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Data Engineer

New Day
City of London
1 month ago
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You will deliver

  • Hands on development on Nexus Platform
  • Monitoring daily BAU data pipelines and ensure our data solution is refreshed up to date every day
  • Enhance the daily BAU process. Making it easier to monitor and less likely to fail and hands on development on Data Lake build, change and defect fix
  • Building new data pipelines using existing frameworks and patterns
  • Working with the team within an Agile framework using agile methodology tooling that controls our development and CI/CD release processes
  • Contributing to the new Data Lake technology across the organisation to address a broad set of use cases across data science and data warehousing

Skills and Experience

Essential

  • Experience with data solution BAU processes (ETL, table refresh etc.)
  • Experience with integration of data from multiple data sources
  • Experience in Big Data data integration technologies such as Spark, Scala, Kafka
  • Experience in programming language such as Python or Scala. Experience using AWS, DBT and Snowflake.
  • Analytical and problem-solving skills, applied to data solution
  • Experience of CI/CD
  • Good aptitude in multi-threading and concurrency concepts
  • Familiarity with the fundamentals of Linux scripting language

Desirable

  • Experience of ETL technologies
  • AWS exposure (Athena, Glue, EMR, Step functions)
  • Experience of Snowflake and DBT
  • Experience with data solution BAU processes (ETL, table refresh etc)
  • Previous proficiency with ETL technologies (e.g. Talend, Informatica, Abinitio)
  • Previous exposure to Python
  • Previous exposure to own data solution BAU monitoring and enhancement
  • Exposure to building applications for a cloud environment

We work with Textio to make our job design and hiring inclusive.

Permanent


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