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Data Engineer (GCP)

Anson McCade
London
6 months ago
Applications closed

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Role:GCP Data Engineer

Location:London (Hybrid Flexibility)

Salary:Up to £80,000 + Bonus & Benefits


We are working with a global technology leader renowned for designing, building, and modernizing mission-critical systems that power some of the world's most vital operations. As part of their continued growth, they are seeking an experiencedGCP Data Engineerto join their collaborative, cross-functional team in London.


The Role – GCP Data Engineer

As aGCP Data Engineer, you will play a pivotal role in shaping data platforms across a range of cloud environments, with a strong focus on Google Cloud Platform (GCP). You’ll be involved in full-lifecycle data projects – from ingestion and transformation through to analytics and visualization – all while collaborating closely with data scientists, engineers, and business stakeholders.

This is a high-impact position that offers the chance to work on multi-client, multi-cloud environments and drive innovation across complex data ecosystems.


Key Responsibilities

  • Design and implement scalable, high-performance data platforms within GCP
  • Develop and manage ETL pipelines, ensuring quality and consistency across the data lifecycle
  • Collaborate with cross-functional teams to integrate data flows across multiple sources and applications
  • Provide technical guidance and training to users and internal teams


Required Experience

  • Proven track record of delivering large-scale data platforms using Google Cloud Platform
  • Hands-on experience with GCP tools:BigQuery, Dataform, Dataproc, Composer, Pub/Sub
  • Strong programming skills inPython, PySpark, andSQL
  • Deep understanding of data engineering concepts, including ETL, data warehousing, and cloud storage
  • Strong communication skills with the ability to collaborate across technical and non-technical teams


Desirable Experience

  • Bachelor's, Master’s, or PhD in Computer Science, Mathematics, or a related field
  • Familiarity with BI tools such asLookerfor reporting and dashboarding
  • Exposure to other environments such asDatabricks, Snowflake, AWS, Azure, or DBT
  • Understanding of observability, monitoring, and logging in GCP
  • GCP Professional Data Engineer certification(or similar)


What’s on Offer

  • Competitive salary of£80,000 + bonus and full benefits package
  • Flexible hybrid working from a central London base
  • Continuous professional development with access to leading certification programs (Google, AWS, Microsoft)
  • Dynamic, inclusive culture supported by internal networks and equity-focused initiatives
  • Involvement in innovative, high-impact projects for Fortune 100 clients


This is an excellent opportunity for aGCP Data Engineerlooking to take the next step in a cutting-edge environment that champions growth, collaboration, and technology-driven impact.

Let me know if you'd like a shorter version for LinkedIn or InMail outreach.


Reference: AMC/JWH/GDEL1

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