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aiq-deploy
// Use when asked to install, deploy, run, validate, troubleshoot, or stop NVIDIA AI-Q Blueprint infrastructure.
// Use when asked to install, deploy, run, validate, troubleshoot, or stop NVIDIA AI-Q Blueprint infrastructure.
Use when asked to run deep research or AI-Q research through a reachable NVIDIA AI-Q Blueprint backend.
Use this skill for converting researched facts or user-provided data into structured tables by writing code, then running Python/pandas calculations in the job-scoped sandbox. This skill is for numeric normalization, tabular analysis, rankings, growth rates, summary statistics, CSV/JSON generation, and markdown tables. Triggers: "compute table", "calculate growth", "normalize values", "extract figures", "rank companies", "QoQ", "YoY", "CAGR", "summary statistics", "CSV", "JSON", "markdown table", "standardize quarters", "standardize currencies", "compare over time" Outputs: Markdown tables, CSV text, JSON records, summary statistics, rankings, and data-quality notes.
| name | aiq-deploy |
| description | Use when asked to install, deploy, run, validate, troubleshoot, or stop NVIDIA AI-Q Blueprint infrastructure. |
| license | Apache-2.0 |
| compatibility | Designed for Claude Code, OpenCode, Codex, and Agent Skills-compatible tools. Requires Git, network access to GitHub, and one selected runtime path: Docker Compose v2 for the default local deployment, Python 3.11+ and uv for local process or CLI mode, Node.js 20+ and npm for local web UI mode, or kubectl 1.28+ and Helm 3.12+ for Kubernetes and Helm mode. |
| metadata | {"version":"2.1.0","author":"NVIDIA AI-Q Blueprint Team <aiq-blueprint@nvidia.com>","github-url":"https://github.com/NVIDIA-AI-Blueprints/aiq","tags":["nvidia","aiq","blueprint","deploy","operations","agent-skills"]} |
| allowed-tools | Read Bash |
Use this skill to get a local or self-hosted NVIDIA AI-Q Blueprint server running and verified for use by
aiq-research.
This skill owns setup, deployment, operational checks, troubleshooting, and shutdown. It does not run deep
research itself. After deployment is healthy, hand off the verified server URL to aiq-research.
The workflow stays explicit so deployment validation and handoff are repeatable across supported agent clients.
Users need:
https://github.com/NVIDIA-AI-Blueprints/aiq.uv for local process or CLI mode.npm for local browser UI development mode.kubectl 1.28+, Helm 3.12+, and access to a Kubernetes cluster for Helm mode.NVIDIA_API_KEY; web research requires at least
one supported search provider key such as TAVILY_API_KEY, SERPER_API_KEY, or EXA_API_KEY.3000. Self-hosted model or RAG deployments may require GPU resources.Before writing secrets, verify deploy/.env is ignored:
git check-ignore deploy/.env
Expected output: deploy/.env or a matching ignore rule. If it is not ignored, stop and fix the ignore rule before
placing credentials in the file.
deploy/.env without overwriting user secrets.AIQ_SERVER_URL for aiq-research.If no AI-Q checkout exists, read references/locate-or-clone.md before cloning. In an existing checkout, confirm the
required files:
pwd
test -f pyproject.toml
test -f deploy/.env.example
test -d configs
Expected output: pwd prints the AI-Q repository path; the test commands exit with status 0 and no output.
If the user asks to install, deploy, set up, or run AI-Q without naming a mode, ask:
How do you want to run AI-Q?
1. Skill backend - backend-only service for aiq-research w/o browser UI.
2. CLI - interactive terminal AI-Q.
3. UI - browser AI-Q app with backend and frontend.
4. Custom - choose an existing AI-Q config or review advanced customization docs before deployment.
Wait for the user's answer before starting services.
Do not ask this question when the user already specified a mode, such as Docker Compose, Helm, UI, CLI, or Agent Skill
backend. Do not ask the full mode question when aiq-research routed here because a deep research request needs a
backend. In that case, prefer Agent Skill backend and ask only for permission to start it if needed.
Read references/env-and-secrets.md before changing deploy/.env.
if [ ! -f deploy/.env ]; then
cp deploy/.env.example deploy/.env
echo "created deploy/.env from deploy/.env.example"
fi
Expected output when the file is missing: created deploy/.env from deploy/.env.example. Expected output when the file
already exists: no output, and the existing file is preserved.
Never print secret values. If credentials are missing, ask the user to update deploy/.env; do not ask them to paste
secret values into chat.
