ONG (Setor Social)
AI Healthcare Risk Framework Research Volunteer–Bias, Equity, Governance, Validation & Trust Failures (Remote)
Detalhes
Descrição
About the Initiative
The BRITE Institute is expanding a structured AI Safety and Risk Framework initiative focused on identifying, analyzing, and documenting AI failure modes in healthcare and other high-risk environments.
As artificial intelligence becomes more integrated into healthcare decision-making, clinical workflows, diagnostics, patient monitoring, administrative systems, and institutional operations, new risks are emerging beyond technical performance alone.
AI systems may:
- Produce inequitable outcomes across different patient populations
- Fail regulatory, validation, or governance expectations
- Lose trust among clinicians, patients, institutions, or the public
- Be misused, underused, or inconsistently adopted in real-world settings
- Create patient safety, compliance, operational, or reputational risks
This initiative is building a scalable AI safety research and intelligence framework to help identify, analyze, and mitigate these risks before they create harm.
Volunteer Roles Available
We are seeking contributors from a wide range of backgrounds, including:
- Public health
- Health equity
- Clinical research
- Healthcare operations
- Regulatory affairs
- Healthcare compliance
- AI governance
- Ethics and policy
- Data analytics
- Social science research
- Health informatics
- Patient safety
- Quality improvement
- Life sciences
- Legal or policy research
- Clinical care
- Behavioral science
- Implementation science
- User experience or observational research
This is a fully remote and unpaid volunteer opportunity.
What You Will Do
Contributors may assist with:
- Identifying AI failure modes across bias, governance, validation, and trust categories
- Reviewing healthcare AI use cases and deployment scenarios
- Analyzing how AI failures may affect patients, clinicians, institutions, and underserved populations
- Evaluating risks related to fairness, equity, oversight, documentation, and adoption
- Identifying real-world workflow, compliance, and trust issues
- Reviewing research, reports, guidance, and healthcare AI examples
- Supporting structured failure mode documentation
- Contributing to mitigation strategy development
- Helping translate complex risks into clear, usable research outputs
- Supporting publication-oriented research deliverables
- Entering finalized findings into standardized project systems
Ideal Candidate Profile
We are looking for contributors who are:
- Detail-oriented
- Analytical
- Highly organized
- Reliable and responsive
- Comfortable with research-intensive work
- Able to follow structured workflows
- Able to work independently
- Comfortable receiving structured feedback
- Interested in responsible AI deployment
- Able to think critically about healthcare systems
- Able to connect technical, clinical, operational, equity, and governance risks
- Capable of documenting findings clearly and consistently
Strong Candidates May Have Experience or Interest In
- Health equity
- Public health
- Clinical research
- Regulatory affairs
- AI governance
- Healthcare compliance
- Patient safety
- Quality improvement
- Implementation science
- Ethics or policy research
- Healthcare operations
- Social determinants of health
- Data quality
- Healthcare technology adoption
- Clinical workflow analysis
- Observational research
- Risk management
Prior AI experience is helpful but not required.
The strongest candidates will be able to think critically about how AI systems may fail in real-world healthcare environments and how those failures may affect patients, clinicians, institutions, and vulnerable populations.
Important Notes
This initiative is fast-moving, systems-oriented, and research intensive.
Contributors should be comfortable with:
- Learning new workflows quickly
- Operating within standardized systems
- Receiving structured feedback
- Working independently
- Meeting deadlines
- Contributing consistently
- Using collaborative digital tools and remote workflows
- Maintaining accuracy across shared research systems
Remote collaboration may include:
- Slack
- Zoom
- Google Meet
- Google Docs
- Shared spreadsheets
- Research templates
- Structured data entry systems
Because this work may contribute to future publications, policy frameworks, healthcare AI safety guidance, and advanced research initiatives, the following are extremely important:
- Professionalism
- Reliability
- Confidentiality
- Operational awareness
- Attention to detail
- Consistent communication
What You’ll Gain
Volunteers may gain:
- Exposure to emerging AI safety research
- Experience contributing to a structured healthcare AI risk framework
- Publication-oriented collaboration
- Experience analyzing bias, governance, validation, and trust risks
- Interdisciplinary experience across healthcare, AI, policy, and operations
- Systems-thinking experience in responsible AI deployment
- Hands-on involvement in one of the fastest-growing areas of healthcare innovation
- Opportunities to help shape safer, more equitable, and more trustworthy AI systems
This is an opportunity to help identify the human, institutional, regulatory, and equity-related risks that determine whether AI systems are safely adopted in healthcare environments.
Additional Information
- Estimated commitment: approximately 8–15 hours per week
- Work may include structured research, documentation, and standardized data entry
- This is a merit-based and experienced-based volunteer opportunity.
- Applicants should be prepared to submit relevant work samples, research examples, writing samples, policy work, data projects, healthcare experience, regulatory experience, or related professional experience
- Selected candidates may also be asked to complete a short skills-based assessment aligned with the responsibilities outlined in this position description
Remote • Volunteer • Unpaid • Flexible Hours
