Data Engineer

Spectrum IT Recruitment
Basingstoke
4 days ago
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We are seeking a motivated Data Engineer for an excellent client in Basingstoke. You will be responsible for the maintenance and growth of the Data Warehouse and Data Pipelines. You will work closely with the Senior Data Engineer, Data Analysts, and Finance Team to integrate new data sources, model processes, deliver enhancements, and expand functionality.

This is a hybrid role with the expectation to be on-site 3 days per week.

Skills required:

  • Strong SQL skills (PostgreSQL or Snowflake preferred)
  • Experience modelling business processes using SQL
  • Familiarity with Git/version control
  • Understanding of Cloud Data Warehouse concepts
  • Knowledge of SOAP/REST APIs, JSON, YAML
  • Basic Python for API data retrieval and ETL tasks
  • Logical problem-solving skills
  • Ability to work independently and collaboratively
  • Experience with dbt, Snowflake, Fivetran, AWS S3/Lambda, or CI/CD pipelines
  • Attention to detail and desire to learn

This is an excellent opportunity to grow your data engineering skills while contributing to a dynamic team. If you feel you have the skills and experience required, please contact

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