knowledge-worker-salaries

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Comprehensive global knowledge worker salary data with total market value calculations, sector breakdowns, geographic comparisons, and authoritative sources. USE WHEN discussing knowledge worker compensation, salary benchmarking, economic analysis of professional labor markets, or AI impact on wages.

Install

mkdir -p .claude/skills/knowledge-worker-salaries && curl -L -o skill.zip "https://mcp.directory/api/skills/download/4262" && unzip -o skill.zip -d .claude/skills/knowledge-worker-salaries && rm skill.zip

Installs to .claude/skills/knowledge-worker-salaries

About this skill

Knowledge Worker Global Salaries Data Skill

🎯 Load Full PAI Context

Before starting any task with this skill, load complete PAI context:

read ~/.claude/skills/PAI/SKILL.md

This provides access to:

  • Complete contact list (Angela, Bunny, Saša, Greg, team members)
  • Stack preferences (TypeScript>Python, bun>npm, uv>pip)
  • Security rules and repository safety protocols
  • Response format requirements (structured emoji format)
  • Voice IDs for agent routing (ElevenLabs)
  • Personal preferences and operating instructions

Overview

This skill provides authoritative data on global knowledge worker compensation based on comprehensive research conducted October 19, 2025 using 10 parallel research agents across government sources (BLS, OECD, ILO), industry reports (Dice, Glassdoor, Robert Half), and consulting firm data (McKinsey, Deloitte, WEF).

Key Findings:

  • U.S. Total Annual Compensation: $10-11 trillion (100M workers @ $100-110K avg)
  • Global Total Annual Compensation: $50-70 trillion (1B+ workers @ $50-70K avg)
  • Highest Confidence: U.S. data (85%), based on BLS and industry sources
  • Medium Confidence: Global data (65%), requires aggregation from multiple national sources

When to Use This Skill

Use this skill when discussing or analyzing:

  • Knowledge worker salary ranges by sector (tech, finance, healthcare, consulting)
  • Total market value of knowledge worker compensation
  • Geographic salary comparisons (U.S., Europe, Asia-Pacific, Latin America)
  • AI/ML skills premium (30-50% over non-AI roles)
  • Compensation trends (2020-2025: Great Resignation → Great Retention)
  • Freelance knowledge worker economics ($1.5T U.S. market)
  • Benchmarking salaries for roles (software engineer, data scientist, consultant)
  • Economic analysis of professional labor markets
  • Policy discussions about workforce compensation

Quick Reference Data

Total Market Value

GeographyTotal Annual CompensationWorkforce SizeAverage Compensation
United States$10-11 trillion~100M workers (38-42% of workforce)$100,000-$110,000
Global$50-70 trillion1+ billion workers$50,000-$70,000 (regional variation)

U.S. Salary Ranges by Sector (2024-2025)

SectorAverage/MedianYoY GrowthKey Sources
Technology$112,521 avg / $104,556 median+1.2%Dice 2025, Glassdoor, BLS
Finance/IT$150,453 medianFlat (2024)Wall Street Oasis, BLS
Healthcare$83,090 median+4.5% to +6.95%BLS OEWS May 2024
Professional Services$97,604 avg+4.0%McKinsey, BCG, Bain
AI/ML Premium Roles$197,170-$204,463+30-50% premiumRobert Half 2026

Global Regional Averages

Region/CountryAverage SalaryGrowth Rate
United States$120,000-$150,000+3.5%
Switzerland$115,000+4.0%
Denmark$84,000+4.0%
Germany$64,000+4.0%
Singapore$51,000++5.5%
Eastern Europe$48,000-$53,000+4.0%
IndiaVariable+10.1% (fastest growth)
Latin America$28,000-$73,000Moderate

Data Files

All comprehensive data tables are available in:

~/.claude/skills/knowledge-worker-salaries/knowledge-worker-compensation-data.md

This includes:

  • Total market value calculations with methodologies
  • Sector-by-sector breakdowns with sources
  • Geographic salary distributions
  • Compensation components (wages, benefits, equity)
  • Trends analysis (2020-2025)
  • Role-specific compensation (50+ roles)
  • Data sources and research methodology

How to Access Data

Read Complete Data Tables

read ~/.claude/skills/knowledge-worker-salaries/knowledge-worker-compensation-data.md

Quick Salary Lookup

Example queries:

  • "What's the average salary for a software engineer?"

    • Answer: Mid-level: $107,322-$137,804; Senior: $130,486-$164,034
  • "How much do AI/ML engineers make?"

    • Answer: AI Architects: $204,463; ML Engineers: $197,170 (30-50% premium)
  • "What's the total value of U.S. knowledge worker salaries?"

