Artificial intelligence is transforming the workforce at an unprecedented pace. While AI creates new opportunities and enhances productivity in many fields, it also poses a significant threat to millions of workers whose jobs involve routine, repetitive tasks that AI can perform more efficiently.
This report analyzes 784 occupations to identify the 50 jobs most vulnerable to AI automation. The analysis reveals that office and administrative support roles dominate the high-risk category, with exposure levels ranging from 77.67% to 96.25%.
The data shows that these high-risk occupations have nearly 2.9× the automation exposure of the average job. Telemarketers face the highest exposure—meaning about 96 out of every 100 tasks could potentially be automated.
However, the story isn't entirely bleak: some high-exposure occupations are actually growing because AI augments worker productivity rather than replacing workers entirely. This report provides workers, policymakers, and educators with actionable insights to navigate the AI transition, including which occupations are most at risk, what makes them vulnerable, and what workers can do to adapt.
What Does "Exposure" Mean?
"Exposure to AI Automation" is the percentage of tasks within an occupation that could potentially be automated using current or near-future AI technology. For example, 90% exposure means 90 out of every 100 tasks could be automated.
Key Takeaways
- 96.25% of Telemarketers' tasks can be done by AI—the highest of any job analyzed.
- 86.3% of tasks in the top 50 high-risk jobs can be done by AI.
- These 50 jobs are nearly 2.9× more automatable than the average job (86.3% vs. 29.84% exposure).
- Even the "lowest-risk" job in the top 50 still has 77.67% of its tasks automatable.
- 54% of the top 50 high-risk jobs are office and administrative roles.
- Only 6.4% of all occupations fall into this extreme high-risk group.
Expert Insights: Industry Leaders on AI Automation Risk
Industry experts and business leaders share their perspectives on which jobs are most vulnerable to AI automation and when displacement is likely to occur.
These expert perspectives align with the data analysis: routine, repetitive, and rule-based occupations face the highest automation risk. The consensus timeline suggests significant displacement within 2-5 years for the most vulnerable roles, with complete automation of routine tasks occurring within 5-10 years.
Interactive Tool: Explore High-Risk and Low-Risk Occupations
See how at-risk your job is in seconds.
Search 784 occupations by exposure level, job category, or risk type. Filter and sort to find specific occupations or explore patterns across industries.
| Rank | Occupation | Category | AI Exposure |
|---|
Deep Dive: What These Numbers Mean
Telemarketers at 96.25% (Highest Exposure)
Telemarketers face the highest AI automation risk—about 96 out of every 100 tasks could be automated. This is 3.2× higher than the average occupation (29.84% exposure).
The 70% "Very High Risk" Line
Occupations with exposure above 70% are considered "very high risk" and are most vulnerable to displacement as AI technology advances. All 50 occupations in this report exceed this threshold, with exposure levels ranging from 77.67% to 96.25%. Even the lowest exposure (77.67%) is still 7.67 percentage points above the critical risk line, indicating uniform vulnerability across this group.
The Risk Gap vs All Occupations
The top 50 occupations average 86.3% exposure—nearly 2.9× higher than all 784 occupations analyzed (29.84% average). These 50 jobs represent just 6.4% of all occupations but account for a disproportionate share of extreme risk. The range of exposure (77.67% to 96.25%) spans 18.58 percentage points, suggesting these occupations share similar vulnerability characteristics—highly structured, rule-based, and data-intensive tasks that AI systems can increasingly perform more efficiently than humans.
The Scale of Risk: Putting These Numbers in Context
Average exposure: 86.3% vs. 29.84% across all 784 occupations. This represents a massive concentration of risk in a relatively small number of job types.
All 50 occupations exceed the 70% "very high risk" threshold, with exposure levels ranging from 77.67% to 96.25%.
The gap between highest (96.25%) and lowest (77.67%) is 18.58 percentage points.
