Staff Data Analyst Engineering · Norwich · Fully Remote

Cornerstone VC
Norwich
4 days ago
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Engineering · Norwich · Fully Remote


Staff Data Analyst

About the role


We are on the look out for a Staff Data Analyst to take a lead on our data analytics effort to help us guide and scale our impact. We are just starting to build out our data capabilities, so this is an amazing opportunity to have an impact on the very direction of the company. The role is 90% hands‑on, and reports into our Head of Data.


Key Responsibilities



  • Help develop and implement a comprehensive analytics strategy that aligns with Evaro’s objectives.
  • Design, develop, automate, and maintain ongoing metrics, reports, analyses, experiments and dashboards on the critical drivers of our business.
  • Maintain data integrity and quality through the use of tools such as DBT.
  • Partner with teams across the org, including senior leadership, to provide insights and identify opportunities for growth and optimisation in company direction, patient experience, marketing and engagement flows.
  • Champion the use of data in decision‑making, ensuring data accessibility and literacy across all departments.

Essential Skills, Experience & Qualifications



  • A Bachelor's or Master's degree in Data Science, Computer Science, Statistics, Economics, or a related field.
  • 5+ years of experience in data analytics in at least one (more is a plus) of the following business areas: Product, Marketing and/or Sales, Clinical.
  • Proficiency in analytics and data tools and technologies like SQL, Python, DBT, and knowledge of statistical analysis and experimentation (e.g. A/B testing).
  • Experience with data visualisation tools (e.g. Looker, Metabase or Lightdash).
  • Experience working with a version control environment (e.g. git).
  • Excellent communication skills, with the ability to translate complex data insights into actionable strategies.
  • Fluency in English, with outstanding written and verbal communication skills.

Desirable Skills, Experience & Qualifications



  • Some experience with Google Cloud tech stack (Dataflow, Cloud Storage, BigQuery, Dataproc, Data Catalog, Cloud Functions, Cloud Run).
  • Experience in data orchestration tools (e.g. Airflow, Prefect, Astronomer).
  • Experience with data processing frameworks like Apache Kafka, Apache Iceberg and Debezium.
  • Experience integrating third‑party tools through data movement platforms (e.g. Fivetran, Airbyte).
  • Some experience with predictive analytics.
  • Some experience with healthcare and patient care.

Perks



  • Salary based on your expertise.
  • Pension scheme.
  • Flexible working options.
  • Opportunities for professional development and growth.
  • A modern office based just outside of Norwich.
  • Regular team building and events.

About Evaro


Evaro builds technology that makes healthcare more accessible. Our platform enables brands to integrate digital health services with minimal friction, supporting 13.5 million patients across NHS and private healthcare services in the UK. We’re tackling real healthcare challenges – 25% of A&E consultations and 40% of GP appointments focus on minor health conditions that our technology can help manage more efficiently. Our vision is to ease the pressure on frontline services while improving patient outcomes at scale.


Application Process



  • Initial conversation with our Talent Partner (Sofi).
  • Technical assessment (paid).
  • Interview with hiring team.
  • Taster week Mon‑Fri (paid).
  • Offer.


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