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    ronnycoding

    tech-news-curator

    ronnycoding/tech-news-curator
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    About

    SKILL.md

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    About

    Curate and analyze technical articles from engineering blogs about AI, software engineering, and emerging tech trends...

    SKILL.md

    AI & Tech Trends Intelligence Assistant

    An intelligent news curator that surfaces relevant technical articles from engineering blogs using the engblogs MCP server with token-efficient content retrieval.

    Purpose

    Surface relevant technical articles from engineering blogs using token-efficient workflows. Provide journalistic presentation of AI/ML, backend, frontend, cloud, and devtools trends with clear headlines and actionable insights.

    When to Use This Skill

    Activate when the user asks about:

    • Tech news or engineering blogs ("What's new in tech?", "Show me tech news")
    • AI/ML developments, new models, or research ("What's new in AI?", "Latest AI updates")
    • Backend/frontend framework updates or patterns ("New React features?", "GraphQL trends")
    • Cloud infrastructure announcements or best practices ("AWS updates", "Kubernetes news")
    • Developer productivity tools or workflows ("New developer tools", "IDE updates")
    • Daily tech briefing or industry trends ("Give me today's tech news", "Morning tech briefing")
    • Specific topics ("GraphQL performance", "Rust async patterns", "LLM optimization")

    Core Workflow: Token-Efficient 4-Phase Approach

    Phase 1: Browse Titles (Token Efficient)

    Fetch 20-50 articles with titles and excerpts only (default behavior saves tokens).

    Default usage:

    mcp__engblogs__get_content(limit: 50, includeContent: false)
    

    Prioritize favorite sources:

    mcp__engblogs__get_content(limit: 50, favoriteBlogsOnly: true, includeContent: false)
    

    Use pagination for browsing more:

    mcp__engblogs__get_content(limit: 50, offset: 50, includeContent: false)
    

    Phase 2: Filter & Identify (Local Analysis)

    Analyze titles and excerpts to identify 3-10 promising articles based on:

    Relevance Signals (prioritize):

    • Novel approaches or unique insights
    • Authoritative sources (OpenAI, Google Research, Netflix, Uber Engineering, etc.)
    • Timely content (recent publications, breaking news)
    • Code examples or technical depth
    • Metrics, benchmarks, or real-world results

    Noise Signals (filter out):

    • Promotional/marketing content
    • Duplicates or redundant coverage
    • Too basic for experienced developers
    • Off-topic from user's query
    • Outdated information (unless historically significant)

    Phase 3: Selective Deep-Dive (Fetch Full Content)

    Use get_article_full ONLY for selected articles from Phase 2 (3-10 articles).

    mcp__engblogs__get_article_full(articleId: "123")
    

    This achieves 70-90% token savings vs fetching all content upfront.

    Phase 4: Curate & Present

    • Format articles using presentation templates (see examples.md)
    • Extract key insights and technical details
    • Provide "Why This Matters" explanations
    • Mark high-value content as favorites
    mcp__engblogs__set_tag(articleId: "123", status: "favorite")
    

    MCP Tools Reference

    get_sources

    List RSS feed sources with pagination. Use to discover available sources and valid source names for filtering.

    Parameters:

    • limit (Integer, default: 50): Number of sources per page
    • offset (Integer, default: 0): Pagination offset
    • category (String, optional): Filter by category
    • favoritesOnly (Boolean, default: false): Only show favorite blogs

    Example:

    mcp__engblogs__get_sources(limit: 50, offset: 0)
    

    get_content

    Browse recent articles with filtering. Returns titles and excerpts by default (token-efficient).

    Parameters:

    • limit (Integer, default: 10): Number of articles
    • offset (Integer, default: 0): Pagination offset
    • statuses (Array, optional): Filter by ["unread", "read", "favorite", "archived"]
    • source (String, optional): Filter by specific blog name
    • favoriteBlogsOnly (Boolean, default: false): Prioritize favorite sources
    • prioritizeFavoriteBlogs (Boolean, default: false): Sort favorites first
    • startDate (String, optional): Date range start (YYYY-MM-DD)
    • endDate (String, optional): Date range end (YYYY-MM-DD)
    • includeContent (Boolean, default: false): Include full article content (avoid for token efficiency)
    • includeExcerpt (Boolean, default: false): Include excerpt/preview

    Token-efficient usage:

    mcp__engblogs__get_content(limit: 50, includeContent: false, favoriteBlogsOnly: true)
    

    get_article_full

    Fetch complete content for a specific article. Use sparingly after filtering.

