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First-Line Supervisors of Police and Detectives

Occupation · SOC 33-1012.00

Directly supervise and coordinate activities of members of police force.

Also called: Lieutenant · Patrol Sergeant · Police Captain · Police Sergeant · Captain · Deputy Sheriff · Detective Sergeant · Police Chief · Police Lieutenant · Shift Supervisor · Chief Deputy · Community Relations Police Lieutenant

Job family: Protective Service Occupations

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Download .md

A source-stamped Markdown brief of this occupation — paste it into an agent, or fetch /roles/role-33-1012-00/context.md directly.

AI work map

A fast read on where AI already shows up in this occupation, where it stays a copilot, where humans remain in the loop, and what the labor market is doing. Built from observed Claude.ai conversations mapped to O*NET tasks and from published research — measures of usage and exposure, not advice or predictions that the job is going away.

Use as a copilot

Task areas where people work with AI — iterating, learning, or checking — staying in the loop rather than handing the task off.

  • Inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work. · 0.5%
See collaboration patterns →

Keep a human in the loop

Task areas where a human was still judged necessary in a large share of observed conversations — not a safety ruling, an observed-need signal.

  • Inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work. · 97.8% need a human
See the boundary tasks →

36th-percentile task overlap — yet about 10,900 openings a year (+2.9% projected, BLS), and observed AI use leans 6087% copilot, not hand-off (AEI) . What exposure means →

AI & job outlook

What today's research says about this occupation's exposure to AI, how AI is actually being used in it, and where employment is headed. These are positions within published studies — measures of exposure and usage, not predictions that this job will disappear.

Exposure to current AI

Each study uses its own scale, so the raw scores are not comparable across rows — the percentile (this job's rank among all U.S. occupations with data) is the comparable figure, and sizes the bars.

Measure Rank vs all occupations Percentile Score
Overall AI exposure (Felten et al.) Moderate 43rd -0.2
LLM task exposure, γ (OpenAI / Eloundou) Moderate 46th 0.6
AI assistant applicability (Microsoft) Low 24th 0.1

OpenAI's exposure study scores tasks three ways: with a language model alone (α 0.1), with simple added tooling (β 0.3), and including AI-powered software (γ 0.6). Higher means more of the job's tasks could be done at least twice as fast — not that they will be automated away.

This job mostly cannot be done remotely (Dingel–Neiman) — its hands-on tasks sit outside what software-based AI reaches.

Historical automation estimate (2013)

A pre-LLM (2013) estimate of how automatable this job is by computerization and robotics. Shown for historical context only — it is not part of any current AI ranking.

Frey–Osborne probability 0.0 · 3rd percentile among occupations · Low

How AI is actually used in this job

Among measured AI assistant conversations mapped to this occupation (Anthropic Economic Index, 2026-01-15), these task types came up most. These are shares of observed AI conversations — not shares of the job, of worker time, or of what could be automated.

Meet with civic, educational, and community groups to develop community programs and events, and to discuss law enforcement subjects. 0.2%

Job outlook

Independent U.S. Bureau of Labor Statistics employment projection for 2024–2034 — a labor-market forecast, not an AI-impact forecast.

Outlook About average · +2.9% by 2034
Projected annual openings 10,900
Employment 2024 → 2034 160,800 → 165,400

“Annual openings” counts new jobs plus replacements for workers who leave the occupation, so it can be large even when growth is modest.

Where this work sits on the global GenAI gradient

The ILO's 2025 global study scores generative-AI exposure on the international ISCO-08 occupation system, not US SOC. Bridged through the published (and approximate, many-to-many) IBS O*NET-SOC ↔ ISCO-08 crosswalk, this US occupation corresponds to the international 3 occupations below. Exposure here means how much of the work's tasks today's AI can attempt — task overlap, not automation, adoption, or jobs lost.