    • Answer: $10-11 trillion annually (40-45% of U.S. GDP)

Research Methodology

This data was collected using the /conduct-research workflow:

  1. 10 parallel research agents (perplexity, claude, gemini)
  2. 20+ targeted queries across government, industry, and consulting sources
  3. Multi-source validation for confidence levels
  4. Completed in <2 minutes via parallel execution

Research Date: October 19, 2025 Confidence: High (85%) for U.S., Medium (65%) for global

Data Sources (Authoritative)

Government & International Organizations

  • U.S. Bureau of Labor Statistics (BLS) - OEWS May 2024, Employment Cost Index
  • OECD - Average Annual Wages database
  • International Labour Organization (ILO) - Global Wage Report 2024-25
  • Eurostat - EU employment and compensation data
  • World Bank - Employment statistics

Industry Reports & Salary Databases

  • Dice Tech Salary Report 2025 - 500,000+ tech professionals
  • Glassdoor - 100M+ salary reports worldwide
  • Robert Half 2026 Tech Salary Guide - 75+ years staffing research
  • Payscale 2025 - 100M+ salary profiles
  • Upwork Research Institute - Freelance market analysis (3,000 respondents)

Consulting Firms & Research Organizations

  • McKinsey Global Economics Intelligence - $16B annual revenue firm
  • Deloitte Gen Z and Millennial Survey 2024 - Big Four research
  • World Economic Forum - Future of Jobs Report 2025
  • Gartner - AI adoption and workforce forecasts
  • StrategyU Consulting Industry Report 2025 - McKinsey/BCG/Bain compensation

Calculation Methodologies

U.S. Total Compensation

Formula:

Total Compensation = Workforce Size × Average Compensation
= 100 million workers × $100,000-$110,000 avg
= $10-11 trillion annually

Components Included (BLS Method):

  • Wages and salaries (68.8-70.3% of total)
  • Benefits (29.7-31.2% of total):
    • Health insurance
    • Retirement contributions
    • Paid leave
    • Supplemental pay (bonuses, overtime)
    • Legally required benefits (Social Security, Medicare, unemployment)

Not Included (Data Gap):

  • Equity compensation (stock options, RSUs) - BLS does not systematically track
  • Actual total comp likely 10-30% higher in tech/finance when equity included

Global Total Compensation

Formula:

Conservative: 1 billion workers × $50,000 avg = $50 trillion
Upper bound: 1 billion workers × $70,000 avg = $70 trillion

Regional Distribution Assumptions:

  • U.S.: ~10% of global knowledge workers at 3× global average
  • Europe: ~25% at 1.5× global average
  • Asia-Pacific: ~50% at 0.8× global average
  • Latin America/Other: ~15% at 0.5× global average

Key Insights & Trends

  1. Knowledge workers represent 40-45% of U.S. GDP

    • $10-11T compensation vs. ~$25T total GDP
    • Demonstrates economic importance of knowledge economy
  2. AI/ML skills command massive premiums

    • 30-50% salary increase over non-AI roles
    • AI Architects: $204,463 vs. general tech avg: $112,521
    • Reflects current market scarcity and demand
  3. Geographic wage disparities are massive

    • U.S. knowledge workers earn 2-5× developing nation counterparts
    • Purchasing power parity (PPP) complicates direct comparisons
    • India showing fastest growth at +10.1% annually
  4. Healthcare outpacing tech in growth

    • Healthcare: +4.5% to +6.95% annually
    • Tech sector: +1.2% (stagnant at 3.5% level)
    • Driven by demographic trends and labor shortages
  5. Freelance economy is substantial

    • 28% of U.S. knowledge workers freelance
    • $1.5 trillion in independent earnings
    • Not fully captured in traditional employment surveys
  6. Benefits represent 30-33% of total compensation

    • Total comp calculations must go beyond base salary
    • BLS civilian workers: $46.14/hour ($31.72 wages + $14.41 benefits)
  7. Tech sector experiencing wage inflation pressure

    • 23% annual sector inflation
    • Despite modest +1.2% YoY wage growth
    • Talent scarcity and remote work driving costs

Data Gaps & Limitations

Critical Gaps Identified

  1. No occupation-specific knowledge worker data from international orgs

    • OECD, World Bank, ILO publish general wage stats
    • Do NOT break down by professional/technical/knowledge worker categories
    • Must aggregate from individual country statistical agencies
  2. Equity compensation not captured in BLS surveys

    • Stock options and RSUs excluded from Employment Cost Index
    • Particularly impacts tech and finance sector accuracy
    • Private sector uses ASC 718 accounting standards (not in government data)
  3. Freelance and gig economy undercounting

    • Traditional surveys may miss independent knowledge workers
    • Upwork: 28% freelance rate may not reflect in BLS employment figures

Confidence Levels

High Confidence (85%+):

  • U.S. total compensation: $10-11 trillion
  • U.S. workforce size: 100M knowledge workers
  • Sector-specific salary averages (multiple source corroboration)
  • BLS government data accuracy

Medium Confidence (65%):

  • Global total compensation: $50-70 trillion
  • Exact global workforce count (described as "1+ billion")
  • Regional averages (limited occupation-specific international data)

Low Confidence (<50%):

  • Equity compensation total market value (not systematically tracked)
  • Freelance knowledge worker total compensation (incomplete data)

Update Schedule

Recommended Update Frequency:

  • Quarterly: After BLS Employment Cost Index releases (~3 months after quarter end)
  • Annual: After major industry salary reports (Dice, Robert Half, Payscale - typically Q1)
  • As Needed: For significant economic shifts

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