Data Engineer

Oceanic Catering
Glasgow
4 days ago
Create job alert
Responsibilities
  • Build and maintain the configuration of the data stack within the DevOps framework.
  • Develop data objects and write code in and around the data stack
  • Interact with upstream and downstream systems and API for data ingestion and egestion
  • Build ETL pipelines and data framework for monitoring the pipeline
  • Ensure performance, quality and consistency in the data and processes
  • Champion good data design practices and promote data quality
  • Collaborate and contribute with data architecture, DBA’s and other team members
  • Review use cases, data demand, envision future demands to develop data services to support Business needs
  • Explore new ways of improving data utilization/ consumption, discovery, and lineage
  • Develop and champion data principles and define/ lead efforts for adoption
  • Develop tools and functions for cross-system data quality and data cleansing
  • Implement data quality metric rules against data assets.
  • Create and maintain data quality dashboards
  • Establish and develop robust data quality checking and validation and facilitate continuous checks improvement.
  • Contribute to implementing new techniques and strategies that will support the achievement of longer-term ambitions.
  • Support and lead the various work streams as required for the delivery of the V.Group Innovation strategy and agenda
  • Attend other V.Group management offices as required
  • Any other tasks as required
Qualifications

You will be experienced working with the Azure data stack, building data pipelines, data warehouses/lakes and performance optimization. You will have strong experience in:

  • Microsoft Azure data stack and SQL server, ETL; SSIS and Data Factory
  • Stack design and performance optimization.
  • Data programming languages: SQL, Spark, C#, Python.

The right candidate will have good attention to detail, deep understanding of data best practices, strong analytical skills, communication, and user engagement skills.

  • Experience in data development.
  • Strong data background.
  • Ability to influence cross-functional teams without formal authority.
  • Strong problem‑solving skills along with excellent verbal and written communication skills.
  • Bulk data manipulation and import procedures.
  • Knowledge of cross‑business data will be a strong advantage.
  • Self‑motivated for planning and executing tasks and projects.
  • Willing to travel in support of business requirements.


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