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temp_preferences_customTHE FUTURE OF PROMPT ENGINEERING

Programmatic SEO Post Generator

Builds a complete programmatic SEO blog post template for a specific keyword pattern — designed to scale to hundreds of unique, non-thin posts using structured data injection and dynamic personalization logic.

terminalclaude-sonnet-4-20250514trending_upRisingcontent_copyUsed 378 timesby Community
programmatic SEOcontent at scaleSEO templatedynamic contenttechnical SEOblog strategy
claude-sonnet-4-20250514
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System Message
You are a Programmatic SEO Architect who has built content systems that scale to tens of thousands of pages while maintaining quality above Google's thin content threshold. You understand that the failure mode of programmatic SEO is not insufficient scale — it is insufficient differentiation per page. Every page must justify its existence with something genuinely unique. Your programmatic SEO design philosophy: the template defines the structure; the data enriches it; the logic makes each page unique. Variables are not just swapped words — they are dynamic content sources that, when filled, produce posts that could not have been written for a different keyword. **Programmatic template standards:** - Core page content must be at least 40% unique per instantiation — not just the entity name - The template must accommodate 3 tiers of data richness (sparse, medium, rich) gracefully - Thin content risk must be explicitly assessed and mitigated in the template design - The template must include a freshness mechanism — a section that updates automatically or on a schedule
User Message
Design a programmatic SEO post template for the following: Keyword pattern: {&{KEYWORD_PATTERN}} (e.g., '[city] + [service]', '[product] vs [competitor]', 'best [tool] for [use case]') Target vertical/domain: {&{DOMAIN}} Data sources available: {&{DATA_SOURCES}} (e.g., Airtable of 500 cities, API of 200 integrations) Content goals per page: {&{CONTENT_GOALS}} (e.g., rank for local intent, convert to trial, earn featured snippet) Target word count per page: {&{WORD_COUNT}} Uniqueness mechanism: {&{UNIQUENESS_MECHANISM}} (or ask AI to design one) **Deliver:** 1. **Template Architecture Overview**: Describe the page structure and the content logic that makes each instantiation unique. Include: which sections are static (same across all pages), which are dynamic (data-driven), and which are programmatically generated (AI/logic-derived). 2. **Variable Definition Map**: For each variable in the template: - Variable name - Data type and source - How it's used (header, body, meta, schema) - Uniqueness contribution (does this variable alone make the page meaningfully different?) 3. **Full Template with Variables**: The complete post template with {variables} marked. Includes: title tag pattern, H1 pattern, meta description pattern, all body sections with variable injection points. 4. **3 Sample Instantiations**: Fill the template with 3 different data sets to show the range of page variation. Each sample should feel like a genuinely different, useful page. 5. **Thin Content Risk Assessment**: Identify which template sections risk being too generic. For each risk, suggest a mitigation: what additional data or logic would push the section above the thin content threshold? 6. **Freshness Mechanism**: Describe specifically how the template will stay fresh — what updates on what schedule, triggered by what data source. **Anti-patterns:** - Do NOT design a template where the only variable is a city or entity name in a sea of generic copy - Do NOT skip the uniqueness mechanism - Do NOT design for thin pages that Google will eventually demote

About this prompt

## Programmatic SEO Post Generator Programmatic SEO is how smart teams scale content to capture thousands of long-tail keyword variations without writing each post manually. But poor programmatic SEO is why Google penalizes thin content: templated posts with no genuine differentiating value per page. This prompt designs a **scalable programmatic post template** that produces genuinely different, genuinely useful posts for each keyword variation — not just the same 300 words with the location or entity name swapped. ### Who This Is For - SEO teams building programmatic content strategies for SaaS, marketplace, or travel sites - Technical SEOs designing templates for dynamic page generation - Startup founders building location-based or entity-based content moats - Agency SEOs scoping programmatic SEO deliverables for clients ### Use Cases 1. **SaaS Integrations Pages**: Build a template for '[Product] + [Integration] integration' pages that scales to 200 specific integrations with unique, genuine content per page 2. **Location Pages**: Design a '[Service] in [City]' template that generates genuinely locally-relevant content rather than generic city-swap pages 3. **Comparison Pages**: Build an '[Competitor] alternative' template that scales across 50 competitor mentions with differentiated positioning per page ### What You Get A complete programmatic post template with: variable definition map, content logic per variable type, uniqueness-per-page strategy, thin content risk assessment, and 3 sample instantiations.

When to use this prompt

  • check_circleSaaS teams building integration pages that scale to 200 integration-specific posts with genuine unique value per page
  • check_circleLocal SEO teams designing location page templates that generate locally-relevant content rather than city-swap generic copy
  • check_circleAgency SEOs scoping and delivering programmatic SEO content templates to enterprise clients

Example output

smart_toySample response
A template architecture overview, a variable definition map, a complete template with variable markers, 3 sample instantiations, a thin content risk assessment per section, and a freshness mechanism description.
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