Data Engineer - 9 Month FTC

Bury St Edmunds
3 weeks ago
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Company

TEC Partners are representing a leading infrastructure services company that is at the forefront of data management and digital transformation. With a strong focus on innovation, efficiency, and governance, our client is revolutionising how data is collected, cleansed, and utilised to solve complex business problems.

About this Data Engineer Role

As a Data Engineer, you will play a key role within the project team, creating new and innovative ways of collecting and managing data. You will focus on data governance, quality, and analysis, ensuring that data is efficiently structured, cleansed, and utilised to drive business decisions. Collaborating with technical and non-technical stakeholders, you will help shape the organisation's data infrastructure and analytical capabilities.

Why work as a Data Engineer with our client?

Basic salary up to £60,000
Hybrid working pattern - 3 days in the office
Learning and professional development opportunities
A collaborative and innovative working environment
This is 9 month FTCWhat is expected of you as a Data Engineer with our client?

A degree in a technology or business-related discipline
Experience designing and implementing engineering solutions to solve complex business problems
Strong background in working with large and complex datasets, identifying efficiencies, and improving data governance
Proficiency with data mining tools and techniques, including SQL and Python
Experience with database technologies across multiple stacks (e.g., Microsoft SQL Server, Oracle, PostGIS)
Knowledge of analytics tools such as Power BI
Experience working with ETL frameworks and data quality tools
Ability to communicate technical findings to both technical and non-technical stakeholders

Responsibilities of a Data Engineer with our client

Gather, analyse, and execute data cleansing projects across multiple technology stacks
Review and optimise data governance processes to enhance efficiency
Design and implement data solutions to solve complex business problems
Work with stakeholders to understand technical requirements and develop data products accordingly
Establish scalable and repeatable processes for data manipulation
Perform data analysis and mining to support business analysis activities
Present findings in data workshops with stakeholders at all levels
Contribute to the continuous improvement of data management within the organisationIf you are interested in this Data Engineer opportunity and would like to learn more about it or other roles in AI, ML, Data, or Software Engineering, please contact Stuart at TEC Partners today

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