Data Engineer

Premier Group
Greater London
2 weeks ago
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This range is provided by Premier Group. Your actual pay will be based on your skills and experience — talk with your recruiter to learn more.

Base pay range

I’m currently working with an exciting start-up that’s part of a larger group, growing rapidly and making waves in the industry. With ambitious goals for the years ahead.

The Role:

As the first Senior Data Engineer in the business, you’ll play a critical role in designing, developing, and optimizing data pipelines, ensuring scalability, reliability, and performance.

This is a hybrid role based in London, requiring at least three days a week in the office.

Key Responsibilities:

  • Design and implement data pipelines, ensuring efficient data ingestion, transformation, and storage.
  • Develop and maintain best practices for data engineering processes.
  • Own the data infrastructure and optimize for performance, scalability, and reliability.
  • Oversee the daily running of data pipelines and proactively address issues.
  • Monitor data quality, performance metrics, and overall pipeline health.
  • Automate and optimize workflows to improve efficiency and reduce manual processes.
  • Work closely with backend, data science, and product teams to ensure data availability and integrity.
  • Proactively communicate insights on data infrastructure and drive continuous improvements.
  • Champion a data-driven culture within the business.

What they are Looking For:

  • 5+ years’ experience in Data Engineering.
  • Strong background in Google Cloud Platform (GCP), particularly BigQuery and Pub/Sub.
  • Experience with dbt for data transformation.
  • Advanced SQL skills and experience working with relational databases.
  • Familiarity with Git, CI/CD pipelines (GitHub Actions or similar), and version control workflows.
  • Strong problem-solving skills, project management abilities, and attention to detail.
  • Experience in a startup environment is highly preferred.

Benefits:

  • Hybrid working – 3+ days in the London office.
  • Private health insurance.
  • Employer pension contribution.

Please note: Candidates must have the right to work in the UK. Visa sponsorship is not provided.

If you’re ready to take on a high-impact role and shape the data engineering function within a fast-growing start-up, let’s chat!

Seniority level

Mid-Senior level

Employment type

Full-time

Job function

Information Technology

Industries

Staffing and Recruiting

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