Data Analyst (UX Research)

Entrust
London
5 days ago
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*Join us at Entrust*


At Entrust, we’re shaping the future of identity centric security solutions. From our comprehensive portfolio of solutions to our flexible, global workplace, we empower careers, foster collaboration, and build solutions that help keep the world moving safely.


*Get to Know Us*


Headquartered in Minnesota, Entrust is an industry leader in identity-centric security solutions, serving over 150 countries with cutting‑edge, scalable technologies. But our secret weapon? Our people. It’s the curiosity, dedication, and innovation that drive our success and help us anticipate the future.


About the team

You’ll be joining the team leading Entrust’s Identity portfolio, including the solutions formerly known as Onfido (AI‑powered digital identity solution). With the completed acquisition, Entrust now provides the industry’s most comprehensive portfolio of AI‑powered, identity‑centric security solutions.


Our technology helps businesses verify real identities using AI and biometrics, ensuring secure remote customer and business onboarding. By assessing government‑issued IDs and facial biometrics with innovative dashboards and fraud signals, we provide companies with the assurance they need to operate securely while allowing people to access services quickly and safely.


About the role

We’re looking for someone with strong data analytics skills to join our UX Research and Customer Insights team which lives at the core of our Product group, helping inspire innovation and validate important strategic initiatives through data‑driven insights. We help fuel a human‑centred design process and are looking to strengthen our internal quantitative and data analytics capabilities to amplify the team’s impact.


In this role, you’ll bring an analytics and metric‑driven lens to our customer insight efforts. Think product analytics, but your skills will primarily be in service of helping us understand customers better.


We see this manifesting in a couple different ways:



  • A little bit of investigative data analytics… Surfacing new insights/ themes from large data sets with your own self‑directed analysis, for example, driving customer segmentation
  • A little bit of data ops… Infusing customer‑needs related data into product team dashboards and building other internal processes that allow teams to self‑serve customer data
  • A little bit of mixed methods user research … Partnering with qualitative researchers to strengthen insights with metrics and data, scoping and conducting quantitative studies where appropriate.

You will also:



  • Help with problem definition and scoping, ensuring we’re asking the right customer research questions to support product and business priorities.
  • Make your insights sing, translating data into visualisations and stories that drive outcomes.
  • Work within an agile product development team and partner closely with engineers, designers, product managers, and UX researchers.
  • Be a key contributor in developing our AI‑first approach to a centralised ‘voice of customer’ hub.

Ultimately, this role will be about more than crunching numbers. To be successful you will visualise insights, craft compelling narratives, and connect the dots between the data and strategic decision‑making. For this, we are looking for someone who is talented in storytelling and persuasive communication.


Minimum Qualifications

  • You have 3-5 years’ experience with data analytics skills that support product and business decision‑making, with demonstrable experience in:
  • Advanced spreadsheet skills (i.e., MS Excel, Google Sheets).
  • Data visualisation and insight generation through business analytics tools such as Looker, Datadog, Tableau, Power BI, etc.
  • Manipulating large data sets (i.e., SQL, Python, etc.)
  • Experience using data to help answer a customer or customer‑needs focused question (ideally experience building customer segmentations)
  • Strong presentation and storytelling skills, with the ability to translate data into compelling narratives for tech and non‑tech audiences across multiple channels (i.e., Powerpoint, Slack, and e‑mail).
  • Comfort in ambiguously defined problems, and the ability to understand strategic priorities, scope project needs and adapt to changes.
  • Intellectually curious, interest in people and human behaviour, and excited about solving big problems!

Nice to have

  • Experience with MCPs (Model Context Protocols) and manipulating data with AI agents
  • STEM degree, or any university degree where the focus is on data analysis, data manipulation tooling, and presentation.
  • Experience establishing statistical significance with large data sets (i.e., R, Python, etc.)

Please note this is a hybrid role with 3 days in our London office


#LI-CV


At Entrust, we don’t just offer jobs – we offer career journeys. Here is what you can expect when you join our team:



  • Career Growth: Whether you’re a budding developer or a seasoned expert, we’re invested in your professional journey. With learning‑forward initiatives and exciting challenges, your growth is our priority.
  • Flexibility: Life is all about balance. Whether you’re remote, hybrid, or on‑site, we offer flexible options that fit your lifestyle.
  • Collaboration: Here, your voice matters. Our teams thrive on sharing ideas, brainstorming solutions, and working together to build a better tomorrow.

We believe in securing identities—but it doesn’t stop there. At Entrust, we’re passionate about valuing all identities. Our culture is built on diversity, inclusion, and respect. From unconscious bias training for our leaders to global affinity groups that connect colleagues across the globe, we’re creating a community where everyone is encouraged to be themselves.


*Ready to Make an Impact?*


If you’re excited by the prospect of innovating, growing your career, and collaborating in a dynamic environment, Entrust is the place for you. Join us in making a difference. Let’s build a more secure world—together.


*Apply today!*


For more information, visit www.entrust.com. Follow us on LinkedIn, Facebook, Instagram, and YouTube.


*For US roles, or where applicable:


Entrust is an EEO/AA/Disabled/Veterans Employer


*For Canadian roles, or where applicable:
Entrust values diversity and inclusion and we are committed to building a diverse workforce with wide perspectives and innovative ideas. We welcome applications from qualified individuals of all backgrounds, and we strive to provide an accessible experience for candidates of all abilities.


*If you require an accommodation, contact .


Recruiter:


Claudia Vernon



Entrust is an innovative leader in identity‑centric security solutions, providing an integrated platform of scalable, AI‑enabled security offerings. We enable organizations to safeguard their operations, evolve without compromise, and protect their interactions in an interconnected world – so they can transform their businesses with confidence. Entrust supports customers in 150+ countries and works with a global partner network, we are trusted by the world’s most trusted organizations.


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