25% mean task exposure (2025)
47th percentile of 427 placed occupations
+1 pts shift 2023 → 2025
International occupation (ISCO-08) Task exposure (2025) Most tasks fall in
Customs and Border Inspectors · 3351 32% Minimal
Police Inspectors and Detectives · 3355 23% Not exposed
Police Officers · 5412 14% Not exposed

Read the whole six-band gradient on the GenAI exposure gradient page. The crosswalk is approximate: a US occupation can map to several international ones, and the ILO scores describe the international occupation, not this exact US role.

Working with AI in this job

How people actually apply AI to this occupation's tasks, from Claude.ai (Free and Pro) conversations in the Anthropic Economic Index, 2026-01-15. This is one AI assistant's consumer sample — not all AI, not the whole workforce. Autonomy and the collaboration mix are model-rated estimates; figures below the sample floor are hidden.

Augmentation vs. automation 60.9% working with AI · — handed to AI
Most common way people use AI here Learning · you ask AI to explain or teach
Typical AI autonomy 4.0 / 5 · higher = AI acts more independently

What people delegate to AI

The role's most common tasks in AI conversations, each tagged with how people work with the AI on it. “Usage” is the share of observed conversations, not of the job.

Task How Usage
Inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work. Learning 0.5%

Where a human is still needed

Tasks where the model most often judged that a person remained necessary — a useful read on the current boundary, not a guarantee.

Inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work. 97.8%

What people most often hand AI here

Example prompts phrased from the tasks people most often delegate to AI in this occupation (Anthropic Economic Index). Each shows the underlying measured task and its share of observed AI use. They are suggested phrasings of real tasks — starting points, not endorsed instructions.

  • Help me inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work.

    From: Inform personnel of changes in regulations and policies, implications of new or amended laws, and new techniques of police work. · 0.5% of measured AI use · learning

Tasks

All 20 tasks O*NET lists for this occupation, ordered by importance. Each links to its own page with AI-exposure and observed-use detail.

Emerging tasks

Newer responsibilities O*NET has flagged as growing for this occupation.

  • Read and review subordinates' reports to ensure legal standards are met and there are no mistakes.

Work activities

Knowledge, skills & abilities

O*NET importance rating, from 1 (not important) to 5 (extremely important).

Knowledge

Public Safety and Security 4.7
Law and Government 4.5
Customer and Personal Service 4.4
Administration and Management 4.0
English Language 3.8
Psychology 3.8
Sociology and Anthropology 3.3
Therapy and Counseling 3.2
Education and Training 3.2

Essential skills

Reading Comprehension 4.0
Active Listening 4.0
Speaking 4.0
Critical Thinking 4.0
Monitoring 4.0
Active Learning 3.9
Writing 3.8
Learning Strategies 3.8

Transferable skills

Social Perceptiveness 4.0
Management of Personnel Resources 4.0
Coordination 3.9
Persuasion 3.9
Instructing 3.9
Complex Problem Solving 3.8
Judgment and Decision Making 3.8
Service Orientation 3.5
Time Management 3.5
Negotiation 3.3

Abilities

Oral Comprehension 4.0
Written Comprehension 4.0
Oral Expression 4.0
Problem Sensitivity 4.0
Written Expression 3.9
Deductive Reasoning 3.9
Inductive Reasoning 3.9
Information Ordering 3.8
Speech Recognition 3.6
Speech Clarity 3.6
Selective Attention 3.5
Near Vision 3.5
Category Flexibility 3.3

Skills in demand

Skills employers ask for in job postings for this occupation (Lightcast), with whether each is a common or specialized skill.

