Data Engineer

Plumstead Consulting
Surrey
1 week ago
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Are you passionate about data and eager to advance your career in a dynamic environment? Join our client as a Data Engineer and drive the growth and efficiency of the Data Warehouse and Data Pipelines alongside a talented team.

Why This Role Stands Out:

  • Professional Growth: Gain hands-on experience in data modelling and technical problem-solving.

  • Innovative Environment: Engage in cutting-edge data integration projects.

  • Supportive Team: Work within a collaborative and creative team.

  • Impactful Work: Enhance the company data processes and infrastructure capabilities.

Key Responsibilities:

  • Data Stack Monitoring: Ensure seamless data operations.

  • Data Modelling: Design and modify data models using dbt Core and VS Code.

  • Data Source Integration: Integrate new data sources into the Data Pipeline and Data Warehouse.

Essential Skills and Experience:

  • SQL: Proficiency in PostgreSQL or Snowflake SQL.

  • dbt Experience: Preferably with dbt Core.

  • Business Process Modelling: Using SQL in dbt.

  • Version Control: Familiarity with Git.

  • Cloud Data Warehouse: Understanding concepts and design.

  • API Knowledge: Proficiency with SOAP, REST APIs, JSON, and YAML.

...

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