

The Research Assistant – Computational Scientist supports research efforts in Dr. Amy Ryan’s laboratory, which studies lung regeneration and the molecular and cellular mechanisms underlying mucociliary clearance. Under general supervision the position will provide comprehensive computational and data science support across all laboratory projects, with a primary focus on advanced analysis of high-dimensional biological datasets, including bulk and single-cell RNA sequencing, epigenomics, proteomics, and multimodal data integration.
This role involves the development, implementation, and maintenance of computational pipelines; application of statistical and machine learning methodologies; and generation of integrative models of mucociliary function in lung health and disease. The Research Assistant collaborates closely with experimental scientists, trainees, and collaborators, contributing to study design, data interpretation, visualization, and dissemination. The position may also support data infrastructure efforts, including database development, data warehousing, and innovative computational tools that enhance data sharing, reproducibility, and discovery.
Position Responsibilities:
Computational and Bioinformatic Analysis
Data Integration and Computational Support
Research Collaboration
Data Management and Compliance
Professional Development and Laboratory Support
Percent of Time: 50%
Staff Type: Professional & Scientific
Type of Position: Specified Term. Initial appointment is for one year. Appointment may be extended based on performance and availability of funding.
Pay Grade: 3A - https://hr.uiowa.edu/pay/plans
Benefits Highlights
Required Qualifications:
Bachelor’s degree in computational biology, Bioinformatics, Data Science, Biostatistics, Computer Science, Biomedical Engineering, or a closely related quantitative or life‑science field, or equivalent combination of education and progressively responsible experience in a research laboratory environment.
Experience performing computational analysis of high‑throughput biological data, such as bulk RNA sequencing and/or single‑cell RNA sequencing (scRNA‑seq).
Proficiency in at least one programming language commonly used in computational biology (e.g., R and/or Python).
Working knowledge of standard bioinformatic workflows, including data quality control, normalization, statistical analysis, and data visualization.
Familiarity with at least one additional omics data type (e.g., epigenetic data such as ATAC‑seq, proteomics, or similar large‑scale datasets).
Experience working with large, complex datasets and organizing analysis outputs in a structured and reproducible manner.
Ability to follow established computational pipelines and analytical protocols under general supervision.
Strong attention to detail and ability to document computational methods, code, and results.
Effective written and verbal communication skills, including the ability to explain computational results to collaborators with varied scientific backgrounds.
Ability to work collaboratively as part of a multidisciplinary research team and manage multiple projects simultaneously.
Desirable Qualifications:
Experience with integration of multimodal datasets (e.g., transcriptomic, epigenomic, proteomic, and phenotypic data).
Familiarity with single‑cell analysis frameworks and tools (e.g., Seurat, Monocle, or similar).
Exposure to epigenomic analysis workflows, including chromatin accessibility or regulatory element analysis.
Basic experience applying machine learning or predictive modeling approaches to biological data.
Experience developing or contributing to reproducible workflows using version control systems (e.g., Git).
Experience generating publication‑quality figures and contributing to manuscripts, abstracts, or grant applications.
Interest in lung biology, regenerative medicine, mucociliary clearance, or related biomedical research areas.
Willingness to learn new computational methods and emerging approaches relevant to laboratory research.
Master’s degree in computational biology, Bioinformatics, Data Science, Biostatistics, Computer Science, Biomedical Engineering, or a closely related quantitative or life‑science field.
Application Process: In order to be considered, applicants must upload a CV or resume, and cover letter (under submission relevant materials) that clearly address how they meet the listed required and desired qualifications of this position.
Job openings are posted for a minimum of 7 calendar days and may be removed from posting and filled any time after the original posting period has ended. Successful candidates will be subject to a credential and criminal background check. This position is not eligible for University sponsorship for employment authorization. Up to 5 professional references will be requested at a later step in the recruitment process.
For additional questions, please contact Anne Phillips at anne-phillips@uiowa.edu.