Data Engineering Manager

Young's Employment Services
Greater London, England
8 months ago
Applications closed

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This newly created Data Engineer Managers position is an excellent opportunity for a hands-on Senior Data Engineer / Technical Lead / Engineering Team Lead etc looking to move into a management position. The postholder will lead and mentor a team of 3 Data Engineers whilst overseeing data platform development and optimisation. Our client is a well-established and rapidly growing global ecommerce business with its headquarters based in London. The Data Engineer Manager will play a pivotal role at the heart of our clients data & analytics operation. Having implemented a new MS Fabric based Data platform, the need is now to scale up and meet the demand to deliver data driven insights and strategies right across the business globally. Therell be a hands-on element to the role as you'll be troubleshooting, doing code reviews, steering the team through deployments and acting as the escalation point for data engineering. This is a hybrid role based in Central / West London with the flexibility to work from home 2 or 3 days per week. Our client can offer an excellent career development opportunity and a work environment thats vibrant, friendly, and collaborative.

Key Responsibilities include;
Define and take ownership of the roadmap for the ongoing development and enhancement of the Data Platform.
Design, implement, and oversee scalable data pipelines and ETL/ELT processes within MS Fabric, leveraging expertise in Azure Data Factory, Databricks, and other Azure services.
Advocate for engineering best practices and ensure long-term sustainability of systems.
Integrate principles of data quality, observability, and governance throughout all processes.
Participate in recruiting, mentoring, and developing a high-performing data organization.
Demonstrate pragmatic leadership by aligning multiple product workstreams to achieve a unified, robust, and trustworthy data platform that supports production services such as dashboards, new product launches, analytics, and data science initiatives.
Develop and maintain comprehensive data models, data lakes, and data warehouses (e.g., utilizing Azure Synapse).
Collaborate with data analysts, Analytics Engineers, and various stakeholders to fulfil business requirements.
Key Experience, Skills and Knowledge:
Experience leading data or platform teams in a production environment as a Senior Data Engineer, Tech Lead, Data Engineering Manager etc.
Proven success with modern data infrastructure: distributed systems, batch and streaming pipelines
Hands-on knowledge of tools such as Apache Spark, Kafka, Databricks, DBT or similar
Experience building, defining, and owning data models, data lakes, and data warehouses
Programming proficiency in Python, Pyspark, Scala or Java.
Experience operating in a cloud-native environment (e.g. Fabric, AWS, GCP, or Azure).
Excellent stakeholder management and communication skills.
A strategic mindset, with a practical approach to delivery and prioritisation.
Proven success with modern data infrastructure: distributed systems, batch and streaming pipelines.
Experience building, defining, and owning data models, data lakes, and data warehouses.
Exposure to data science concepts and techniques is highly desirable.
Strong problem-solving skills and attention to detail.
MS Fabric experience is beneficial but not essential.
Salary is dependent on experience and expected to be in the region of £85,000 - £95,000 + an attractive bonus scheme and benefits package.

For further information, please send your CV to Wayne Young at Young's Employment Services Ltd. YES are operating as both a recruitment Agency and Recruitment Business.
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