Economic & Labor Metrics
- StructureNo tables or diagrams - consider adding visual content
Overview
Section titled “Overview”This page tracks the economic and labor market dimensions of AI development, including investment flows, market valuations, employment impacts, and productivity gains. These metrics help assess AI’s integration into the economy and its effects on work and value creation.
Investment Metrics
Section titled “Investment Metrics”Total AI Investment (2024-2025)
Section titled “Total AI Investment (2024-2025)”Global Venture Capital Investment
- 2024: $114 billion in AI-related VC funding
- 2025: $202.3 billion (75% year-over-year increase)
- Q1 2025: $80 billion raised by VC-backed companies (30% increase over Q4 2024)
- AI funding as share of total VC: 33% (2024) → 50% (2025)
Sources: Crunchbase 2025 Analysis↗🔗 webCrunchbase - 6 Charts That Show The Big AI Funding Trends Of 2025Crunchbase data reveals AI captured nearly 50% of global startup funding in 2025, with $202.3 billion invested. Foundation model companies like OpenAI and Anthropic attracted th...Source ↗Notes, KPMG Venture Pulse↗🔗 webKPMG Venture PulseKPMG's Venture Pulse report highlights a global VC investment increase to $368.3 billion in 2024, with AI sector emerging as a major investment driver despite reduced deal volumes.Source ↗Notes
Corporate AI Investment
- 2024: $252.3 billion in corporate AI investment (44.5% increase in private investment)
- Big Tech Infrastructure Spending (Microsoft, Alphabet, Amazon, Meta):
- 2024: $230 billion combined capex
- 2025 planned: $320 billion (39% increase)
- Amazon alone: $100+ billion planned for 2025
Sources: Stanford AI Index 2025↗🔗 web★★★★☆Stanford HAIStanford AI Index 2025The 2025 AI Index Report documents massive growth in global AI private investment, with the U.S. leading in funding and organizational AI adoption reaching 78%. The report highl...Source ↗Notes, McKinsey State of AI 2025↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey State of AI 2025Source ↗Notes
US vs. Global Distribution
- US private AI investment (2024): $109.1 billion (12x China’s $9.3 billion, 24x UK’s $4.5 billion)
- 2025 US share: 79% of global AI funding ($159 billion)
- San Francisco Bay Area: $122 billion (77% of US AI funding in 2025)
Source: Stanford AI Index 2025↗🔗 web★★★★☆Stanford HAIStanford AI Index 2025The 2025 AI Index Report documents massive growth in global AI private investment, with the U.S. leading in funding and organizational AI adoption reaching 78%. The report highl...Source ↗Notes
Generative AI Specific
- 2023: $24 billion in global GenAI VC funding
- 2024: $45 billion (nearly double)
- Major rounds: OpenAI ($40 billion at $300B valuation), Anthropic ($13 billion)
Sources: Stanford AI Index↗🔗 webStanford AI IndexThe annual AI Index report provides comprehensive insights into AI trends, including increased regulations, generative AI investment, and model training complexities. It covers ...Source ↗Notes, CNBC↗🔗 web★★★☆☆CNBCCNBCA group of seven tech startups tracked by Forge Global has nearly doubled in value to $1.3 trillion, with AI companies leading the surge. OpenAI, Anthropic, and xAI are at the f...Source ↗Notes
Data Quality: High reliability for reported VC deals and public company capex. Private corporate R&D may be underestimated.
Market Capitalization & Valuations
Section titled “Market Capitalization & Valuations”AI Company Valuations (Private Market)
Section titled “AI Company Valuations (Private Market)”Top Valuations (2025)
- OpenAI: $100 billion (most valuable private company ever)
- Revenue: $12 billion (2025), up from $3.7 billion (2024)
- Annualized revenue: $13 billion (July 2025)
- Anthropic: $183 billion → $350 billion range (2025)
- Revenue growth: $87 million (early 2024) → $7 billion (late 2025) - 80x increase
- xAI: $90 billion
- Revenue: $100 million (late 2024) → $500 million annualized (mid-2025)
- Databricks: $100 billion
Sources: CNBC OpenAI↗🔗 web★★★☆☆CNBCCNBCA group of seven tech startups tracked by Forge Global has nearly doubled in value to $1.3 trillion, with AI companies leading the surge. OpenAI, Anthropic, and xAI are at the f...Source ↗Notes, CNBC Anthropic↗🔗 web★★★☆☆CNBCCNBC AnthropicMicrosoft and Nvidia are making substantial investments in Anthropic, expanding their AI partnerships and computing capacity. The deal positions Anthropic as a major player in t...Source ↗Notes
Aggregate Private AI Market
- Top 7 private AI companies: $1.3 trillion combined valuation (nearly doubled in past year)
- 4x increase since late 2022 (ChatGPT launch)
Source: Forge Global Analysis via CNBC↗🔗 web★★★☆☆CNBCCNBCA group of seven tech startups tracked by Forge Global has nearly doubled in value to $1.3 trillion, with AI companies leading the surge. OpenAI, Anthropic, and xAI are at the f...Source ↗Notes
Total AI Market Size
- 2024: $638.23 billion global AI market
- 2025: $757.58 billion projected
- 2034 projection: $3.68 trillion (19.20% CAGR)
Sources: Precedence Research↗🔗 webPrecedence ResearchComprehensive market research report analyzing the global Artificial Intelligence market, covering growth trends, technological segments, and regional insights from 2024 to 2034.Source ↗Notes, DemandSage↗🔗 webDemandSageComprehensive analysis of global AI market growth, market share, adoption rates, and economic impacts across industries and regions. Highlights rapid expansion and transformativ...Source ↗Notes
Data Quality: Private valuations based on funding rounds; actual worth may vary significantly. Public market data more reliable.
