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Azure Data Engineer

Innserve Ltd
Tadcaster
3 weeks ago
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Are you:

  • Looking for an Azure Data and Dev Opps role that's out of the ordinary?

  • Someone who enjoys challenges and will join our growing IT team driving the business forward, working with internal/external stakeholders, driving simplicity while providing solutions?

  • Interested in joining our growing team of specialists who support the leading bars, restaurants, hotels, festivals, stadiums, concerts, events and keep our customers pouring?

Working at Innserve, you'll enjoy:  

  • Competitive salary (From £30000pa, negotiable on experience) + a performance-based incentive paid quarterly.  

  • Hybrid working: Offering flexibility and a great work-life balance.  

  • Generous holiday allowance: 23 days holiday + bank holidays + an additional 'Celebration Day'! You can also buy or sell holiday days to suit your needs.  

  • Amazing core benefits: Life assurance, access to the award-winning Help@hand app with GP appointments, counselling, and more, plus exclusive retail discounts. 

  • Personalised additional benefits: Tailor your benefits to your needs with our "All Inn" flexible benefits scheme. Receive a 'Flex Pot' to spend on additional benefits like Dental Insurance, Private Medical Insurance, Annual Gym Memberships, Critical Illness Cover, Increased Pension Contributions, Annual Travel Insurance, and more. Many options include coverage for your partner and children too!  

  • Free refreshments: Enjoy complimentary on-tap soft drinks and premium hot drinks. 

  • Development opportunities: In-house training, and support to pursue external qualifications and apprenticeships. 

What does the role involve:

We are seeking a a passionate and growth-oriented Azure Data & DevOps Engineer to join our

This role is ideal for someone who thrives on learning, embraces modern data

technologies, and is excited to build and maintain scalable, cloud-based data solutions. You will

play a key role in maintaining, developing, and optimising our Azure Data Warehouse

environment, integrating DevOps practices, and ensuring robust ETL pipelines support our data-

driven decision-making.

Key Accountabilities/Responsibilities:

What are we looking for:

  • Experience in working within development environments.
  • Familiarity with business intelligence tools and ETL processes.
  • Knowledge of industry-standard data governance and security practices.
  • Ideally, a Bachelor's degree in computer science, Information Systems, Data Analytics, or a related field, or equivalent experience.
  • Minimum 3 years' experience in SQL development and data reporting roles.
  • Deep expertise in Azure SQL, Synapse Analytics, and Azure Data Factory. Experience with Azure DevOps, Git, and CI/CD pipelines is essential.
  • Experience with Power BI.
  • Familiarity with data lake architecture and modern data warehousing concepts.
  • Passion for continuous learning and staying current with emerging data technologies.
  • Advanced proficiency in SQL, with experience in developing and optimising complex queries.
  • Experience with reporting tools such as Power BI is a plus.
  • Strong attention to detail, with the ability to interpret complex data and deliver insights in simplified format.
  • Strong written and verbal communication skills and the ability to collaborate.

At Innserve, we are One Big Team. Interested in joining us?

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