Data Engineer

Plumstead Consulting
Basingstoke
3 days ago
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Data Engineer Opportunity | Join a Forward‑Thinking Data Team


Are you passionate about data and ready to grow your career in a dynamic, innovative environment? Our client is looking for a Data Engineer to help enhance and optimise their Data Warehouse and Data Pipelines alongside a talented and supportive team.


If you're driven, curious, and excited to contribute to a modern data environment, this role could be the perfect next step in your career.


Why You’ll Love This Role :


Professional Growth – Develop your skills in data modelling and hands-on technical problem‑solving.

Innovative Environment – Work on cutting‑edge data integration projects.

Supportive Culture – Join a collaborative team that values creativity and shared learning.

Real Impact – Play a key role in improving data processes and infrastructure.


Key Responsibilities :

• Monitor and maintain the data stack for smooth daily operations.

• Design and refine data models using dbt Core and VS Code.

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


Essential Skills & Experience :

• Strong SQL skills (PostgreSQL or Snowflake SQL).

• Experience with dbt (ideally dbt Core).

• Business process modelling using SQL in dbt.

• Familiarity with Git for version control.

• Understanding of cloud data warehouse concepts.

• Working knowledge of SOAP/REST APIs, JSON, and YAML.

• Basic Python for data retrieval and manipulation.


Desirable Attributes :

• Logical and proactive problem‑solver.

• Enjoys both independent and team‑based work.

• Strong relationship‑building skills.

• Positive attitude with a passion for learning.

• High attention to detail.


Nice to have experience :

(Not essential, but a bonus!)

• CI/CD with Bitbucket Pipelines

• Snowflake, Fivetran, AWS S3, Lambda

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