Labor Market Impact
Section titled “Labor Market Impact”Jobs Displaced by AI
Section titled “Jobs Displaced by AI”Current Displacement (2024)
- 14% of all workers have already been displaced by AI (higher among younger/mid-career workers in tech/creative fields)
- 12,700 jobs lost directly to AI in 2024 (0.1% of all layoffs)
- Goldman Sachs estimate: 2.5% of US employment at risk if AI use cases expanded; 6-7% if widely adopted
Sources: National University AI Job Statistics↗🔗 webNational University AI Job StatisticsA comprehensive analysis of AI's impact on the U.S. job market, revealing significant workforce disruption and emerging opportunities in technology, healthcare, and skilled trades.Source ↗Notes, ITIF Analysis↗🔗 webITIF AnalysisAn analysis shows AI generated approximately 119,900 jobs in 2024 while causing only 12,700 job losses. The technology is reshaping workforce dynamics rather than destroying emp...Source ↗Notes
Projected Displacement (2030)
- 30% of current US jobs could be automated by 2030 (McKinsey)
- McKinsey: Activities accounting for 30% of hours worked could be automated
- McKinsey: 40% of jobs in highly automatable roles; 57% of work hours technically automatable
Sources: McKinsey Future of Work↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Future of WorkSource ↗Notes, Nexford University↗🔗 webNexford UniversityThe article explores AI's potential impact on the global job market, predicting significant workforce transformation with both job displacement and job creation by 2030.Source ↗Notes
Bureau of Labor Statistics Projections (2023-2033)
- Bank tellers: -15% (51,400 jobs eliminated)
- Cashiers: -11% (353,100 jobs eliminated)
- Computer and mathematical occupations: Unemployment increases correlated with 80% AI exposure score
Sources: BLS Employment Projections↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes, St. Louis Fed Analysis↗🔗 webSt. Louis Fed AnalysisSource ↗Notes
High-Risk Sectors
- Office support, customer service, food service
- Manufacturing (30% of jobs automatable by mid-2030s)
- Financial services (shorter-term vulnerability)
Low-Risk Sectors
- Construction and skilled trades
- Personal services (food service, medical assistants, cleaners)
- Healthcare professionals and STEM roles (17-30% growth projected)
Source: McKinsey Reports↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey ReportsSource ↗Notes
Gender Disparities
- 79% of employed women in US in high-risk automation jobs vs. 58% of men
- High-income nations: 9.6% of women’s jobs at highest risk vs. 3.2% for men
Source: AI Job Displacement Analysis↗🔗 webNational University AI Job StatisticsA comprehensive analysis of AI's impact on the U.S. job market, revealing significant workforce disruption and emerging opportunities in technology, healthcare, and skilled trades.Source ↗Notes
Data Quality: Moderate. Displacement projections vary widely between studies (9-47% of jobs). Task-based approaches (OECD) show lower risk than occupation-based (Frey & Osborne).
