Deploy a privacy-focused AI assistant

Build a healthcare AI assistant that ensures your large language model has multiple layers of protection, including PII detection and content moderation.

HealthcareOpenShift AIPII detection

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

Deploy a privacy-focused AI assistant

Build a healthcare AI assistant that ensures your large language model has multiple layers of protection, including PII detection and content moderation.

Detailed description

This quickstart includes a healthcare AI assistant demo showing how guardrails could help protect HIPAA-compliant applications.

The demo tests a patient services AI with four protection layers:

  1. PII Detection - Protects Social Security Numbers and medical IDs
  2. Content Moderation - Blocks inappropriate language
  3. Prompt Injection Protection - Prevents system manipulation
  4. Gibberish Detection - Filters out nonsense queries

For example, here's how PII detection works in action:

diagram.png

Explore the complete interactive demo in docs/healthcare-guardrails.ipynb.

The LLM Guardrails quickstart is a quick-start template for deploying multiple layers of protection for LLM applications using TrustyAI's orchestrator and specialized detector services.

This quickstart includes a Helm chart for deploying:

  • A Llama 3.2 3B Instruct model with GPU acceleration.
  • Multiple AI safety detectors: gibberish detection, prompt injection detection, and hate/profanity detection.
  • TrustyAI GuardrailsOrchestrator for coordinating safety checks.
  • Configurable detection thresholds and routing policies.

Architecture diagrams

architecture.png

Requirements

  • GPU required for main LLM: +24GiB vRAM
  • CPU cores: 12+ cores total (4 for LLM + 8 for detectors)
  • Memory: 24Gi+ RAM total
  • Storage: 10Gi

Minimum hardware requirements

  • GPU required for main LLM: 1 x NVIDIA GPU with 24GiB vRAM
  • CPU cores: 8+ cores total
  • Memory: 16Gi+ RAM total
  • Storage: 5Gi

Minimum software requirements

  • Red Hat OpenShift 4.19.9
  • Red Hat OpenShift Service Mesh 2
  • Red Hat OpenShift AI 2.23.0
    • KServe needs to be enabled

Please note before you start

This example was tested on Red Hat OpenShift 4.19.9 & Red Hat OpenShift AI 2.23.0.

Required user permissions

  • Cluster admin permissions are required

Install

Clone the repository

git clone https://github.com/rh-ai-quickstart/guardrailing-llms.git && cd guardrailing-llms/
Copy to Clipboard Toggle word wrap

Create a new project

PROJECT="guardrails-demo"

oc new-project ${PROJECT}
Copy to Clipboard Toggle word wrap

Install with Helm

helm install ${PROJECT} helm/ --namespace ${PROJECT} 
Copy to Clipboard Toggle word wrap

Wait for the pods to be ready

oc get pod -n ${PROJECT}
Copy to Clipboard Toggle word wrap

You should see an output similar to:

NAME                                                         READY   STATUS      RESTARTS   AGE
gibberish-detector-predictor-578fc59776-www4s                2/2     Running     0          25h
gorch-sample-5f95f587fd-wmk4x                                3/3     Running     0          51m
guardrails-workbench-0                                       2/2     Running     0          93m
guardrails-workbench-clone-repo-96jhd                        0/1     Completed   0          93m
ibm-hate-and-profanity-detector-predictor-846758cfb5-wnlnd   2/2     Running     0          25h
llama-32-3b-instruct-predictor-c8d55bd58-lctjn               2/2     Running     0          18m
prompt-injection-detector-predictor-7d784957f9-f2x5g         2/2     Running     0          25h
Copy to Clipboard Toggle word wrap

Test

You can get the OpenShift AI Dashboard URL by:

oc get routes rhods-dashboard -n redhat-ods-applications
Copy to Clipboard Toggle word wrap

Once inside the dashboard, navigate to Data Science Projects -> guardrails-demo (or what you called your ${PROJECT} if you changed from default).

OpenShift AI Projects

Inside the project you can see Workbenches, open up the one for guardrails-workbench.

OpenShift AI WB

Open the workbench, inside of the Jupyter Notebook folder, you'll see the guardrailing-llms repository already cloned, go to docs/healthcare-guardrails.ipynb and follow the instructions.

OpenShift AI Jupyter Notebook

Enjoy!

Delete

helm uninstall ${PROJECT} --namespace ${PROJECT} 
Copy to Clipboard Toggle word wrap

References

Red Hat logoGithubredditYoutubeTwitter

詳細情報

試用、購入および販売

コミュニティー

Red Hat ドキュメントについて

Red Hat をお使いのお客様が、信頼できるコンテンツが含まれている製品やサービスを活用することで、イノベーションを行い、目標を達成できるようにします。 最新の更新を見る.

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.

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。

Theme

© 2026 Red Hat
トップに戻る