High-Risk vs. Overall Workforce
Compared to the broader workforce, these 50 jobs occupy a distinctly higher risk band.
| Metric | Top 50 High-Risk | All 784 Occupations | Difference |
|---|---|---|---|
| Average Exposure | 86.3% | 29.84% | +56.5 percentage points |
| Median Exposure | 85.0% | 23.52% | +61.5 percentage points |
| Minimum Exposure | 77.67% | 0.0% | +77.67 percentage points |
| Maximum Exposure | 96.25% | 96.25% | Same (this list includes the maximum) |
| Occupations Above 70% | 50 (100%) | 77 (9.8%) | 10.2× higher concentration |
Risk by Occupational Category
The high-risk occupations are not evenly distributed across all job categories. Some sectors are dramatically overrepresented, revealing patterns in which types of work are most vulnerable to AI automation.
Administrative workflows are the easiest to automate because they involve structured data and rule-based decisions. Office and administrative support roles account for 54% of the top 50 high-risk jobs (27 out of 50), and just three categories—Office/Admin, Business/Financial, and Computer/Math—make up 82% of all high-risk occupations. Nearly all categories in this group have average exposure above 80%, suggesting that once an occupation is in this group, risk is uniformly high rather than scattered.
What Makes These Occupations Vulnerable?
Analysis of the top 50 high-risk occupations reveals common characteristics that make them susceptible to AI automation. Understanding these factors can help workers identify their own risk level and plan for transitions.
1. Routine, Repetitive Tasks
Jobs involving the same tasks performed repeatedly with little variation are highly automatable. Examples: Data entry, order processing, bookkeeping. AI excels at consistent, pattern-based work.
2. Rule-Based Decision Making
Occupations that follow clear rules, procedures, or algorithms are vulnerable. Examples: Insurance underwriting, credit checking, tax preparation. AI can apply rules more consistently than humans.
3. Data Processing Focus
Jobs primarily involving collecting, organizing, or processing structured data are at high risk. Examples: Medical records, statistical analysis, database management. AI systems are designed for data manipulation.
4. Limited Human Interaction
Roles requiring minimal interpersonal communication or emotional intelligence are more automatable. Examples: Telemarketing (ironically), switchboard operations, correspondence clerks. AI can handle scripted interactions.
5. Information Retrieval
Jobs that primarily involve finding, organizing, or presenting existing information are vulnerable. Examples: Travel agents, title searchers, proofreaders. AI search and retrieval capabilities are rapidly improving.
6. Structured Work Environment
Occupations with standardized processes, clear inputs/outputs, and measurable outcomes are easier to automate. Examples: Payroll processing, billing, order fulfillment. Predictable workflows enable AI implementation.
The Augmentation Paradox: When High Exposure Doesn't Mean Job Loss
Exposure vs. Job Growth
High exposure doesn't always mean job loss—some high-exposure roles are growing due to AI augmentation. Hover over points to see details.
Augmentation (High Exposure, Growing)
Displacement (High Exposure, Declining)
Mixed (Moderate Growth)
High exposure can mean augmentation when roles require strategic thinking, creativity, or human interaction—making workers more productive rather than replaceable. For example, Data Scientists (82.28% exposure) are projected to grow 33.5% over the next decade, and Software Developers (52.11% exposure) are growing 15.8%. The key distinction is whether a job is built on strategic judgment and human interaction (augmentation likely) or pure routine execution (displacement likely).
What Workers in High-Risk Occupations Should Do
High exposure doesn't necessarily mean immediate job loss, but it does signal the need for proactive career planning. Here are evidence-based recommendations:
Your Career Transition Roadmap
Action Steps
- Build AI Fluency: Learn to work alongside AI tools rather than competing with them.
- Develop Transferable Skills: Focus on critical thinking, problem-solving, emotional intelligence, creativity, and complex communication.
- Explore Adjacent Roles: Many high-risk occupations have related roles with lower exposure (e.g., data entry clerks → data analysts).
