Data Engineer

NATIONAL TRUST
Wiltshire
5 days ago
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 **Important notice** 

The National Trust does not offer sponsorship.

We welcome applicants with right to work in UK, but we are unable to offer any form of visa sponsorship.

We’re looking for a Data Engineer to help build and maintain the data products that power decision-making across the National Trust. You’ll work with modern tools like Snowflake, dbt and Azure to deliver high-quality, scalable data pipelines that support our People and Nature Thriving strategy.

What it's like to work here

You’ll join a collaborative Agile delivery team within our IT function, working alongside analysts, BI developers, and business stakeholders across the organisation. We value creativity, learning, and impact. You’ll report to the Enterprise Data Manager and be part of a team that’s passionate about using data to support the ongoing delivery of our strategy.

Your contractual location will be our head office in Swindon and there will be an expectation for you to attend the office. However, there is flexibility on where you are based at other times. You will be required to work at a National Trust location for 40-60% of your working week. This will be discussed in more detail at interview. 

There is an expectation to work from our Swindon office two days a week.

What you'll be doing

You’ll design, build and maint...

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