# AI SEO Ops ## Preamble (runs on skill start) ```bash # Version check (silent if up to date) python3 telemetry/version_check.py 2>/dev/null || true # Telemetry opt-in (first run only, then remembers your choice) python3 telemetry/telemetry_init.py 2>/dev/null || true ``` > **Privacy:** This skill logs usage locally to `~/.ai-marketing-skills/analytics/`. Remote telemetry is opt-in only. No code, file paths, or repo content is ever collected. See `telemetry/README.md`. --- AI-powered SEO operations: keyword intelligence, competitor gap analysis, GSC optimization, and trend detection. ## When to Use - User asks for keyword research, content brief, or SEO analysis - User wants to find quick-win keywords from Google Search Console - User needs a competitor gap analysis - User wants to identify trending topics for content creation - User asks about decaying content or traffic drops - User wants a prioritized list of keywords to target ## Tools ### Content Attack Brief (`content_attack_brief.py`) Full keyword intelligence pipeline. Requires `AHREFS_TOKEN` and GSC auth. ```bash # Run the full brief python content_attack_brief.py ``` **What it produces:** - Topic fingerprint from your content library - BOFU money keywords ranked by Impact × Confidence - Trending keywords with sparkline visualizations - Competitor gap analysis (keywords they rank for, you don't) - Decaying page alerts (traffic drops >30%) - Execution pipeline (auto-create → semi-auto → team) **Output:** Prints formatted report to stdout + saves JSON to `OUTPUT_DIR/content-attack-brief-latest.json` ### GSC Client (`gsc_client.py`) Google Search Console API client. Works as CLI or importable library. ```bash # CLI usage python gsc_client.py --queries 50 --days 28 python gsc_client.py --striking # Striking distance keywords (pos 4-20) python gsc_client.py --pages 100 --days 7 python gsc_client.py --trend # Daily click/impression trend python gsc_client.py --devices # Mobile vs desktop split python gsc_client.py --sites # List verified properties python gsc_client.py --json --queries 25 # JSON output ``` ```python # Library usage from gsc_client import GSCClient gsc = GSCClient() rows = gsc.striking_distance(days=28, min_position=4, max_position=20) for row in rows: print(f"{row['keys'][0]}: pos {row['position']:.1f}, {row['impressions']} impressions") ``` ### GSC Auth (`gsc_auth.py`) One-time OAuth setup for Google Search Console access. ```bash python gsc_auth.py # Opens browser → Google Sign-In → saves token locally ``` ### Trend Scout (`trend_scout.py`) Multi-source trend detection. No API keys required for basic functionality. ```bash python trend_scout.py ``` **Sources:** Google Trends RSS, Hacker News, Reddit, X/Twitter (needs `BRAVE_API_KEY`), YouTube outlier detection **Output:** Prints summary + saves JSON to `OUTPUT_DIR/flash-trends-latest.json` and markdown report. ## Configuration All scripts read from environment variables. Copy `.env.example` to `.env` and fill in your values. Required: - `GSC_SITE_URL` — your Google Search Console property URL - `GOOGLE_CLIENT_ID` / `GOOGLE_CLIENT_SECRET` — for GSC OAuth - `YOUR_DOMAIN` — your root domain Optional: - `AHREFS_TOKEN` — enables Ahrefs keyword data and competitor analysis - `COMPETITORS` — comma-separated competitor domains - `BRAVE_API_KEY` — enables X/Twitter trend scanning - `CONTENT_VERTICALS` — comma-separated topics for trend relevance scoring - `TREND_SUBREDDITS` — comma-separated subreddits to monitor ## Scoring Model Keywords are scored on two axes: **Impact (0-10):** Volume + CPC + Funnel Stage + Trend direction **Confidence (0-10):** Keyword Difficulty + Current ranking position + Topic authority **Priority = Impact × Confidence** (max 100) ## Funnel Classification - **BOFU:** Commercial/transactional intent, or keywords containing "agency", "services", "pricing", "best", "vs", "hire" - **MOFU:** Informational with buying signals — "how to", "guide", "roi", "case study" - **TOFU:** Pure informational ## Recommended Workflow 1. **Weekly:** Run `content_attack_brief.py` for the full intelligence report 2. **Daily:** Run `gsc_client.py --striking` to monitor striking distance keywords 3. **2x/week:** Run `trend_scout.py` to catch trending topics early 4. **Monthly:** Review competitor gaps and adjust `COMPETITORS` list ## Dependencies ```bash pip install -r requirements.txt ```