Task 0.5 of clean-analyst-bootstrap. Greenfield rewrite — no fallback, no aliases. Existing dev environments lose their cached PAT and must re-authenticate. Env var renames (hard cutover): - DA_CONFIG_DIR -> AGNES_CONFIG_DIR - DA_SERVER -> AGNES_SERVER - DA_SERVER_URL -> AGNES_SERVER_URL (test-only stale ref, not in spec) - DA_NO_UPDATE_CHECK -> AGNES_NO_UPDATE_CHECK - DA_LOCAL_DIR -> AGNES_LOCAL_DIR - DA_TOKEN -> AGNES_TOKEN - DA_STREAM_RETRIES -> AGNES_STREAM_RETRIES Config dir rename: ~/.config/da/ -> ~/.config/agnes/ (across code, comments, docstrings, error messages, install templates, dev scripts). Stale `da X` references in CLI source (and adjacent app/, tests/): swept docstrings, comments, help text, and error messages where the verb survives the rewrite (init, pull, push, catalog, status, diagnose, auth, admin, skills, query, schema, describe, explore, disk-info, snapshot, login, logout, whoami, server, setup) and replaced `da X` with `agnes X`. Intentionally kept `da sync`, `da fetch`, `da analyst`, `da metrics` — those verbs are removed in later tasks; the legacy strings will be detected by `_LEGACY_STRINGS` (added in Task 2). Test fixes: - TestCLIVersion now asserts output starts with `agnes ` (was `da `). Test results: 2675 passed, 25 skipped (full pytest run, excluding 9 pre-existing test_db.py / test_user_management.py / test_e2e_extract.py / test_cli_binary_rename.py failures unrelated to this rename).
3.8 KiB
3.8 KiB
Deploy — Complete server deployment guide for AI agents
Prerequisites
You need:
- A Linux server with SSH access (Ubuntu 22.04+ recommended)
- Docker + Docker Compose installed on the server
- A domain pointing to the server IP (optional but recommended for SSL)
- Keboola Storage Token + Stack URL + Project ID (for data source)
Step-by-step deployment
1. Connect to server
ssh user@your-server-ip
2. Clone the repository
git clone https://github.com/keboola/agnes-the-ai-analyst.git /opt/data-analyst
cd /opt/data-analyst
git checkout main
3. Create .env file
cp config/.env.template .env
Edit .env with these REQUIRED values:
JWT_SECRET_KEY=<random 32+ char string>
DATA_DIR=/data
DATA_SOURCE=keboola
KEBOOLA_STORAGE_TOKEN=<your token>
KEBOOLA_STACK_URL=https://connection.keboola.com
KEBOOLA_PROJECT_ID=<your project id>
Generate a random JWT secret:
python3 -c "import secrets; print(secrets.token_urlsafe(32))"
4. Start Docker
docker compose up -d
Wait for health check:
sleep 5
curl http://localhost:8000/api/health
Expected: {"status": "healthy", ...}
5. Bootstrap first admin user
From your LOCAL machine (not the server):
agnes setup init --server http://SERVER_IP:8000
agnes setup bootstrap admin@company.com
Or directly via curl:
curl -X POST http://SERVER_IP:8000/auth/bootstrap \
-H "Content-Type: application/json" \
-d '{"email": "admin@company.com", "name": "Admin"}'
This returns a JWT token. Save it.
6. Trigger first data sync
agnes setup first-sync
Or via curl:
curl -X POST http://SERVER_IP:8000/api/sync/trigger \
-H "Authorization: Bearer <TOKEN>"
7. Verify everything works
agnes setup verify --json
Expected: all checks PASS.
8. Add more users
agnes admin add-user analyst@company.com --role analyst
Troubleshooting
Server not reachable
# Check containers
docker compose ps
# Check logs
docker compose logs app --tail 50
# Restart
docker compose restart app
Data sync fails
# Check logs
docker compose logs app --tail 50 | grep -i error
# Common issues:
# - KEBOOLA_STORAGE_TOKEN expired → get new token
# - KEBOOLA_STACK_URL wrong → check URL
# - data_description.md missing → needs table configuration
No tables after sync
# Check if data_description.md exists
docker compose exec app ls /data/docs/data_description.md
# Check sync state
curl -H "Authorization: Bearer <TOKEN>" http://SERVER_IP:8000/api/sync/manifest
Out of memory
# Check memory
docker stats --no-stream
# Increase Docker memory limit in docker-compose.yml:
# services.app.deploy.resources.limits.memory: 4g
For Google OAuth (optional)
- Go to https://console.cloud.google.com/apis/credentials
- Create OAuth 2.0 Client ID (Web application)
- Add authorized redirect URI:
https://your-domain.com/auth/google/callback - Add to .env:
GOOGLE_CLIENT_ID=<client id> GOOGLE_CLIENT_SECRET=<client secret> - Restart:
docker compose restart app
For SSL (optional)
Use Caddy as reverse proxy (simplest auto-SSL):
# Install Caddy
apt install caddy
# /etc/caddy/Caddyfile
your-domain.com {
reverse_proxy localhost:8000
}
# Restart
systemctl restart caddy
Agent deployment flow (automated)
An AI agent should follow this sequence:
ssh user@server— connect- Clone repo, create .env
docker compose up -d— startcurl /api/health— verify servercurl -X POST /auth/bootstrap— create admincurl -X POST /api/sync/trigger— sync data- Wait 30-60 seconds
curl /api/sync/manifest— verify data- Report success with URL + admin credentials