Jobs Created by AI
Section titled “Jobs Created by AI”Current Job Creation (2024)
- 119,900 direct jobs created by AI in 2024:
- 8,900 AI model development/operations jobs (ML engineers, data scientists)
- 110,000+ construction jobs from AI-driven data center construction
- Net effect: +107,200 jobs (119,900 created - 12,700 lost)
Source: ITIF Analysis↗🔗 webITIF AnalysisAn analysis shows AI generated approximately 119,900 jobs in 2024 while causing only 12,700 job losses. The technology is reshaping workforce dynamics rather than destroying emp...Source ↗Notes
Job Market Growth (Q1 2025)
- 35,445 AI-related positions in US (25.2% increase from Q1 2024, 8.8% from Q4 2024)
- AI job postings more than doubled from 2023 to 2024
- 2025: 56% increase in AI job share compared to 2024
Source: Veritone Q1 2025 Analysis↗🔗 webVeritone Q1 2025 AnalysisAnalysis of U.S. labor market in Q1 2025 reveals significant growth in AI-related jobs, with 35,445 positions and a median salary of $156,998.Source ↗Notes
US AI Job Postings
- H1 2025: 1.2 million AI-related job postings (vs. 980,000 in H1 2024)
- Global AI employment growth: 26% year-over-year (2024-2025)
Sources: SQ Magazine↗🔗 webSQ MagazineIn 2025, AI is driving significant job creation globally, generating 97 million new roles while displacing 85 million jobs. The net effect is a positive transformation of the wo...Source ↗Notes, AI Job Creation Statistics↗🔗 webSQ MagazineIn 2025, AI is driving significant job creation globally, generating 97 million new roles while displacing 85 million jobs. The net effect is a positive transformation of the wo...Source ↗Notes
Long-term Projections
- 97 million new jobs projected by 2025 (World Economic Forum)
- McKinsey: 20-50 million new AI jobs globally by 2030
- BLS: Computer and information research scientists +23% (2022-2032)
Sources: Edison and Black↗🔗 webEdison and BlackAI is expected to generate millions of new jobs while transforming existing roles. Strategic upskilling and workforce development are essential to navigating this technological ...Source ↗Notes, McKinsey Estimates↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey EstimatesSource ↗Notes
Data Science & ML Engineer Outlook
- 500,000+ ML engineering positions available worldwide (2025)
- US BLS: Data science jobs +36% (2023-2033)
- Operations research analyst: +23% growth
Sources: World Economic Forum↗🔗 webWorld Economic ForumA comprehensive analysis of AI's impact on jobs, skills, and wages across six continents, showing positive transformative effects rather than job displacement.Source ↗Notes, BLS Projections↗🏛️ governmentBLS ProjectionsData scientist employment is expected to grow 34% from 2024-2034, with a median annual wage of $112,590. The field requires strong analytical and technical skills.Source ↗Notes
Data Quality: Good for job postings and BLS projections. Long-term forecasts (97M jobs) highly uncertain.
Productivity & Economic Impact
Section titled “Productivity & Economic Impact”AI Productivity Gains
Section titled “AI Productivity Gains”McKinsey Global Institute Estimates
- Annual economic value: $1.6-4.4 trillion from generative AI alone
- Equivalent to ~4% of global GDP
- For context: UK’s entire 2021 GDP was $3.1 trillion
- Labor productivity growth: 0.1-0.6% annually through 2040
- Combined with all automation: 0.2-3.3 percentage points annual productivity increase
- GDP growth impact: 1.5-3.4 percentage point increase in average annual GDP growth (developed world, next decade)
Sources: McKinsey Economic Potential of GenAI↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Economic Potential of GenAISource ↗Notes, World Economic Forum↗🔗 web★★★★☆World Economic ForumWorld Economic ForumSource ↗Notes
Value Concentration
- 75% of GenAI value in 4 areas: Customer operations, marketing/sales, software engineering, R&D
Source: McKinsey Report↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Economic Potential of GenAISource ↗Notes
Alternative Estimates
- Daron Acemoglu: More conservative - 0.07% annual productivity increase, 0.9-1.8% GDP increase over 10 years
- Penn Wharton Budget Model: 1.5% productivity/GDP increase by 2035, 3% by 2055, 3.7% by 2075
Sources: Penn Wharton Budget Model↗🔗 webPenn Wharton Budget ModelThe Penn Wharton Budget Model estimates generative AI will gradually increase productivity and GDP, with peak contributions in the early 2030s and lasting economic impact.Source ↗Notes, Marketing AI Institute↗🔗 webMarketing AI InstituteA McKinsey report forecasts massive economic potential for AI software and services, projecting trillion-dollar impacts across multiple industries by 2040. The analysis suggests...Source ↗Notes
Current Adoption Gap
- 99% of executives aware of AI; 92% planning to increase investment
- Only 1% of organizations have achieved mature AI deployment
Source: McKinsey↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Economic Potential of GenAISource ↗Notes
Data Quality: Moderate. Wide range in estimates reflects genuine uncertainty about adoption speed and productivity translation.
