How to run and deploy LLMs using Red Hat OpenShift AI on a Red Hat OpenShift Service on AWS cluster

Learn how to install the Red Hat® OpenShift® AI (RHOAI) operator and Jupyter notebook, create an Amazon S3 bucket, and run the LLM model on a Red Hat OpenShift Service on AWS (ROSA) cluster.

Disclaimer: this content is authored by Red Hat experts, but has not yet been tested on every supported configuration.

This learning path is for operations teams or system administrators.

Developers might want to check out how to create a natural language processing (NLP) application using Red Hat OpenShift AI on developers.redhat.com.

Get started on developers.redhat.com

Next steps after running and deploying an LLM using Red Hat OpenShift AI

2 mins

Congratulations! You have deployed and trained an LLM using Red Hat® OpenShift® AI (RHOAI) on a Red Hat OpenShift Service on AWS (ROSA) cluster.

After completing this tutorial, you now have experience:

  • Installing RHOAI and Jupyter notebook
  • Creating and granting access to S3 bucket
  • Training LLM model
  • Future research
  • Performing hyperparameter tuning 

What comes next?

Next, watch a demonstration of a typical RHOAI workflow that includes text-to-image generation, creating a project, launching a Jupyter notebook with appropriate cluster resources, and training a foundation model from Hugging Face with one’s own data. Once the model is fine-tuned, the demonstrator also automates the build using a data science pipeline and serves the model for use in an AI-enabled application. 

Red Hat logoGithubredditYoutubeTwitter

詳細情報

試用、購入および販売

コミュニティー

会社概要

Red Hat は、企業がコアとなるデータセンターからネットワークエッジに至るまで、各種プラットフォームや環境全体で作業を簡素化できるように、強化されたソリューションを提供しています。

多様性を受け入れるオープンソースの強化

Red Hat では、コード、ドキュメント、Web プロパティーにおける配慮に欠ける用語の置き換えに取り組んでいます。このような変更は、段階的に実施される予定です。詳細情報: Red Hat ブログ.

Red Hat ドキュメントについて

Legal Notice

Theme

© 2026 Red Hat
トップに戻る