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npx skills add anysiteio/agent-skills --skill "anysite-person-analyzer"
Install specific skill from multi-skill repository
# Description
Deep multi-platform intelligence analysis combining LinkedIn (profile, posts, activity), Twitter/X (tweets, engagement), Reddit (discussions, community), web presence (articles, GitHub, blogs), and company intelligence. Use when analyzing people for networking, sales, partnerships, or recruitment. Accepts LinkedIn URL or name+context. Produces comprehensive cross-platform reports with conversation strategies and strategic value assessment for AnySite.
# SKILL.md
name: anysite-person-analyzer
description: Deep multi-platform intelligence analysis combining LinkedIn (profile, posts, activity), Twitter/X (tweets, engagement), Reddit (discussions, community), web presence (articles, GitHub, blogs), and company intelligence. Use when analyzing people for networking, sales, partnerships, or recruitment. Accepts LinkedIn URL or name+context. Produces comprehensive cross-platform reports with conversation strategies and strategic value assessment for AnySite.
Person Intelligence Analyzer
Comprehensive multi-platform intelligence analysis combining LinkedIn, Twitter/X, Reddit, GitHub, and web presence data to create actionable intelligence reports with cross-platform personality insights.
Analysis Workflow
Execute phases sequentially, adapting depth based on available data and user requirements.
Phase 1: Initial Data Collection
Starting with LinkedIn Profile URL:
1. Use get_linkedin_profile with full parameters (education, experience, skills)
2. Extract and save the full URN (format: urn:li:fsd_profile:ACoAAABCDEF) - this is critical for all subsequent API calls
3. Also extract: company URN, current role, location, connections count
4. Record profile completeness for confidence scoring
IMPORTANT - URN Format:
Always use the complete URN format urn:li:fsd_profile:ACoAAABCDEF from the profile response for all subsequent calls to get_linkedin_user_posts, get_linkedin_user_comments, and get_linkedin_user_reactions. Do not use shortened versions or profile URLs.
Starting with Name + Context:
1. Use search_linkedin_users with all available filters:
- Name, title, company keywords, location, school
2. If multiple matches: present top 3-5 candidates with distinguishing details
3. After user confirmation, proceed with confirmed profile
Critical Data Points to Capture:
- Current company and role (with start date)
- Previous roles (last 2-3 positions)
- Education background
- Skills and endorsements
- Connection count (indicator of network size)
- Profile headline and summary
Phase 2: Activity & Engagement Analysis
Content Analysis (Posts):
1. Use get_linkedin_user_posts with the full URN (format: urn:li:fsd_profile:ACoAAABCDEF)
- Count: 20-50 depending on activity level
- Posted after filter: last 90 days for active users, 180 days if low activity
2. Analyze for:
- Topics and themes (use clustering: technical, leadership, industry trends, personal)
- Engagement metrics (likes, comments per post - calculate averages)
- Posting frequency (calculate posts per week/month)
- Content style (thought leadership, sharing, personal stories, company updates)
- Language and tone
Engagement Analysis (Comments & Reactions):
1. Use get_linkedin_user_comments with the full URN (format: urn:li:fsd_profile:ACoAAABCDEF)
- Count: 30
2. Use get_linkedin_user_reactions with the full URN (format: urn:li:fsd_profile:ACoAAABCDEF)
- Count: 50
3. Analyze for:
- Who they engage with (seniority levels, industries)
- Topics that spark their engagement
- Engagement style (supportive, challenging, informational)
- Response patterns (quick reactions vs thoughtful comments)
CRITICAL: All three tools (get_linkedin_user_posts, get_linkedin_user_comments, get_linkedin_user_reactions) require the complete URN in the format urn:li:fsd_profile:ACoAAABCDEF obtained from Phase 1. Using LinkedIn profile URLs or partial URNs will result in errors.
Output: Engagement Profile
- Primary content themes (ranked by frequency)
- Engagement level: High/Medium/Low (posts per month, reactions per week)
- Influence indicators: follower count, average post engagement rate
- Communication style: formal/casual, technical/general, etc.
