Data Engineer - Azure

Brighton
3 weeks ago
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Data Engineer - Azure

We are seeking a Data Engineer to join the Analytics department within the public sector in Brighton. This role focuses on designing, building, and maintaining robust data pipelines and platforms to support organisational objectives.

Client Details

Data Engineer - Azure

The hiring organisation is a part of the public sector, committed to delivering high-quality services. It is a medium-sized organisation known for its structured approach and focus on analytics to drive impactful decision-making.

Description

Data Engineer - Azure

Develop and maintain scalable data pipelines and systems to manage large datasets effectively.
Collaborate with cross-functional teams to understand data requirements and implement solutions.
Ensure data quality, integrity, and availability across various systems and platforms.
Optimise data workflows and processes for efficiency and reliability.
Integrate data from multiple sources to support analytics and reporting needs.
Provide technical expertise in data engineering best practices and tools.
Monitor and troubleshoot data systems to resolve any issues promptly.
Document processes and maintain up-to-date records of data architecture and workflows.Profile

Data Engineer - Azure

A successful Data Engineer should have:

A strong background in data engineering or a related field.
Proficiency in designing and implementing data pipelines and architectures.
Experience with Python, Spark, C#, or relevant programming skills.
Experience with cloud platforms and data processing tools.
Knowledge of database systems, ETL processes, and data modelling techniques.
Excellent problem-solving skills and a detail-oriented approach.
The ability to work collaboratively with diverse teams and stakeholders.Job Offer

Data Engineer - Azure

Competitive salary ranging from £55,000 to £63,000 per annum.
25 days of annual leave plus bank holidays & flex days.
A very hybrid working model with flexible working patterns and flexitime.
A 35-hour working week for full-time employees.
Competitive parental leave policies.
Great Pension scheme with a high employer contribution.This role as a Data Engineer in Brighton offers an excellent opportunity to work in the public sector, contributing to meaningful analytics projects. If this aligns with your skills and career goals, we encourage you to apply

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