UX Researcher, Quantitative London, UK • Research • ResearchLondon, UK Research...

Meta
London, England
11 months ago
Applications closed

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In Enterprise Products research at Meta, researchers
fully own their product space, collaborating with cross-functional
teams to create data-backed understanding which drives strategy and
product decisions for employees world-wide. As a quantitative
researcher, you'll scale the sentiment program, partner with
qualitative researchers, and own rigorous primary and secondary
research execution throughout the product life cycle. UX
Researcher, Quantitative Responsibilities 1. Collaborate and
develop trusted relationships with product, design, and business
cross-functional partners. 2. Identify the right methodology for
the questions and business need, design and execute the full cycle
of research using a wide variety of quantitative methods. 3.
Influence and advocate for insights that shape how product teams
think about short and long-term product strategy. 4. Design and
field surveys, triangulating survey insights with other data
sources (quant and qual) to help teams identify and prioritize
opportunities for product improvements. Minimum Qualifications 1.
Bachelors, Master's, or Ph.D. in human behavior related fields
(Computer Science, Human Computer Interaction, Experimental
Psychology, Sociology, Information Science, Economics, Political
Science, Mathematics, etc.) or relevant years of quantitative
product research experience. 2. Experience working with large-scale
data in multi-method studies. 3. Experience in survey design,
including structure, length, logic, question types, best practices,
and response effects. 4. Experience coding with R, SQL, STATA, SPSS
or equivalent. 5. Experience with both descriptive and inferential
statistics. 6. Demonstrated impact resulting from the translation
of influential narratives with consideration to business needs. 7.
Demonstrated experience communicating results to cross-functional
stakeholders with powerful data visualizations, storytelling, and
presentations. 8. Adapt to a changing environment. 9. Demonstrated
stakeholder and project management. Preferred Qualifications 1.
Familiarity with research in internal enterprise product systems
and tooling. About Meta Meta builds technologies that help people
connect, find communities, and grow businesses. When Facebook
launched in 2004, it changed the way people connect. Apps like
Messenger, Instagram and WhatsApp further empowered billions around
the world. Now, Meta is moving beyond 2D screens toward immersive
experiences like augmented and virtual reality to help build the
next evolution in social technology. People who choose to build
their careers by building with us at Meta help shape a future that
will take us beyond what digital connection makes possible
today—beyond the constraints of screens, the limits of distance,
and even the rules of physics. #J-18808-Ljbffr

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