Azure Data Engineer

Stockton-on-Tees
2 months ago
Applications closed

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Join our data team as an Azure Data Engineer, where you will have the opportunity to shape and enhance our data management capabilities. This role is ideal for someone passionate about data integrity, ETL processes, and data warehousing in a secure environment.

Azure Data Engineer

Annual Salary: From £45,000
Location: Stockton-on-Tees
Job Type: Full-time, Permanent, hybrid (2-3 days in office per week)

Day-to-day of the role:

Load, organise, and ensure the integrity of data from various sources into our secure data warehouse.
Manage and optimise ETL processes using advanced tools like SSIS and Azure Data Factory.
Continuously explore ways to expand and enhance the data platform, focusing on automation and operational excellence.
Proactively identify and resolve data-related issues, ensuring smooth and efficient data operations.
Collaborate with team members and stakeholders to meet data needs and support organisational goals.Required Skills & Qualifications:

Bachelor's degree in Computer Science, Information Systems, or a related technical field.
At least 3 years of experience in developing data solutions focusing on ETL and data engineering.
Advanced knowledge of TSQL and familiarity with ETL tools such as SSIS and Azure Data Factory.
Proficient in reading, writing, and debugging complex stored procedures and similar code.
A strong passion for automation and operational excellence.
Ability to work both independently and as part of a team.
Analytical mindset with excellent problem-solving skills.
Highly organised with outstanding attention to detail.Benefits:

Competitive salary package.
Opportunities for professional growth and certification.
Dynamic and supportive work environment.To apply for the Azure Data Engineer position, please submit your CV and cover letter detailing your relevant experience and qualifications

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