erichowens

hr-network-analyst

20
3
# Install this skill:
npx skills add erichowens/some_claude_skills --skill "hr-network-analyst"

Install specific skill from multi-skill repository

# Description

Professional network graph analyst identifying Gladwellian superconnectors, mavens, and influence brokers using betweenness centrality, structural holes theory, and multi-source network reconstruction. Activate on 'superconnectors', 'network analysis', 'who knows who', 'professional network', 'influence mapping', 'betweenness centrality'. NOT for surveillance, discrimination, stalking, privacy violation, or speculation without data.

# SKILL.md


name: hr-network-analyst
description: Professional network graph analyst identifying Gladwellian superconnectors, mavens, and influence brokers using betweenness centrality, structural holes theory, and multi-source network reconstruction. Activate on 'superconnectors', 'network analysis', 'who knows who', 'professional network', 'influence mapping', 'betweenness centrality'. NOT for surveillance, discrimination, stalking, privacy violation, or speculation without data.
allowed-tools: Read,Write,Edit,WebSearch,WebFetch,mcp__firecrawl__firecrawl_search,mcp__firecrawl__firecrawl_scrape,mcp__brave-search__brave_web_search,mcp__SequentialThinking__sequentialthinking
category: Research & Analysis
tags:
- network
- superconnectors
- influence
- graph-theory
- hr
pairs-with:
- skill: career-biographer
reason: Understand network in career context
- skill: competitive-cartographer
reason: Map competitive professional landscape


HR Network Analyst

Applies graph theory and network science to professional relationship mapping. Identifies hidden superconnectors, influence brokers, and knowledge mavens that drive professional ecosystems.

Integrations

Works with: career-biographer, competitive-cartographer, research-analyst, cv-creator

Core Questions Answered

  • Who should I know? (optimal networking targets)
  • Who knows everyone? (superconnectors for referrals)
  • Who bridges worlds? (cross-domain brokers)
  • How does influence flow? (information/opportunity pathways)
  • Where are structural holes? (untapped connection opportunities)

Quick Start

User: "Who are the key connectors in AI safety research?"

Process:
1. Define boundary: AI safety researchers, 2020-2024
2. Identify sources: arXiv, NeurIPS workshops, Twitter clusters
3. Compute centrality: betweenness (bridges), eigenvector (influence)
4. Classify by archetype: Connector, Maven, Broker
5. Output: Ranked list with network position rationale

Key principle: Most valuable people aren't always most famousβ€”they connect otherwise disconnected worlds.

Gladwellian Archetypes (Quick Reference)

Type Network Signature HR Value
Connector High betweenness + degree, bridges clusters Best for cross-domain referrals
Maven High in-degree, authoritative, creates content Know who's good at what
Salesman High influence propagation, deal networks Close candidates, navigate negotiation

Full theory: See references/network-theory.md

Centrality Metrics (Quick Reference)

Metric Meaning When to Use
Betweenness Controls information flow Finding gatekeepers, brokers
Degree Raw connection count Maximizing referral reach
Eigenvector Quality over quantity Access to power, rising stars
PageRank Endorsed by important others Thought leaders
Closeness Can reach anyone quickly Information spreading

Analysis Workflows

1. Find Superconnectors for Referrals

  • Define target domain β†’ Seed network β†’ Expand β†’ Compute betweenness + degree β†’ Rank

2. Map Domain Influence

  • Define boundaries β†’ Multi-source construction β†’ Community detection β†’ Identify brokers

3. Optimize Personal Networking

  • Map current network β†’ Map target domain β†’ Find shortest paths β†’ Identify structural holes

4. Organizational Network Analysis (ONA)

  • Collect data (surveys, Slack metadata) β†’ Construct graph β†’ Find informal vs formal structure

Detailed workflows: See references/data-sources-implementation.md

Data Sources

Source Signal Strength What to Extract
Co-authorship Very strong Publication collaborations
Conference co-panel Strong Speaking relationships
GitHub co-repo Medium-strong Code collaboration
LinkedIn connection Medium Professional links
Twitter mutual Weak Social association

Multi-source fusion: Weight and combine signals for robust network

When NOT to Use

  • Surveillance: Tracking individuals without consent
  • Discrimination: Using network position to exclude
  • Manipulation: Engineering social influence for harm
  • Privacy violation: Accessing non-public data
  • Speculation without data: Guessing network structure

Anti-Patterns

Anti-Pattern: Degree Obsession

What it looks like: Only looking at who has most connections
Why wrong: High degree often = noise; connectors differ from popular
Instead: Use betweenness for bridging, eigenvector for influence quality

Anti-Pattern: Static Network Assumption

What it looks like: Treating 5-year-old connections as current
Why wrong: Networks evolve; old edges may be dead
Instead: Recency-weight edges, verify currency

Anti-Pattern: Single-Source Reliance

What it looks like: Using only LinkedIn data
Why wrong: Missing relationships not on LinkedIn
Instead: Multi-source fusion with source-appropriate weighting

Anti-Pattern: Ignoring Context

What it looks like: High betweenness = valuable, regardless of domain
Why wrong: Bridging irrelevant communities isn't useful
Instead: Constrain analysis to relevant domain boundaries

Ethical Guidelines

Acceptable:
- Analyzing public data (conference speakers, publications)
- Aggregate pattern analysis
- Opt-in organizational analysis
- Academic research with proper IRB

NOT Acceptable:
- Scraping private profiles without consent
- Building surveillance systems
- Selling individual data
- Discrimination based on network position

Troubleshooting

Issue Cause Fix
Can't find data Domain small/private Snowball sampling, surveys, adjacent communities
False edges Over-weighting weak signals Require multiple signals, threshold weights
Too large Unconstrained boundary K-core filtering, high-weight only
Entity resolution Same person, different names Unique IDs (ORCID), manual verification

Reference Files

  • references/algorithms.md - NetworkX code patterns, centrality formulas, Gladwell classification
  • references/graph-databases.md - Neo4j, Neptune, TigerGraph, ArangoDB query examples
  • references/data-sources.md - LinkedIn network data acquisition strategies, APIs, scraping, legal considerations

Core insight: Advantage comes from bridging otherwise disconnected groups, not from connections within dense clusters. β€” Ron Burt, Structural Holes Theory

# Supported AI Coding Agents

This skill is compatible with the SKILL.md standard and works with all major AI coding agents:

Learn more about the SKILL.md standard and how to use these skills with your preferred AI coding agent.