Research Assistant

Bunhill
1 week ago
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Research Assistant
We are seeking two Research Assistants to support the agile delivery of high quality, impactful autism research.
Join a pioneering research team and help shape the future for autistic people.
Position: Research Assistant (2 posts)
Salary: £30,000-£37,500 per annum
Location: UK-based (remote with occasional travel)
Hours: Full-time (4-day working week)
Contract: Fixed-term, April 2025 – September 2026
Closing Date: 23:59, Thursday 06 March 2025
Interviews: 10-21 March 2025.
About the Role:
As Research Assistant you will support high-impact research projects focused on improving the lives of autistic people. Working alongside the Director of Research, senior research leads, and external partners, you will contribute to studies that support autistic individuals and their families, enhance employment opportunities, create neuro-inclusive spaces, inform evidence-based treatments for anxiety, and help change societal attitudes towards autism.
Each Research Assistant will lead one key project while contributing to a range of other impactful studies. This is an exciting opportunity to use your expertise in mixed methods research and neuro-divergence to drive meaningful change.
Key responsibilities include:

  • Conducting applied research on autism, ADHD, and co-occurring conditions.
  • Designing and delivering research using mixed methods, e.g., Delphi approaches, surveys, interviews, and focus groups.
  • Using statistical analysis (R, SPSS, STATA) to generate insights.
  • Write research reports for stakeholders from different audiences.
  • Engaging with community advisors and industry partners to shape research outcomes.
  • Managing project milestones, deliverables, and targets in an agile research environment.
    About You:
    This role is perfect for someone who thrives in a collaborative, fast-paced setting and is passionate about driving evidence-based change for the neuro-divergent community.
    We are looking for motivated and skilled researchers with a passion for neurodiversity research.
    Essential skills and experience include:
  • A postgraduate degree in Psychology, Sociology, Health, Social Care, or Mental Health (fully awarded).
  • At least two years of experience in a research assistant role.
  • Strong theoretical understanding of the key topics, issues and intersectional factors affecting life outcomes of autistic people.
  • Strong knowledge of autism and neurodiversity research methods.
  • Experience of delivering mixed methods research and high-quality study design.
  • Proficiency in statistical analysis and data science (using R, SPSS, or STATA).
  • Ability to manage multiple research projects, ensuring key milestones are met.
  • Excellent collaboration skills, particularly in community co-production and stakeholder engagement.
  • A self-motivated, meticulous, and adaptable approach to research.
    If you are passionate about advancing autism research and committed to evidence-based advocacy, we would love to hear from you.
    About the Organisation:
    You will be working for the UK’s leading autism research charity. They collaborate with neurodivergent communities, researchers, the NHS, and industry partners to drive breakthroughs that enable autistic people to live happier, healthier, and longer lives. Research focuses on transforming employment opportunities, improving mental health support, and creating truly inclusive environments.
    The charity are committed to diversity, equity, and inclusion and encourage applicants from underrepresented backgrounds. If you need any reasonable adjustments during the recruitment process, please let us know.
    Other roles you may have experience of could include: Research Officer, Data Analyst, Social Science Researcher, Behavioural Scientist, or Clinical Research Coordinator. #INDNFP
    PLEASE NOTE: This role is being advertised by NFP People on behalf of the organisation

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