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Geothermal Electric Power Generation

National industry · NAICS 221116

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Geothermal Electric Power Generation is a U.S. industry in the NAICS classification. The Bureau of Labor Statistics estimates about 670 workers across 8 detailed occupations in it. A typical worker earns around $87,629 a year (Singulariki estimate, see below).

This U.S. industry comprises establishments primarily engaged in operating geothermal electric power generation facilities. These facilities use heat derived from the Earth to produce electric energy. The electric energy produced in these establishments is provided to electric power transmission systems or to electric power distribution systems.

Employment is national May 2024 OEWS. "Typical pay" is Singulariki's own figure — the employment-weighted average of each occupation's national median wage — a rough center of the industry, not an official BLS number.

How exposed this industry is to AI

Weighting every occupation in this industry by its employment and its unified AI-exposure index (the OpenAI "GPTs are GPTs" human-rated task overlap folded with the Felten/Raj/Seamans AIOE index), this industry sits in the Low band — 11th percentile across all industries.

Exposure measures how much of the work overlaps with what today's AI can do, not a prediction of automation; high-exposure industries are where AI is most likely to reshape tasks. Employment-weighted across 7 occupations that carry an exposure score. Compare every industry on the AI exposure hub.

How AI is actually used in this industry

Among measured Claude.ai (Free and Pro) conversations mapped to O*NET task statements (Anthropic Economic Index, 2026-01-15), these patterns are most associated with the occupations in this industry, weighted by its employment mix. They are shares of observed AI conversations — not of worker time, revenue, or what could be automated — and reflect one AI assistant's consumer sample, not all AI.

Signal coverage 79.1% of employment · 5/7 occupations have AEI task data
Augmentation vs. automation 11.8% working with AI · 54.2% handed to AI
Most common pattern Directive · AI does it; you give the instruction
Typical AI autonomy 3.4 / 5 · higher = AI acts more independently

Tasks driving the signal

The task families that account for the most AI activity across this industry's occupations (employment × observed usage), each attributed to the occupation it comes from.

Task Occupation How Share of signal
Enter codes and instructions to program computer-controlled machinery. Industrial Machinery Mechanics Directive 59.8%
Record and compile operational data by completing and maintaining forms, logs, or reports. Power Plant Operators Directive 15.7%
Review financial statements, sales or activity reports, or other performance data to measure productivity or goal achievement or to identify areas needing cost reduction or program improvement. General and Operations Managers Directive 9.0%
Develop or implement product-marketing strategies, including advertising campaigns or sales promotions. General and Operations Managers Iteration 6.5%
Evaluate power production or demand trends to identify opportunities for improved operations. Industrial Production Managers Directive 2.9%
Develop or implement electronic maintenance programs or computer information management systems. First-Line Supervisors of Mechanics, Installers, and Repairers Directive 2.8%
Examine objects, systems, or facilities and analyze information to determine needed installations, services, or repairs. First-Line Supervisors of Mechanics, Installers, and Repairers Directive 1.7%
Identify opportunities to improve plant electrical equipment, controls, or process control methodologies. Industrial Production Managers 1.6%

Occupations behind the signal

The occupations whose AI-touched tasks contribute most to this industry's signal, by employment here.

Occupation Workers Share How they use AI
Power Plant Operators 300 44.8% Directive
Industrial Machinery Mechanics 120 17.9% Directive
General and Operations Managers 40 6.0% Iteration
Industrial Production Managers 40 6.0% Directive
First-Line Supervisors of Mechanics, Installers, and Repairers 30 4.5% Directive

This rollup is only as complete as the occupation-task matches available for the industry; the coverage figure above is shown so sparse industries do not look falsely precise. AI exposure is not the same as replacement.

Skill & tool metabolism

What this industry's work actually runs on. Each figure is the share of the industry's workers in occupations that significantly rely on a skill, knowledge area, or ability (O*NET importance ≥ 3 of 5), or that use a tool category — its employment reach. This is a measure of how widespread a requirement is across the workforce, not how intensively any one worker uses it. Shares are independent and need not add to 100%.

