Data Engineer

Hexegic
London
2 days ago
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As data engineer, you will contribute to the development of a robust, validated and easily accessible data foundation instrumental in facilitating new analytical workflows and applications.


About us

Hexegic are a leading technical consultancy providing agile multi-disciplinary teams to high performing organisations. The company promises exciting, engaging and rewarding projects for those that are keen to develop and build a successful career.


Core Responsibilities

  • Establishing new data integrations within the data foundation
  • Conduct ETL activities as conducted by SMEs
  • Configuring connections to other datasets within the data foundation
  • Collaborate with SMEs to create, test and validate data models and outputs
  • Set up monitoring and ensure data health for outputs


What we are looking for

  • Proficiency in Python, with experience in Apache Spark and PySpark
  • Previous experience with data analytics softwares
  • Ability to scope new integrations and translate user requirements into technical specifications


What’s in it for you?

  • Base salary of £70,000-£80,000
  • £5000 a year professional development budget
  • Wellness program
  • 25 days annual leave
  • Hybrid working arrangements


Please note that successful candidates must be eligible for UK security clearance

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