Oracle Cloud Integration and Data Architect

83zero Limited
Birmingham
1 year ago
Applications closed

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Salary:£75,000 - £85,000 - Bonus + Pension + Private Healthcare

Location:London / UK Wide Location - Hybrid working

* To be successfully appointed to this role, you must be eligible forSecurity Check (SC) clearance.

The Client:

83zero is proud to be partnered with a global leader in digital services, driving innovation in customer experience through CRM, marketing, business intelligence, and cloud solutions. Their cutting-edge technologies are tailored for enterprise clients, delivering platforms that not only meet today's business needs but also pave the way for future growth. These solutions empower digital transformation initiatives, unlock new business opportunities, and make customer relationship operations more relevant in today's evolving landscape.

Hybrid Working: Your work locations will vary based on your role, business needs, and personal preferences. This will include a mix of office-based work, client sites, and home working, with the understanding that 100% home working is not an option.

Your Role

  • You will operate as a lead architect on the adoption, design and implementation of PaaS solutions with a particular focus on large scale Oracle SaaS/PaaS/IaaS implementations and API/Microservice/Front-end architecture. You may operate as a lead data architect for our complex data migration projects.
  • You will provide pre-Sales support by articulating the architectural significance and benefits of the Oracle PaaS and IaaS portfolio. Become a key contributor and advocate of oracle-focused tools and methodology and drive a cloud-native approach in building our technology solutions.
  • You will have the opportunity to work with wider global teams to develop a pipeline of PaaS business as either a standalone initiative or as part of wider Oracle-centric offerings. You may also be responsible for communicating an implementation approach and design methodology to an offshore development team as well as leading globally distributed teams.
  • You will stay up to date with market new Oracle trends in technologies & solutions and incorporate them (when/if applicable) into our solution frameworks and architectural designs. Build strong rapport with our clients and drive forward customer-centric value delivery.

Your Skills and Experience

  • Experience and a proven track record of leading and implementing large scale Oracle PaaS solutions with architectural knowledge and understanding across the full Oracle PaaS portfolio. (Oracle Integration Cloud, Oracle OCI Services (e.g functions, API Gateway, Events, etc)
  • Experience of data migration delivery, planning and strategy along with associated ETL tooling (E.g Oracle Data Integrator)
  • Knowledge and experience in the delivery of Oracle SaaS solutions
  • Knowledge and experience in implementation of Oracle eBusiness Suite and/or SOA
  • Experience of cloud-native architectural design, incorporating APIs & Microservices, DevOps and robust CI/CD pipelines where applicable
  • Strong communication skills and experience with distributed delivery (off-shore/on-shore project delivery)
  • Ability to build productive client relationships and identify & develop opportunities for new business
  • Passion and a genuine interest for new Oracle PaaS based technologies and products

To apply please click the "Apply" button and follow the instructions.

For a further discussion, please contactCaitlin Earnshawon

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