Analyst-Data Intermediate
@ Indiana University Health

Indianapolis, Indiana, United States
On Site
Full time
Posted 3 days ago

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XXXXXXXXXX XXXXXXXXXXX XXXXXX******* @iuhealth.org
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Job Details

About Indiana University Health

Indiana University Health is unlike any other healthcare system. We seek team members inspired by challenging, meaningful work that benefits every patient.

Analyst-Data Intermediate

This role involves collaborating with a researcher to identify patient cohorts, extract relevant data and conduct in-depth analysis.

Responsibilities

  • Assess information capabilities to address gaps.
  • Provide data analysis training and serve as a resource for management.
  • Support performance improvement initiatives with detailed analysis.

Requirements

  • Bachelor's Degree or equivalent work experience.
  • 3-5 years of relevant experience.
  • Clinical and/or healthcare experience preferred.
  • Proficiency in computer applications such as MS Excel and MS Access.

Key skills/competency

  • Data Analysis
  • Healthcare
  • Performance Improvement
  • MS Excel
  • MS Access
  • Research
  • Data Extraction
  • Cohort Identification
  • Training
  • Problem Solving

How to Get Hired at Indiana University Health

🎯 Tips for Getting Hired

  • Customize your resume: Highlight relevant healthcare data analysis experience.
  • Research Indiana University Health: Understand their mission and projects.
  • Showcase technical skills: Detail MS Excel and MS Access competencies.
  • Prepare performance examples: Share instances of data-driven improvements.

📝 Interview Preparation Advice

Technical Preparation

Review MS Excel functions and formulas.
Practice data extraction using MS Access.
Study healthcare data analysis techniques.
Update skills in cohort identification methods.

Behavioral Questions

Describe past data challenges faced.
Explain teamwork in performance projects.
Discuss learning from data errors.
Highlight effective time management in projects.

Frequently Asked Questions