Graduate Research Assistant - Data Analyst: Migration

VILLANOVA UNIVERSITY
Law
2 weeks ago
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Graduate Research Assistant - Data Analyst: Migration

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Posting Details

Position Information

  • Posting Number: 20255401V
  • Position Title: Graduate Research Assistant - Data Analyst: Migration
  • Posting Type: Graduate Assistant
  • Hours/week: 8-10 hours/week
  • Eligibility: Graduate Assistant Semester 2025 Spring
  • Location: Widger Law School Building
  • Number of positions: 1
  • Department: 983-Migration SIG
  • Contact Name: Robyn Lieberman
  • Contact Phone/Extension: 415-730-0416

Position Summary Information

Villanova University’s Strategic Initiative for Migrants and Refugees (“the SIG”) is working on a research project to identify and scale innovative models in immigration legal services, including building the enabling environment to expand theDepartment of Justice-Recognized Organization and Accredited Representatives program(“R+A”). In 2024, the SIG partnered with the Center for Migration Studies of New York to launch the first-ever national study of the R+A practitioners. We are currently looking for support from a data analyst to work with a senior researcher to clean/recode data files from two Qualtrics surveys and create data visualizations of the recoded data files.

Before accessing the data, the research assistant will take CITI training (about 3-5 hours) or have existing IRB clearances.

The position is virtual – you do not need to work from campus.

Timeline:The research team projects 8-10 hours of work per week, conducted over 6-8 weeks in February-April 2025.

Salary:The data analyst will be a Graduate Research Assistant for the Strategic Initiative for Migrants and Refugees, compensated at $18/hour.

To apply:Submit a resume/CV and sample data cleaning/recoding code in Stata to Robyn Lieberman, Principal Investigator, at .

Requirements:

  • Experience using Stata to clean and recode raw survey data, and to produce tables, figures, and other visualizations.
  • Experience producing maps using ArcGIS or other statistical mapping platforms is a plus.

Additional Information:

Wage Rate: $18/hour

Closing Date (11:59pm ET): Open Until Filled

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