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Data Architect - GCP Specialist

McGregor Boyall
London
7 months ago
Applications closed

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Salary:Up to £120,000 + 20% Bonus

Location:London (Hybrid - offiice or onsite 3x a week)

If architecting complex data and AI/ML solutions, leading GCP-based projects, and designing scalable data architectures for top-tier clients sounds like your kind of challenge, then this role should be of interest.

My client is a leading Google Cloud partner that leverages cutting-edge AI and Machine Learning technologies to build disruptive solutions on Google Cloud Platform.

Responsibilities:

  • Lead workshops and consult on GCP Data Architecture and AI/ML best practices
  • Design and implement scalable and efficient GCP-based solutions tailored to customer needs
  • Oversee delivery teams, ensuring successful project outcomes and timely implementation
  • Create and document technical solution architectures and designs
  • Collaborate with the internal team to refine frameworks and service offerings
  • Support pre-sales activities and contribute to business development
  • Mentor junior team members, fostering growth and continuous learning
  • Stay current with emerging technologies and industry trends

Requirements:

  • Excellent communication skillswith the ability to engage both technical and business stakeholders
  • Client facing presales experience
  • Extensive hands-on experience with Google Cloud Platform, including tools like BigQuery, Dataflow, Cloud SQL, and more
  • Proficiency in Terraform, CI/CD pipelines, and scripting languages such as Python or Go
  • Experience with data pipeline tools like DBT, Dagster, Fivetran, or similar
  • Bonus points for Google Cloud Professional Certifications (Cloud Architect, Data Engineer, Machine Learning Engineer)

McGregor Boyall is an equal opportunity employer and do not discriminate on any grounds.

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National AI Awards 2025

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