Enterprise Adoption & Revenue
Section titled “Enterprise Adoption & Revenue”Fortune 500 & Enterprise Adoption
Section titled “Fortune 500 & Enterprise Adoption”Adoption Rates (2024-2025)
- 99%+ of Fortune 500 companies use AI
- 92% of Fortune 500 use ChatGPT
- 70% of Fortune 500 use both ChatGPT and Microsoft Copilot
- 78% of all organizations use AI in at least one business function (up from 55% in 2023)
- 71% of organizations use generative AI regularly (up from 33% in 2023)
Sources: DemandSage↗🔗 webDemandSageNearly 90% of companies worldwide are integrating AI technologies, with significant adoption in customer service, business operations, and strategic planning. The AI market is e...Source ↗Notes, McKinsey State of AI↗🔗 webMcKinsey State of AIThe McKinsey report examines the transformative potential of AI technologies, highlighting their growing adoption and impact on business processes and workforce dynamics.Source ↗Notes
Scaling Challenges
- 31% of use cases reached full production (2025) - double from 2024
- 42% of companies abandoned most AI initiatives in 2025 (up from 17% in 2024)
- Only 26% have capabilities to move beyond proof-of-concept to production
- 74% still struggle to scale despite regular use
Sources: ISG Enterprise AI Report↗🔗 webISG Enterprise AI ReportThe ISG Enterprise AI Report provides insights into AI adoption trends across businesses, highlighting both progress and obstacles in implementing AI solutions. The research cov...Source ↗Notes, McKinsey↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey State of AI 2025Source ↗Notes
By Company Revenue Size
- $1B+ revenue companies: 58% fully scaling AI to automate operations
- High performers: 75% scaling or scaled AI vs. 33% of other organizations
- Under $100M revenue: Only 29% at scaling phase
Source: McKinsey State of AI↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey State of AI 2025Source ↗Notes
Regional Adoption
- North America: 82% adoption
- Europe: 80% adoption (23 percentage point increase since 2024)
- India: 59% integration (global leader)
- UAE: 58%
- United States: 33% (surprisingly low)
Source: Netguru AI Adoption Statistics↗🔗 webNetguru AI Adoption StatisticsAI technology is experiencing explosive adoption, with 78% of organizations now using AI in at least one business function. The global AI market is rapidly expanding, projected ...Source ↗Notes
Data Quality: High for survey data on large companies. Self-reported “adoption” definitions may vary.
AI Products & Services Revenue
Section titled “AI Products & Services Revenue”AI Software Market
- 2024: $98 billion
- 2030 projection: $391.43 billion (30% CAGR)
- McKinsey long-term: $1.5-4.6 trillion by 2040
Sources: Aristek Systems↗🔗 webAristek SystemsA comprehensive overview of AI adoption trends in 2025, highlighting market expansion, industry-specific applications, and growing business investment in artificial intelligence...Source ↗Notes, McKinsey↗🔗 webMarketing AI InstituteA McKinsey report forecasts massive economic potential for AI software and services, projecting trillion-dollar impacts across multiple industries by 2040. The analysis suggests...Source ↗Notes
Generative AI Market
- 2025: $59.01 billion
- 2031 projection: $400 billion (37.57% annual growth)
Source: DemandSage↗🔗 webDemandSageComprehensive analysis of global AI market growth, market share, adoption rates, and economic impacts across industries and regions. Highlights rapid expansion and transformativ...Source ↗Notes
Enterprise AI Spending
- Global enterprise AI application spending: ≈$5 billion (8x increase year-over-year)
- Still less than 1% of total software application spending
Source: McKinsey SaaS AI Era↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey SaaS AI EraSource ↗Notes
Data Quality: Good for reported market sizes. Revenue attribution to “AI” components can be ambiguous.
