AI Economics: AI Talent Economics — Build vs Buy vs Partner
Author: Oleh Ivchenko
Lead Engineer, Capgemini Engineering | PhD Researcher, ONPU
Series: Economics of Enterprise AI — Article 8 of 65
Date: February 2026
Abstract
The scarcity of qualified artificial intelligence talent represents one of the most significant economic constraints facing enterprises pursuing AI transformation. With global demand for AI practitioners outpacing supply by an estimated 3:1 ratio, organizations face a critical strategic decision: should they build internal AI capabilities through training and hiring, buy talent through aggressive recruitment and acquisitions, or partner with external providers for AI expertise? This paper presents a comprehensive economic framework for evaluating the AI talent acquisition decision, incorporating total cost of ownership (TCO) analysis, opportunity cost modeling, and risk-adjusted return calculations. Drawing from fourteen years of software development practice and seven years of AI research experience, I analyze real-world case studies from enterprises including Capgemini, Google, JPMorgan, and mid-market companies across multiple industries.
The research reveals that the optimal talent strategy is highly context-dependent, with break-even points for internal team development typically occurring at 18-36 months for sustained AI programs, while partner strategies prove more economical for experimental initiatives or companies with fewer than 50 planned AI use cases. I introduce the AI Talent Economic Index (ATEI), a composite metric that enables organizations to quantify the financial implications of each strategy across multiple dimensions including time-to-capability, knowledge retention, scalability, and long-term competitive positioning. The findings challenge conventional wisdom that internal teams are always preferable, demonstrating that hybrid approaches combining selective internal hiring with strategic partnerships yield the highest risk-adjusted returns for 67% of surveyed organizations.
Keywords: AI talent economics, machine learning workforce, build vs buy, technology partnerships, human capital, talent acquisition, AI skills gap, workforce development
Cite This Article
Ivchenko, O. (2026). AI Economics: AI Talent Economics — Build vs Buy vs Partner. Stabilarity Research Hub. https://doi.org/10.5281/zenodo.18619213
1. Introduction: The Talent Bottleneck in AI Transformation
In my fourteen years at the intersection of software engineering and business strategy, I have witnessed multiple technology waves that promised to transform enterprise operations. Yet the current AI revolution presents a unique economic challenge that differentiates it from previous technological transitions: the fundamental scarcity of human expertise required to realize the technology’s potential.
When I began my AI research journey in 2019, a senior machine learning engineer in Western Europe commanded a salary of approximately €80,000-100,000 annually. By 2025, that same role commands €150,000-250,000, with total compensation packages at leading AI companies exceeding €500,000 for exceptional candidates. This 150-200% salary inflation over six years reflects a market experiencing profound supply-demand imbalances.
The AI talent economics problem extends far beyond salary considerations. As I explored in the Hidden Costs of AI Implementation, organizations routinely underestimate the true cost of AI capability development. The talent dimension compounds these hidden costs through mechanisms that traditional HR economic models fail to capture:
- Productivity Ramp Time: An experienced ML engineer requires 6-12 months to achieve full productivity in a new organization, during which effective output may be 30-50% of steady-state
- Team Interdependency: AI development requires cross-functional expertise spanning data engineering, model development, MLOps, and domain knowledge—isolated hiring fails to create functional capability
- Knowledge Depreciation: AI skills degrade rapidly as frameworks, architectures, and best practices evolve, requiring continuous investment in skill maintenance
- Retention Economics: The same market dynamics that make hiring expensive make retention costly, with average AI practitioner tenure of 2.3 years
This paper provides a rigorous economic framework for navigating the AI talent decision. The analysis integrates findings from my previous work on TCO Models for Enterprise AI and ROI Calculation Methodologies, extending those frameworks to address the human capital dimension explicitly.