Phase 3: Company Intelligence
Current Company Deep Dive:
1. Use get_linkedin_company with company URN from profile
2. Extract:
- Company size, industry, specialties
- Growth indicators (employee count trends if available)
- Company description and mission
- Recent updates/news
- Use
get_linkedin_company_posts(count: 20) - Analyze company communication themes
- Identify strategic priorities
-
Note any mentions of funding, hiring, expansion
-
Use
duckduckgo_searchfor recent news: - "[Company name] funding news"
- "[Company name] expansion launch product"
- Prioritize results from last 6 months
Company Social Media Presence:
- Company Twitter/X Analysis:
- Use
search_twitter_usersto find official company account: "[Company Name] official" - If found, use
get_twitter_userfor profile stats - Use
get_twitter_user_posts(count: 20-30) to analyze:- Product announcements and launches
- Company culture and values
- Engagement with customers and community
- Hiring announcements (growth signals)
- Technical content (if tech company)
-
Use
search_twitter_postsfor company mentions: "[Company Name]"- Customer sentiment (complaints vs praise)
- Industry discussion about the company
- Competitor comparisons
- Notable tweets from employees
-
Company Reddit Presence:
- Use
search_reddit_postsfor company mentions: "[Company Name]" - Look for:
- r/startups discussions about the company
- Industry-specific subreddit mentions (r/SaaS, r/artificial, etc.)
- Customer experiences and reviews
- Technical discussions about their product/platform
- Hiring experiences (Glassdoor-like insights)
- Founder/team AMAs or discussions
- Sentiment analysis: positive/negative/neutral community perception
- Pain points mentioned by users/customers
Company Context Analysis:
- Business model and revenue streams
- Technology stack (if tech company)
- Market position and competitors
- Recent achievements or challenges
- Cultural indicators from company posts
- Social sentiment (Twitter mentions, Reddit discussions)
- Community engagement (how company responds on social platforms)
- Growth signals (hiring tweets, expansion announcements on Twitter)
- Customer pain points (Reddit complaints, Twitter issues)
Phase 4: Multi-Platform Intelligence Enrichment
A. Twitter/X Analysis (if handle found or identifiable):
- Find Twitter Handle:
- Check LinkedIn profile bio/description for @username
- Use
search_twitter_userswith name if not found: "[First Name] [Last Name] [Company]" -
Verify match by checking bio, profile description
-
Profile Analysis:
- Use
get_twitter_userwith username - Extract: follower count, following count, tweet count, bio, location
-
Note: verification status, profile creation date
-
Content Analysis:
- Use
get_twitter_user_posts(count: 50-100 recent tweets) - Analyze for:
- Technical expertise signals (code snippets, tech discussions)
- Industry opinions and hot takes
- Personal interests and hobbies
- Engagement with other thought leaders
- Retweets vs original content ratio
-
Calculate: tweets per day, avg engagement rate
-
Topic Discovery:
- Use
search_twitter_postswith person's key interests: "[topic] from:@username" - Identify recurring themes and expertise areas
- Note controversial or strongly-held opinions
B. Reddit Activity (if username discoverable):
- Find Reddit Presence:
- Search for username from other platforms
- Use
search_reddit_postswith name/company mentions -
Look for: "AMA" posts, technical discussions, community contributions
-
Content Analysis:
- Use
search_reddit_postswith username if known: "author:[username]" -
Analyze for:
- Subreddit preferences (which communities they're active in)
- Technical depth of contributions
- Helping behavior vs self-promotion ratio
