UX Researcher – Product Team (UI/UX Team)

Bromley Town
1 year ago
Applications closed

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Responsibilities

  • Generate actionable insights that both fuel ideation and evaluate product experiences

  • Conduct user research to understand user needs, behaviours, and motivations and help elevate the quality of UX research within the organization

  • Collaborate with designers, product owners, and our marketing team to inform product development, independently prioritizing, scoping, and planning research activities

  • Communicate research findings effectively to stakeholders, including clear and concise presentations and reports tailored to different audience levels. Illustrate suggestions in compelling and creative ways

  • Utilize a range of qualitative and quantitative research methods, extracting meaningful insights from data to inform product decisions

  • Collect and analyze user behaviour through case studies, surveys, benchmark studies, server logs, and online experiments.

  • Effectively manage and prioritize research plans through ambiguous and fast-changing environments, align and efficiently execute critical insights and work with a large group of stakeholders

    Job requirements

    Minimum qualifications:

  • Bachelor's degree in Human-Computer Interaction, Cognitive Science, Statistics, Psychology, Anthropology, related field, or equivalent practical experience.

  • 2 years of experience in an applied research setting, or similar.

  • Experience with research design utilizing various methods (e.g., usability studies, contextual inquiry, surveys, etc.).

  • Experience with product research either in an end-to-end, usability, or generative setting.

  • Ability to work independently and autonomously

    Preferred qualifications:

  • 3 years of experience conducting UX research on products, managing projects, and working in a large, matrixed organization.

  • Experience with research in an educational-type environment.

  • Strong understanding of the strengths and shortcomings of different research methods, including when and how to apply them during the product development process.

  • Proficiency in communicating user research findings with cross-functional partners to drive impact.

  • Bromcom is an Equal Opportunities Employer

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