Tools & technology

Example Category
Microsoft Office software Office suite software Hot technology In demand
Microsoft Access Data base user interface and query software Hot technology
Microsoft Active Server Pages ASP Web platform development software Hot technology
Microsoft Excel Spreadsheet software Hot technology
Microsoft Outlook Electronic mail software Hot technology
Microsoft PowerPoint Presentation software Hot technology
Microsoft Visio Process mapping and design software Hot technology
Microsoft Word Word processing software Hot technology
Computer aided composite drawing software Graphics or photo imaging software
Computer aided dispatch software Helpdesk or call center software
Corel WordPerfect Office Suite Office suite software
Crime mapping software Map creation software
DesignWare 3D EyeWitness Graphics or photo imaging software
Email software Electronic mail software
Integrated Automated Fingerprint Identification System IAFIS Data base user interface and query software
Law enforcement information databases Data base user interface and query software
Microsoft Internet Explorer Internet browser software
National Crime Information Center (NCIC) database Data base user interface and query software
National Integrated Ballistics Information Network NIBIN Data base user interface and query software
Scheduling software Calendar and scheduling software
SmartDraw Legal Graphics or photo imaging software
Spillman Technologies Records Management Data base user interface and query software
The CAD Zone The Crime Zone Graphics or photo imaging software

Work context

How characteristic each condition is of the job, on O*NET's 1–5 context scale (higher = more present in day-to-day work). Each condition links to how it varies across all occupations.

Telephone Conversations 5.0
E-Mail 5.0
Face-to-Face Discussions with Individuals and Within Teams 5.0
Deal With External Customers or the Public in General 4.8
Contact With Others 4.7
Impact of Decisions on Co-workers or Company Results 4.6
In an Enclosed Vehicle or Operate Enclosed Equipment 4.6
Frequency of Decision Making 4.5
Freedom to Make Decisions 4.4
Dealing With Unpleasant, Angry, or Discourteous People 4.4
Work With or Contribute to a Work Group or Team 4.3
Outdoors, Exposed to All Weather Conditions 4.3
Health and Safety of Other Workers 4.3
Importance of Being Exact or Accurate 4.3
Conflict Situations 4.2
Work Outcomes and Results of Other Workers 4.2
Physical Proximity 4.2
Coordinate or Lead Others in Accomplishing Work Activities 4.1
Determine Tasks, Priorities and Goals 4.1
Indoors, Environmentally Controlled 4.0
Consequence of Error 3.9
Exposed to Hazardous Equipment 3.8
Exposed to Sounds, Noise Levels that are Distracting or Uncomfortable 3.8
Written Letters and Memos 3.7
Wear Common Protective or Safety Equipment such as Safety Shoes, Glasses, Gloves, Hearing Protection, Hard Hats, or Life Jackets 3.7
Exposed to Disease or Infections 3.5
Exposed to Very Hot or Cold Temperatures 3.5
Time Pressure 3.5
Spend Time Sitting 3.5
Dealing with Violent or Physically Aggressive People 3.4
Importance of Repeating Same Tasks 3.4
Exposed to Extremely Bright or Inadequate Lighting Conditions 3.4
Spend Time Using Your Hands to Handle, Control, or Feel Objects, Tools, or Controls 3.2
Level of Competition 3.2
Indoors, Not Environmentally Controlled 3.1
Public Speaking 3.1
Wear Specialized Protective or Safety Equipment such as Breathing Apparatus, Safety Harness, Full Protection Suits, or Radiation Protection 3.1
Exposed to Contaminants 3.0
Spend Time Standing 2.8
Outdoors, Under Cover 2.8

How to get in

Job zone
Zone 2 — Job Zone 1-2: Very Little to Some Preparation Needed
Education
Usually requires a high school diploma or GED, though some occupations may not.
Typical entry-level education
High school diploma or equivalent · BLS, the typical path — not a requirement
Related experience
Some occupations may need little or no previous experience; others require several months to a year of experience. For example, landscaping and groundskeeping workers might require very little training or previous experience, while agricultural equipment operators can benefit from on-the job training.
Preparation level
SVP (Below 6.0) — total schooling plus on-the-job experience.

