Data Engineer

Countess Wear
1 day ago
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I am searching for a Data Engineer for an exciting and growing technology focused business based in Exeter.

The role requires you in the office 2-days per week so you will need to live within a commutable distance of Exeter to be considered for the role or you will be in a position to relocate to the area.

In this position you will be following agile methodologies for the design, development and acceptance of the data components for complex software solutions.

Working closely with the Product Owner you will gain a good understanding of customer requirements and knowledge of implementation processes to help solution scoping.

You will be responsible for requirements analysis, specification definition, data analysis and project management, as required, to meet the needs of each solution.

You will create production code and perform code reviews with the team - you will be equally comfortable working alone or in pairs (pair programming).

I am looking to speak with candidates who use design patterns and adopt best practices, candidates who take responsibility for ensuring high quality coding and development in their work.

To be a success in this role you will need to be skilled in a mixture of the following:

Databricks
Power BI
Python
TSQL
Extract Transform Load (ETL)
Analysis and design
Test Automation
Refactoring
Unit Testing (Mocking)
Agile
Scrum
Any experience working with PowerShell, Azure, AWS, Data Lakes or Zoho is highly desirable but is NOT essential.

Experience of using AI environments to enhance productivity and efficiency through intelligent task management is also desirable (i.e. Copilot and ChatGPT).

I am looking to speak with good communicators who like to work collaboratively within a diverse range of technical experts - this is a highly effective technology team.

The role comes with a competitive salary and an outstanding benefits package which includes an enhanced pension, medical and healthcare, a bonus, good holiday allowance and much, much more!

Please note, to be considered for this role you will MUST have the Right to Work in the UK long-term without company sponsorship. Our customer is not able to sponsor candidates for this opportunity.

The role comes with an outstanding benefits package which include an enhance pension, medical and healthcare, a bonus, good holiday allowance and much, much more!

KEYWORDS
Data Engineer, Databricks, Power BI, Python, TSQL, Extract Transform Load (ETL), Analysis and design, Test Automation, Refactoring, Unit Testing (Mocking), Agile, Scrum, PowerShell, Azure, AWS, Data Lakes, Zoho

Please note that due to a high level of applications, we can only respond to applicants whose skills and qualifications are suitable for this position.

No terminology in this advert is intended to discriminate against any of the protected characteristics that fall under the Equality Act 2010.

Bowerford Associates Ltd is acting as an Employment Agency in relation to this vacancy

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