Analytics Engineer

Harnham
London
1 year ago
Applications closed

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Analytics Engineer (Product Focus) | Telecoms Startup | Remote | Up to £65k + Great Benefits


Atelecoms startup, backed by a major telecoms provider, is on a mission to transform the mobile industry throughvalue, flexibility, and mutuality. They are building a world-class data team to create seamless, data-driven customer experiences.


About the Role

The company is seeking anAnalytics Engineer with product experienceto collaborate with cross-functional teams and contribute to data-driven product development. You’ll work at the intersection ofanalytics, product, and data science, ensuring that data flows efficiently and provides actionable insights to shape customer-focused solutions.


Key responsibilities include:

  • Partnering closely withdata science and product teamsto develop scalable data models that support product innovation.
  • Building and maintaining data pipelines and models inSnowflakeusingDBT, ensuring data availability for decision-making.
  • Analysingproduct performanceand user behaviours to identify actionable insights that enhance customer experiences.
  • Collaborating with product managers to define and measurekey product metrics, supporting iterative product development.
  • Driving predictive and prescriptive analytics to optimisecustomer interactions and targeting strategies.


About You

The ideal candidate will have:

  • Experience in analytics engineering, with a strong understanding ofproduct metrics and user analytics.
  • Proficiency inDBT,SQL, andSnowflake, with a solid grasp ofdata science workflows.
  • A collaborative mindset, with a passion for working closely withproduct managers and data scientiststo solve complex challenges.
  • The ability to translate data into actionable insights that influence product decisions.
  • Experience in fast-paced environments, such as startups or scale-ups, is a bonus.


Why Join?

This is an opportunity to make a real impact in adisruptive telecoms startup, shaping the future of mobile products through data. Benefits include:

  • Aremote-first working environmentwith flexibility and autonomy.
  • Acompetitive salary of up to £65k, plus excellent benefits.
  • The chance to work on innovative projects with a collaborative, forward-thinking team.


How to Apply

Pleas submit your CV via the Apply link on this website.

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