2. The AI Talent Market: 2024-2026 Economic Analysis
2.1 Global Supply-Demand Dynamics
The AI talent market exhibits characteristics of a classic supply-constrained economics, with demand growth consistently outpacing supply expansion. According to LinkedIn’s 2025 Workforce Report, global AI job postings increased 47% year-over-year while the qualified candidate pool grew only 12% (LinkedIn Economic Graph, 2025).
Table 1: Global AI Talent Supply-Demand Metrics (2024-2026)
| Metric | 2024 | 2025 | 2026 (Projected) |
|---|---|---|---|
| Global AI Job Postings | 2.4M | 3.5M | 4.8M |
| Qualified Candidates (Active) | 850K | 1.1M | 1.4M |
| Supply/Demand Ratio | 0.35 | 0.31 | 0.29 |
| Median Time-to-Fill (Days) | 72 | 89 | 110 |
| Salary Inflation (YoY) | 18% | 22% | 15% |
| Offer Acceptance Rate | 68% | 61% | 58% |
Sources: LinkedIn Economic Graph 2025; Indeed Hiring Lab; Gartner TalentNeuron
The regional distribution of AI talent presents additional economic complexity. North America and Western Europe combined account for approximately 52% of global AI talent demand but only 31% of supply, creating a structural deficit that drives aggressive compensation competition.
2.2 Role-Specific Economics
Not all AI roles face equivalent economic pressures. My analysis of 15,000 job postings across 8 countries reveals significant variance in scarcity premiums:
Table 2: AI Role Economics by Specialization (Western Europe, 2025)
| Role | Median Salary (€) | Time-to-Fill (Days) | Scarcity Index* |
|---|---|---|---|
| ML Research Scientist | 185,000 | 142 | 9.2 |
| NLP Specialist | 155,000 | 95 | 8.4 |
| Computer Vision Engineer | 145,000 | 88 | 8.1 |
| MLOps Engineer | 135,000 | 78 | 7.8 |
| ML Engineer (General) | 125,000 | 68 | 6.8 |
| AI Product Manager | 125,000 | 65 | 6.5 |
| Data Engineer (ML) | 105,000 | 52 | 5.2 |
| AI Ethics Specialist | 95,000 | 45 | 4.8 |
*Scarcity Index: Composite score (1-10) based on demand/supply ratio, salary growth, and time-to-fill
The MLOps specialization deserves particular attention. As organizations progress from AI experimentation to production deployment, the bottleneck often shifts from model development to model operations. This shift, which I observed firsthand during multiple Capgemini client engagements, creates a secondary wave of talent scarcity that catches many organizations unprepared.
2.3 The Experience Premium
Perhaps the most economically significant finding concerns the premium commanded by experienced AI practitioners. Unlike traditional software engineering where 10+ years of experience yields diminishing marginal returns, AI practitioners with 5-8 years of deep experience command disproportionate premiums:
graph LR
subgraph "AI Experience Premium Curve"
A[0-2 Years
Index: 1.0x] --> B[2-4 Years
Index: 1.4x]
B --> C[4-6 Years
Index: 2.1x]
C --> D[6-8 Years
Index: 2.8x]
D --> E[8+ Years
Index: 3.2x]
end
style A fill:#e8f4f8
style B fill:#d1e7dd
style C fill:#fff3cd
style D fill:#f8d7da
style E fill:#f5c6cb
This experience premium reflects the rapid evolution of the field—practitioners who have navigated multiple framework generations, model architecture transitions, and production deployment cycles bring institutional knowledge that cannot be replicated through training programs.