What to study: Homeland Security, Law Enforcement, Firefighting and Related Protective Services , Military Technologies and Applied Sciences , Natural Resources and Conservation . Fields of study crosswalked to this occupation (NCES CIP–SOC), not a requirement.

Education of current workers

Share of people in this occupation at each level of education.

High School Diploma 56.4%
Some College Courses 19.6%
Bachelor's Degree 19.4%
Associate's Degree (or other 2-year degree) 3.6%
Post-Secondary Certificate 0.9%

Interests & work styles

The interests and personal qualities O*NET associates with people who do this work.

Work styles

Attention to Detail 10.0
Integrity 9.0
Cautiousness 8.0
Cooperation 7.0
Self-Control 6.0
Stress Tolerance 5.0
Adaptability 4.0

Career interests (Holland / RIASEC)

Enterprising 6.9
Conventional 5.1
Social 3.8
Realistic 3.5

Interest areas

Management/Administration 6.3
Protective Service 6.1
Human Resources 5.0
Law 4.4
Public Speaking 4.2

Wages & employment

U.S. · annual wages (BLS OEWS)

$62k10th$81k25th$106kMedian$134k75th$165k90th
Annual wages by percentile — U.S. (BLS OEWS). The light band spans the 10th–90th percentile; the darker band is the middle half (25th–75th); the line is the median.
161k2024165k2034 (proj.)+2.9% · About average
Projected U.S. employment, 2024–2034 (BLS Employment Projections). A labor-market forecast for the occupation, not an AI-impact forecast.
10th percentile $62,370
25th percentile $80,940
Median (50th) $105,980
75th percentile $133,520
90th percentile $165,050
People employed 153,130

Industries that employ this occupation

Where these workers are employed, by number of jobs (national, BLS OEWS). Pay shown is the occupation's national median, not industry-specific.

Industry Workers National median pay
Educational Services · Sector 4,350 $86,970
Health Care and Social Assistance · Sector 280 $84,970
Transportation and Warehousing · Sector $97,660

Where this work is most concentrated

Industries where this occupation is far more common than in the economy as a whole. The location quotient is how many times more concentrated it is here (a value of 5 means five times its economy-wide share).

Industry Concentration Workers
Educational Services · Sector 0.32× 4,350
Health Care and Social Assistance · Sector 0.01× 280

Part of the Public Service & Safety career cluster.

Exposure quadrant: AI task-overlap percentile vs Median pay First-Line Supervisors of Police and Detectives sits at the 36th percentile of AI task-overlap and the 87th percentile of median pay, placed here against 11 adjacent occupations on the same two axes. Lower overlap · higher pay Higher overlap · higher pay Higher overlap · lower pay Lower overlap · lower pay First-Line Supervisors of Police and Detectives Correctional Officers and Jailers First-Line Supervisors of Firefighting and Prevention Workers Transit and Railroad Police First-Line Supervisors of Correctional Officers Private Detectives and Investigators Probation Officers and Correctional Treatment Specialists Chief Executives AI task-overlap percentile → ↑ Median pay
AI task-overlap percentile (horizontal) vs. median-pay percentile (vertical), across all scored occupations. This occupation is highlighted; related occupations are plotted alongside it. Overlap measures shared tasks with AI, not automation.

Side-by-side comparisons place two occupations’ pay, preparation, skills, and AI exposure on the same page — same data, same scale, no forecast.

What you can do with this

Options the data surfaces for First-Line Supervisors of Police and Detectives — not advice or a forecast. Each is a real cross-link you can follow into the evidence.

