Application Analyst Intern - Data Analytics

Universal Hospital Services Inc.
Washington
1 week ago
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Responsibilities

One of the nation’s largest and most respected providers of hospital and healthcare services, Universal Health Services, Inc. has built an impressive record of achievement and performance. Growing steadily since its inception into an esteemed Fortune 500 corporation, annual revenues were $11.6 billion in 2020. In 2021, UHS was again recognized as one of the World’s Most Admired Companies by Fortune, in 2020, ranked #281 on the Fortune 500; and listed #330 in Forbes ranking of U.S.’ Largest Public Companies. Headquartered in King of Prussia, PA, UHS has 89,000 employees and through its subsidiaries operates 26 acute care hospitals, 334 behavioral health facilities, 39 outpatient facilities and ambulatory care access points, an insurance offering, a physician network and various related services located in 38 U.S. states, Washington, D.C., Puerto Rico and the United Kingdom.


The UHS Corporate Information Services department is currently accepting applications. We will be starting the interview process in January 2026, targeting a start date around the first week in June 2026.


The Corporate Information Services team is seeking a dynamic and talented Data Analytics Intern.


Position Summary

The Corporate Information Services team at UHS is looking for motivated professionals to join our cutting edge team and implement technology solutions to improve healthcare quality and safety, improve patient care, and engage patients and their families in their healthcare.


As a Data Analytics Intern you will have the opportunity to work on real‑time and meaningful projects, develop your technical skills, collaborate and network with various teams, and receive mentorship.


Essential Job Duties

  • Gains familiarity with reporting and dashboards, analyzing data, and technical writing and documentation.
  • Participates in lunch and learn sessions to collaborate on UHS IS priorities.
  • Participates in IS projects.
  • Shadows Information Services employees to learn the different roles.
  • Gains familiarity with different healthcare IS systems.

Qualifications
Requirements

  • Currently pursuing a Bachelor’s degree in Information Technology, Computer Science, Management Information Systems, or a related degree from accredited college or university. Student must be rising into senior year (at minimum, must have 1st semester of junior year completed).
  • Minimum GPA: 3.0
  • Basic computer skills and experience with Microsoft Office applications
  • Basic SQL scripting experience required.
  • Basic Python experience a plus.
  • Healthcare experience preferred
  • Excellent interpersonal and communication skills
  • Strong problem solving and analytical skills
  • Desire to learn and share ideas in a collaborative work environment

EEO Statement

All UHS subsidiaries are committed to providing an environment of mutual respect where equal employment opportunities are available to all applicants and teammates. UHS subsidiaries are equal opportunity employers and as such, openly support and fully commit to recruitment, selection, placement, promotion and compensation of individuals without regard to race, color, religion, age, sex (including pregnancy, gender identity, and sexual orientation), genetic information, national origin, disability status, protected veteran status or any other characteristic protected by federal, state or local laws.


We believe that diversity and inclusion among our teammates is critical to our success.


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