Cost Savings & ROI
Section titled “Cost Savings & ROI”Enterprise Cost Savings
Section titled “Enterprise Cost Savings”Aggregate Impact
- McKinsey 2024: Leading companies attribute >10% of EBIT to generative AI
- Average enterprise: $1.4 million annual savings (mid-market companies)
- Typical ROI: 3.2x within 18 months
- Operational cost reduction: 35% within 18 months
Sources: McKinsey State of AI↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey State of AI 2025Source ↗Notes, Axis Intelligence↗🔗 webAxis IntelligenceComprehensive analysis of enterprise AI transformation reveals a systematic approach to achieving measurable business impact by 2025. The strategy focuses on organizational chan...Source ↗Notes
McKinsey Survey Results
- 42% of organizations report cost reductions from AI (including GenAI)
- 59% report revenue increases
- 10 percentage point increase in cost reduction reports vs. previous year
Source: McKinsey State of AI 2024↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey State of AI 2024Source ↗Notes
By Industry (ROI Multiples)
- Financial services: 4-6x ROI (highest, due to data-rich environments)
- Manufacturing: 3-5x ROI (predictive maintenance, quality control)
- Healthcare/Professional services: 2.5-4x ROI
Source: IntegraNXT ROI Analysis↗🔗 webIntegraNXT ROI AnalysisAn analysis of AI automation's return on investment (ROI) that explores both tangible and intangible benefits across organizational functions. The study highlights the complexit...Source ↗Notes
Manufacturing-Specific
- Early adopters: 15-25% operational cost recovery
- 30-50% defect reduction
- 73% hit ROI within 18 months (Gartner)
Source: Sightsource Manufacturing ROI↗🔗 webSightsource Manufacturing ROIThe document explores how AI technologies can transform manufacturing operations by addressing quality control, predictive maintenance, and decision-making inefficiencies. It pr...Source ↗Notes
Time Savings
- Average: 1 hour saved per worker per day
- 5-year projection: 12 hours/week savings
- Energy/utilities: 75 minutes daily
- Manufacturing: 62 minutes daily
- Sales (Lumen Technologies): 4 hours weekly per seller
Source: Hypersense AI Adoption Trends↗🔗 webHypersense AI Adoption TrendsThe 2024 AI landscape shows exponential growth across multiple sectors, with global AI spending projected to reach $500 billion and over 70% of organizations adopting AI technol...Source ↗Notes
Implementation Costs vs. Returns
- Off-the-shelf AI model deployment: ≈$2 million
- Customizing existing model: ≈$10 million
- Building from scratch: ≈$200 million
- Accenture: Strategic scaling yields 3x returns vs. siloed POCs
Sources: McKinsey↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Economic Potential of GenAISource ↗Notes, Virtasant↗🔗 webVirtasantThe article explores the economic value and implementation challenges of AI, highlighting potential cost savings and ROI considerations for enterprises adopting AI technologies.Source ↗Notes
Reality Check
- BCG late 2024: Only 4% of companies have “cutting-edge” AI capabilities enterprise-wide
- 22% starting to realize substantial gains
- 74% have yet to show tangible value despite investment
Source: Agility at Scale↗🔗 webAgility at ScaleThe document provides a comprehensive guide for enterprises to measure and prove the return on investment (ROI) for AI projects. It emphasizes the need for clear metrics, baseli...Source ↗Notes
Data Quality: Moderate. Self-reported ROI data subject to selection bias. Early adopters likely overrepresented.
Compensation & Salaries
Section titled “Compensation & Salaries”AI Engineer Salaries (2024-2025)
Section titled “AI Engineer Salaries (2024-2025)”AI Engineers
- Median (Glassdoor): $138,986/year
- Average (2025): $153,000 (9% increase from 2024)
- High-level positions: $206,000 average (Glassdoor early 2025)
- Salary range:
- 25th percentile: $110,824
- 75th percentile: $176,648
- 90th percentile (top decile): $217,654
Sources: Glassdoor↗🔗 webGlassdoorSource ↗Notes, Qubit Labs↗🔗 webQubit LabsSource ↗Notes
By Industry (Top 5)
- Media & Communication: $187,908
- Information Technology: $165,652
- Manufacturing: $139,738
- Management & Consulting: $139,340
- Aerospace & Defense: $131,685
Source: Qubit Labs Salary Guide↗🔗 webQubit LabsSource ↗Notes
Growth Trajectory
- August 2022: $231,000
- March 2023: $268,000
- March 2024: $300,600 (senior positions)
Source: NetCom Learning↗🔗 webNetCom LearningSource ↗Notes
Machine Learning Engineer Salaries
Section titled “Machine Learning Engineer Salaries”Current Compensation (2024-2025)
- Median (Glassdoor): $158,804/year
- Median with total comp (Levels.fyi): $260,000 (top tech companies)
- Average (Indeed): $182,904/year (based on 3,800 salaries)
- Salary range:
- 25th percentile: $127,573
- 75th percentile: $200,269
- 90th percentile (top decile): $245,185
Sources: Glassdoor ML Engineer↗🔗 webGlassdoor ML EngineerSource ↗Notes, Levels.fyi↗🔗 webLevels.fyiLevels.fyi is a crowd-sourced salary and compensation platform that allows tech workers to share anonymous salary and job information. It provides insights into compensation tre...Source ↗Notes, Indeed↗🔗 webIndeedSource ↗Notes
By Experience
- Entry-level: $53,578 - $184,575/year
- 5+ years experience: $102,282 - $232,816/year
Source: DataCamp ML Salaries↗🔗 webDataCamp ML SalariesSource ↗Notes
Growth
- 2023 average: $131,000
- 2024 average: $166,000 ($35,000 increase)
Source: Glassdoor via DataCamp↗🔗 webDataCamp ML SalariesSource ↗Notes
Data Scientist Salaries
Section titled “Data Scientist Salaries”Current Compensation (2024-2025)
- Median (BLS, May 2024): $112,590/year
- Lowest 10%: under $63,650
- Highest 10% (top decile): over $194,410
- Average (Glassdoor): $153,361/year