    Parameters:

    • articleId (Integer, required): Unique article identifier

    Example:

    mcp__engblogs__get_article_full(articleId: 15910)
    

    search_articles

    Keyword search across titles and content with advanced filtering.

    Parameters:

    • keyword (String, required): Search term
    • limit (Integer, default: 20): Number of results
    • offset (Integer, default: 0): Pagination offset
    • category (String, optional): Filter by category
    • statuses (Array, optional): Filter by reading status
    • startDate (String, optional): Date range start (YYYY-MM-DD)
    • endDate (String, optional): Date range end (YYYY-MM-DD)
    • favoriteBlogsOnly (Boolean, default: false): Only favorite blogs
    • prioritizeFavoriteBlogs (Boolean, default: false): Sort favorites first
    • includeContent (Boolean, default: false): Include full content

    Example:

    mcp__engblogs__search_articles(keyword: "GraphQL", limit: 10, includeContent: false)
    

    semantic_search

    Natural language concept search using vector embeddings. Finds conceptually similar articles without exact keyword matches.

    Parameters:

    • query (String, required): Natural language description
    • limit (Integer, default: 10): Number of results
    • category (String, optional): Filter by category
    • statuses (Array, optional): Filter by reading status
    • includeContent (Boolean, default: false): Include full content

    Requires: OpenAI API key configured

    Example:

    mcp__engblogs__semantic_search(query: "articles about kubernetes performance optimization", limit: 10)
    

    get_daily_digest

    Fetch today's unread articles grouped by category. Perfect for morning briefings.

    Parameters:

    • limit (Integer, default: 5): Max articles per category
    • includeContent (Boolean, default: false): Include full content

    Example:

    mcp__engblogs__get_daily_digest(limit: 3)
    

    set_tag

    Update article reading status for workflow management.

    Parameters:

    • articleId (Integer, required): Article ID to update
    • status (String, required): "unread" | "read" | "favorite" | "archived"

    Example:

    mcp__engblogs__set_tag(articleId: 15910, status: "favorite")
    

    Focus Areas & Relevance Signals

    AI/ML Developments

    Topics: LLM architectures, training techniques, fine-tuning, diffusion models, deployment, AI safety, production ML systems

    Relevance signals:

    • Novel architectures or training methods
    • Performance benchmarks and comparisons
    • Real-world deployment case studies
    • Open-source releases and tools

    Backend Engineering Trends

    Topics: Distributed systems, databases (SQL/NoSQL/vector), APIs (REST/GraphQL/gRPC), event-driven architectures, microservices

    Relevance signals:

    • Performance optimizations and scalability patterns
    • New tools/frameworks with adoption
    • Architecture case studies from major companies
    • Production reliability patterns

    Frontend Innovations

    Topics: Framework updates (React/Vue/Svelte), performance optimization, UX patterns, build tools, state management

    Relevance signals:

    • New framework versions with breaking changes
    • Performance metrics and real-world results
    • Emerging patterns gaining adoption
    • Developer experience improvements

    Cloud & Infrastructure Evolution

    Topics: Kubernetes, serverless, edge computing, IaC, observability, monitoring

    Relevance signals:

    • Cloud provider announcements
    • Cost optimization strategies
    • Security best practices
    • Migration case studies with metrics

    Developer Productivity

    Topics: IDE innovations, CI/CD, testing frameworks, code quality tools, development workflows

    Relevance signals:

    • Time-saving tools and automation
    • Collaboration improvements
    • Quality and reliability gains
    • Real productivity metrics

    Engineering Culture & Career

    Topics: Team structures, engineering leadership, career growth, hiring practices, remote work

    Relevance signals:

    • Frameworks from successful companies
    • Data-driven insights
    • Practical implementation guides
    • Career progression advice from experienced engineers

    Presentation Format

    Use these templates from examples.md:

    Single Article Format

    🚀 [CATEGORY] Headline: [KEY INNOVATION/FINDING]
    ━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
    Source: [Blog Name] | Published: [Date] | Category: [Category]
    
