claude-blog and affiliate-skills
These two tools are competitors, as both aim to provide AI-powered Claude Skills for creating and optimizing blog content, with A focused on general blog creation and SEO, and B specifically targeting affiliate marketing content across the full funnel.
About claude-blog
AgriciDaniel/claude-blog
Claude Code skill ecosystem for blog content creation, optimization, and management. Dual-optimized for Google rankings and AI citations.
Implements a modular skill architecture with 22 sub-skills that orchestrate content generation across 12 templates, quality scoring across five dimensions (content, SEO, E-E-A-T, technical, AI citation readiness), and integrates Google APIs (Search Console, PageSpeed, CrUX, GA4, NLP), NotebookLM research, Gemini TTS/image generation, and CMS platforms (WordPress, Ghost, Shopify, Strapi, Sanity). Detects keyword cannibalization, fact-checks statistics against source URLs, and applies persona-driven writing with readability enforcement, while dual-optimizing posts for both Google Core Updates and AI citation platforms through answer-first formatting and passage-level citability.
About affiliate-skills
Affitor/affiliate-skills
AI-powered Claude Skills for affiliate marketers. Full funnel: research → content → blog → landing → deploy.
Comprises 45 interconnected skills organized across an 8-stage affiliate marketing flywheel (research → content → blog → landing → distribution → analytics → automation → meta), with automatic skill chaining and closed-loop feedback from analytics back to research. Integrates with the Affitor program directory API for live commission and cookie data, and works via text I/O across Claude Code, ChatGPT, Gemini, Cursor, Windsurf, and OpenClaw—installable as native skills or bootstrapped via markdown prompt. Each skill declares suggested next steps and data dependencies, enabling AI agents to autonomously orchestrate multi-stage campaigns from program selection through A/B testing and compliance audits.
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