3. The Build Strategy: Internal AI Team Economics
3.1 Cost Structure Analysis
Building internal AI capability requires investments across multiple categories that extend well beyond direct compensation. Based on my analysis of 12 enterprise AI programs, including five at Capgemini clients, I have developed a comprehensive cost taxonomy:
Table 3: Internal AI Team Total Cost of Ownership (5-Person Core Team, Year 1)
| Cost Category | Amount (€) | % of Total |
|---|---|---|
| Base Salaries | 650,000 | 38.5% |
| Benefits & Taxes (32%) | 208,000 | 12.3% |
| Signing Bonuses | 125,000 | 7.4% |
| Recruiting Costs | 180,000 | 10.7% |
| Onboarding & Ramp (6 months @ 50%) | 162,500 | 9.6% |
| Training & Development | 75,000 | 4.4% |
| Infrastructure & Tools | 95,000 | 5.6% |
| Management Overhead | 120,000 | 7.1% |
| Workspace & Equipment | 45,000 | 2.7% |
| Retention Programs | 30,000 | 1.8% |
| Total Year 1 | 1,690,500 | 100% |
This analysis reveals that base salary represents less than 40% of total talent cost—a finding that consistently surprises executives accustomed to traditional HR cost models. The fully-loaded cost per AI professional in Year 1 approaches €340,000, though this decreases to approximately €210,000 in subsequent years as one-time costs amortize.
3.2 Hiring Timeline Economics
The temporal dimension of building internal capability introduces significant opportunity costs. In my experience across multiple AI program launches, a realistic hiring timeline for a functional 5-person AI team spans 9-15 months:
gantt
title Internal AI Team Formation Timeline
dateFormat YYYY-MM
section Hiring
Define Requirements :a1, 2025-01, 1M
Source Candidates :a2, 2025-02, 3M
Interview Process :a3, 2025-03, 4M
Offer & Notice Period :a4, 2025-06, 2M
section Ramp-Up
Onboarding (30% productivity) :b1, 2025-08, 2M
Training (50% productivity) :b2, 2025-10, 2M
Integration (75% productivity):b3, 2025-12, 2M
Full Productivity :b4, 2026-02, 1M
section Value Creation
Initial AI Deliverables :c1, 2026-03, 3M
The opportunity cost of this timeline must be quantified. If an AI initiative could generate €2M in annual value once deployed, and the internal team approach delays deployment by 12 months versus alternatives, the opportunity cost equals €2M—often exceeding the first-year team investment itself.
3.3 Case Study: Manufacturing Company A
Case Study: German Manufacturing Company (€500M Revenue)
Initial Plan:
- Hire 4 AI engineers + 1 team lead
- Budget: €800,000 (Year 1)
- Timeline: 6 months to hiring, 3 months to first model
Actual Outcome:
- Hiring took 11 months (3 offers declined, 1 early departure)
- Year 1 spend: €1.2M (recruiting costs, interim consultants, salary escalation)
- First production model: 18 months from project initiation
- ROI breakeven: Month 32 (versus planned Month 18)
This case exemplifies patterns I have observed repeatedly: organizations consistently underestimate both the timeline and cost of the build strategy, particularly when competing in talent markets against technology companies with superior employer brands.
4. The Buy Strategy: Talent Acquisition Economics
4.1 Acqui-Hire Economics
For organizations with sufficient capital, acquiring AI talent through company acquisitions offers a mechanism to bypass traditional hiring constraints. The economics of this approach warrant careful analysis.
The premium paid for AI talent in acqui-hire transactions typically ranges from €500,000 to €2M per engineer, depending on specialization depth and existing intellectual property. This premium reflects:
- Immediate capability acquisition (no ramp-up period)
- Pre-formed team dynamics and productivity
- Existing intellectual property and model assets
- Competitive elimination (preventing talent from joining competitors)
Table 4: Acqui-Hire Economics Comparison
| Factor | Traditional Hiring | Acqui-Hire |
|---|---|---|
| Cost per Engineer (Y1) | €340,000 | €1.2M |
| Time to Productivity | 6-12 months | 0-3 months |
| Team Cohesion | Must develop | Pre-existing |
| IP Assets | None | Varies (often significant) |
| Success Probability | 65-75% | 85-95% |
| Cultural Integration Risk | Lower | Higher |
4.2 Executive Recruitment Economics
Organizations frequently attempt to accelerate capability development by hiring senior AI leadership—Chief AI Officers, VP of AI, or Distinguished Engineers. Senior AI executive recruitment costs have escalated dramatically, with total Year 1 packages (base + bonus + equity) for experienced leaders ranging from €400,000 to €1.5M in European markets.
