Principal Data Engineer

Cypher Consulting Europe
City of London
4 months ago
Applications closed

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Principal Data Engineer

We are looking for a skilled data engineer to help build and maintain our data infrastructure. The ideal candidate will have expertise working with cloud data platforms and architecting robust and scalable data pipelines.


This role is for contractors!


Tasks

As a Senior Data Engineer, you will work cross-functionally to intake, process, transform, and store large amounts of data from various sources. You will build and maintain the core data infrastructure that powers the organisation's advanced analytics, machine learning applications, and data-driven decision-making. This role requires strong technical skills, problem-solving abilities, and excellent communication with stakeholders at all levels.


Requirements

  • 10+ years of experience with building and maintaining data warehouses, data lakes, and other large-scale data storage systems
  • Knowledge of ETL processes and data transformation techniques
  • Ability to design and develop data aggregation and integration processes across different systems and environments
  • Understanding of data architecture patterns such as lambda and kappa architecture
  • Snowflake
  • Data Vault
  • AWS
  • Python

Nice to Have:



  • Experience with blockchain infrastructure and data integration
  • Knowledge of SQL and NoSQL databases
  • Experience with data visualization and business intelligence tools
  • Familiarity with machine learning pipelines and model deployment


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