LER.me

Make All Learning Count.

Get Connected

  • What is a LER?
  • FAQs (opens in new tab)
  • Partner with Us
  • Visit EBSCOed (opens in new tab)

View our Policies

  • Accessibility (opens in new tab)
  • Standards (opens in new tab)
  • Terms of Use (opens in new tab)
  • Privacy Policy (opens in new tab)
  • Opt out (opens in new tab)

Get the app

Get it on Google PlayDownload on the App Store

© 2026 All rights reserved.

Powered by EBSCOed

Skip to main contentSkip to footer
  • Live Data
My LER
My LER
  1. Programs
  2. Statistical Practice

Statistical Practice

University of Minnesota-Twin Cities

Bachelor's DegreeAcademic

Become a contributor for free to openly demonstrate student outcomes, industry alignment & eligibility criteria.

Statistics and Data Science are the sciences of gathering and learning from data, of measuring, controlling, and communicating uncertainty, and of leveraging existing data sets and creating new ones to extract meaningful information and actionable insights. They provide the navigation essential for controlling the course of scientific and societal advances.

Credits

120 credits

Format

In-Person

Loading Skills & Competencies
Program Pathways

Credentials this program stacks toward

No program pathways.

Loading What You'll Learn
Program Details

Detailed information about this program

No detailed information available.

Requirements

What you need to earn this credential

No requirements listed.

Financial Aid

Eligible funding programs

No funding information available.

Scholarships

No scholarships listed.

Visit Program Website
Locations

Where this program is offered

  • Minnesota

    Minnesota

Loading Student Outcomes
Related Programs

Programs related to this one

No related programs.

Skills & Competencies

Skills developed through this program

Auto-populated·from O*NET via SOC 15-2041.00

Skills

MathematicsReading ComprehensionCritical ThinkingSpeakingActive ListeningComplex Problem SolvingWritingActive Learning

Knowledge

MathematicsComputers and ElectronicsEnglish Language

Abilities

Mathematical ReasoningNumber FacilityWritten ComprehensionOral ComprehensionOral ExpressionWritten ExpressionInductive ReasoningNear VisionDeductive ReasoningInformation Ordering

Tasks

  • Analyze and interpret statistical data to identify significant differences in relationships among so
  • Evaluate the statistical methods and procedures used to obtain data to ensure validity, applicabilit
  • Report results of statistical analyses, including information in the form of graphs, charts, and tab

Technology

Data base user interface and query softwareData mining softwareData base management system softwareBusiness intelligence and data analysis softwareAnalytical or scientific software

Tools

Desktop computersLaptop computersPersonal computers

Work Values

IndependenceAchievementRecognitionWorking ConditionsRelationshipsSupport
Career Pathways

Occupations this program prepares you for

Auto-populated·from O*NET + BLS
Occupations matched to this program, with median wage, top wage, growth, and openings
SOCOccupationMethodWageGrowthOpenings
Match confidence: medium15-2041.00Statisticianstitle_inference$103,300 median$170,700 top+8.39%270
What You'll Learn

Key competencies developed through this program

Auto-populated·from NSX Competency Framework

Mastery: proficient (Level 3)(based on Bachelor's Degree)

  • Complex multivariable and longitudinal statistical models — design, validate, and interpret autonomously across diverse research domains including clinical trials, policy analysis, and industrial applications.
  • Full-scope data preparation workflows — architect and execute for large-scale or non-standard datasets, resolving inaccuracies and structural anomalies without supervisory input.
  • Statistical methodology selection — evaluate and justify the most appropriate techniques for novel user needs or research questions, drawing on breadth of theoretical and applied knowledge.
  • Non-routine methodological challenges — diagnose and resolve, including violations of model assumptions, missing data patterns, and small-sample inference problems in real project environments.
  • Comprehensive analytical reports — author for senior leadership, regulators, or peer-reviewed publication audiences, integrating statistical and contextual findings with precision and clarity.
  • Experimental and quasi-experimental designs — develop and test end-to-end, including power analysis and adaptive design modifications, in research or operational settings.
  • Advanced data mining and machine learning pipelines — build and critically evaluate, integrating statistical rigor with computational methods for high-dimensional datasets.
  • Peer and client review sessions — lead independently, presenting nuanced statistical results and nonstatistical implications to mixed audiences including executives, scientists, and policymakers.
  • Interdisciplinary research teams — serve as the statistical authority, advising collaborators on analytic strategy and interpreting quantitative evidence within broader scientific context.
  • Systems of data collection and measurement — analyze for bias, efficiency, and fitness-for-purpose, recommending design improvements to organizational data infrastructure.

Some details on this page are auto-populated from public workforce data sources: O*NET (opens in new tab), BLS (opens in new tab), College Scorecard (opens in new tab), DOL Training Provider Results (opens in new tab), NSX (opens in new tab). Provided in partnership with LER.me Career Intelligence.

Student Outcomes

Performance metrics for this program

Auto-populated·from Scorecard + DOL
Completion Rate
86%
Placement Rate
37%