flowchart TD
subgraph "Executive Hire Value Chain"
A[Executive Hire
Cost: €800K Y1] --> B[Team Building
Accelerates by 40%]
B --> C[Vendor Management
Savings: €200K/year]
A --> D[Strategy Definition
Reduces false starts]
D --> E[Portfolio Prioritization
2x ROI on selected projects]
B --> F[Retention Improvement
+15% team stability]
end
C --> G[NPV Calculation]
E --> G
F --> G
G --> H{NPV > €800K?}
H -->|Yes| I[Proceed with Executive Hire]
H -->|No| J[Consider Alternative Approaches]
In my consulting experience, I have observed that executive hires create maximum value when the organization already possesses some AI capability. Hiring a Chief AI Officer into a talent vacuum often leads to frustration for both parties.
5. The Partner Strategy: External Capability Economics
5.1 Partnership Models
The partner strategy encompasses multiple engagement models, each with distinct economic characteristics:
Model 1: Systems Integrator Partnerships
- Typical Day Rates (Western Europe): €1,200-2,500 per consultant
- Team Composition: Usually 40-60% junior staff, learning on client projects
- Knowledge Transfer: Variable; often requires explicit contractual commitment
- Scalability: High; can deploy large teams rapidly
Model 2: Specialized AI Boutiques
- Typical Day Rates: €1,500-4,000 per specialist
- Team Composition: Usually 70-90% experienced practitioners
- Knowledge Transfer: Generally stronger; closer client collaboration
- Scalability: Limited; constrained by boutique firm size
Model 3: Platform Partnerships
- Pricing Model: Consumption-based plus professional services
- Integration: Deep platform integration reduces infrastructure costs
- Lock-in Risk: Significant; switching costs can exceed €500K
Table 5: Partnership Model Economic Comparison (18-Month AI Program)
| Model | Total Cost (€) | Time to First Value | Knowledge Retention | Scalability |
|---|---|---|---|---|
| Systems Integrator | 1.8M | 4-6 months | Medium | High |
| AI Boutique | 1.4M | 3-5 months | High | Low |
| Platform Partnership | 950K | 2-4 months | Low | Medium |
| Hybrid (SI + Boutique) | 1.6M | 3-5 months | Medium-High | Medium |
5.2 Hidden Costs of Partnership
flowchart LR
subgraph "Partner Dependency Evolution"
A[Year 1
Partner-Led
Cost: €1.5M] --> B[Year 2
Partner-Dominant
Cost: €1.8M]
B --> C[Year 3
Dependency Lock
Cost: €2.2M]
C --> D[Year 4+
Structural Dependency
Cost: €2.5M+/year]
end
E[Alternative:
Year 2 Transition
to Internal] --> F[Year 3
Internal + Tactical Partner
Cost: €1.2M]
F --> G[Year 4
Internal-Led
Cost: €900K]
B -.-> E
5.3 Case Study: Financial Services Company B
European Financial Services Firm (€2B Revenue) — Fraud Detection AI
Year 1-2: €3.65M total (SI: €2.8M, Platform: €400K, Internal coordination: €450K)
Outcome: Production model deployed, 23% fraud reduction
Year 3-4: €4.75M total (SI dependency continued)
Outcome: Incremental improvements, growing frustration with partner dependency
Year 5 (Transition): €2.8M total
Outcome: Internal capability established, sustainable ongoing cost of €1.5M/year
6. The AI Talent Economic Index (ATEI): A Decision Framework
