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Google Cloud AI/ML Data Engineer

Resource on Demand
City of London
1 week ago
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Overview

We are recruiting on behalf of our client, a consulting company, for a Google Cloud AI/ML Data Engineer. This role focuses on building AI-driven marketing automation solutions using the latest Google Cloud Platform (GCP) and Google Marketing Platform (GMP) technologies. You’ll design and implement machine learning pipelines, manage data ingestion, and drive campaign optimisation for high-impact marketing projects.

Responsibilities
  • Lead the development of AI/ML solutions that directly influence marketing strategy.
  • Collaborate with cross-functional teams in a fast-paced, innovative environment.
  • Design and implement machine learning pipelines, manage data ingestion, and drive campaign optimisation.
Benefits
  • Access to the latest GCP and MarTech tools.
Details

This is a contract role, and will require you to work 3 days a week from their London based office.

Qualifications
  • Ideally hold one or more Google Cloud Platform certifications.


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