Senior Data Engineer

Bath
11 months ago
Applications closed

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Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

Senior Data Engineer

£50,000 – 65,000 | Senior Data Engineer | Full Time | Bath| Redshift/BigQuery | SQL | CI/CD| GIS| Python

One of SR2's longstanding clients have engaged us to support in the search for a Data Engineer to join their team and elevate their data engineering practices and principles. This role is a pure engineering role and the company are doing interesting work in a crucial space!

They are at about 150 heads across the business with an office in Bath. They foster an incredibly collaboarative enviornment, with a focus on career progression for all of their staff.

Which of your skills will be used?

Proven experience in a Data Engineering role.
Experience on Cloud – AWS and GCP preferred.
BigQuery/Redshift experience is desireable.
Experience working with and understanding different databases (Structured, non-relational, Graph etc.)
CI/CD experience
Python or Java experience is preferred
GIS experience is desirable.
ETL experience (Ideally with DBT, but not a hard requirement)Benefits?

Hybrid working – 2 days per week on site.
Up to £65,000
Private Medical
4x DIS
5% employer pension, you can put in as much as you like above 5%
Modern office space with free parkingEven if your skillset doesn't match this spec 100%, I will still be keen to speak with you so please apply if it is of interest.

There are interview spots booked across the next couple of weeks, so please contact Adam Townsend on (phone number removed) or (url removed) to find out more information and to be considered.

£50,000 – 65,000 | Senior Data Engineer | Full Time | Bath| Redshift/BigQuery | SQL | CI/CD| GIS | Python

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