rag-blueprint

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NVIDIA RAG Blueprint — deploy, configure, troubleshoot, and manage. Handles any RAG action: deploy, install, start, enable, disable, toggle, change, configure, troubleshoot, debug, fix, shutdown, stop, or tear down any RAG feature or service (Agentic RAG, VLM, guardrails, query rewriting, models, search, ingestion, observability, summarization, reasoning, and more).

NVIDIA-AI-Blueprints By NVIDIA-AI-Blueprints schedule Updated 6/3/2026

name: rag-blueprint version: "2.6.0" description: "NVIDIA RAG Blueprint — deploy, configure, troubleshoot, and manage. Handles any RAG action: deploy, install, start, enable, disable, toggle, change, configure, troubleshoot, debug, fix, shutdown, stop, or tear down any RAG feature or service (Agentic RAG, VLM, guardrails, query rewriting, models, search, ingestion, observability, summarization, reasoning, and more)." license: Apache-2.0 compatibility: >- NVIDIA RAG Blueprint repository checkout; Docker/Compose or Kubernetes/Helm for deployments; Python 3.11+ for library workflows; NVIDIA GPU tooling for self-hosted NIM services. metadata: author: "NVIDIA RAG foundational-rag-dev@exchange.nvidia.com" github-url: "https://github.com/NVIDIA-AI-Blueprints/rag" endpoint-openapi-schemas: - docs/api_reference/openapi_schema_rag_server.json - docs/api_reference/openapi_schema_ingestor_server.json argument-hint: deploy RAG | enable feature | disable feature | configure | troubleshoot | shutdown tags: - nvidia - blueprint - rag - deployment - configuration - troubleshooting languages: - python - typescript - shell frameworks: - fastapi - langchain - react - docker-compose - helm domain: ai-ml

allowed-tools: Bash(echo *) Bash(nvidia-smi *) Bash(curl --version *) Bash(docker ps *) Bash(docker info *) Bash(docker --version *) Bash(docker version *) Bash(docker logs *) Bash(docker inspect *) Bash(docker stats *) Bash(docker compose ps *) Bash(docker compose logs *) Bash(docker compose config *) Bash(docker compose version *) Bash(kubectl get *) Bash(kubectl describe *) Bash(kubectl version *) Bash(kubectl logs *) Bash(kubectl api-resources *) Bash(kubectl rollout status *) Bash(helm version *) Bash(helm list *) Bash(helm status *) Bash(oc get *) Bash(oc describe *) Bash(oc logs *) Bash(oc whoami *) Bash(oc version *) Bash(git rev-parse *) Bash(git describe *) Bash(git status *) Bash(python3 --version *) Bash(pip3 show *) Bash(df *) Bash(du ) Bash(cat /proc/) Bash(cat /etc/os-release *) Bash(ss *) Bash(netstat *) Bash(ls *) Bash(grep *) Bash(lsof *) Bash(ps aux *) Read Grep Glob

NVIDIA RAG Blueprint

Purpose

Use this skill for NVIDIA RAG Blueprint operations: deployment, configuration, troubleshooting, shutdown, and feature management across Docker, Helm, and library deployments.

Instructions

  1. Match the user request to the intent routing table below.
  2. Read the referenced playbook before making changes.
  3. Use repository docs and deployment config files as the source of truth.
  4. Verify the affected service or workflow after changes.

Prerequisites

  • NVIDIA RAG Blueprint repository checkout.
  • Docker/Compose or Kubernetes/Helm for deployments.
  • Python 3.11+ for library workflows.
  • NVIDIA GPU tooling for self-hosted NIM services.

Autonomy Principles

  • Auto-detect everything: GPU, VRAM, drivers, Docker, CUDA, disk, OS, ports, existing services, NGC key, repo state.
  • If it can be checked with a command, check it — don't ask the user.
  • Ask only when user action is required: providing an API key, confirming data deletion, or choosing between equally valid options.
  • Once analysis is done, route to the correct workflow and execute.

