Files
2026-07-13 13:17:40 +08:00

110 lines
4.0 KiB
ReStructuredText

:orphan:
Distributed fine-tuning of Llama 3.1 8B on AWS Trainium with Ray and PyTorch Lightning
======================================================================================
.. raw:: html
<a id="try-anyscale-quickstart-aws-trainium-llama3" target="_blank" href="https://console.anyscale.com/register/ha?render_flow=ray&utm_source=ray_docs&utm_medium=docs&utm_campaign=aws-trainium-llama3">
<img src="../../../_static/img/run-on-anyscale.svg" alt="Run on Anyscale" />
<br/><br/>
</a>
This example demonstrates how to fine-tune the `Llama 3.1 8B <https://huggingface.co/NousResearch/Meta-Llama-3.1-8B/>`__ model on `AWS
Trainium <https://aws.amazon.com/ai/machine-learning/trainium/>`__ instances using Ray Train, PyTorch Lightning, and AWS Neuron SDK.
AWS Trainium is the machine learning (ML) chip that AWS built for deep
learning (DL) training of 100B+ parameter models. `AWS Neuron
SDK <https://aws.amazon.com/machine-learning/neuron/>`__ helps
developers train models on Trainium accelerators.
Prepare the environment
-----------------------
See `Setup EKS cluster and tools <https://github.com/aws-neuron/aws-neuron-eks-samples/tree/master/llama3.1_8B_finetune_ray_ptl_neuron#setupeksclusterandtools>`__ for setting up an Amazon EKS cluster leveraging AWS Trainium instances.
Create a Docker image
---------------------
When the EKS cluster is ready, create an Amazon ECR repository for building and uploading the Docker image containing artifacts for fine-tuning a Llama3.1 8B model:
1. Clone the repo.
::
git clone https://github.com/aws-neuron/aws-neuron-eks-samples.git
2. Go to the ``llama3.1_8B_finetune_ray_ptl_neuron`` directory.
::
cd aws-neuron-eks-samples/llama3.1_8B_finetune_ray_ptl_neuron
3. Trigger the script.
::
chmod +x 0-kuberay-trn1-llama3-finetune-build-image.sh
./0-kuberay-trn1-llama3-finetune-build-image.sh
4. Enter the zone your cluster is running in, for example: us-east-2.
5. Verify in the AWS console that the Amazon ECR service has the newly
created ``kuberay_trn1_llama3.1_pytorch2`` repository.
6. Update the ECR image ARN in the manifest file used for creating the Ray cluster.
Replace the <AWS_ACCOUNT_ID> and <REGION> placeholders with actual values in the ``1-llama3-finetune-trn1-create-raycluster.yaml`` file using commands below to reflect the ECR image ARN created above:
::
export AWS_ACCOUNT_ID=<enter_your_aws_account_id> # for ex: 111222333444
export REGION=<enter_your_aws_region> # for ex: us-east-2
sed -i "s/<AWS_ACCOUNT_ID>/$AWS_ACCOUNT_ID/g" 1-llama3-finetune-trn1-create-raycluster.yaml
sed -i "s/<REGION>/$REGION/g" 1-llama3-finetune-trn1-create-raycluster.yaml
Configuring Ray Cluster
-----------------------
The ``llama3.1_8B_finetune_ray_ptl_neuron`` directory in the AWS Neuron samples repository simplifies the
Ray configuration. KubeRay provides a manifest that you can apply
to the cluster to set up the head and worker pods.
Run the following command to set up the Ray cluster:
::
kubectl apply -f 1-llama3-finetune-trn1-create-raycluster.yaml
Accessing Ray Dashboard
-----------------------
Port forward from the cluster to see the state of the Ray dashboard and
then view it on `http://localhost:8265 <http://localhost:8265/>`__.
Run it in the background with the following command:
::
kubectl port-forward service/kuberay-trn1-head-svc 8265:8265 &
Launching Ray Jobs
------------------
The Ray cluster is now ready to handle workloads. Initiate the data preparation and fine-tuning Ray jobs:
1. Launch the Ray job for downloading the dolly-15k dataset and the Llama3.1 8B model artifacts:
::
kubectl apply -f 2-llama3-finetune-trn1-rayjob-create-data.yaml
2. When the job has executed successfully, run the following fine-tuning job:
::
kubectl apply -f 3-llama3-finetune-trn1-rayjob-submit-finetuning-job.yaml
3. Monitor the jobs via the Ray Dashboard
For detailed information on each of the steps above, see the `AWS documentation link <https://github.com/aws-neuron/aws-neuron-eks-samples/blob/master/llama3.1_8B_finetune_ray_ptl_neuron/README.md/>`__.