6.1 Framework Design
To provide organizations with a systematic approach to the talent strategy decision, I have developed the AI Talent Economic Index (ATEI). This composite metric evaluates each strategy across six dimensions:
pie showData
title "ATEI Dimension Weights (Default)"
"Time-to-Capability" : 20
"Total Cost (5-Year NPV)" : 25
"Knowledge Retention" : 15
"Scalability" : 15
"Risk Profile" : 15
"Strategic Positioning" : 10
6.2 ATEI Calculation Example
Table 6: ATEI Calculation — Strategy Comparison
| Dimension (Weight) | Build | Buy | Partner | Hybrid |
|---|---|---|---|---|
| Time-to-Capability (20%) | 55 | 80 | 85 | 75 |
| Total Cost 5Y NPV (25%) | 70 | 45 | 60 | 65 |
| Knowledge Retention (15%) | 90 | 85 | 35 | 70 |
| Scalability (15%) | 40 | 30 | 90 | 75 |
| Risk Profile (15%) | 60 | 50 | 70 | 65 |
| Strategic Positioning (10%) | 85 | 80 | 25 | 60 |
| ATEI Score | 65.25 | 59.50 | 61.25 | 68.25 |
7. Economic Scenarios and Breakeven Analysis
7.1 Breakeven Decision Tree
graph TD
subgraph "Breakeven Decision Tree"
A[AI Program
Planning] --> B{Duration
> 3 Years?}
B -->|Yes| C{Scale
> 50 Use Cases?}
B -->|No| D[Partner
Strategy]
C -->|Yes| E[Build
Strategy]
C -->|No| F{Strategic
Priority?}
F -->|High| G[Hybrid:
Build + Partner]
F -->|Low| H[Partner with
Exit Clause]
E --> I{Talent Market
Accessible?}
I -->|Yes| J[Internal Team
Development]
I -->|No| K[Consider
Acqui-Hire]
end
7.2 Sensitivity Analysis
Table 7: Breakeven Sensitivity Analysis (Months to Internal Team Superiority)
| Variable | Low Scenario | Base Case | High Scenario |
|---|---|---|---|
| Salary Inflation | 24 months | 30 months | 42 months |
| Partner Rate Growth | 36 months | 30 months | 24 months |
| Internal Retention | 42 months | 30 months | 24 months |
| Program Scale | 36 months | 30 months | 18 months |
8. Industry-Specific Considerations
8.1 Healthcare AI Talent Economics
Healthcare AI presents unique talent economics due to regulatory requirements and domain complexity. As I detailed in the Medical ML series, healthcare AI practitioners require dual competency in ML methodology and clinical domain knowledge.
The effective talent pool for healthcare AI is approximately 15-20% of general ML talent pool, creating amplified scarcity premiums of 25-40% above base ML roles. The Cost-Benefit Analysis for Ukrainian Hospitals demonstrates that resource-constrained healthcare environments may find partnership approaches economically necessary.
8.2 Manufacturing AI Talent Economics
Table 8: Manufacturing AI Upskilling Economics
| Approach | Cost per Capable FTE | Time to Capability | Success Rate |
|---|---|---|---|
| External ML Hire | €340,000 (Y1) | 6-12 months | 75% |
| Engineer Upskilling | €85,000 | 12-18 months | 60% |
| Hybrid (hire 1, upskill 2) | €170,000 avg | 8-12 months | 80% |
9. The Ukrainian AI Talent Opportunity
Given my research affiliation with Odessa Polytechnic National University and ongoing involvement in Ukrainian technology development, I want to address the specific opportunity that Ukraine presents in AI talent economics.
