Senior Data Engineer

York Place
4 months ago
Applications closed

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Senior Data Engineer

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer – Contract | Edinburgh (2 days onsite) 

£500/day (Likely Outside IR35) 

3 months initially

Bright Purple is delighted to be working with an exciting, product-focused consultancy delivering some of the UK’s most high-profile and widely used consumer applications. Their client list features some of the biggest names in tech and beyond.

We’re seeking an experienced Senior Data Engineer to join their growing Data Practice on a 3-month engagement, helping shape and deliver scalable, cloud-native data solutions for household-name clients.

What you’ll be doing

Designing, building and maintaining robust data pipelines

Automating and orchestrating workflows (AWS Glue, Azure Data Factory, GCP Dataflow)

Working across leading cloud platforms (AWS, Azure, or GCP)

Implementing and optimising modern data architectures (e.g. Databricks, Snowflake)

Collaborating with multidisciplinary teams to deliver real business value

What we’re looking for

Strong experience with Python, SQL, and pipeline tools such as dbt or Airflow

Proven background in data modelling, warehousing, and performance optimisation

Hands-on experience with cloud data services (Glue, Lambda, Synapse, BigQuery, etc.)

A consultancy mindset – adaptable, collaborative, and delivery-focused

The details

Location: Edinburgh – 2 days onsite per week

Duration: 3 months initially

Day Rate: c.£500/day

IR35: Likely Outside (pending confirmation)

Apply now or contact Bright Purple to find out more about this opportunity with one of the UK’s most dynamic digital consultancies.

Bright Purple is proud to be an equal opportunities employer. We partner with clients who value and actively promote diversity and inclusion across the technology sector

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