Intent Detection

Determine what the user wants and route immediately:

User Intent Action
Deploy, install, set up, start RAG Read and follow references/deploy.md
Configure, enable, change, toggle a feature Use the Configure section below
Troubleshoot, debug, fix, error, unhealthy Read and follow references/troubleshoot.md
Stop, shutdown, tear down, clean up Read and follow references/shutdown.md

If the intent is ambiguous, infer from context (e.g., "RAG isn't working" → troubleshoot; "get RAG running" → deploy). Only ask if genuinely unclear.


Configure

Requires a running RAG deployment. If services are not running, deploy first via references/deploy.md.

Match the user's request to a reference file, then read and follow it:

Feature Keywords Reference
VLM, VLM embeddings, image captioning references/configure/vlm.md
NeMo Guardrails references/configure/guardrails.md
Agentic RAG, planning/execution agent, agentic streaming, stage events references/configure/agentic-rag.md
Query rewriting, decomposition, multi-turn references/configure/query-and-conversation.md
Ingestion (text-only, audio, Nemotron Parse, OCR, batch CLI, NV-Ingest, volume mount, performance) references/configure/ingestion.md
Search, retrieval, hybrid search, multi-collection, metadata, filters, Elasticsearch filters, reranker, topK, accuracy/performance references/configure/search-and-retrieval.md
LLM/embedding/ranking model changes, vector DB, Milvus/Elasticsearch auth, service keys, model profiles, ports/GPU references/configure/models-and-infrastructure.md
Reasoning, thinking mode, reasoning_content, self-reflection, prompts, generation params (tokens, temperature, citations), per-request LLM params references/configure/reasoning-and-generation.md
Summarization references/configure/summarization.md
Observability (tracing, Zipkin, Grafana, Prometheus) references/configure/observability.md
Multimodal query (image + text) references/configure/multimodal-query.md
Data catalog (collection/document metadata) references/configure/data-catalog.md
User interface (UI settings, reasoning panel, metadata filters) references/configure/user-interface.md
API reference (endpoints, schemas) references/configure/api-reference.md
Evaluation (RAGAS metrics) references/configure/evaluation.md (and skill rag-eval)
MCP server & client, agent toolkit references/configure/mcp.md
Migration (version upgrades) references/configure/migration.md
Notebooks (setup and catalog) references/configure/notebooks.md

Configure Flow

  1. Match the user's request to a reference file from the table above.

  2. Detect what's running:

    echo "=== NIM ===" && docker ps --format '{{.Names}}' 2>/dev/null | grep -iE '(nim-llm|nemotron-(vlm-)?embedding|nemotron-ranking|nemotron-vlm|nemotron-3-nano-omni|page-elements|graphic-elements|table-structure|nemotron-ocr)' || echo "NO_LOCAL_NIMS"; echo "=== RAG ===" && docker ps --format '{{.Names}}' 2>/dev/null | grep -iE '(rag-server|ingestor-server|elasticsearch|milvus|seaweedfs|lancedb)' || echo "NO_DOCKER_RAG"; echo "=== K8S ===" && kubectl get pods -n rag 2>/dev/null | head -5 || echo "NO_K8S"; echo "=== LIBRARY ===" && ps aux 2>/dev/null | grep -E '(nvidia_rag|uvicorn.*rag)' | grep -v grep || echo "NO_LIBRARY"
    
  3. Use this table to determine platform, deployment type, and where config lives:

    Local NIMs running? RAG services running? Deployment Type Config Location
    Yes (Docker) Any Self-hosted deploy/compose/.env
    No Yes (Docker) NVIDIA-hosted deploy/compose/nvdev.env
    Yes (K8s pods) Any Self-hosted values.yaml (NIM sections)
    No Yes (K8s pods) NVIDIA-hosted values.yaml (envVars)
    Library processes Library mode notebooks/config.yaml
    No No Not running Deploy first via references/deploy.md

    Tell the user what you detected and ask to confirm. Example: "I see local NIM containers running (nim-llm-ms, nemotron-vlm-embedding-ms) — this is a self-hosted deployment. Config file is deploy/compose/.env. Correct?"

