Data Engineer

Samsung Electronics UK
London
6 days ago
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Position Summary

ESBO (European Service Business Organisation) is responsible for identifying, evaluating and determining opportunities within the digital media industry. Our goal is to create scalable services on top of the footprint of European Samsung devices, and our team is dedicated to creating innovative and engaging experiences that meet the needs of our customers. We are a collaborative team that values creativity, experimentation, and continuous learning.


We are seeking a talented data engineer with expertise in cloud computing, data warehousing, and data visualization. This role will be responsible for designing and implementing unified data models for our mobile applications (e.g. Gaming Hub, Galaxy Store). The ideal candidate will bridge technical execution with stakeholder collaboration to ensure secure, scalable data infrastructure while enabling actionable insights through dashboards and reports.


This role will report directly to the ESBO Senior Analytics Manager and is based in London.


Role And Responsibilities

Your key responsibilities include:



  • Architect cloud-based data warehouses to consolidate fragmented data sources, adhering to strict security policies
  • Map UI logs to data schemas to ensure accurate tracking and analysis of user behaviour
  • Develop robust ETL/ELT pipelines for efficient data ingestion, transformation, and storage
  • Design and maintain interactive dashboards (using tools like Tableau, Power BI, or Looker) to translate complex data into actionable insights for stakeholders
  • Build relationships with Data Product Managers in Korea to improve the level of data knowledge and access for the European Business

What We Need For This Role

  • Experience in cloud-based data engineering
  • Strong problem‑solving skills with the ability to think critically and creatively
  • Experience designing data warehouses and optimizing pipelines
  • Experience with mobile app analytics
  • Proven ability to influence stakeholders and lead technical initiatives
  • Knowledge of data security, governance, and compliance

What Does Success Look Like?

  • You foster an insight‑led culture, and build trust in our work amongst key decision‑makers
  • You challenge previously held assumptions
  • You are able to prioritise between long‑term and short‑term goals, often based on partial or ambiguous information
  • You embody our core company values through kindness, willingness to help, and collaborative spirit
  • You have a commitment to continuous learning

Benefits of Working at Samsung

  • Hybrid working – 3 days in the office and 2 days at home per week
  • Pension contribution
  • Three volunteering days each year
  • Holiday – 25 days plus bank holidays and an additional day off for your birthday
  • Access to discounts on a wide range of Samsung products
  • Access to a discount shopping portal
  • Partner colleagues are not eligible for certain types of statutory leave such as Samsung Family Leave or Sick Leave policies but may be eligible for statutory payments via their agency

A Note on Equal Opportunities

We are an equal‑opportunity employer and value diversity at our Company. We do not discriminate on the basis of race, religion, colour, national origin, gender, sexual orientation, age, marital status or disability status.


We will ensure that individuals with disabilities are provided reasonable accommodation to participate in the job application or interview process, to perform essential job functions, and to receive other benefits and privileges of employment. Please contact us to request accommodation.


Privacy Notice

  • Please visit Samsung membership to see Privacy Policy, which defaults according to your location, at: https://account.samsung.com/membership/policy/privacy. You can change Country/Language at the bottom of the page.
  • If you are European Economic Resident, please click here: https://europe-samsung.com/ghrp/PrivacyNoticeforEU.html


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