Please refer to the How to Apply for a Job (for External Candidates) job aid for instructions on how to apply.
If you are an active McGill employee (ie: currently in an active contract or position at McGill University), do not apply through this Career Site. Login to your McGill Workday account and apply to this posting using the Find Jobs report (type Find Jobs in the search bar).
The Media Ecosystem Observatory at McGill University is seeking applications for a full-time Junior Research Analyst - Data science, Mixed Methods position with expertise in data science and analysis. They will work on the Project on Information Ecosystem Resilience (PIER), an innovative project designed to monitor information ecosystem health, report on information events and incidents as they occur and build social capacity to manage information threats. The candidate will be joining us at a stimulating time of growth and expansion, and will help drive a growing research agenda through analyzing data and sharing research findings publicly.
ABOUT US
The Media Ecosystem Observatory (MEO) is an interdisciplinary research initiative dedicated to analyzing the complex web of online harms and digital threats to democracy, while actively working to safeguard against them. MEO runs the Canadian Digital Media Research Network (CDMRN), a pioneering initiative committed to fortifying and fostering resilience within Canada's unique information ecosystem. Its mission is to understand the dynamics of information production, dissemination, and consumption across digital media with the goal of empowering Canadians to navigate the complexities of the modern digital age.
This role will be working on the Project on Information Ecosystem Resilience (PIER) at MEO. For more information about the project, visit us online.
This initiative aims to achieve four goals:
This work is conducted through a ground-breaking research approach that mixes ongoing public survey (tracking survey) with digital trace efforts that analyzes the information ecosystem through across-platform monitoring and analysis of the top 1% most influential social media accounts in our ecosystem. Qualitative research is also used to supplement some of our findings with interview data and evolve the theoretical landscape of information incident management.
The successful applicant will have experience in:
using and structuring research based on established research methodologies
analyzing data to answer social scientific research questions
translating and disseminating research knowledge into digestible, accessible and high-utility research products including reports, summaries, and articles
coordinating and openly communicating with team members on investigations
Basic familiarity with the Canadian information ecosystem
Working in small teams to conduct research and perform data analysis
Collaborate and coordinate with social media communications team to enable dynamic, simplified research dissemination for the general public
Support qualitative research activities, e.g., interviewing, qualitative coding, theory generation, etc.
The successful applicant may have experience in:
SQL
machine learning
analyzing ‘big data’, i.e., datasets that are too large to be held in memory
working with social media data, or even have published in the area of misinformation, disinformation, and information ecosystem studies, and be familiar with the academic publishing process
Statistical analysis
Systems or complexity theory; network theory
qualitative methods
translating research and findings into easy to digestible content suitable for public consumption
communicating effectively in French
Under the direction of the MEO leadership, the successful candidate will be expected to fulfill the following duties:
Analyze data emerging from the Observatory’s social and news media pipeline on an ongoing-basis to detect trends, patterns, anomalies, and facilitate the Observatory’s research projects on the health of the Canadian media ecosystem.
Increase support during information events (e.g. elections, natural emergencies, etc.) to conduct “rapid-research” for monitoring, identifying and reporting on information incidents that may occur on a short turnaround
Coordinate the design and implementation of mixed methods research, i.e. collaborating with colleagues conducting qualitative research to build alignment between research approaches and co-create in depth, innovative research
Communicate findings with team members, receive feedback, and converge on defensible conclusions.
Contribute to the writeup of reports and summaries to present conclusions to a wider audience.
Support writing and submitting grant applications
Contribute to the development and implementation of a misinformation digital literacy program that spans a variety of media, topics and target audiences
Degree level:
Bachelor-level degree completed
Subject areas may include (but are not exclusive to):
Political Science
Media studies
Communications & journalism
Data Science
Economics
Statistics
LOCATION: Montreal, QC
JOB TYPE: Fulltime (35-40 hours per week)
SALARY: $30-35/hour (salary commensurate based on experience)
Hourly Salary:
$31.48Hours per Week:
40 (Full time)Location:
Sherbrooke 680Supervisor:
Assistant Professor (Research)Position Start Date:
2024-08-01Position End Date:
2025-03-31Deadline to Apply:
This position is covered by the Association of McGill University Research Employees (AMURE) collective agreement.
McGill University hires on the basis of merit and is strongly committed to equity and diversity within its community. We welcome applications from racialized persons/visible minorities, women, Indigenous persons, persons with disabilities, ethnic minorities, and persons of minority sexual orientations and gender identities, as well as from all qualified candidates with the skills and knowledge to productively engage with diverse communities. McGill implements an employment equity program and encourages members of designated groups to self-identify. Persons with disabilities who anticipate needing accommodations for any part of the application process may contact, in confidence, accessibilityrequest.hr@mcgill.ca.
Yearly based
Sherbrooke 680