Write a report on thisheadline · factoids · citation

First-Line Supervisors of Police and Detectives show 36th-percentile AI task overlap — and about 10,900 annual U.S. openings

  • First-Line Supervisors of Police and Detectives rank in the 36th percentile (Moderate band) for AI task overlap across U.S. occupations — a measure of how much of the work today's AI can attempt, not how much is automated.Eloundou et al. (GPTs are GPTs) + Felten AIOE
  • The occupation is projected to see about 10,900 U.S. job openings per year (2024–34), counting growth and replacement — a labor-demand projection made independently of AI.BLS Employment Projections 2024–34
  • BLS projects employment to be about average (+2.9%) from 2024 to 2034.BLS Employment Projections 2024–34
  • Median annual pay is $105,980, across about 153,130 U.S. workers.BLS OEWS (May 2024)
  • Of the AI use actually observed for this work, 61% looks like augmentation (drafting, iterating, checking) rather than hands-off automation — from a Claude.ai usage sample, not a census.2026-01-15-v4-plus-2025-03-27-v2
Copy the whole kit
First-Line Supervisors of Police and Detectives show 36th-percentile AI task overlap — and about 10,900 annual U.S. openings

• First-Line Supervisors of Police and Detectives rank in the 36th percentile (Moderate band) for AI task overlap across U.S. occupations — a measure of how much of the work today's AI can attempt, not how much is automated. (Eloundou et al. (GPTs are GPTs) + Felten AIOE)
• The occupation is projected to see about 10,900 U.S. job openings per year (2024–34), counting growth and replacement — a labor-demand projection made independently of AI. (BLS Employment Projections 2024–34)
• BLS projects employment to be about average (+2.9%) from 2024 to 2034. (BLS Employment Projections 2024–34)
• Median annual pay is $105,980, across about 153,130 U.S. workers. (BLS OEWS (May 2024))
• Of the AI use actually observed for this work, 61% looks like augmentation (drafting, iterating, checking) rather than hands-off automation — from a Claude.ai usage sample, not a census. (2026-01-15-v4-plus-2025-03-27-v2)

Source: Singulariki — "First-Line Supervisors of Police and Detectives". https://singulariki.com/roles/role-33-1012-00
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 2, 2026. Figures are estimates, not advice.

Cite this page
Plain

Singulariki. "First-Line Supervisors of Police and Detectives." Singulariki: a source-backed encyclopedia of work. Built from O*NET 30.3; BLS Occupational Employment and Wage Statistics (OEWS) May 2024; BLS Employment Projections 2024–2034; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27); Microsoft “Working with AI” working-with-ai; “GPTs are GPTs” (Eloundou et al.) arXiv 2303.10130; AI Occupational Exposure (AIOE) Felten, Raj & Seamans; ILO / Gmyrek et al. GenAI exposure gradient 2025; IBS O*NET-SOC ↔ ISCO-08 occupation crosswalk 2022; Frey & Osborne (2013) frey-osborne-automation; Dingel & Neiman (2020) dingel-neiman-workathome. Accessed June 7, 2026. https://singulariki.com/roles/role-33-1012-00

APA

Singulariki. (2026). First-Line Supervisors of Police and Detectives. Singulariki: a source-backed encyclopedia of work. Retrieved June 7, 2026, from https://singulariki.com/roles/role-33-1012-00

BibTeX
@misc{singulariki-role-33-1012-00,
  title  = {First-Line Supervisors of Police and Detectives},
  author = {{Singulariki}},
  year   = {2026},
  note   = {O*NET 30.3; BLS Occupational Employment and Wage Statistics (OEWS) May 2024; BLS Employment Projections 2024–2034; Anthropic Economic Index v4 (2026-01-15) + v2 (2025-03-27); Microsoft “Working with AI” working-with-ai; “GPTs are GPTs” (Eloundou et al.) arXiv 2303.10130; AI Occupational Exposure (AIOE) Felten, Raj & Seamans; ILO / Gmyrek et al. GenAI exposure gradient 2025; IBS O*NET-SOC ↔ ISCO-08 occupation crosswalk 2022; Frey & Osborne (2013) frey-osborne-automation; Dingel & Neiman (2020) dingel-neiman-workathome. Accessed June 7, 2026},
  url    = {https://singulariki.com/roles/role-33-1012-00}
}

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

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