  4. Check current feature state before changing anything — read the config location from step 3, then cross-check the live service:

    • Docker: docker exec rag-server env 2>/dev/null | grep -E "<VAR_NAME>"
    • Helm: kubectl get pod -n rag -l app=rag-server -o jsonpath='{.items[0].spec.containers[0].env}' 2>/dev/null

    If the config file and live service disagree, tell the user the service has stale config and will need a restart.

  5. If the feature needs extra GPUs, check availability against hardware restrictions (see below):

    nvidia-smi --query-gpu=index,name,memory.total,memory.used --format=csv,noheader 2>/dev/null || echo "NO_GPU"
    
  6. Read the reference file and apply changes:

    • Docker: edit the env file (uncomment to enable, re-comment to disable — the env file is the source of truth). Then restart the affected service:
      source <env-file> && docker compose -f deploy/compose/<compose-file> up -d
      
      Service Compose File
      rag-server docker-compose-rag-server.yaml
      ingestor-server docker-compose-ingestor-server.yaml
      Elasticsearch, Milvus, etcd, SeaweedFS vectordb.yaml
      NIM containers (LLM, embedding, ranking, VLM, OCR, parse, audio, extraction) nims.yaml
      guardrails docker-compose-nemo-guardrails.yaml
      observability (Grafana, Prometheus, Zipkin) observability.yaml
    • Helm: edit values.yaml, then upgrade: helm upgrade rag <chart> -n rag -f values.yaml
    • Library: edit notebooks/config.yaml, then restart the Python process
  7. Verify:

    • Docker: docker ps --format "table {{.Names}}\t{{.Status}}" | head -20; curl -s http://localhost:8081/v1/health?check_dependencies=true 2>/dev/null | head -1
    • Helm: kubectl get pods -n rag; kubectl rollout status deployment/rag-server -n rag --timeout=120s
    • Library: curl -s http://localhost:8081/v1/health 2>/dev/null | head -1
  8. If restart fails, read references/troubleshoot.md. If multiple features requested, repeat from step 1 for each.

Examples

  • "Deploy RAG" -> route to references/deploy.md.
  • "Enable VLM" -> route to references/configure/vlm.md.
  • "RAG is unhealthy" -> route to references/troubleshoot.md.
  • "Stop RAG" -> route to references/shutdown.md.

Limitations

  • Operational guidance only applies to this RAG Blueprint repository.
  • Live deployment changes require a running Docker, Helm, or library target.
  • Secrets such as NGC_API_KEY must be supplied by the user environment.

Troubleshooting

Error / signal What to do
Services are not running Follow references/deploy.md before configuring features.
Restart or health check fails Follow references/troubleshoot.md.
User requests teardown Follow references/shutdown.md and confirm destructive cleanup.

When User Says "Configure" Without Specifics

Run steps 2–3 above, then read the identified config file to list what's currently enabled:

grep -E "^(export )?(ENABLE_|APP_)" <config-file> 2>/dev/null | sort

Summarize what's running and enabled, then ask which feature to change.


Hardware Restrictions

Read docs/support-matrix.md for current GPU requirements per deployment mode. Read docs/service-port-gpu-reference.md for port mappings and GPU assignments.

GPU Feature Restrictions
B200 No VLM, No Guardrails, No Nemotron Parse. May need multi-GPU LLM (LLM_MS_GPU_ID).
RTX PRO 6000 No Nemotron Parse. No Audio on Helm.
Install via CLI
npx skills add https://github.com/NVIDIA-AI-Blueprints/rag --skill rag-blueprint
Repository Details
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