- Community reputation indicators
-
Topic Expertise:
- Use
search_reddit_postsfor specific topics: "[topic] [username or company]" - Identify where they're seen as expert/helpful
- Note any popular posts or discussions they started
C. Instagram Presence (optional, if B2C relevant or personal brand focus):
- Profile Discovery:
- Check if mentioned in LinkedIn or Twitter
- Use
search_instagram_postswith hashtags: "#[name] #[company]" -
Use
get_instagram_userif handle known -
Content Style:
- Use
get_instagram_user_posts(count: 20-30) - Analyze for: personal brand vs professional content
- Note: visual style, posting frequency, engagement rate
D. Web Intelligence & Media Presence:
- Professional Presence:
duckduckgo_search: "[Name] [Company] speaker conference"duckduckgo_search: "[Name] interview podcast"-
duckduckgo_search: "[Name] article blog post" -
Expertise & Thought Leadership:
duckduckgo_search: "[Name] expertise [primary topic from posts]"- Check for: publications, talks, media mentions
-
duckduckgo_search: "[Name] [key topic] site:medium.com OR site:dev.to OR site:substack.com" -
Company-Specific Context:
duckduckgo_search: "[Name] [Company] announcement"-
Look for: press releases, product launches, executive quotes
-
GitHub/Tech Presence (if technical role):
duckduckgo_search: "[Name] site:github.com"- Look for: open source contributions, personal projects
E. Parse Key Pages:
- Use parse_webpage for high-value sources:
- Personal blog/website (if mentioned in any profile)
- Recent interviews or podcast appearances
- Conference speaker profiles
- Company "About Team" pages
- Notable Medium/Substack articles
- Popular Reddit AMAs or discussions
- Extract: bio, expertise areas, quotes, interests, unique perspectives
Platform Priority Strategy:
- Always analyze: LinkedIn (mandatory) + Web Search
- High priority: Twitter/X (if found) - usually most revealing for tech audience
- Medium priority: Reddit (if active) - shows technical depth and community engagement
- Low priority: Instagram - only if B2C focus or strong personal brand element
- Context-dependent: GitHub - critical for engineering roles, less for business roles
Cross-Platform Analysis:
- Compare tone across platforms (professional LinkedIn vs casual Twitter)
- Identify platform-specific content themes
- Note engagement levels per platform
- Synthesize consistent interests vs platform-specific behavior
Phase 5: Cross-Platform Strategic Analysis & Report Generation
Connection Strategy:
1. Conversation Topics (ranked by relevance, synthesized across all platforms):
- Top 3-5 topics from their LinkedIn posts/comments
- Hot takes or strong opinions from Twitter/X
- Technical discussions from Reddit
- Industry trends they've engaged with across platforms
- Shared interests or connections (if any)
- Recent company achievements to acknowledge
- Engagement Approach:
- Best channels: LinkedIn comment, Twitter reply, Reddit comment, DM, email
- Channel preference: Note where they're most active/responsive
- Timing: based on posting patterns per platform (e.g., "most active on Twitter evenings, LinkedIn Tuesday mornings")
- Ice-breakers: reference specific post/comment/tweet that relates to AnySite
-
Platform-specific tone: professional LinkedIn vs casual Twitter vs technical Reddit
-
Cross-Platform Personality Synthesis:
- Professional persona (LinkedIn) vs Personal persona (Twitter/Reddit)
- Technical depth indicators (Reddit discussions, GitHub activity)
- Communication style differences per platform
- Authentic interests (topics mentioned across multiple platforms)
Value Assessment for AnySite:
Analyze fit across multiple dimensions:
A. Direct Business Value:
- Potential customer: Does their company match AnySite ICP?
