Senior Big Data Engineer

scrumconnect ltd
Edinburgh
4 days ago
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About Scrumconnect Consulting:
Scrumconnect Consulting is a multi-award-winning digital consultancy, recognised for delivering impactful technology solutions across UK government departments. Our work has positively influenced the lives of over 40 million UK citizens. With a strong commitment to user-centred design and agile delivery, and more to deliver innovative digital services that matter.

Role Description
As a Senior Big Data Engineer, you will lead the engineering of complex data solutions across Google Cloud Platform environment. You will architect and implement high-performance data pipelines integrating multiple internal and external data sources. You will apply strong data modelling and warehousing principles using BigQuery and Cloud SQL, embed governance through Dataplex and ensure automated orchestration via Airflow. You will provide technical leadership to ensure resilience, scalability and compliance across data services that underpin critical national infrastructure programmes.

Preferred Tech Stack Expertise
Google Cloud Platform including BigQuery, Cloud SQL and Cloud Composer, Apache Airflow, Dataplex, Dataform, Great Expectations or similar data quality tools, Terraform, Python and SQL

Responsibilities

  • Lead design and delivery of enterprise-scale data pipelines

  • Define data modelling standards and ...

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