- 25th percentile: $121,243
- 75th percentile: $196,583
- 90th percentile: $243,959
- Median with total comp (Levels.fyi): $171,000
Sources: BLS Data Scientists↗🏛️ governmentBLS ProjectionsData scientist employment is expected to grow 34% from 2024-2034, with a median annual wage of $112,590. The field requires strong analytical and technical skills.Source ↗Notes, Glassdoor Data Scientist↗🔗 webGlassdoor Data ScientistSource ↗Notes, Levels.fyi↗🔗 webLevels.fyiLevels.fyi is a web platform that allows employees to anonymously share salary, compensation, and workplace insights. It provides transparent information about job roles and pay...Source ↗Notes
Senior Data Scientist
- Average: $230,901/year
- 25th percentile: $190,211
- 75th percentile: $286,138
- 90th percentile: $344,615
Source: Glassdoor Senior Data Scientist↗🔗 webGlassdoor Senior Data ScientistSource ↗Notes
Job Growth
- BLS projection: +34% (2024-2034) - much faster than average
- ~23,400 openings projected annually
Source: BLS Data Scientists Outlook↗🏛️ governmentBLS ProjectionsData scientist employment is expected to grow 34% from 2024-2034, with a median annual wage of $112,590. The field requires strong analytical and technical skills.Source ↗Notes
Compensation Trend
- Worldwide AI talent demand driving 5-9% compensation increases (early 2024 to mid-2025)
Source: AI Engineer Salary 2025↗🔗 webAI Engineer Salary 2025Kristina Stepanova (2024)The demand for AI engineers is skyrocketing, with salaries ranging from $6,600 to $153,400 annually depending on experience and location. The AI job market is expected to expand...Source ↗Notes
Data Quality: High for BLS and major salary aggregators. Tech company total comp (stock, bonuses) may exceed base salary significantly.
Automation Risk Scores
Section titled “Automation Risk Scores”Risk by Occupation Type
Section titled “Risk by Occupation Type”OECD Analysis (2024)
- Overall average: 9% of jobs highly automatable (across 21 OECD countries)
- High risk definition: >25 out of 100 skills/abilities easily automatable
- Updated 2023 estimate: 27% of jobs at high automation risk (OECD average)
Sources: OECD Risk of Automation↗🔗 web★★★★☆OECDOECD Risk of AutomationSource ↗Notes, CESI OECD Analysis↗🔗 webCESI OECD AnalysisThe OECD's 2023 Employment Outlook highlights significant job risks from AI, with 27% of jobs potentially automatable and workers expressing concerns about job displacement.Source ↗Notes
Cross-Country Variation
- Korea: 6% high automation risk
- Austria: 12% high automation risk
- United States: 9% (vs. earlier 47% estimates using occupation-based approach)
Source: OECD Comparative Analysis↗🔗 web★★★★☆OECDOECD Risk of AutomationSource ↗Notes
US-Specific Risk Distribution
- 12.6% of workers (~19.2 million): High or very high risk
- 39%: Little or no risk
- Remainder: Slight or moderate risk
Source: Minnesota DEED Automation Study↗🏛️ governmentMinnesota DEED Automation StudySHRM research analyzed job automation risk using worker-reported data, finding that 19.2 million U.S. jobs are at high or very high risk of automation. Risk varies significantly...Source ↗Notes
Federal Reserve Analysis (2022-2025)
- Occupations with higher AI exposure experienced larger unemployment increases
- Correlation coefficient: 0.47 between AI exposure and unemployment growth
- Computer/mathematical occupations: ~80% AI exposure score, steepest unemployment rises
Source: St. Louis Fed Analysis↗🔗 webSt. Louis Fed AnalysisSource ↗Notes
High-Risk Occupations
Section titled “High-Risk Occupations”Specific Job Categories
- Service, sales, and office jobs (highest risk category)
- Computer programmers
- Accountants and auditors
- Legal and administrative assistants
- Customer service representatives
- Models, technical writers, broadcast announcers
Sources: BLS AI Impacts↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes, Final Round AI↗🔗 webFinal Round AIA comprehensive analysis of AI's immediate impact on job markets, highlighting widespread workforce reductions and the accelerating pace of job automation across multiple sectors.Source ↗Notes
BLS-Identified Declining Occupations
- Procurement clerks
- Credit authorizers
- Customer service representatives
- Nonmedical secretaries
- Bank tellers (-15% by 2033)
- Cashiers (-11% by 2033)
Source: BLS Employment Projections↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes
Low-Risk Occupations
Section titled “Low-Risk Occupations”Protected Categories
- Healthcare professionals (+17-30% growth projected)
- STEM professionals
- Construction and skilled trades
- Personal services (food service, medical assistants, cleaners)
- Personal financial advisors (+17.1% growth 2023-2033)
- Database administrators (AI supports, demand outweighs automation)
Sources: BLS Projections↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes, National University↗🔗 webNational University AI Job StatisticsA comprehensive analysis of AI's impact on the U.S. job market, revealing significant workforce disruption and emerging opportunities in technology, healthcare, and skilled trades.Source ↗Notes
Historical Employment Growth Despite Automation
Section titled “Historical Employment Growth Despite Automation”OECD Findings (Within-Country)
- Jobs at high risk: 6% employment growth (2012-recent)
- Jobs at low risk: 18% employment growth
- Low-educated workers increasingly concentrated in high-risk occupations
Source: OECD What Happened to High-Risk Jobs↗🔗 web★★★★☆OECDOECD What Happened to High-Risk JobsSource ↗Notes
Methodological Note Task-based approaches (OECD) yield lower risk estimates than occupation-based approaches (Frey & Osborne). Workers within same occupation often perform different tasks, reducing uniform automation risk.
