Sort by
Refine Your Search
-
research in addictions and trauma treatment including: (1) co design methods and design, (2) biostatistics, (3) research design, management, and ethics, (4) scientific writing and oral presentation, and (5
-
management and pain mechanisms and methods under the mentorship of renowned faculty. The successful candidate will have the opportunity to advance their research skills, engage in interdisciplinary
-
: Focus Data science and/or statistical methods development addressing questions of health, technology, housing, education, innovation and others impacting national and international urban communities
-
opportunity to contribute to cutting-edge research in the development of clinical trials, self-management science, acute/chronic disease management and pain mechanisms and methods under the mentorship
-
to IDRIS Experience in analyzing real data Strong programming skills Familiarity with statistical methods Excellent communication and writing skills City: Newark State: NJ Location: Rutgers University-Newark
-
degree in epidemiology, biostatistics, public health, social and behavioral sciences (e.g., sociology, psychology), or related fields with strong emphasis on quantitative methods or applied statistics Must
-
studies, comparative effectiveness research, pharmacoepidemiologic methods, clinical epidemiology, and health services research. They regularly collaborate with researchers across campus, across the US, and
-
, the associate will support mixed methods data collection and analysis (surveys, interviews, and community-based systems dynamics modeling), coordinate community engagement activities, manage relationships with
-
proof that all requirements have been fulfilled before their position start date. Expertise in immunological assays, molecular biology, gene transfer methods, and animal models is required. City: New
-
on characterizing non-coding regulatory elements in humans and understanding how these elements change across different conditions. The project will involve developing new modeling approaches for coupling functional