GCP Cloud Architect

Anson McCade
London
1 year ago
Applications closed

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Are you an experienced GCP Cloud Architect with a passion to grow your career within Business Consulting?

Join a dynamic, innovative team at the forefront of organizational agility and digital transformation! Our client is a renowned global organization known for driving meaningful change and delivering exceptional results for our clients. Their expertise in Portfolio Management, Change Management, Digital Transformation, and Organizational Agility is unparalleled in the industry.

As a Google Cloud Premier Partner, they create cutting-edge solutions using Google Cloud and other top platforms. A background in software or DevOps, proficiency in Java, Python, Kubernetes, and Terraform, and expertise in cloud technologies are key.

Google Cloud (App Engine, Cloud Functions, Kubernetes Engine, Cloud Spanner, etc.) Architecture (Microservices patterns, Event-driven architectures) Languages/Frameworks (Java, JavaScript, Python) Agile development experience CI/CD tools and JIRA expertise Microservices architecture and serverless implementation knowledge Familiarity with machine learning tools £80,000 - £100,000 Up to £5,900 car allowance Up to 15% bonus Wider company benefits including bonus

To hear more about our GCP Cloud Architect opportunity, get in touch with Connor Smyth at Anson McCade on .

AMC/CSM/GCPA

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