Senior Solution Architect to create and support Digital Transformation roadmap to identify, implement and rationalize capabilities across technology landscape.

S.i. Systems
London
6 months ago
Applications closed

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Our Financial Services Client is seeking aSenior Solution Architect to create and support Digital Transformation roadmapto identify, implement and rationalize capabilities across technology landscape.

This is a Permanent Opportunity, Remote - PST HOURS - Preferred Candidate location: British Columbia, open to Ontario and Alberta.

Must Have:

10+ years of software development experience as aSolutions Architectwithability to be hands-on and do code reviews.Experience designing solutions inFinancial/Banking sector applications.Experience incloud architecture- preferably Azure Experience withmodern core banking systemsand awareness of fintech landscape. Extensive knowledge ofsoftware architecture, application developmentand technical processes with considerable in-depth knowledge in one or more technical disciplines e.g.Artificial Intelligence, Machine learning, cloud computing, etc.Have in depth knowledge inintegration patternsand expertise indeveloping RESTful APIswith a good understanding of microservices architecture. Architectural experience using modelling languages and frameworks (UML, TOGAF, Archimate, 4 View Model, etc), architecture practices and principles in Business, Information (data), Application, Technology, and Security architecture disciplines. Proficiency in evaluating and recommending emerging technologies and best practices. Excellent communication and leadership skills, with the ability to collaborate effectively with cross-functional teams and stakeholders. Attention to detail and a commitment to delivering high-quality software solutions. Familiarity with software development methodologies, such as Agile or Scrum. Bachelor's degree in Computer Science, Software Engineering, or equivalent practical experience.

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