AWS Architect - Fully Remote Working

83zero
1 year ago
Applications closed

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GCP Architect - Insight & Data Services - Permanent 90,000 - £100,000 pa (DOE) + 10% Bonus, Pension up to 6% contributory, Health Insurance, Life Assurance etc. Base Location: London / Part Remote / UK wide Our client is a global leader in Systems Integration and IT Consultancy. They have built out a super advanced and respected industry wide Insights & Data Practice. The Data Engineering, Architecture and Platform practice is part of global Insights & Data group; their goal is to help the organisations they work with become truly ‘insight driven’, to fully exploit their data using the convergence of Cloud and Artificial Intelligence to deliver real business value. Their objective is to marry the most innovative insights solutions with rock solid, industrialised engineering. We are looking for strong GCP Solution Architects who are passionate and focused on data solutions and Google technologies and who ideally have skills in many of the following areas: Helps define the performance goals and metrics for the proposed solution and understands the Total Cost of Ownership (TCO) for the solution Have experience of designing architecture for data focused GCP projects Deep understanding of architecture processes including Reviews and Design Authority. Knowledge of automation tooling such as DevOps to facilitate CI/CD approaches to IaC. Knowledge of other Cloud Platforms such Hybrid Cloud Knowledge of IaaS implementation, Availability sets, GCP Networking concepts, DNS, Load Balancing, HA, DR. Experience with API architectures, UI frameworks (e.g., React, Angular), databases (e.g., Postgres, BigQuery), and data processing technologies (e.g., Spark, BQ SQL). 83DATA is a boutique Tech & Data Recruitment Consultancy based within the UK. We provide high quality interim and permanent Tech & Data professionals.

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