- B2B SaaS, AI companies, data-intensive businesses
- Size indicators: 10-500 employees, growth stage
- Pain points: mentions of data extraction, API integrations, agent development
- Decision maker level: C-suite, VP, Director, Manager
- Budget authority indicators
B. Partnership Potential:
- Technology synergies (complementary tools/platforms)
- Channel partnership opportunities
- Integration possibilities
- Co-marketing potential
C. Network & Influence:
- Network size and quality (10k+ connections = super-connector)
- Industry influence (thought leader, frequent speaker)
- Investor connections (VC, angels in their network)
- Potential for introductions
D. Talent & Advisory:
- Expertise match for advisor/mentor role
- Potential hire for future scaling
- Domain knowledge that fills gaps
Prioritization Matrix:
- Tier 1 (Hot Lead): Decision maker + ICP match + high engagement
- Tier 2 (Warm Lead): Mid-level + ICP match OR influencer + relevant network
- Tier 3 (Long-term Nurture): Potential future value, build relationship
- Tier 4 (Low Priority): No clear fit, maintain basic connection
Output Format
Generate comprehensive markdown report with sections:
# Person Intelligence Report: [Name]
**Generated:** [Date]
**Analysis Depth:** [Quick/Standard/Deep]
**Confidence Score:** [0-100%] based on data availability
## Executive Summary
[2-3 sentences: who they are, what they do, why they matter to AnySite]
## Professional Profile
- **Current Role:** [Title] at [Company] (since [date])
- **Location:** [City, Country]
- **Experience:** [X years in industry/role]
- **Education:** [Degree, Institution]
- **Network Size:** [LinkedIn connections count]
- **LinkedIn Profile:** [URL]
- **Twitter/X:** [@handle or "Not found"] ([follower count if found])
- **Reddit:** [u/username or "Not found/searched"]
- **GitHub:** [username or "Not found"] (if technical role)
- **Personal Website:** [URL if found]
## Key Background
[2-3 paragraphs covering:]
- Career trajectory and notable positions
- Expertise and specializations
- Notable achievements or credentials
## Multi-Platform Activity Analysis
### LinkedIn Activity (Last 90 Days)
#### Content Themes
1. **[Theme 1]** (40% of posts)
- Key topics: [list]
- Example post: "[quote or summary]"
2. **[Theme 2]** (30% of posts)
- Key topics: [list]
3. **[Theme 3]** (20% of posts)
#### Engagement Patterns
- **Posting Frequency:** [X posts/month]
- **Engagement Rate:** [Average likes, comments per post]
- **Response Style:** [Description]
- **Active Topics:** [Topics they comment on most]
### Twitter/X Activity (if found)
#### Profile Stats
- **Followers:** [count]
- **Following:** [count]
- **Tweets:** [total count]
- **Account Age:** [created date]
#### Content Analysis (Recent 50-100 tweets)
- **Posting Frequency:** [tweets per day/week]
- **Content Mix:** [% original tweets vs retweets vs replies]
- **Primary Topics:** [list top 3-5 themes]
- **Engagement Level:** [avg likes, retweets per tweet]
- **Notable Takes:** [any strong opinions or viral tweets]
- **Technical Depth:** [code snippets, technical discussions level]
#### Community Engagement
- **Engages with:** [types of accounts: VCs, founders, engineers, etc.]
- **Tone:** [professional/casual/humorous/technical]
### Reddit Activity (if found)
#### Subreddit Preferences
- **Most Active In:** [list top 3-5 subreddits]
- **Karma:** [post/comment karma if visible]
#### Contribution Style
- **Activity Type:** [% asking questions vs answering vs discussions]
- **Technical Depth:** [level of detail in technical responses]
- **Community Reputation:** [helpful, expert, casual participant]
- **Notable Contributions:** [any popular posts or helpful answers]
### Cross-Platform Synthesis
#### Personality Comparison
- **LinkedIn Persona:** [professional characteristics]
- **Twitter Persona:** [casual/personal characteristics]
- **Reddit Persona:** [technical/community characteristics]
- **Consistency:** [topics/interests mentioned across platforms]
#### Platform Preferences
- **Most Active:** [which platform has highest activity]
- **Best Engagement:** [where they get most responses]
- **Content Types:** [professional insights on LinkedIn, hot takes on Twitter, deep tech on Reddit]
