Senior Data Engineer

Harnham
Bristol
9 months ago
Applications closed

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DATA ENGINEER - DBT / AIRFLOW / DATABRICKS


4-MONTH CONTRACT


£450-550 PER DAY OUTSIDE IR35

This is an exciting opportunity for a Data Engineer to join a leading media organisation working at the forefront of data innovation. You'll play a key role in designing and building the data infrastructure that supports cutting-edge machine learning and LLM initiatives. Expect to work closely with data scientists, helping to power intelligent content and audience tools across the business.

THE COMPANY
A major player in the media sector, this company is investing heavily in its data capabilities to support everything from real-time analytics to AI-powered content discovery. The environment is collaborative, fast-moving, and focused on innovation. With strong engineering foundations already in place, they're looking for a contractor to accelerate delivery of critical pipelines and platform improvements.

THE ROLE
You'll join a skilled data team to lead the build and optimisation of scalable pipelines using DBT, Airflow, and Databricks. Working alongside data scientists and ML engineers, you'll support everything from raw ingestion to curated layers powering LLMs and advanced analytics.
Your responsibilities will include:

  • Building and maintaining production-grade ETL/ELT workflows with DBT and Airflow

  • Collaborating with AI/ML teams to support data readiness for experimentation and inference

  • Writing clean, modular SQL and Python code for use in Databricks

  • Contributing to architectural decisions around pipeline scalability and performance

  • Supporting the integration of diverse data sources into the platform

  • Ensuring data quality, observability, and cost-efficiency

KEY SKILLS AND REQUIREMENTS

  • Strong experience with DBT, Airflow, and Databricks

  • Advanced SQL and solid Python scripting skills

  • Solid understanding of modern data engineering best practices

  • Ability to work independently and communicate with technical and non-technical stakeholders

  • Experience in fast-paced, data-driven environments

DESIRABLE SKILLS

  • Exposure to LLM workflows or vector databases

  • Experience in the media, content, or publishing industries

  • Familiarity with cloud data platforms (e.g., AWS or Azure)

  • Knowledge of MLOps and ML/data science pipelines

HOW TO APPLY
To register your interest, please apply via the link or get in touch with your CV.

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