Sort by
Refine Your Search
-
Listed
-
Category
-
Program
-
Field
-
Research Assistant 1 position is based in Prof. Thomas Szkopek’s research lab in the department of Electrical and Computer Engineering. Job Summary We are seeking a highly motivated and technically skilled
-
: Desautels Faculty of Management Position Summary: Providing support to Students and Professors as well as maintenance of Faculty computer labs. Other Qualifying Skills and/or Abilities • Providing support in
-
in Prof. Reza Salavati's lab, at Macdonald Campus, McGill University. Position Summary: The postdoc will contribute to the D2R (Data-to-Reality) applied research program aimed at developing novel data
-
of documentation. Prepares schedules, reports and financial statements. Makes recommendations on budget allocations. Supplies information and documentation to auditors. Maintains computerized information systems and
-
and study information in approved systems, ensuring accuracy, confidentiality, and adherence to institutional guidelines. Assist with preparation of study materials, including formatting consent forms
-
of term). Must have completed MECH 261 or 262 or equivalent. Experience required in experimental research, measurement device operation and data analysis. Requires public speaking ability. Proficiency
-
experiments, managing research projects, and communicating scientific research. Experience: •Experience teaching research planning and management, data collection, data visualization, and scientific writing
-
(Zoom or Cisco Webex) or in person. Administrative or clerical tasks including minutes of meetings Coordination of research projects and participation in team meetings Participate in data analysis
-
informed consent and screening processes for ongoing lab studies -Data entry as per study protocols -Data collection and analysis for ongoing lab studies -Participation in scheduled meetings with supervisor
-
: The research assistant 1 will be responsible for developing detailed data analysis plans, data preparation (linkage between data sources, clean up, operationalization of intermediary and outcome measures, and