Data Engineer

Boost Talent ltd
Sheffield
6 days ago
Create job alert
Data Engineer – Sheffield (3 days a week onsite) - Up to £60K

We’re working with a forward‑thinking organisation where data powers every decision and innovation. They’re looking for a Data Engineer who’s passionate about building scalable systems and shaping the future of data.

Why You’ll Love This Role

Impact That Matters: Your work will underpin the insights and decisions that drive the business forward.

End-to-End Ownership: From designing pipelines to optimising platforms, you’ll have the freedom to innovate.

Continuous Growth: Work with cutting‑edge tools, collaborate across teams, and explore emerging technologies.

What You’ll Be Doing
  • Design, develop, and deploy secure, scalable data pipelines.
  • Integrate data from internal systems, APIs, and third‑party platforms into unified warehouses or lakes.
  • Model data for consistency, accessibility, and reusability across the business.
  • Collaborate with analysts, scientists, and business leaders to deliver actionable insights.
  • Implement data quality checks, governance, and compliance with GDPR.
  • Explore new tools and lead migrations to modern cloud platforms like AWS, Azure, or GCP.
What We’re Looking For
  • Proven experience as a Data Engineer or in a similar data‑focused role.
  • Strong skills in SQL and Python, plus ETL/ELT pipelines and data modelling.
  • Hands‑on experience with cloud platforms (AWS, Azure, GCP) and tools like Snowflake, Databricks, or BigQuery.
  • Familiarity with streaming technologies (Kafka, Spark Streaming, Flink) is a bonus.
  • Knowledge of frameworks such as Airflow, dbt, Prefect, and CI/CD pipelines.
  • A collaborative mindset and the ability to translate technical concepts into business impact.
Apply Now

Ready to make an impact? Apply now and help turn data into something extraordinary.

We will process your CV and personal information to assess your suitability for the role. If we wish to consider you further, we will register your personal information in our database and contact you directly. We may contact you from time to time about other relevant roles. Your personal information will be securely held on our CRM system.

Location

Sheffield, England, United Kingdom

Seniority level

Mid‑Senior level

Employment type

Full-time

Job function

Information Technology


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