#### Communication Style
[Synthesized description: formal/casual, technical depth, storytelling approach, cross-platform consistency or variation]
## Company Intelligence: [Company Name]
### Company Overview
- **Industry:** [Sector]
- **Size:** [Employee count]
- **Stage:** [Startup/Scale-up/Enterprise]
- **Mission:** [Brief description]
- **Twitter:** [@handle or "Not found"] ([follower count if found])
- **Reddit Presence:** [Active/Mentioned/Not found]
### Strategic Context
- **Recent News:** [Key developments from last 6 months]
- **Growth Indicators:** [Hiring, funding, expansion signals]
- **Market Position:** [Brief competitive context]
- **Technology Focus:** [If relevant]
### Company LinkedIn Content Analysis
[Themes from company LinkedIn posts, strategic priorities]
### Company Social Media Presence
#### Twitter/X Activity (if found)
- **Account Stats:** [Followers, following, tweets]
- **Content Mix:** [Product announcements, culture, technical content, engagement]
- **Recent Highlights:** [Key tweets from last 30 days]
- **Posting Frequency:** [tweets per week]
- **Engagement Level:** [avg likes, retweets]
- **Notable Announcements:** [Hiring, funding, launches]
#### Reddit Community Sentiment (if mentioned)
- **Primary Subreddits:** [Where company is discussed]
- **Discussion Volume:** [Number of mentions found]
- **Sentiment Analysis:** [Positive/Mixed/Negative - with examples]
- **Common Topics:**
- **Praise:** [What users like]
- **Complaints:** [Pain points mentioned]
- **Questions:** [What people ask about]
- **Notable Threads:** [Links to significant discussions]
#### Social Intelligence Synthesis
- **Brand Perception:** [How company is viewed on social vs LinkedIn]
- **Customer Insights:** [Real feedback from Twitter/Reddit vs official messaging]
- **Growth Signals:** [Hiring activity, expansion mentions across platforms]
- **Cultural Indicators:** [Company values in practice vs stated]
- **Competitive Context:** [How they're compared to competitors on social]
## External Intelligence
### Web Presence
- **Speaking/Conferences:** [List if any]
- **Publications/Interviews:** [List if any]
- **Blog Posts/Articles:** [Medium, Substack, Dev.to, personal blog]
- **Media Mentions:** [Notable press mentions]
- **GitHub Projects:** [Open source contributions, personal projects if technical]
### Technical Footprint (if applicable)
- **GitHub Activity:** [contribution level, popular repos]
- **Stack Overflow:** [reputation, areas of expertise]
- **Technical Writing:** [blog posts, tutorials, documentation]
### Additional Context
[Insights from parsed webpages, quotes, expertise areas, unique perspectives]
## Connection Strategy
### Recommended Conversation Topics
1. **[Topic 1]** - [Why: specific post/tweet/comment from which platform]
2. **[Topic 2]** - [Why: company context or cross-platform theme]
3. **[Topic 3]** - [Why: shared interest/industry trend across platforms]
4. **[Topic 4]** - [Why: technical interest from Reddit/GitHub]
5. **[Topic 5]** - [Why: personal interest from Twitter]
### Platform-Specific Engagement
**LinkedIn:**
- **Timing:** [Best days/times based on activity]
- **Approach:** [Professional, comment on specific post]
- **Ice-breaker:** "[Example referencing their LinkedIn content]"
**Twitter/X** (if active):
- **Timing:** [Best days/times]
- **Approach:** [Casual reply to tweet, quote tweet with value-add]
- **Ice-breaker:** "[Example referencing their tweet or discussion]"
**Reddit** (if active):
- **Timing:** [When they're most active]
- **Approach:** [Helpful comment in their frequented subreddit]
- **Ice-breaker:** "[Technical question or insight in relevant subreddit]"
**Direct Outreach:**
- **Best Channel:** [Email/LinkedIn DM/Twitter DM - ranked by likelihood]
- **Timing:** [Optimal day/time synthesized from all platforms]
- **Value Proposition:** [How to position AnySite relevance based on their interests]
### Potential Pain Points
[Inferred from their role, company, posts across platforms - where AnySite could help]
- [Pain point 1 with evidence from platform]
- [Pain point 2 with evidence from platform]
- [Pain point 3 with evidence from platform]