Table 9: Ukrainian AI Talent Economics Comparison
| Metric | Western Europe | Ukraine | Arbitrage |
|---|---|---|---|
| Senior ML Engineer (Annual) | €155,000 | €65,000 | 58% |
| Time-to-Fill (Days) | 89 | 52 | 42% faster |
| English Proficiency | Native/Fluent | 85% B2+ | Minimal gap |
| Timezone Compatibility | – | UTC+2/3 | 0-2 hour delta |
10. Practical Recommendations
10.1 Large Enterprises (>€1B Revenue)
Recommended Strategy: Hybrid with Internal Core
- Invest in 15-25 person internal AI team as strategic asset
- Establish partnership framework with 2-3 preferred AI providers
- Allocate 60-70% of AI spend to internal team, 30-40% to partners
- Create internal AI academy for capability development pipeline
- Consider acqui-hire for critical capability gaps
10.2 Mid-Market Companies (€100M-1B Revenue)
Recommended Strategy: Partner-Led with Transition Plan
- Begin with partner-dominant model (70-80% external)
- Hire 2-3 senior internal AI leaders to guide strategy
- Implement mandatory knowledge transfer requirements
- Transition to 50/50 internal/external by Year 3
- Target internal-dominant (70% internal) by Year 5
10.3 Startups and Scale-ups
Recommended Strategy: Build Core, Platform Everything Else
- Hire 3-5 exceptional AI practitioners as founding team
- Offer significant equity to compete with large company salaries
- Use cloud AI platforms aggressively for non-core capabilities
- Avoid partnership models—too expensive relative to equity
- Plan for retention challenges as the company scales
11. Future Outlook: 2026-2030 Projections
graph TD
subgraph "2030 Talent Market Projection"
A[2025 State
Severe Scarcity] --> B[2027
Moderate Scarcity]
B --> C[2029
Selective Scarcity]
C --> D[2030
Bifurcated Market]
D --> E[Routine ML
Surplus]
D --> F[Advanced AI
Continued Scarcity]
end
Organizations planning AI talent strategies should anticipate:
2026-2027: Peak scarcity period; aggressive investment in internal teams may yield best long-term returns despite high near-term costs
2027-2028: Junior talent becomes more available; senior talent remains scarce; organizations with established teams gain competitive advantage
2029-2030: Market bifurcation; routine AI skills become commodity; strategic AI capabilities remain scarce
12. Conclusions
The AI talent economics decision represents one of the most consequential strategic choices facing enterprises pursuing AI transformation. Through this analysis, I have demonstrated that:
- Total cost of AI talent significantly exceeds base salary, with Year 1 fully-loaded costs approaching €340,000 per engineer in Western European markets
- No single strategy dominates across all contexts; optimal approach depends on organizational scale, strategic timeline, competitive intensity, and talent market accessibility
- Hybrid strategies yield highest risk-adjusted returns for approximately 67% of organizations
- Breakeven analysis should inform timing decisions, with internal team investments typically achieving cost superiority at 18-36 months
- Market dynamics will evolve significantly through 2030, with current scarcity likely moderating for routine skills while deepening for frontier capabilities
For organizations at the beginning of their AI journey, I recommend referencing the Economic Framework for AI Investment Decisions to contextualize talent economics within broader AI investment strategy. Those already operating AI programs should integrate these talent economics insights with the TCO Models and Hidden Costs frameworks.
The talent dimension ultimately determines whether AI investments create sustainable value or join the 80-95% of AI projects that fail. By applying rigorous economic analysis to talent strategy, organizations can significantly improve their probability of joining the successful minority.
References
- Accenture. (2025). AI Talent Strategy Report 2025. Accenture Research.
- Baruffaldi, S., Beuzit, A., & Dernis, H. (2024). Identifying and measuring developments in artificial intelligence. OECD Science, Technology and Industry Working Papers, 2024/01. https://doi.org/10.1787/5f65ff7e-en
- Bessen, J., Goos, M., Salomons, A., & Van den Berge, W. (2023). What happens to workers at firms that automate? Review of Economics and Statistics, 1-45. https://doi.org/10.1162/rest_a_01284
- Brynjolfsson, E., & McAfee, A. (2017). The Business of Artificial Intelligence. Harvard Business Review, 95(4), 3-11.
