This deployment is based on the validated pattern framework
, using GitOps for
seamless provisioning of all operators and applications. It deploys a Chatbot
application that harnesses the power of Large Language Models (LLMs) combined
with the Retrieval-Augmented Generation (RAG) framework.
The pattern uses the Red Hat OpenShift AI to deploy and serve LLM models at scale.
The application uses either the EDB Postgres for Kubernetes operator (default) or Redis to store embeddings of Red Hat products, running on Red Hat OpenShift to generate project proposals for specific Red Hat products.
- Podman
- Red Hat Openshift cluster running in AWS. Supported regions are us-west-2 and us-east-1.
- GPU Node to run Hugging Face Text Generation Inference server on Red Hat OpenShift cluster.
- Create a fork of the rag-llm-gitops git repository.
The goal of this demo is to demonstrate a Chatbot LLM application augmented with data from Red Hat product documentation running on Red Hat OpenShift AI. It deploys an LLM application that connects to multiple LLM providers such as OpenAI, Hugging Face, and NVIDIA NIM. The application generates a project proposal for a Red Hat product.
- Leveraging Red Hat OpenShift AI to deploy and serve LLM models powered by NVIDIA GPU accelerator.
- LLM Application augmented with content from Red Hat product documentation.
- Multiple LLM providers (OpenAI, Hugging Face, NVIDIA).
- Vector Database, such as EDB Postgres for Kubernetes or Redis, to store embeddings of Red Hat product documentation.
- Monitoring dashboard to provide key metrics such as ratings.
- GitOps setup to deploy e2e demo (frontend / vector database / served models).
Figure 1. Overview of the validated pattern for RAG Demo with Red Hat OpenShift
Figure 2. Logical diagram of the RAG Demo with Red Hat OpenShift.
Figure 3. Schematic diagram for workflow of RAG demo with Red Hat OpenShift.
Figure 4. Schematic diagram for Ingestion of data for RAG.
Figure 5. Schematic diagram for RAG demo augmented query.
In Figure 5, we can see RAG augmented query. Community version of Mistral-7B-Instruct model is used for language processing, LangChain to integrate different tools of the LLM-based application together and to process the PDF files and web pages, vector database provider such as EDB Postgres for Kubernetes or Redis, is used to store vectors, and Red Hat OpenShift AI to serve the Mistral-7B-Instruct model, Gradio is used for user interface and object storage to store language model and other datasets. Solution components are deployed as microservices in the Red Hat OpenShift cluster.
View and download all of the diagrams above in our open source tooling site.
Figure 6. Proposed demo architecture with OpenShift AI
- vLLM Text Generation Inference Server: The pattern deploys a vLLM Inference Server. The server deploys and serves
mistral-community/Mistral-7B-Instruct-v0.3
model. The server will require a GPU node. - EDB Postgres for Kubernetes / Redis Server: A Vector Database server is deployed to store vector embeddings created from Red Hat product documentation.
- Populate VectorDb Job: The job creates the embeddings and populates the vector database.
- LLM Application: This is a Chatbot application that can generate a project proposal by augmenting the LLM with the Red Hat product documentation stored in vector db.
- Prometheus: Deploys a prometheus instance to store the various metrics from the LLM application and TGIS server.
- Grafana: Deploys Grafana application to visualize the metrics.
To run the demo, ensure the Podman is running on your machine.Fork the rag-llm-gitops repo into your organization
Replace the token and the api server url in the command below to login to the OpenShift cluster.
oc login --token=<token> --server=<api_server_url> # login to Openshift cluster
git clone https://github.com/<<your-username>>/rag-llm-gitops.git
cd rag-llm-gitops
This pattern deploys community version of Mistral-7B-Instruct out of box. Run the following command to configure vault with the model Id.
# Copy values-secret.yaml.template to ~/values-secret-rag-llm-gitops.yaml.
# You should never check-in these files
# Add secrets to the values-secret.yaml that needs to be added to the vault.
cp values-secret.yaml.template ~/values-secret-rag-llm-gitops.yaml
To deploy a non-community Mistral-7b-Instruct model, grab the Hugging Face token and accept the terms and conditions on the model page. Edit ~/values-secret-rag-llm-gitops.yaml to replace the model Id
and the Hugging Face
token.
secrets:
- name: hfmodel
fields:
- name: hftoken
value: null
- name: modelId
value: "mistral-community/Mistral-7B-Instruct-v0.3"
- name: minio
fields:
- name: MINIO_ROOT_USER
value: minio
- name: MINIO_ROOT_PASSWORD
value: null
onMissingValue: generate
As a pre-requisite to deploy the application using the validated pattern, GPU nodes should be provisioned along with Node Feature Discovery Operator and NVIDIA GPU operator. To provision GPU Nodes
Following command will take about 5-10 minutes.
./pattern.sh make create-gpu-machineset
Wait till the nodes are provisioned and running.
Alternatiely, follow the instructions to manually install GPU nodes, Node Feature Discovery Operator and NVIDIA GPU operator.
*Note:: This pattern supports two types of vector databases, EDB Postgres for Kubernetes and Redis. By default the pattern will deploy EDB Postgres for Kubernetes as a vector DB. To deploy Redis, change the global.db.type to REDIS in values-global.yaml.
---
global:
pattern: rag-llm-gitops
options:
useCSV: false
syncPolicy: Automatic
installPlanApproval: Automatic
# Possible value for db.type = [REDIS, EDB]
db:
index: docs
type: EDB # <--- Default is EDB, Change the db type to REDIS for Redis deployment
main:
clusterGroupName: hub
multiSourceConfig:
enabled: true
Following commands will take about 15-20 minutes
Validated pattern will be deployed
./pattern.sh make install
- Login to the OpenShift web console.
- Navigate to the Workloads --> Pods.
- Select the
rag-llm
project from the drop down. - Following pods should be up and running.
Note: If the hf-text-generation-server is not running, make sure you have followed the steps to configure a node with GPU from the instructions provided above.
- Click the
Application box
icon in the header, and selectRetrieval-Augmented-Generation (RAG) LLM Demonstration UI
-
It will use the default provider and model configured as part of the application deployment. The default provider is a Hugging Face model server running in the OpenShift. The model server is deployed with this valdiated pattern and requires a node with GPU.
-
Enter any company name
-
Enter the product as
RedHat OpenShift
-
Click the
Generate
button, a project proposal should be generated. The project proposal also contains the reference of the RAG content. The project proposal document can be Downloaded in the form of a PDF document.
You can optionally add additional providers. The application supports the following providers
- Hugging Face Text Generation Inference Server
- OpenAI
- NVIDIA
Click on the Add Provider
tab to add a new provider. Fill in the details and click Add Provider
button. The provider should be added in the Providers
dropdown uder Chatbot
tab.
Follow the instructions in step 3 to generate the proposal document using the OpenAI provider.
You can provide rating to the model by clicking on the Rate the model
radio button. The rating will be captured as part of the metrics and can help the company which model to deploy in prodcution.
By default, Grafana application is deployed in llm-monitoring
namespace.To launch the Grafana Dashboard, follow the instructions below:
- Grab the credentials of Grafana Application
- Navigate to Workloads --> Secrets
- Click on the grafana-admin-credentials and copy the GF_SECURITY_ADMIN_USER, GF_SECURITY_ADMIN_PASSWORD
- Launch Grafana Dashboard
GOTO: Test Plan
EDB Postgres for Kubernetes is distributed under the EDB Limited Usage License Agreement, available at enterprisedb.com/limited-use-license.