Analytics Engineer / Data Engineer

OpenSource
London
2 days ago
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About the Company



We’re partnering with a fast-growing, product-led SaaS company to hire an Analytics Engineer / Data Engineer to help scale a modern data and analytics platform.



About the Role



This role sits between data engineering and analytics, with a strong focus on SQL modelling, data quality, and analytics-ready datasets rather than raw ingestion-heavy pipelines. You’ll take ownership of production analytics, enable stakeholders to self-serve with confidence, and play a key role in shaping how data is used across the business. It’s a great fit for someone who enjoys building reliable data foundations, working close to real business use cases, and owning data end to end.



Responsibilities



Analytics & Data Modelling

  • Design, build, and maintain analytics-ready data models using SQL
  • Define and maintain trusted metrics and semantic layers
  • Translate business and analytical requirements into robust, reusable datasets
  • Improve documentation and transparency of data flows and models


Data Pipelines & Production Ownership

  • Build and support ELT pipelines that power reporting, analytics, and data products
  • Own analytics data in production, including monitoring, alerting, and incident resolution
  • Improve data freshness, reliability, and consistency across the platform
  • Optimise the data warehouse for performance, cost, and accessibility


Data Quality & Engineering Standards

  • Implement testing, validation, and CI/CD practices for analytics code
  • Improve observability around data quality, volume anomalies, and model health
  • Contribute to governance practices such as lineage, documentation, and access control


Collaboration & Enablement

  • Work closely with analysts, engineers, and product teams on cross-functional initiatives
  • Enable stakeholders to self-serve analytics safely and effectively
  • Balance speed, quality, and long-term maintainability when making technical decisions


Qualifications



  • Strong background in analytics engineering or data engineering
  • Deep experience with SQL and analytical data modelling
  • Hands-on experience with dbt or similar transformation frameworks
  • Proficiency in Python for data manipulation and pipeline support
  • Experience working with cloud data warehouses (Snowflake, BigQuery, Redshift, or similar)
  • Solid understanding of data warehousing concepts and modern ELT workflows
  • Comfortable owning production data and supporting it end to end
  • Strong communication skills and experience working cross-functionally


Required Skills



  • Experience consuming data from event streams
  • Familiarity with modern table formats (e.g. Iceberg or similar)
  • Exposure to BI and dashboarding tools
  • Experience improving data observability and monitoring
  • Comfort working in Linux or Unix environments


Preferred Skills



  • High ownership of a modern analytics platform
  • Clear impact on how data is used across the business
  • Strong collaboration with product, engineering, and analytics teams
  • Opportunity to shape modelling standards, tooling, and best practices
  • Remote-first working with flexibility and autonomy


Pay range and compensation package



  • Competitive salary with performance-related bonus
  • Enhanced pension with salary sacrifice options
  • Private health insurance and life assurance
  • Generous annual leave allowance (including public holidays)
  • Long-term benefits such as extended leave after tenure

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