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Realta Associates | Senior Solutions Architect

Realta Associates
Birmingham
11 months ago
Applications closed

A San Francisco start up with deep roots in Europe that operates at the forefront of Graph Database technology with AI/ML capabilities is looking for a Senior AI/ML Solution Architect to join their UK business as soon as possible.


This role expects you to be heavily engaged in the pre-sale phase. You will create presentations that align prospect use cases with the technology, build custom demos and closely manage POCs to ensure technical alignment. With that, we need someone that has not only extensive AI/ML engineer experience but also strong pre-sale experience as a 'must'.


Key Requirement


  • 10+ years in modern enterprise architecture pre-sales or as a consultant
  • Strong knowledge of systems and application design
  • Strong knowledge of NoSQL databases and distributed systems
  • AI/ML Engineering experience
  • Python, Java, C#, PHP, JavaScript
  • Deployment know-how
  • Presentations, demonstrations
  • Fluent English


Extra points for:


  • Previous experience with Graph databases or frameworks
  • Knowledge of infrastructure stacks (AWS, Linux, Scala, Docker, Kubernetes, Kafka, Spark, etc.)
  • Administration experience with various operating systems (Linux, Windows), distributed systems, cloud, and data storage


Benefits:

28 days vacation, anniversary time off, parental leave, internet reimbursement, and all statutory benefits

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