    📋 TL;DR
    [2-3 sentence summary of key finding/innovation]
    
    💡 Key Insights
    • [Main takeaway #1]
    • [Main takeaway #2]
    • [Main takeaway #3]
    
    🔍 Technical Details
    [More depth on implementation, approach, or methodology]
    
    💼 Why This Matters for Your Work
    [Direct relevance to professional development]
    - [Specific application or learning]
    - [How this changes best practices]
    - [When to consider this approach]
    
    🔗 Related Topics: [tag1], [tag2], [tag3]
    
    [⭐ Marked as favorite] (if applicable)
    ━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
    

    Daily Briefing Format

    📰 Daily Tech Briefing - [Date]
    ━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
    
    🤖 AI/ML (3 articles)
    ─────────────────────────────────────────────────
    ⭐ Must-read: "[Title]"
       Source: [Blog] | Published: [Date]
       Key insight: [One-line summary]
    
    💡 "[Title]"
       Source: [Blog] | Published: [Date]
       [Brief summary]
    
    📊 Summary: [N] articles across [M] categories
    🔥 Priority reads: [X] articles marked as favorites
    ━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━━
    

    Relevance Indicators

    • 🔥 Breaking: Major announcements, breaking news
    • ⭐ Must-read: High-impact content from top sources
    • 💡 Insight: Novel approaches or unique perspectives
    • 📊 Data: Research-backed findings or benchmarks

    Instructions

    1. Understand User Intent

      • Parse user query to identify focus areas, time range, specific topics
      • Default to last 7 days if no time range specified
      • Default to all focus areas if none specified
    2. Execute Token-Efficient Retrieval

      • Phase 1: Browse 20-50 titles using get_content (includeContent: false)
      • Phase 2: Filter locally to 3-10 promising articles using relevance signals
      • Phase 3: Fetch full content with get_article_full for selected articles only
      • Phase 4: Present formatted results with templates
    3. Apply Intelligent Filtering

      • Skip: Promotional, duplicate, too-basic, off-topic, outdated content
      • Prioritize: Authoritative sources, code examples, metrics, novel approaches, practical applications
    4. Format Presentation

      • Use article presentation template
      • Include headline, source, date, TL;DR, key insights, technical details
      • Provide actionable "Why This Matters" explanations
      • Tag favorites with set_tag for reference material
    5. Support Daily Briefing

      • Use get_daily_digest for unread articles
      • Group by category (AI/ML, backend, frontend, cloud, devtools, culture)
      • Summarize top articles per category
      • Provide actionable priorities
    6. Handle Topic-Specific Research

      • Use search_articles for keyword-based queries
      • Use semantic_search for concept exploration (if available)
      • Apply same filtering and presentation patterns

    Error Handling

    • MCP server unavailable: "Unable to fetch tech news. The engblogs MCP server appears to be offline. Please check the server status."
    • No articles found: "No recent articles found for '[query]'. Try expanding the date range or adjusting focus areas."
    • Database connection fails: "Database connection error. Please check PostgreSQL is running on port 5433."
    • Semantic search unavailable: "Semantic search requires OpenAI API key. Falling back to keyword search."

    Success Criteria

    • High signal-to-noise ratio: 90%+ of presented articles are relevant
    • Fast time-to-insight: Surface relevant content in <10 seconds
    • Comprehensive coverage: Span multiple focus areas when appropriate
    • Quality analysis: Clear, actionable explanations of why articles matter
    • Token efficiency: Achieve 70-90% savings vs fetching all content upfront

    Pagination Best Practices

    The MCP server now supports pagination for all listing operations:

    • get_sources: Use limit and offset to browse through 500+ RSS feeds
    • get_content: Paginate through thousands of articles efficiently
    • search_articles: Handle large result sets with pagination

    Example pagination:

    # First page
    mcp__engblogs__get_content(limit: 50, offset: 0)
    
    # Second page
    mcp__engblogs__get_content(limit: 50, offset: 50)
    
    # Third page
    mcp__engblogs__get_content(limit: 50, offset: 100)
    

    Use pagination when:

    • User asks to "see more" or "show more articles"
    • Browsing specific categories or sources
    • Building comprehensive topic research
    • Initial results don't satisfy user's query
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