oura-analytics
Oura Ring data integration and analytics. Fetch sleep scores, readiness, activity, HRV, and trends from the Oura Cloud API. Generate automated reports, correlations with productivity, and trigger-based alerts for low recovery days. Requires OURA_API_TOKEN (get at cloud.ouraring.com).
What this skill does
# Oura Analytics
## Quick Start
```bash
# Set Oura API token
export OURA_API_TOKEN="your_personal_access_token"
# Fetch sleep data (last 7 days)
python {baseDir}/scripts/oura_api.py sleep --days 7
# Get readiness summary
python {baseDir}/scripts/oura_api.py readiness --days 7
# Generate weekly report
python {baseDir}/scripts/oura_api.py report --type weekly
```
## When to Use
Use this skill when:
- Fetching Oura Ring metrics (sleep, readiness, activity, HRV)
- Analyzing recovery trends over time
- Correlating sleep quality with productivity/events
- Setting up automated alerts for low readiness
- Generating daily/weekly/monthly health reports
## Core Workflows
### 1. Data Fetching
```bash
export PYTHONPATH="{baseDir}/scripts"
python - <<'PY'
from oura_api import OuraClient
client = OuraClient(token="YOUR_TOKEN")
sleep_data = client.get_sleep(start_date="2026-01-01", end_date="2026-01-16")
readiness_data = client.get_readiness(start_date="2026-01-01", end_date="2026-01-16")
print(len(sleep_data), len(readiness_data))
PY
```
### 2. Trend Analysis
```bash
export PYTHONPATH="{baseDir}/scripts"
python - <<'PY'
from oura_api import OuraClient, OuraAnalyzer
client = OuraClient(token="YOUR_TOKEN")
sleep_data = client.get_sleep(start_date="2026-01-01", end_date="2026-01-16")
readiness_data = client.get_readiness(start_date="2026-01-01", end_date="2026-01-16")
analyzer = OuraAnalyzer(sleep_data, readiness_data)
avg_sleep = analyzer.average_metric(sleep_data, "score")
avg_readiness = analyzer.average_metric(readiness_data, "score")
trend = analyzer.trend(sleep_data, "average_hrv")
print(avg_sleep, avg_readiness, trend)
PY
```
### 3. Alerts
```bash
python {baseDir}/scripts/alerts.py --days 7 --readiness 60 --efficiency 80
```
## Environment
Required:
- `OURA_API_TOKEN`
Optional (used for alerts/reports/timezone/output):
- `KESSLER_TELEGRAM_BOT_TOKEN` (fallback to `TELEGRAM_BOT_TOKEN`)
- `TELEGRAM_CHAT_ID`
- `USER_TIMEZONE`
- `OURA_OUTPUT_DIR`
## Scripts
- `scripts/oura_api.py` - Oura Cloud API wrapper with OuraAnalyzer and OuraReporter classes
- `scripts/alerts.py` - Threshold-based notifications (CLI: `python {baseDir}/scripts/alerts.py --days 7 --readiness 60`)
- `scripts/weekly_report.py` - Weekly report generator
## References
- `references/api.md` - Oura Cloud API documentation
- `references/metrics.md` - Metric definitions and interpretations
## Automation (Cron Jobs)
Cron jobs are configured in OpenClaw's gateway, not in this repo. Add these to your OpenClaw setup:
### Daily Morning Briefing (8:00 AM)
```bash
openclaw cron add \
--name "Daily Oura Health Report (Hybrid)" \
--cron "0 8 * * *" \
--tz "America/Los_Angeles" \
--session isolated \
--wake next-heartbeat \
--deliver \
--channel telegram \
--target "<YOUR_TELEGRAM_CHAT_ID>" \
--message "Run the daily Oura health report with hybrid format: Execute bash /path/to/your/scripts/daily-oura-report-hybrid.sh"
```
### Weekly Sleep Report (Sunday 8:00 AM)
```bash
openclaw cron add \
--name "Weekly Oura Sleep Report" \
--cron "0 8 * * 0" \
--tz "America/Los_Angeles" \
--session isolated \
--wake next-heartbeat \
--deliver \
--channel telegram \
--target "<YOUR_TELEGRAM_CHAT_ID>" \
--message "Run weekly Oura sleep report: bash /path/to/your/oura-weekly-sleep-alert.sh"
```
### Daily Obsidian Note (8:15 AM)
```bash
openclaw cron add \
--name "Daily Obsidian Note" \
--cron "15 8 * * *" \
--tz "America/Los_Angeles" \
--session isolated \
--wake next-heartbeat \
--message "Create daily Obsidian note with Oura data. Run: source /path/to/venv/bin/activate && python /path/to/daily-note.py"
```
**Note:** Replace `/path/to/your/` with your actual paths and `<YOUR_TELEGRAM_CHAT_ID>` with your Telegram channel/group ID.
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