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Principal Data Engineer

Aegon N.V.
Edinburgh
3 days ago
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Responsibilities

:
Team Leadership:Provide technical guidance, foster continuous learning, and take ownership of team capabilities and deliverables.Architect and Build Scalable Data Solutions:Design and develop scalable data solutions using AWS-native technologies (DMS, Glue, RDS, Lambda, Python, PySpark, Athena, DynamoDB, PostgreSQL, Kinesis, SQS, SNS) and BI tools (Tableau, Power BI, QuickSight).Cross-Functional Collaboration:Working closely with cross-functional teams to gather business requirements, designing effective data solutions, and ensuring timely and high-quality project delivery.Champion Engineering Best Practices:Establish coding standards, conduct code reviews, and promote quality assurance practices.Ensuring Data Quality and Reliability:Develop and maintain automated testing frameworks for data pipelines.Platform Design:Architect data platform solutions aligned with AUK Architecture team standards.
We'd love to hear from you if you have:
Experience in a Senior, Lead, or Principal Data Engineer role. Strong track record of delivering cloud-based data platforms, data lakes, BI, and advanced analytics solutions. Deep understanding of data architecture principles and data modelling techniques in modern serverless cloud environments. Hands-on experience with Python, PySpark, SQL, and infrastructure-as-code tools (AWS CloudFormation, Terraform, AWS CLI). Extensive expertise in AWS services and architecture, including EC2, S3, DMS, Lambda, API Gateway, AWS Glue, and QuickSight or similar in other Cloud environments like GCP / Azure. Proficiency in building scalable, serverless data pipelines using cloud-native ETL tools, such as AWS Glue, Azure Data Factory, or Google Dataflow. Experience with SQL and NoSQL cloud databases. Strong grasp of data engineering principles and best practices. Ability to implement robust data quality controls and monitoring frameworks. Knowledge of data security best practices. Proven ability to lead and mentor engineering teams. Skilled in translating business requirements into technical specifications.
What's in it for you?
A non-contributory pension between 8%-12% A discretionary bonus, depending on personal andpany performance 36 days leave per year (including bank holidays, pro-rated for part-time)
We also offer private medical cover, life assurance, critical illness cover, enhanced parental leave and a variety of lifestyle benefits to help our employees live their best lives, including retail discount vouchers, cycle2work scheme, subsidised restaurant and online GP appointments. To find out more about what to expect at Aegon click here.

We're looking for talented individuals who are ready to make a real impact. If you're excited about new challenges and want to work with a team that values your skills, apply today!

The legal bits

We'll need you to confirm you have the right to work in the UK. If we offer you a job and you accept, there are some checks we need toplete before you can start with us. This will include a credit and criminal record check, as well as providing satisfactory references.

Equal Opportunity Employer:

We are an equal opportunities employer and wee applications from all suitably qualified persons regardless of their age, disability, race, religion/belief, gender, sexual orientation or gender identity. Job ID R20058513

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National AI Awards 2025

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