## Strategic Value for AnySite
### Primary Classification
**[Tier 1/2/3/4]: [Customer/Partner/Influencer/Advisor/Talent]**
### Value Dimensions
**Customer Potential:** [High/Medium/Low]
- ICP Fit: [Yes/No - reasoning]
- Decision Authority: [Level]
- Buying Signals: [List any indicators]
**Partnership Potential:** [High/Medium/Low]
- [Specific opportunities if any]
**Network Value:** [High/Medium/Low]
- [Influence level, connection value]
**Advisory/Talent Value:** [High/Medium/Low]
- [Specific expertise value]
### Action Priority
**Priority Level:** [Critical/High/Medium/Low]
**Recommended Timeline:** [Contact within: X days/weeks]
### Next Steps
1. [Specific action item with reasoning]
2. [Follow-up action]
3. [Long-term nurture plan if applicable]
## Analysis Metadata
- **Platforms Analyzed:**
- LinkedIn: [✓ Profile, Posts, Comments, Reactions]
- Twitter/X: [✓ Found and analyzed / ✗ Not found / - Not searched]
- Reddit: [✓ Activity found / ✗ No activity / - Not searched]
- GitHub: [✓ Projects found / ✗ Not found / - Not applicable]
- Web: [✓ Articles/interviews found]
- **Data Sources:** [List specific tools used]
- **Data Freshness:**
- LinkedIn posts: [date range analyzed]
- Twitter: [date range if analyzed]
- Reddit: [date range if analyzed]
- **Total Data Points:** [approximate: X posts, Y tweets, Z comments analyzed]
- **Confidence Factors:**
- Profile completeness: [High/Medium/Low]
- Activity data: [High/Medium/Low - per platform]
- External validation: [High/Medium/Low]
- Cross-platform consistency: [High/Medium/Low]
- **Limitations:** [Any data gaps, platforms not accessible, or constraints]
Error Handling & Edge Cases
Insufficient Data:
- If posts/comments are minimal: focus more on company analysis and role-based inferences
- If profile is sparse: use web search more heavily
- If company is small/unknown: focus on person's expertise and network
Multiple Profile Matches:
- Always confirm with user before proceeding with deep analysis
- Present distinguishing factors clearly
Rate Limiting / API Errors:
- Continue with available data from other sources
- Note limitations in report
- Suggest manual verification steps
Privacy Considerations:
- Only analyze publicly available information
- No speculation on private/personal matters
- Focus on professional context
Customization Parameters
Users may request analysis depth adjustment:
Quick Analysis (10-15 min):
- LinkedIn: Profile + last 10 posts + company basics
- Company: LinkedIn company profile only
- Twitter/X: Person profile check only (if handle found)
- Web: 2-3 targeted searches
- Reddit/GitHub: Skip unless specifically requested
- Output: Essential info only
Standard Analysis (20-30 min) - DEFAULT:
- LinkedIn: Full profile + 20-50 posts + comments/reactions + company analysis
- Company: LinkedIn + Twitter account + Reddit mentions search (NEW)
- Twitter/X: Person profile + 50 recent tweets (if found)
- Reddit: Search for person username + activity (if found)
- Web: 5-7 strategic searches + parse 2-3 key pages
- GitHub: Quick check for presence (if technical role)
- Output: Full workflow as described above
Deep Dive (45-60 min):
- LinkedIn: Extended analysis (100+ posts), all activity types, detailed company research
- Company: LinkedIn + Twitter (30 posts) + Reddit (comprehensive mentions) + sentiment analysis (NEW)
- Twitter/X: Person 100+ tweets, thread analysis, engagement patterns (if found)
- Reddit: Person comprehensive comment history, subreddit analysis (if found)
- Web: 10-15 searches, parse 5-10 webpages, deep technical footprint
- GitHub: Detailed repo analysis, contribution patterns (if technical)
- Instagram: Profile and content analysis (if relevant)
- Output: Comprehensive cross-platform synthesis with deep insights
Platform-Specific Focus:
Users can also request focus on specific platforms:
- "Focus on Twitter presence" → Deep Twitter analysis for person AND company, standard LinkedIn
- "Technical profile only" → LinkedIn + GitHub + Reddit + Stack Overflow (person focused)
- "Business profile" → LinkedIn + web presence + media, skip Reddit/GitHub
- "Company deep dive" → Extended company social analysis across all platforms (NEW)
Default to Standard Analysis unless specified.
# Supported AI Coding Agents
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