Long-Term Strategy
- Pursue Targeted Education: Consider certificates or degrees in fields with lower AI exposure (healthcare, skilled trades, certain technology roles).
- Plan for Transitions: Start researching and preparing for career changes now, before displacement occurs.
- Build Financial Resilience: Prioritize building emergency savings and reducing debt to provide a buffer during potential career transitions.
Timeline and Urgency: When Will Displacement Occur?
The risk is already here; the disruption will unfold over the next decade.
The "Last Mile Problem" and the Window for Adaptation
While AI technology capable of automating these tasks already exists, actual workplace adoption typically lags behind technological capability by 2-5 years.
This creates a critical window for workers to adapt—but only if they act proactively.
Research from the Brookings Institution and NBER studies shows that organizational inertia, regulatory barriers, and implementation costs slow AI adoption.
However, once adoption begins in an industry, it tends to accelerate rapidly.
AI systems capable of performing 73-96% of tasks in these occupations already exist.
The technology is ready.
Organizational adoption typically lags technology by 2-5 years.
This creates a window for workers to adapt.
Once adoption accelerates, peak displacement is likely within 5-10 years.
This timeline applies to the highest-risk occupations.
Early Warning Signs
Workers should watch for these indicators that displacement may be accelerating in their field:
- Job Postings Decline: Fewer openings in your occupation, especially entry-level positions
- Wage Stagnation: Salaries not keeping pace with inflation despite high demand
- Employer Investment in Automation: Companies in your industry investing heavily in AI tools
- Job Descriptions Change: New roles requiring "AI fluency" or "working with AI tools"
- Industry Consolidation: Mergers and acquisitions reducing total employment
Policy Implications: What Needs to Happen
The Role of Policy in Managing AI Displacement
The concentration of risk in these 50 occupations—representing millions of workers—requires proactive policy intervention to manage the transition and prevent widespread economic disruption.
Reskilling Programs
Government-funded training programs targeting high-risk occupations can help workers transition to growing fields. Programs should be accessible, affordable, and aligned with labor market needs.
Employer Incentives
Tax credits and grants for employers who invest in upskilling existing workers rather than replacing them. This encourages augmentation over pure automation.
Safety Net Expansion
Enhanced unemployment benefits, healthcare coverage during transitions, and wage insurance programs can provide security for displaced workers during career transitions.
Regional Workforce Development
Targeted investments in regions with high concentrations of at-risk workers, focusing on creating opportunities in low-exposure fields like healthcare and skilled trades.
Education System Reform
K-12 and higher education must prioritize durable human skills (adaptability, critical thinking, creativity) alongside technical skills to prepare students for an AI-augmented economy.
Labor Market Transparency
Public reporting on AI adoption rates, displacement numbers, and transition outcomes can help workers make informed decisions and hold policymakers accountable.
Bottom Line
AI automation risk is not evenly distributed. A small cluster of administrative, clerical, and data-processing occupations faces dramatically higher exposure—up to nearly 2.9× the average job.
While some roles may be augmented rather than displaced, millions of workers will need proactive adaptation, upskilling, or career transitions within the next 5–10 years.
The data is clear: routine, rule-based work is most vulnerable. The solution is equally clear: workers, employers, and policymakers must act now to prepare for an AI-augmented economy—one that will create new opportunities while displacing others.
For Journalists: Ready-to-Quote Statistics
Pre-written statistics and findings for immediate use in articles and reports.
