Solution Architect - Identity Management Software platform – remote outside IR35 contract

Staffworx
London
11 months ago
Applications closed

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IDM, Identity Management Solution Architect, leading services provider


New workstreams to develop and upgrade full stack microservices identity management software platform.


The Role

  • Work with product owners, security teams and technical analysts in Identity Management team.
  • Turn requirements into technical solutions that can be refined, estimated and ultimately delivered by the development teams within Identity Management.
  • work with architects in software engineering and data engineering teams to ensure that identity solutions work as part of the end-to-end architecture
  • Shape the identity platform, key investment, Identity standards, microservices alignment


Experience:

  • Solution Architect with strong identity management domain experience.
  • OAuth2 compliance
  • Design solutions considering security, performance, maintenance cost etc
  • Solid technical engineering background with full stack preferred as role interacts with a lot of areas including resiliency patterns, NoSQL DBs (Couchbase, Mongo, Cassandra, Cosmos etc, Kubernetes, AWS cloud, message brokers (Apache Kafka), security
  • Ability to clearly define and document technical solutions
  • software engineering background (full stack, java, scala) and a track record of delivering complex, scalable software solutions into production
  • software coding background prior to architecture in high-performing engineering teams developing cloud-based services, backend, frontend and mobile apps
  • Software architecture and appreciate of DevOps principles and practices, with extensive grounding in data privacy and information security, and knowledge of dev/test process improvement, tools and automation


#idm #identity #identitymanagement #architect #OAuth2 #contractjobs #remote


#outsideir35 #NoSQL #Kafka


This assignment will fall outside the scope of IR35

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