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Exposed to High Places

Work context · O*NET

Exposed to High Places is a work-context dimension in the O*NET database — one of the standardized conditions O*NET uses to describe the environment a job is done in , grouped under Physical Work Conditions. O*NET defines it by asking workers: "How often does this job require exposure to high places?." It is rated for 894 occupations, which average 1.62 out of 5 (low relative to other context dimensions).

How it's measured

O*NET rates each occupation on this dimension on a 1–5 context-importance scale (the CX scale), where higher means the condition is a more frequent or more central part of the work. The figures on this page are those occupation-level ratings — a description of working conditions as workers report them, not a judgment about pay, difficulty, or whether a job is "good."

Economy-wide average 1.62 / 5 Mean across all 894 rated occupations
Range across occupations 1.00–4.97 Lowest to highest occupation rating (spread 3.97)
Intensity vs. other dimensions 12th pct Where this dimension's average ranks among all O*NET work-context dimensions

Occupations where it's highest

The occupations that rate this condition strongest on the 1–5 scale.

Occupation Rating Score
Wind Turbine Service Technicians 4.97
Roofers 4.90
Electrical Power-Line Installers and Repairers 4.82
Structural Iron and Steel Workers 4.66
Derrick Operators, Oil and Gas 4.61
Elevator and Escalator Installers and Repairers 4.59
Hoist and Winch Operators 4.59
Solar Photovoltaic Installers 4.55
Helpers--Roofers 4.51
Flight Attendants 4.50
Biomass Plant Technicians 4.42
Petroleum Pump System Operators, Refinery Operators, and Gaugers 4.33
Brickmasons and Blockmasons 4.27
Power Plant Operators 4.24
Tank Car, Truck, and Ship Loaders 4.20
Helpers--Brickmasons, Blockmasons, Stonemasons, and Tile and Marble Setters 4.15
Mechanical Door Repairers 4.10
Biofuels Processing Technicians 4.07
Telecommunications Line Installers and Repairers 4.00
Painters, Construction and Maintenance 3.95
Solar Thermal Installers and Technicians 3.95
Refractory Materials Repairers, Except Brickmasons 3.93
Service Unit Operators, Oil and Gas 3.93
Solar Energy Installation Managers 3.91
Heating, Air Conditioning, and Refrigeration Mechanics and Installers 3.89

Occupations where it's lowest

The occupations that rate this condition weakest — where it is rarely part of the work.

Occupation Rating Score
Software Quality Assurance Analysts and Testers 1.00
Special Education Teachers, Elementary School 1.00
Speech-Language Pathologists 1.00
Speech-Language Pathology Assistants 1.00
Sports Medicine Physicians 1.00
Statistical Assistants 1.00
Statisticians 1.00
Substance Abuse and Behavioral Disorder Counselors 1.00
Substitute Teachers, Short-Term 1.00
Surgical Technologists 1.00
Survey Researchers 1.00
Switchboard Operators, Including Answering Service 1.00
Talent Directors 1.00
Tax Examiners and Collectors, and Revenue Agents 1.00
Tax Preparers 1.00
Telephone Operators 1.00
Textile Knitting and Weaving Machine Setters, Operators, and Tenders 1.00
Training and Development Managers 1.00
Travel Agents 1.00
Tutors 1.00
Urologists 1.00
Watch and Clock Repairers 1.00
Web Developers 1.00
Word Processors and Typists 1.00
Writers and Authors 1.00

How AI is used by roles where exposed to high places is central

A working condition is not itself "being automated" — but we can look at the occupations where it is most central and ask how those people actually use AI. This rolls the Anthropic Economic Index per-role signal up across the roles that rate this condition 3 or higher (CX-rating-weighted). 34.1% of the 88 occupations where this condition is present carry observed AI-usage data (30 roles).

Across those roles, 27.9% of AI conversations are people working with AI and 26.6% hand a task to AI , with an average autonomy of 3.54 / 5.

Collaboration pattern Share What it means
directive 20.3% AI does it; you give the instruction
learning 15.4% you ask AI to explain or teach
task iteration 11.8% you and AI go back and forth
feedback loop 6.4% AI does it, then adjusts from your feedback
validation 0.6% you do it; AI checks your work

Roles behind this signal

The occupations where this condition is most central and that also have the most AEI data. "Works with AI" is the role's share of conversations that augment rather than automate.

Occupation Condition (1–5) Works with AI Autonomy
Solar Photovoltaic Installers 4.5 47.2% 4.0/5
Industrial Machinery Mechanics 3.1 22.8% 4.0/5
Construction Managers 3.1 59.7% 3.0/5
Telecommunications Equipment Installers and Repairers, Except Line Installers 3.4 23.4% 4.0/5
Electricians 3.7 34.3% 3.8/5
Non-Destructive Testing Specialists 3.3 20.8% 3.5/5
Construction and Building Inspectors 3.2 40.0% 3.0/5
Drywall and Ceiling Tile Installers 3.2 55.1% 3.0/5
Flight Attendants 4.5 44.0% 3.0/5
Security and Fire Alarm Systems Installers 3.1 4.0/5
Solar Energy Installation Managers 3.9 52.3% 4.0/5
Maintenance and Repair Workers, General 3.0 40.7% 4.0/5

Source: Anthropic Economic Index (2026-01-15-v4-plus-2025-03-27-v2) over a sample of Claude.ai Free and Pro conversations — not all AI tools and not the whole workforce. This is a role-weighted projection from AEI-linked occupations where this condition is central, not a direct measurement of AI use for the condition itself. Shares are weighted by how central the condition is to each role; some conversations are left unclassified by Anthropic's taxonomy, so shares need not sum to 100.

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 2, 2026. Figures are estimates, not advice.

Cite this page
Plain

Singulariki. "Exposed to High Places." Singulariki: a source-backed encyclopedia of work. Built from O*NET 30.3; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27). Accessed June 7, 2026. https://singulariki.com/work-context/exposed-to-high-places

APA

Singulariki. (2026). Exposed to High Places. Singulariki: a source-backed encyclopedia of work. Retrieved June 7, 2026, from https://singulariki.com/work-context/exposed-to-high-places

BibTeX
@misc{singulariki-exposed-to-high-places,
  title  = {Exposed to High Places},
  author = {{Singulariki}},
  year   = {2026},
  note   = {O*NET 30.3; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27). Accessed June 7, 2026},
  url    = {https://singulariki.com/work-context/exposed-to-high-places}
}

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