Data Engineer

Blatchford
Basingstoke
2 days ago
Create job alert

prosthetic technology, bespoke seating solutions and orthotic devices. Our evidence-based approach and commitment to continuously challenge possibilities ensures our mobility solutions prioritise the wellbeing and long-term health of our users.


Through science, technology, and maintaining a clear focus on people, we make mobility possible.


We have an exciting opportunity for a Data Engineer to join our growing IT team.


***This role is offered on a hybrid working pattern, with the expectation of two days per week in the Basingstoke Office***


The role

As Data Engineer you will develop and construct data products and services and integrate them into systems and business processes.



  • Implementing data flows to connect operational systems, data for analytics and business intelligence (BI) systems.
  • Re-engineering manual data flows to enable scaling and repeatable use.
  • Supporting the build of data streaming systems.
  • Writing ETL / ELT scripts and code to make sure the process performs optimally.
  • Developing data models to support self-service business intelligence reporting that can be re-used to enforce data standards and quality.
  • Building accessible data for analysis.
  • Recognising opportunities to re-use existing data flows.
  • Leading the build of data streaming systems.
  • Leading work on database management.
  • Defining and implementing database architectures that meet business requirements for data availability.
  • Providing third line support of incidents and problems through systematic investigation and root cause analysis.
  • Carrying out code reviews and implement changes via DevOps pipelines.

What can we offer you?

  • Highly competitive salary
  • 25 days holiday (rising with service)
  • Option to purchase additional holiday.
  • On Demand Pay
  • Pension
  • Death in Service
  • Discounted shopping and leisure activities
  • Health cash plan
  • Cycle to work scheme

What are we looking for?

  • Relevant degree of industry recognised qualification.
  • Previous experience in a similar role.
  • Knowledge of Azure ETL services (Data Factory, Synapse etc).
  • Experience of using CI/CD, MS Azure and Azure Dev Ops in an agile environment.
  • Knowledge and understanding Strong proficiency in T-SQL and writing quality T-SQL scripts
  • Experience with various databases e.g. MS SQL, Azure Cosmos DB.
  • Skilled at optimizing large and more complicated SQL statements.
  • Proficiency in Python and experience with PySpark
  • Experience of REST API standards.
  • Proficiency in writing clean, readable, and secure code for Azure backend services, i.e. functions, utility functions etc.
  • Experience of Agile development methodologies
  • Good understanding of Service Oriented architecture and approaches to data integration and serverless application development e.g. Logic Apps, Function Apps.
  • Curious, eager to learn with a growth mindset

This is a fantastic opportunity to work within a unique environment and contribute to the success of our award-winning organisation.


If you feel like you meet the above criteria for this exciting Data Engineer opportunity, then please apply now!


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