Data Analytics Engineer

Morson Edge (Technology)
City of London
1 day ago
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We are looking for a Data Engineer who will design and implement customer data solutions that enable personalised experiences while ensuring privacy, quality, and accessibility of customer information across all touchpoints.


Length: 12 months

Location: London, UK

Environment: Hybrid - 2-3 days in the office


Key responsibilities:


  • Develop and maintain dbt models that transform raw data into trusted datasets for analytics and business intelligence
  • Implement data quality tests and monitoring to ensure accuracy and reliability
  • Optimise query performance using effective data modelling and materialisation strategies
  • Establish and maintain documentation and data dictionaries for analytical models, KPI definitions and metrics frameworks
  • Conduct exploratory data analysis to identify trends, patterns, and anomalies in business performance
  • Build interactive dashboards and reports that empower self-service analytics
  • Design visualizations that clearly communicate complex data stories to both technical and non-technical audiences


What is required to be successful in this role:


  • Strong SQL skills with experience in complex data transformations, CTEs and window functions
  • Expertise with dbt and modern analytics engineering tools
  • Solid understanding of dimensional modelling and data warehousing concepts
  • Experience with Git-based workflows for version control and collaboration for analytics
  • Knowledge of data testing frameworks and quality assurance practices
  • Experience with Snowflake, Databricks, or similar data platforms
  • Proficiency in Looker or similar BI tools (Tableau, Power BI)

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