Source: OECD Methodology↗🔗 web★★★★☆OECDOECD Risk of AutomationSource ↗Notes
Data Quality: Moderate to high. Methodological differences create wide variation (9% vs. 47% estimates). Task-based approaches considered more accurate.
GDP & Macroeconomic Indicators
Section titled “GDP & Macroeconomic Indicators”GDP Per Capita Growth & AI Contribution
Section titled “GDP Per Capita Growth & AI Contribution”IMF Perspective (2024)
- Baseline forecast: Global growth at 3.1% (5 years out) - lowest in decades
- Key driver of slowdown: Widespread decline in total factor productivity
- Contributing factors: Capital/labor misallocation, demographic pressures, reduced private investment
- AI as solution: “Best chance at relaxing supply-side constraints” and reversing productivity decline
Source: IMF Future of Growth↗🔗 web★★★★☆International Monetary FundIMF Future of GrowthSource ↗Notes
Potential AI Impact
- Could produce “major sustained surge in productivity” reversing downward trend
- Urgent reforms needed to leverage AI for productivity gains
- Without policy action or tech advances, medium-term growth falls below prepandemic levels
Source: IMF Economic Outlook↗🔗 web★★★★☆International Monetary FundIMF Economic OutlookSource ↗Notes
Current GDP Per Capita Trends
- Large inequality between countries
- Poorest countries: under $1,000/year average income
- Rich countries: 50x+ higher ($50,000+/year)
Source: Our World in Data↗🔗 web★★★★☆Our World in DataOur World in DataGDP per capita is a comprehensive economic indicator that calculates a country's total economic output divided by its population. It helps compare income levels and track econom...Source ↗Notes
McKinsey GDP Growth Estimates
- Generative AI impact: 1.5-3.4 percentage point increase in average annual GDP growth (developed world, next decade)
- Combined automation: 0.2-3.3 percentage points annual productivity boost
Source: McKinsey Economic Potential↗🔗 web★★★☆☆McKinsey & CompanyMcKinsey Economic Potential of GenAISource ↗Notes
Data Quality: Low to moderate. AI-specific GDP contribution difficult to isolate. Estimates based on modeling rather than observed data.
Labor Force Participation Rate
Section titled “Labor Force Participation Rate”Overall US Trends (BLS 2024-2034 Projections)
- Total employment: 175.2 million projected by 2034
- Growth rate: +3.1% (2024-2034), slower than 13.0% growth (2014-2024)
- New jobs: 5.2 million over decade
- Main driver: Healthcare and social assistance sector
Source: BLS Employment Projections 2024-2034↗🏛️ governmentBLS Employment Projections 2024-2034The Bureau of Labor Statistics forecasts moderate employment growth of 3.1% from 2024-2034, with healthcare and technology sectors experiencing the most significant job increases.Source ↗Notes
Participation Rate Trends
- Overall: Continual decline projected
- Primary cause: Demographic shifts (aging population, older individuals less likely to work)
- Prime-age participation: Further decline projected through 2033
- Driven by men’s rate (declining for decades)
- Women’s rate more stable
Source: BLS Labor Force Projections↗🏛️ governmentBLS Labor Force ProjectionsThe Bureau of Labor Statistics forecasts a continued slowdown in labor force and population growth through 2033, primarily due to an aging population and declining fertility rat...Source ↗Notes
Sector-Specific Impacts
- Declining sectors: Retail trade (-1.2%, most job losses), manufacturing (automation adoption), mining/oil & gas (-1.6%, productivity gains from robotics/drones)
- Growing sectors: Healthcare (+17-30% for professionals), STEM roles, personal financial advisors (+17.1%)
Sources: BLS Industry Projections↗🏛️ governmentBLS Industry ProjectionsThe Bureau of Labor Statistics forecasts total employment will grow to 174.6 million by 2033, with significant job gains in healthcare, professional services, and emerging techn...Source ↗Notes, BLS AI Impacts↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes
AI’s Mixed Effect
- Some occupations see productivity-driven growth limits (technical writers, customer service reps)
- Others see AI as supportive tool increasing demand (database administrators, architects/engineers)
- Overall: Structural change and disruption expected for decades
Source: BLS AI Case Studies↗🏛️ governmentBLS Employment ProjectionsThe Bureau of Labor Statistics examines how AI might affect employment in different sectors, finding that productivity gains will vary by occupation but are unlikely to cause wi...Source ↗Notes
Data Quality: High for BLS demographic projections. AI-specific impact on participation rates difficult to isolate from other trends.
