Operations research analysts
Clear pressure on routine tasks. Composition of the role will shift within the decade.
SOC 15-2031 · Math
Signal composition
how the 0-100 score is assembled
By seniority
multiplicative adjustment from category curve
Entry-level roles carry the brunt because they concentrate the most automatable subset of tasks. Senior work is insulated by judgment, relationships, and accountability.
Task-level analysis
scored 0-100 for current-generation AI feasibility, weighted by BLS-stated importance
Collect and organize information from databases, sales histories, customer feedback, and other sources
AI can autonomously query databases, aggregate data from multiple sources, clean and structure information, and organize it for analysis through API integrations and data pipeline tools. This is largely routine data manipulation that current systems handle well with minimal human intervention beyond initial setup.
BLS evidence: Operations research analysts 'Collect and organize information from a variety of sources, such as databases, sales histories, and customer feedback.'
Analyze collected data using statistical techniques such as forecasting and data mining
AI excels at statistical analysis, forecasting, and data mining with tools like automated machine learning platforms that can select algorithms, tune parameters, and generate predictions. Human analysts are primarily needed to interpret results in business context and validate that statistical assumptions hold, but the computational work is highly automatable.
BLS evidence: Analysts 'break down the problem into its various parts using statistical and database software and analytical techniques, such as forecasting and data mining.'
Write memos, reports, and documents explaining findings and recommendations to managers
AI can generate well-structured reports, memos, and documentation from analytical findings, translating technical results into business language with appropriate visualizations. Current LLMs produce high-quality written explanations that require human review for accuracy and tone but handle the bulk of composition autonomously.
BLS evidence: Operations research analysts 'Write memos, reports, and other documents explaining their findings and recommendations for managers, executives, and other officials.'
Study effects of different changes and circumstances on business processes
AI-powered simulation and scenario analysis tools can model how different variables affect business processes, running thousands of what-if scenarios efficiently. Humans are needed to define which scenarios matter and interpret implications, but the computational study of effects is highly automatable with current discrete-event simulation and system dynamics tools.
BLS evidence: Analysts 'study the effect that different changes and circumstances would have on each of these parts,' such as scheduling flights considering multiple variables.
Develop and test quantitative models and analytical tools to solve organizational problems
Modern AI can generate optimization models, simulation frameworks, and analytical tools from problem specifications, and can even suggest appropriate methodologies (linear programming, queuing theory, etc.). However, validating model assumptions, ensuring real-world applicability, and iterating based on domain constraints still requires human oversight, though AI handles most of the technical implementation.
BLS evidence: Analysts 'Develop and test quantitative models, support software, and analytical tools' using methods rooted in statistics and mathematics.
Evaluate alternative solutions by weighing costs and benefits of different approaches
AI can systematically enumerate alternatives, calculate quantitative costs and benefits, and perform multi-criteria decision analysis. However, incorporating intangible factors (organizational culture fit, strategic alignment, risk tolerance) and making final recommendations requires human judgment, though AI does most of the analytical heavy lifting.
BLS evidence: Analysts 'provide alternatives to pursuing different actions' and 'weigh the costs and benefits of alternative solutions or approaches in their recommendations.'
Identify problems in business, logistics, healthcare, or other operational areas
AI can identify patterns and anomalies in operational data and flag potential problem areas, but defining which problems are strategically important and worth solving requires human judgment about organizational priorities and stakeholder concerns that AI cannot fully replicate without substantial human guidance.
BLS evidence: Operations research analysts typically 'Identify problems in areas such as business, logistics, healthcare, or other fields' as their first duty.
Present data and conclusions to executives and nontechnical audiences
While AI can generate presentation materials and talking points, delivering presentations to executives requires reading the room, adapting explanations based on audience reactions, handling unexpected questions, and building credibility through interpersonal presence—skills that remain distinctly human in high-stakes business contexts.
BLS evidence: Analysts 'often present their data and conclusions to managers and other executives' and 'must be able to convey technical information in a way that is understandable to nontechnical audiences.'
Gather input from workers, clients, and subject-matter experts through interviews
While AI can conduct structured surveys and parse responses, gathering nuanced input from domain experts requires building rapport, asking adaptive follow-up questions based on subtle cues, and navigating organizational politics to extract tacit knowledge—capabilities that remain fundamentally human in workplace contexts.
BLS evidence: Analysts 'Gather input from workers or subject-matter experts' and 'interview clients, workers, or others involved in the business processes being examined.'
Travel to observe business processes and work with clients
Physical travel to client sites and direct observation of business processes in varied real-world environments requires human presence. While remote observation tools exist, understanding operational nuances through in-person engagement remains essential and unautomatable by current AI systems.
BLS evidence: Operations research analysts 'may travel to gather information, observe business processes, work with clients, or attend conferences.'
Task heatmap
automation score by task, sorted by weighted contribution
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External signals and sources
category-level priors and BLS fields that feed the four non-task signals
- Karpathy/BLS Digital AI Exposure (0-10 scale rescaled to 0-100)
- BLS projected outlook: Much faster than average (21%)
- Indeed demand signal (monthly refresh pending)
- BLS typical entry-level education: Bachelor's degree
- Credential trend signal (annual refresh)
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