the trl repository:

File Task Description
stack_llama/rl_training.py RLHF Distributed fine-tuning of the 7b parameter LLaMA models with a learned reward model and peft.
stack_llama/reward_modeling.py Reward Modeling Distributed training of the 7b parameter LLaMA reward model with peft.
stack_llama/supervised_finetuning.py SFT Distributed instruction/supervised fine-tuning of the 7b parameter LLaMA model with peft.

Installation

Note: peft is in active development, so we install directly from their Github page. Peft also relies on the latest version of transformers.

pip install trl[peft]
pip install bitsandbytes loralib
pip install git+https://github.com/huggingface/transformers.git@main
#optional: wandb
pip install wandb

Note: if you don’t want to log with wandb remove log_with="wandb" in the scripts/notebooks. You can also replace it with your favourite experiment tracker that’s supported by accelerate.

How to use it?

Simply declare a PeftConfig object in your script and pass it through .from_pretrained to load the TRL+PEFT model.

from peft import LoraConfig
from trl import AutoModelForCausalLMWithValueHead

model_id = "edbeeching/gpt-neo-125M-imdb"
lora_config = LoraConfig(
    r=16,
    lora_alpha=32,
    lora_dropout=0.05,
    bias="none",
    task_type="CAUSAL_LM",
)

model = AutoModelForCausalLMWithValueHead.from_pretrained(
    model_id, 
    peft_config=lora_config,
)

And if you want to load your model in 8bit precision:

pretrained_model = AutoModelForCausalLMWithValueHead.from_pretrained(
    config.model_name, 
    load_in_8bit=True,
    peft_config=lora_config,
)

… or in 4bit precision:

pretrained_model = AutoModelForCausalLMWithValueHead.from_pretrained(
    config.model_name, 
    peft_config=lora_config,
    load_in_4bit=True,
)

Launch scripts

The trl library is powered by accelerate. As such it is best to configure and launch trainings with the following commands:

accelerate config # will prompt you to define the training configuration
accelerate launch examples/scripts/ppo.py --use_peft # launch`es training

Using trl + peft and Data Parallelism

You can scale up to as many GPUs as you want, as long as you are able to fit the training process in a single device. The only tweak you need to apply is to load the model as follows:

from peft import LoraConfig
...

lora_config = LoraConfig(
    r=16,
    lora_alpha=32,
    lora_dropout=0.05,
    bias="none",
    task_type="CAUSAL_LM",
)

pretrained_model = AutoModelForCausalLMWithValueHead.from_pretrained(
    config.model_name, 
    peft_config=lora_config,
)

And if you want to load your model in 8bit precision:

pretrained_model = AutoModelForCausalLMWithValueHead.from_pretrained(
    config.model_name, 
    peft_config=lora_config,
    load_in_8bit=True,
)

… or in 4bit precision:

pretrained_model = AutoModelForCausalLMWithValueHead.from_pretrained(
    config.model_name, 
    peft_config=lora_config,
    load_in_4bit=True,
)

Finally, make sure that the rewards are computed on correct device as well, for that you can use ppo_trainer.model.current_device.

Naive pipeline parallelism (NPP) for large models (>60B models)

The trl library also supports naive pipeline parallelism (NPP) for large models (>60B models). This is a simple way to parallelize the model across multiple GPUs. This paradigm, termed as “Naive Pipeline Parallelism” (NPP) is a simple way to parallelize the model across multiple GPUs. We load the model and the adapters across multiple GPUs and the activations and gradients will be naively communicated across the GPUs. This supports int8 models as well as other dtype models.

How to use NPP?

Simply load your model with a custom device_map argument on the from_pretrained to split your model across multiple devices. Check out this nice tutorial on how to properly create a device_map for your model.

Also make sure to have the lm_head module on the first GPU device as it may throw an error if it is not on the first device. As this time of writing, you need to install the main branch of accelerate: pip install git+https://github.com/huggingface/accelerate.git@main and peft: pip install git+https://github.com/huggingface/peft.git@main.

Launch scripts

Although trl library is powered by accelerate, you should run your training script in a single process. Note that we do not support Data Parallelism together with NPP yet.

python PATH_TO_SCRIPT

Fine-tuning Llama-2 model

You can easily fine-tune Llama2 model using SFTTrainer and the official script! For example to fine-tune llama2-7b on the Guanaco dataset, run (tested on a single NVIDIA T4-16GB):

python examples/scripts/sft.py --output_dir sft_openassistant-guanaco  --model_name meta-llama/Llama-2-7b-hf --dataset_name timdettmers/openassistant-guanaco --load_in_4bit --use_peft --per_device_train_batch_size 4 --gradient_accumulation_steps 2
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