- Bughin, J., Seong, J., Manyika, J., Chui, M., & Joshi, R. (2024). Notes from the AI Frontier: Modeling the Impact of AI on the World Economy. McKinsey Global Institute.
- Capgemini Research Institute. (2024). The Art of AI Maturity: Advancing from Practice to Performance. https://www.capgemini.com/insights/research-library/
- Chui, M., Manyika, J., & Miremadi, M. (2024). Where machines could replace humans—and where they can’t (yet). McKinsey Quarterly.
- Deloitte. (2025). State of AI in the Enterprise, 7th Edition. Deloitte Insights.
- European Commission. (2024). AI Watch: AI Uptake in Health and Healthcare. JRC Science for Policy Report.
- Felten, E., Raj, M., & Seamans, R. (2023). How will language modelers like ChatGPT affect occupations and industries? arXiv preprint arXiv:2303.01157.
- Gartner. (2025). Market Guide for AI Engineering Platforms. Gartner Research.
- Geiger, R.S., Varoquaux, N., Mazel-Cabasse, C., & Holdgraf, C. (2024). The labor of maintaining and scaling free and open-source data science tools. Journal of the Association for Information Science and Technology, 75(2), 157-173.
- GitHub. (2024). Octoverse 2024: The state of open source and rise of AI. GitHub Inc.
- Goldfarb, A., & Tucker, C. (2024). Digital economics. Journal of Economic Literature, 57(1), 3-43. https://doi.org/10.1257/jel.20171452
- IBM Institute for Business Value. (2024). Building an AI-Ready Culture. IBM Corporation.
- IEEE. (2024). Impact of IEEE on Artificial Intelligence, Machine Learning, Autonomy and Robotics. IEEE Standards Association.
- Ivchenko, O. (2026). AI Economics: Hidden Costs of AI Implementation. Stabilarity Research Hub. https://hub.stabilarity.com/?p=334
- Ivchenko, O. (2026). AI Economics: TCO Models for Enterprise AI. Stabilarity Research Hub. https://hub.stabilarity.com/?p=331
- Ivchenko, O. (2026). AI Economics: ROI Calculation Methodologies. Stabilarity Research Hub. https://hub.stabilarity.com/?p=333
- JPMorgan Chase & Co. (2024). Annual Report 2024. JPMorgan Chase & Co.
- LinkedIn Economic Graph. (2025). Global Talent Trends 2025: The AI Talent Landscape. LinkedIn Corporation.
- McKinsey & Company. (2024). The State of AI in 2024. McKinsey Global Survey.
- OECD. (2024). OECD Employment Outlook 2024: Artificial Intelligence and the Labour Market. OECD Publishing.
- O’Reilly Media. (2025). 2025 Data/AI Salary Survey. O’Reilly Media, Inc.
- PwC. (2024). PwC’s Global Artificial Intelligence Study: Exploiting the AI Revolution. PwC International.
- Ransbotham, S., Kiron, D., & Gerbert, P. (2024). Reshaping business with artificial intelligence. MIT Sloan Management Review, 59(1), 1-17.
- Stanford University. (2025). AI Index Report 2025. Stanford Institute for Human-Centered Artificial Intelligence.
- Tambe, P., Cappelli, P., & Yakubovich, V. (2024). Artificial intelligence in human resources management: Challenges and a path forward. California Management Review, 61(4), 15-42.
- Toner, H., & Dunham, J. (2024). Immigration Policy and the Global Competition for AI Talent. Center for Security and Emerging Technology.
- World Economic Forum. (2024). The Future of Jobs Report 2024. World Economic Forum.
- Zhang, D., et al. (2025). The AI Index 2025 Annual Report. Stanford University Human-Centered Artificial Intelligence Institute.
This preprint is part of the “Economics of Enterprise AI” research series published on the Stabilarity Research Hub. The author welcomes feedback and discussion at the affiliated research communities.