Global

Analytics Engineer

Global · London, England, United Kingdom

Broadcast Media Production and Distribution · 1,001-5,000 employees

20 h ago
Mid (2-5 yrs) Full-time United Kingdom
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About the role

Design and maintain scalable data models and curated datasets to power business analytics and decision-making. Partner with stakeholders to define KPIs and implement automated data quality checks and documentation.

What they look for

Data Modelling SQL dbt Python Snowflake Airflow Git CI/CD AWS Agile Jira DataOps FinOps Business Intelligence Data Curation Stakeholder Management

Requirements

Requires experience in analytics engineering with proficiency in SQL, dbt, and cloud platforms like Snowflake. Candidates should be familiar with orchestration tools like Airflow, CI/CD pipelines, and Agile methodologies.

Full description

Accepting applications until:

14 August 2026

Job Description

Your Role: Analytics Engineer

As an Analytics Engineer at Global, you’ll be part of the Data team, building trusted, reusable data products that power analytics, insight and decision-making across the business. You’ll transform raw data into curated, business-ready datasets and shared metrics that Analysts and other collaborators can use with confidence.

Working closely with the Data Engineering and Analytics teams, you’ll apply business logic to the datasets being created and ensure best practices are followed—so our analytical data can be used by Business Intelligence, Data Science and Analytics teams, with clear, consistent definitions and metrics.

Key Responsibilities

  • Data Modelling & Product Development (50%): Design, build and maintain scalable, reusable, well-documented data models for analytics, BI, product and data science use cases. Transform complex raw and intermediate data into curated datasets aligned to business needs, and develop reusable semantic layers, metrics and core entities, working with Data Engineering to ensure source structures support high-quality outputs.
  • Data Quality, Testing & Documentation (25%): Build automated checks for freshness, completeness, consistency and accuracy, and establish testing standards including schema, business rule and metric validation. Maintain clear documentation so users understand datasets, definitions and intended use, improving discoverability and usability across Global.
  • Business Partnership & Metric Definition (25%): Partner with Analytics, Product, Data Science and commercial stakeholders to translate requirements into robust data models. Align stakeholders on common definitions, KPIs and business logic across audience, campaign and measurement use cases, and identify where analytics engineering can improve insight, consistency and speed to value.

What You’ll Love About This Role

  • Think Big: Work with some of the largest and most diverse datasets in UK media, helping to unlock their value across Global.
  • Own It: Build deep expertise in one or more data domains and take end-to-end ownership of key data products.
  • Keep it Simple: Focus on reusable datasets and models that simplify complex data and support multiple use cases.
  • Better Together: Be part of a kind, supportive team that looks out for each other and invests in a strong, inclusive culture.

What Success Looks Like

In your first few months, you’ll have:

  • Learned how the team operates and uses technologies such as Snowflake, dbt and Airflow.
  • Built a clear understanding of the strategic direction of Data and Analytics at Global and how it supports wider business goals.
  • Integrated into Agile ceremonies such as daily stand-ups, retrospectives and backlog refinements.
  • Started to build a strong understanding of Global’s datasets and how they are used across the business.

What You’ll Need

  • Analytics engineering skills: Experience in an Analytics Engineering or closely related data role.
  • Data modelling: Proven ability to design and maintain scalable, well-documented data models that enable multiple use cases.
  • Curation tools & SQL: Experience with tools such as dbt and/or Python, and the ability to write complex, efficient SQL, ideally on cloud platforms (e.g. Snowflake).
  • Orchestration & DataOps: Experience with orchestration (e.g. Airflow), git and CI/CD, and an appreciation of FinOps.
  • Cloud: Experience with cloud services, ideally AWS.
  • Agile ways of working: Understanding of Agile methodologies and tools such as Jira.
  • Communication & delivery: Strong organisational skills and attention to detail, with the ability to explain complex technical concepts to non-technical stakeholders.
  • Growth mindset: A demonstrated ability to learn new skills and pick up new technologies quickly.