Based on 100.0% of this industry's employment that maps to a detailed occupation with an O*NET skill profile.

Skills

Skill Employment reach Workers
Active Listening 100.0% 670
Complex Problem Solving 100.0% 670
Coordination 100.0% 670
Critical Thinking 100.0% 670
Judgment and Decision Making 100.0% 670
Monitoring 100.0% 670
Speaking 100.0% 670
Operations Monitoring 94.0% 630
Quality Control Analysis 94.0% 630
Reading Comprehension 82.1% 550
Writing 82.1% 550
Operation and Control 80.6% 540

Knowledge areas

Knowledge area Employment reach Workers
English Language 100.0% 670
Mathematics 100.0% 670
Production and Processing 95.5% 640
Mechanical 94.0% 630
Computers and Electronics 89.6% 600
Engineering and Technology 89.6% 600
Administration and Management 82.1% 550
Design 82.1% 550
Education and Training 71.6% 480
Chemistry 64.2% 430
Public Safety and Security 64.2% 430
Physics 58.2% 390

Abilities

Abilitie Employment reach Workers
Deductive Reasoning 100.0% 670
Inductive Reasoning 100.0% 670
Information Ordering 100.0% 670
Near Vision 100.0% 670
Oral Comprehension 100.0% 670
Oral Expression 100.0% 670
Problem Sensitivity 100.0% 670
Speech Recognition 100.0% 670
Written Comprehension 100.0% 670
Perceptual Speed 94.0% 630
Selective Attention 94.0% 630
Arm-Hand Steadiness 88.1% 590

Tool categories

Tool category Employment reach Workers
Electronic mail software 100.0% 670
Enterprise resource planning ERP software 100.0% 670
Industrial control software 100.0% 670
Office suite software 100.0% 670
Spreadsheet software 100.0% 670
Word processing software 100.0% 670
Data base user interface and query software 86.6% 580
Internet browser software 86.6% 580
Presentation software 86.6% 580
Facilities management software 79.1% 530
Analytical or scientific software 77.6% 520
Inventory management software 73.1% 490
Development environment software 56.7% 380
Computer aided design CAD software 37.3% 250
Computer aided manufacturing CAM software 23.9% 160

Reach = share of industry employment in occupations where the requirement is significant; it is not a per-worker usage or proficiency measure. Skill, knowledge, and ability importance is from O*NET; tool use is reported presence of a technology category.

Largest occupations

Exposure quadrant: AI task-overlap percentile vs Median pay AI task-overlap (horizontal) versus median pay (vertical), each as a percentile across all scored occupations, for 8 occupations in Geothermal Electric Power Generation. Overlap measures shared tasks with AI, not automation. Lower overlap · higher pay Higher overlap · higher pay Higher overlap · lower pay Lower overlap · lower pay Industrial Machinery Mechanics Power Plant Operators Installation, Maintenance, and Repair Workers, All Other First-Line Supervisors of Mechanics, Installers, and Repairers Industrial Production Managers First-Line Supervisors of Production and Operating Workers General and Operations Managers AI task-overlap percentile → ↑ Median pay
The largest occupations in this industry with both an AI task-overlap score and a wage, plotted by task-overlap percentile (horizontal) and median-pay percentile (vertical). Overlap measures shared tasks with AI, not automation.

The occupations that employ the most people in this industry, with their share of the industry's workforce and national median pay for the occupation (not industry-specific pay).