Key Uncertainties & Data Gaps
Section titled “Key Uncertainties & Data Gaps”Major Uncertainties
Section titled “Major Uncertainties”- Productivity Translation: Wide variance in estimates (0.07% to 3.4% GDP growth)
- Adoption Speed: Only 1-4% of companies at mature deployment despite high awareness
- Job Displacement Timeline: Projections range from 9% to 47% of jobs at risk
- ROI Realization: 74% of companies yet to show tangible value despite investment
- Geographic Distribution: Will AI benefits concentrate or distribute globally?
Data Limitations
Section titled “Data Limitations”- Private company data: Valuations based on funding rounds, not observable metrics
- Corporate R&D: Private AI spending likely underreported
- Job quality: Metrics track quantity but not compensation/conditions of new jobs
- Indirect effects: Spillover impacts on non-AI sectors difficult to measure
- Definitional issues: What counts as “AI” varies across studies and companies
Update Frequency
Section titled “Update Frequency”- Investment data: Quarterly (VC), Annual (corporate capex)
- Employment data: Monthly (BLS), Annual (projections)
- Salary data: Annual (BLS), Continuous (Glassdoor, Levels.fyi)
- Market size: Annual estimates, Semi-annual updates
- Productivity/GDP: Quarterly (GDP), Annual (productivity estimates)
Sources Summary
Section titled “Sources Summary”Primary Data Sources
Section titled “Primary Data Sources”- Stanford AI Index Report (annual): Investment, corporate spending, research trends
- McKinsey State of AI (annual): Adoption, productivity, economic impact
- Bureau of Labor Statistics (continuous): Employment, wages, projections
- OECD Reports (periodic): Automation risk, international comparisons
- IMF/World Bank (quarterly/annual): Macroeconomic indicators, GDP
- Crunchbase/PitchBook (continuous): Venture capital, private market valuations
Salary & Compensation
Section titled “Salary & Compensation”- Glassdoor, Levels.fyi, Indeed, PayScale (continuous): Real-time salary data
- BLS Occupational Outlook (annual): Official government wage statistics
Market Research
Section titled “Market Research”- Gartner, Forrester, IDC (periodic): Enterprise adoption and spending
- Goldman Sachs, Morgan Stanley (periodic): Market analysis and projections
Related Metrics Pages
Section titled “Related Metrics Pages”- Compute & HardwareAi Transition Model MetricCompute & HardwareComprehensive metrics tracking finds training compute grows 4-5x annually (30+ models at 10²⁵ FLOP by mid-2025), algorithmic efficiency doubles every 8 months (95% CI: 5-14), and NVIDIA holds 80-90...Quality: 67/100 - Infrastructure costs and capacity
- AI CapabilitiesAi Transition Model MetricAI CapabilitiesComprehensive tracking of AI benchmark performance 2020-2025 showing rapid saturation (MMLU: 43.9%→96.7%, HumanEval: 28.8%→96.3%, ARC-AGI: 9.2%→87.5%), with o3 achieving human-level reasoning. Crit...Quality: 61/100 - Performance metrics related to economic value
- Lab BehaviorAi Transition Model MetricLab BehaviorComprehensive tracking of 10 lab behavior metrics finds concerning trends: 53% average compliance with voluntary commitments, evaluation timelines compressed from months to days at OpenAI, 25+ seni...Quality: 65/100 - Corporate practices affecting these metrics
- Governance & PolicyCruxAI Governance and PolicyComprehensive analysis of AI governance mechanisms estimating 30-50% probability of meaningful regulation by 2027 and 5-25% x-risk reduction potential through coordinated international approaches. ...Quality: 66/100 - Regulations affecting labor markets
Last Updated: December 2025
Next Review: March 2026 (post-Q1 2025 data releases)