Match the user request, then read the referenced file before acting:
| User Intent | Reference |
|---|---|
| No AI-Q checkout exists, install AIQ, clone AIQ, locate repo | references/locate-or-clone.md |
Configure environment, check API keys, inspect .env | references/env-and-secrets.md |
Choose an AI-Q workflow config, understand config files, set BACKEND_CONFIG or CONFIG_FILE | references/configs.md |
Backend-only local server for aiq-research, AIQ as an Agent Skill | references/skill-backend.md |
| Terminal assistant, CLI-only run, no web UI | references/terminal-cli.md |
| Quick local development run, start UI/backend without containers | references/local-web.md |
| Default durable local deployment, Docker Compose, containers, PostgreSQL | references/docker-compose.md |
| Kubernetes, Helm, cluster deployment | references/kubernetes-helm.md |
| Foundational RAG / FRAG integration | references/frag.md |
Basic health checks, shallow smoke checks, handoff to aiq-research | references/validation.md |
| Optional deep research completion validation | references/end-to-end-validation.md |
| Logs, unhealthy services, port conflicts, config failures | references/troubleshooting.md |
| Stop services, restart, rebuild, safe cleanup | references/shutdown.md |
After startup, read references/validation.md and run the appropriate checks for the selected mode. For the default
local backend, verify health:
curl -sf http://localhost:8000/health
Expected output: a successful JSON health response or an empty successful response depending on the server build. If the
command fails, read references/troubleshooting.md and diagnose before claiming the backend is ready.
aiq-research needs a reachable AI-Q server URL. If the backend is on the default port, no extra configuration is
needed:
AIQ_SERVER_URL=http://localhost:8000
If the backend runs elsewhere, tell the user to set:
export AIQ_SERVER_URL="http://localhost:<PORT>"
Do not continue into deep research or deep research completion validation unless the user asks for it or confirms the post-deploy validation prompt. This skill's success criterion is a deployed and basically validated server, not report generation quality.
IMPORTANT: This skill is designed for NVIDIA AI-Q Blueprint version 2.1.0.
Semantic Versioning Compatibility Rules:
Skill version: X.Y.Z
Blueprint version: A.B.C
Compatible IF:
1. A == X (Major versions MUST match)
2. B >= Y (Minor version must be equal or greater)
3. C can be anything (Patch version does not affect compatibility)
Examples:
If your Blueprint version is not compatible:
deploy/.env or environment variables, not in chat transcripts, shell history, committed files,
or example commands.deploy/.env when it already exists.down -v.RAG_SERVER_URL and RAG_INGEST_URL are configured and reachable.test -f deploy/.env || cp deploy/.env.example deploy/.env
git check-ignore deploy/.env
cd deploy/compose
BUILD_TARGET=release docker compose --env-file ../.env -f docker-compose.yaml config --quiet
BUILD_TARGET=release docker compose --env-file ../.env -f docker-compose.yaml up -d --build aiq-agent
curl -sf http://localhost:8000/health
Expected output:
deploy/.env
<docker compose starts aiq-agent and dependencies>
<health endpoint returns a successful response>
If Docker, ports, credentials, or health checks fail, read references/troubleshooting.md before retrying.
export AIQ_SERVER_URL="http://localhost:8100"
curl -sf "$AIQ_SERVER_URL/health"
Expected output: a successful health response. Then tell the user to keep AIQ_SERVER_URL set before invoking
aiq-research.
| Topic | Documentation |
|---|---|
| Locate or clone AI-Q | references/locate-or-clone.md |
| Environment and secrets | references/env-and-secrets.md |
| Workflow configs | references/configs.md |
| Agent Skill backend | references/skill-backend.md |
| CLI deployment | references/terminal-cli.md |
| Local web deployment | references/local-web.md |
| Docker Compose deployment | references/docker-compose.md |
| Kubernetes and Helm deployment | references/kubernetes-helm.md |
| FRAG integration | references/frag.md |
| Basic validation | references/validation.md |
| End-to-end validation | references/end-to-end-validation.md |
| Troubleshooting | references/troubleshooting.md |
| Shutdown and cleanup | references/shutdown.md |
Symptoms:
8000.curl -sf http://localhost:8000/health reaches an unexpected service or fails.Causes:
PORT in deploy/.env conflicts with an existing process.Solutions:
lsof -nP -iTCP:8000 -sTCP:LISTEN
deploy/.env, such as
PORT=8100.curl -sf http://localhost:8100/health
Symptoms:
Causes:
NVIDIA_API_KEY is missing or empty.Solutions:
references/env-and-secrets.md.deploy/.env; do not ask them to paste secrets into chat.references/validation.md after the user updates credentials.Symptoms:
/health succeeds, but /chat or /v1/jobs/async/agents fails.aiq-research reports that async agents are unavailable.Causes:
BACKEND_CONFIG or CONFIG_FILE points at the wrong AI-Q config.Solutions:
references/configs.md and confirm the selected config is API-enabled.configs/config_web_default_llamaindex.yml.references/validation.md.Symptoms:
docker compose down -v.Causes:
down -v removes Docker volumes.Solutions:
references/shutdown.md.