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programmatic-seo

This skill provides a comprehensive framework for designing and operating programmatic SEO programs that generate sustainable organic traffic at scale without triggering algorithmic penalties. Use it when evaluating whether programmatic SEO fits your business model, architecting a new pSEO system from data sources through quality control, recovering from algorithm-hit content sets, or establishing quality discipline for rapidly scaled programs. It covers data sourcing, template design, schema implementation, crawl budget management, and the critical threshold question of whether programmatic approaches align with your content and business goals.

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git clone --depth 1 https://github.com/rampstackco/claude-skills /tmp/programmatic-seo && cp -r /tmp/programmatic-seo/dist/pi/.agents/skills/programmatic-seo ~/.claude/skills/programmatic-seo
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SKILL.md

# Programmatic SEO

A senior SEO strategist's playbook for designing and running programmatic SEO programs that produce durable traffic instead of penalty-bait.

Programmatic SEO has a complicated reputation. Sites like Zillow, Airbnb, TripAdvisor, Indeed, and Yelp have built billion-dollar traffic engines on pSEO. Other sites have built pSEO programs that got hit by Google's helpful-content updates and lost 80% of their traffic in a week. The difference is rarely the technique; it is the underlying data quality and the quality control discipline at scale.

This skill is the playbook for getting that distinction right. It assumes you have decided what keyword space to target (see `seo-keyword`) and how the broader content program is shaped (see `content-strategy`). It does not write individual editorial pieces (see `content-and-copy` for that) and does not architect editorial topic hubs (see `pillar-content-architecture` for that). What it does is teach the discipline of generating high-volume pages programmatically from structured data sources without producing thin content, duplicate content, or scale-without-substance pages that get penalized.

When to use this skill: deciding whether pSEO is a fit for the program at all (the most important question), designing a new pSEO system, auditing an existing pSEO set that is not ranking or has been hit by an algorithm update, or building quality-control discipline for a pSEO program that grew faster than its quality processes.

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## What this skill is for

This skill spans scaled-content programs from data source through quality control. It composes with five sister and adjacent skills, and the distinction between them is what keeps each one sharp.

- `content-strategy` is program-scope: editorial pillars, calendar, governance. Decides whether pSEO fits the program at all.
- `pillar-content-architecture` is hub-scope: one topic with 10 to 15 intentional editorial pieces. Editorial in nature.
- `content-brief-authoring` is per-piece scope: brief for one editorial artifact.
- `content-and-copy` is execution scope: writing individual editorial pieces.
- This skill is scaled scope: 100s to 100,000s of pages generated programmatically from structured data sources, each targeting a long-tail query.

The clean reading order: `content-strategy` decides whether pSEO is a fit, `seo-keyword` surfaces the long-tail keyword space, this skill designs the pSEO system, `editorial-qa` (forthcoming) provides the QA discipline for sampled quality control across the set. `content-and-copy` and `content-brief-authoring` are not in the loop for pSEO at scale; those skills are for editorial pieces, not data-driven generated pages.

The audience: SEO content strategists, content engineers, agencies running pSEO programs, in-house teams considering pSEO as a growth lever. The voice is senior SEO strategist to junior PM or marketer. Specific, opinionated, honest. The reputation problem is not pSEO; it is pSEO without underlying value.

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## When pSEO is the right answer

The keystone question. pSEO works when all of the following are true.

**1. Real underlying data.** A genuine structured data source with depth: 10+ fields per record, ideally 20+, with first-party data, expert-curated data, or licensed datasets. Not just scraped data or AI-generated facts dressed as structured records.

**2. Long-tail query volume justifies the effort.** The queries the program would target have meaningful aggregate volume even if individual queries are small. Real estate "homes for sale in {neighborhood}" works at scale. "Blue widget reviews 2026" generated for every adjective times widget combination does not, because the queries are not actually searched.

**3. User intent is queryable.** The user's question can be answered through structured data presented well. Not through narrative explanation, judgment, or analysis the data cannot supply.

**4. Update cadence aligns with query volatility.** Real estate listings update daily and the data refresh aligns. "Best [thing] for [year]" pages get stale annually and need a refresh discipline budgeted in.

**5. Quality control is operationally feasible.** The team has the capacity to sample-audit the set, fix failures, and maintain quality as the set grows. Not aspirationally; budgeted in headcount.

pSEO does NOT work when:

- The underlying data is shallow (3 to 5 fields, mostly AI-generated, no first-party signal)
- The query volume is illusory (long-tail keywords nobody actually searches)
- User intent requires narrative or judgment that data cannot supply
- Quality control is not budgeted (write a bunch of pages, ignore them)
- The program is scaling AI-generated thin pages without unique data

The honest framing. Most teams that ask "should we do pSEO?" should hear "probably not, unless the underlying data is unique or first-party expertise makes the pages actually useful." The reputation problem is not the technique; it is the technique applied without underlying value.

Detail in [`references/when-pseo-works-decision.md`](references/when-pseo-works-decision.md).

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## Data source identification

The data source is the pSEO program. Common sources with different defensibility profiles.

**First-party data.** Customer transactions, content database, user-generated content. Defensible because nobody else has it. Examples: Glassdoor's employee reviews, Yelp's user ratings, TripAdvisor's traveler reviews.

**Licensed datasets.** Industry databases, regulatory data, government datasets, licensed third-party feeds. Defensible by license terms and integration depth. Examples: Zillow's MLS partnerships, real estate brokerage feeds, sports statistics licenses.

**Aggregated public data.** Scraped, cleaned, enriched. Judgment call on legality (often gray area depending on robots.txt, terms of service, jurisdictional rules). Defensibility depends on the cleaning and enrichment work. Easy to copy if the cleaning is shallow.

**Exper
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