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Senior Business Intelligence Engineer (Looker)

ENI – Elizabeth Norman International
united kingdom of great britain and northern ireland, uk
8 months ago
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📊 Senior Business Intelligence Engineer 📺Clientside media and tech brand📍 Location: London, UK with hybrid working. 3 days in office, 2 days WFH💰 Exceptional salary + bonus + great benefitsYou MUST have right to work in the UK.Ready to work with one of the largest datasets in the world? 🚀Love solving big problems with even bigger data? Passionate about building the pipelines and dashboards that power business decisions?We're on the hunt for a Business Intelligence Engineer to join a digital-first media team that works with the largest TV dataset in the world. This role is a blend of data engineering and BI expertise—you’ll be building smart, scalable data systems that support insights at scale.🔧 What you’ll be doing:Build and manage automated data pipelines to power business reporting.Design and maintain clean, scalable data models.Develop intuitive dashboards and BI tools to help teams self-serve insights.Own ETL/ELT processes—think orchestration, monitoring, and performance tuning.Collaborate with analytics, marketing, and product teams to deliver impactful insights.Support integration of new data sources and optimize existing systems.Translate complex business needs into technical solutions using SQL and cloud tools.🧠 What you’ll bring:Strong SQL skillsProven experience building and maintaining data pipelines (Airflow, DBT, etc.).Familiarity with cloud data platforms like Snowflake, BigQuery, or Redshift.Solid experience with BI tools like Looker, Tableau, or similar.Understanding of data warehousing and data architecture best practices.Ability to simplify complex analytics for non-technical stakeholders.Comfortable working with large-scale datasets and performance optimisation.Bonus points for Python, GitHub, or experience in media/advertising analytics.Why Join them:🌍 Be part of a dynamic pan-European analytics team.📊 Work with one of the largest datasets globally.📈 Drive real impact in a fast-growing industry.💼 Hybrid working – 3 days in the office, 2 days from home.🎂 25 days holiday + your birthday off.💰 Bonus scheme + pension contributions.🛍️ Discounts on products & other perks.If you're a data engineer at heart with a BI brain—and want to make a real impact with the insights you power apply now.ENI welcome applications from all sections of society. Additionally, to ensure people with a disability, impairment, mental or physical health conditions can access and progress in employment. Please let us know if there are any adjustments needed in order to make your interview/screening process as seamless and comfortable as possible.

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