claude-blog and Claude-Skills
These two tools are **complementary**, with AgriciDaniel/claude-blog providing a domain-specific Claude Code skill ecosystem for blog content creation, and borghei/Claude-Skills offering a much broader collection of production-ready AI skills across numerous business functions, which could be leveraged within or alongside the blogging ecosystem.
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 Claude-Skills
borghei/Claude-Skills
199+ production-ready AI skills for Claude Code, Cursor, Copilot, Codex & more — Engineering, Marketing, Product, PM, C-Level, Compliance (18 frameworks), Finance, HR, Sales, Data Analytics, Business Growth
Skills are organized as modular markdown files with YAML frontmatter and paired Python CLI tools (using only stdlib, no ML dependencies), deployable directly to Claude Code, Cursor, or other AI assistants via git clone, installer script, or manual copy. The project includes 19 specialized role-based agents that orchestrate multi-skill workflows, 6 autonomous subagents for code review/QA/security/docs, and 12 GitHub Actions templates for CI/CD validation and release automation across 10+ AI coding platforms.
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