Occupation Workers Share National median pay
Power Plant Operators 300 44.8% $72,950
Industrial Machinery Mechanics 120 17.9% $78,840
Installation, Maintenance, and Repair Workers, All Other 90 13.4% $80,790
First-Line Supervisors of Production and Operating Workers 50 7.5% $124,640
General and Operations Managers 40 6.0% $110,100
Industrial Production Managers 40 6.0% $156,830
First-Line Supervisors of Mechanics, Installers, and Repairers 30 4.5% $106,170
Electrical and Electronics Repairers, Powerhouse, Substation, and Relay $92,890

Most distinctive occupations

The occupations most unusually concentrated in this industry compared with the economy as a whole. The location quotient is how many times more common an occupation is here versus its economy-wide share (a value of 5 means five times as concentrated).

Occupation Concentration Workers
Power Plant Operators 2247.35× 300
Industrial Machinery Mechanics 65.45× 120
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The Geothermal Electric Power Generation workforce sits at the 11th percentile of AI task overlap — 670 U.S. workers

  • Weighting every occupation by its real share of Geothermal Electric Power Generation employment, the industry's workforce ranks in the 11th percentile (Low band) for AI task overlap — overlap with what AI can attempt, not a measure of jobs at risk.Eloundou et al. + Felten AIOE, weighted by BLS OEWS
  • The industry employs about 670 U.S. workers across 8 occupations.BLS OEWS (May 2024)
  • Employment-weighted typical annual pay is about $87,629.BLS OEWS (May 2024)
  • Of AI use observed across this industry's occupations, 12% looks like augmentation rather than automation — from a Claude.ai sample, not a census.Anthropic Economic Index
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The Geothermal Electric Power Generation workforce sits at the 11th percentile of AI task overlap — 670 U.S. workers

• Weighting every occupation by its real share of Geothermal Electric Power Generation employment, the industry's workforce ranks in the 11th percentile (Low band) for AI task overlap — overlap with what AI can attempt, not a measure of jobs at risk. (Eloundou et al. + Felten AIOE, weighted by BLS OEWS)
• The industry employs about 670 U.S. workers across 8 occupations. (BLS OEWS (May 2024))
• Employment-weighted typical annual pay is about $87,629. (BLS OEWS (May 2024))
• Of AI use observed across this industry's occupations, 12% looks like augmentation rather than automation — from a Claude.ai sample, not a census. (Anthropic Economic Index)

Source: Singulariki — "Geothermal Electric Power Generation". https://singulariki.com/industries/221116
Note: AI task overlap measures what today's AI can attempt, not automation, job loss, or a forecast.

AssetsShare imageMethodology & sourcesPress & newsroomThe newsroom

Every line is built only from figures this page already shows and cites. AI task overlap means what today's AI can attempt — not automation, job loss, or a forecast.

Sources for this page

Every figure above traces to a named public dataset and the exact release below — not hand-written opinion. See the full methodology for what each measure does and does not mean.

Data compiled June 3, 2026. Figures are estimates, not advice.

Cite this page
Plain

Singulariki. "Geothermal Electric Power Generation." Singulariki: a source-backed encyclopedia of work. Built from O*NET 30.3; BLS Occupational Employment and Wage Statistics (OEWS) May 2024; Census NAICS 2022; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27); “GPTs are GPTs” (Eloundou et al.) arXiv 2303.10130; AI Occupational Exposure (AIOE) Felten, Raj & Seamans. Accessed June 7, 2026. https://singulariki.com/industries/221116

APA

Singulariki. (2026). Geothermal Electric Power Generation. Singulariki: a source-backed encyclopedia of work. Retrieved June 7, 2026, from https://singulariki.com/industries/221116

BibTeX
@misc{singulariki-221116,
  title  = {Geothermal Electric Power Generation},
  author = {{Singulariki}},
  year   = {2026},
  note   = {O*NET 30.3; BLS Occupational Employment and Wage Statistics (OEWS) May 2024; Census NAICS 2022; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27); “GPTs are GPTs” (Eloundou et al.) arXiv 2303.10130; AI Occupational Exposure (AIOE) Felten, Raj & Seamans. Accessed June 7, 2026},
  url    = {https://singulariki.com/industries/221116}
}

Citations name the underlying public dataset releases — they reflect what this page is built from, not just the URL.