Data Engineer

Experis - ManpowerGroup
City of London
1 month ago
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Data Engineer

Remote

7 months

Inside ir35 - Umbrella only

Required skills

  • Strong understanding of data concepts - data types, data structures, schemas (both JSON and Spark), schema management etc.
  • Strong understanding of complex JSON manipulation.
  • Experience working with Data Pipelines using custom Python/PySpark frameworks.
  • Strong understanding of the 4 core Data categories (Reference, Master, Transactional, Freeform) and the implications of each, particularly managing/handling Reference Data.
  • Strong understanding of Data Security principles - data owners, access controls - row and column level, GDPR etc., including experience of handling sensitive datasets.
  • Strong problem solving and analytical skills, particularly able to demonstrate these intuitively (able to work a problem out, not follow a work instruction to resolve).
  • Experience working in a support role would be beneficial, particularly able to demonstrate incident triage and handling skills/knowledge (SLAs etc.).
  • Fundamental Linux system administration knowledge - SSH keys and config etc., Bash CLI and scripting, environment variables.
  • Experience using browser-based IDEs (Jupyter Notebooks, RStudio etc.).
  • Experience working in a dynamic Agile environment (SAFE, Scrum, sprints, JIRA etc.).

Languages / Frameworks

  • JSON
  • YAML
  • Python (as a programming language, not just able to write basic scripts; Pydantic experience would be a bonus).
  • SQL
  • PySpark
  • Delta Lake
  • Bash (both CLI usage and scripting).
  • Git
  • Markdown
  • Scala (bonus, not compulsory).
  • Azure SQL Server as a HIVE Metastore (bonus).

Technologies

  • Azure Databricks
  • Apache Spark
  • Delta Tables
  • Data processing with Python
  • PowerBI (Integration / Data Ingestion)
  • JIRA

If this is the role for you, please submit your CV at your earliest convenience. If you have not had a response within 2 weeks, please take this as you have not been successful on this occasion.


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