ETL Data Engineer/Data Architect - Azure Stack

Randstad Technologies Recruitment
Nottingham, Nottinghamshire, United Kingdom
Today
£400 – £550 pd

Salary

£400 – £550 pd

Posted
7 May 2026 (Today)

ETL Data Engineer/Data Architect - Azure Stack

We are looking for an experienced ETL Data Engineer / Data Architect to deliver projects in collaboration with our IT partners and internal stakeholders that will transform our product landscape.

This role is hands-on so you would be expected to contribute to ETL development as well data architecture. You will be taking business requirements from stuctured data sets from the research teams and and transforming into technical documents.

Essential Skills

Educated to degree level in a relevant IT subject.

Expertise in designing and implementing data pipelines using Azure services (Azure Data Factory, Data storage), Spark and Databricks.

Expertise in data modelling, database design and designing enterprise data architecture.

Azure Data Stack

SQL server, NoSQL, Nanobricks, ADT, Spark, Data Tables. API, PostgreSQL

Knowledge of ETL/ELT frameworks and data integration patterns with programming experience with Python or PySpark.

Data modelling

Used to working with product teams

Ability to collaborate and communicate with stakeholders and product managerDesirable Skills

Experience of the life sciences sector

Experience working with structured and semi-structured data, preferably having worked previously with a variety of life science data (e.g. omics, health records).

Key Duties

Deliver data pipelines or products that support our business operations and research, providing clear documentation on specifications and having a deep understanding of each solution at the data, technical and business process levels.

Implement data engineering best practices to standardise the development process.

Design and maintain data integration frameworks for multiple data sources (e.g. practice management systems, lab systems, registries).

Be responsible for ensuring that high quality data is presented from the products to our researchers, and data dictionaries are maintained in the data catalogue.The role offers hybrid working with only one day a week required on site near Nottingham. This is a great opportunity to secure a long term contract working for a global brand.

So don't delay and apply ASAP as I have interview slots ready to be filled.

Randstad Technologies is acting as an Employment Business in relation to this vacancy

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