Headline Options
- "50 Occupations Face 78-96% AI Automation Risk, New Analysis Reveals"
- "Top 50 High-Risk Jobs: 96.25% of Telemarketers' Tasks Can Be Automated"
- "Office Workers Most Vulnerable: 54% of Highest-Risk Jobs Are Administrative Roles"
- "AI Displacement Risk: 50 Occupations Face Nearly 2.9× Higher Exposure Than Average"
Key Findings (Bullet Format)
- 96.25% - Highest AI exposure (Telemarketers)
- 86.3% - Average exposure across top 50 occupations
- 77.67% - Lowest exposure in top 50 (about 3.3× higher than the median exposure across all occupations)
- 54% - Office/admin support occupations in top 50
- Nearly 2.9× higher - Average exposure compared to all occupations
- 784 - Total occupations analyzed
- 50 - Highest-risk occupations (top 6.4%)
Data Sources & Methodology
Overview
Primary Source: Wharton Budget Model - Occupational Exposure Analysis (2025)
Methodology: Analysis of 784 occupations calculating the percentage of tasks exposed to AI automation using current and near-future AI technology.
High-Risk Threshold: >70% exposure (very high risk)
How We Calculated AI Exposure
This report analyzes 784 occupations using data from the Wharton Budget Model, which calculates the percentage of tasks within each occupation that are exposed to AI automation.
The analysis is based on the 2025 AI exposure dataset.
What is "Exposure to AI Automation"?
Exposure to AI Automation is a metric that measures the percentage of tasks within an occupation that could potentially be automated using current or near-future AI technology.
This metric is calculated by:
- 1. Analyzing all tasks performed in each occupation (e.g., data entry, customer service, document processing, decision-making)
- 2. Evaluating each task against current and near-future AI capabilities to determine automation potential
- 3. Calculating the percentage of automatable tasks (e.g., 90% exposure = 90 out of 100 tasks can be automated)
- 4. Categorizing occupations by risk level (>70% = very high risk, 50-70% = high risk, 20-50% = moderate risk, <20% = low risk)
Example: If an occupation has 90% exposure, it means 90 out of every 100 tasks performed by workers in that occupation could potentially be automated by AI systems.
Key Distinction: The difference between "augmentation" (AI helps workers) and "displacement" (AI replaces workers) depends on whether the role requires strategic thinking, creativity, human interaction, or other skills that are difficult to automate.
Ranking Methodology
Occupations are ranked by their "Exposure to AI Automation" percentage, which represents the proportion of tasks that could potentially be automated using current and near-future AI technology.
The top 50 occupations shown in this report have the highest exposure percentages, ranging from 77.67% to 96.25%.
Data Sources
Primary Data Source:
-
Wharton Budget Model - Occupational Exposure Analysis (2025)
https://budgetmodel.wharton.upenn.edu/issues/2025/1/27/ai-exposure-by-occupation
Comprehensive analysis of 784 occupations with AI automation exposure percentages
Supporting Data Sources:
-
BLS Employment Projections 2024-2034
https://www.bls.gov/emp/
Occupational growth projections, employment numbers, and wage data -
Stanford AI Index 2025
https://aiindex.stanford.edu/
Comprehensive AI metrics and economy analysis -
NBER Working Papers
NBER w32319: Business Trends Survey |
NBER w32966: Rapid AI Adoption
Academic research on AI adoption rates and productivity impacts -
Brookings Institution - "The Last Mile Problem"
https://www.brookings.edu/articles/the-last-mile-problem-in-ai-adoption/
Analysis of the gap between AI capability and workplace adoption -
Microsoft Work Trend Index 2025
https://www.microsoft.com/en-us/worklab/work-trend-index
Productivity metrics and AI adoption patterns in frontier firms -
National University - AI Job Statistics
https://www.nu.edu/blog/ai-job-statistics/
Skills demand analysis and demographic impact data -
World Economic Forum - Future of Jobs Report 2025
https://www.weforum.org/reports/future-of-jobs-report-2025/
Global job trends, skills in demand, and reskilling recommendations
Key Metrics
Total Occupations Analyzed: 784
High-Risk Threshold: >70% exposure
Top 50 Criteria: Occupations ranked by exposure percentage, representing the highest-risk 6.4% of all occupations analyzed.
Data Collection Period: 2025
Projection Period: 2024-2034 (for growth data)