Integration Data Engineer

Hays
Leatherhead
11 months ago
Applications closed

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Your New Company

Work for one of the UK’s leading family-owned development, building, and property maintenance companies. Founded over 125 years ago, they have a proud legacy in the built environment. Driven by their purpose, ‘reimagining places for people to thrive’.


Your New Role

As an experienced Integration Engineer, you will support our Integration Manager in managing, maintaining, and developing our application integration solutions. You will proactively monitor interfaces, act as 3rd line support for complex issues, and develop data integration pipelines using ETL tools such as SSIS and Azure Data Factory. You will lead SSIS development, manage stakeholders, and design robust system integration solutions.


What You'll Need to Succeed

  • Strong experience with ETL/ELT tools such as SSIS and Azure Data Factory.
  • Proficiency in SQL scripts, stored procedures, and SQL Server Integration Services.
  • Knowledge of Azure Integration Services, including Logic Apps, Service Bus, API Management, and more.
  • Experience with Source Control tools like Git and Azure DevOps.
  • Excellent communication skills and the ability to produce clear documentation.
  • Strong analytical and problem-solving abilities.
  • Ability to work independently and manage multiple projects simultaneously.


What You'll Get in Return

  • Competitive salary and bonus.
  • Flexible working arrangements, including hybrid working (2/3 days per week from home).
  • Travel covered to any of their sites.
  • Extensive corporate benefits, including private medical, pension with 8% employer contribution, health and wellness program.
  • 26 days holidays plus bank holidays, and more.
  • Excellent learning and development opportunities to support your career progression.

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