Cloud Application Architect

Hexaware Technologies
London
2 years ago
Applications closed

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Description


We are seeking an experienced Integration Architect to join ourteam in London. As an Integration Architect, you will play a crucial role indesigning and implementing integration solutions for our global API platform.Your responsibilities will include collaborating with internal and externalstakeholders, conducting requirement analysis, and providing expert guidance onintegration technology.

Key Responsibilities:

Conduct thorough requirement analysis to understand business needs and integration requirements. Design and implement integration architectures for a global API platform, ensuring alignment with enterprise architecture standards. Collaborate with internal and external teams on data analytics, product creation, and technology stack development. Develop and maintain technology stacks, utilizing commercial or open-source integration platforms. Provide expert advice to project teams on integration technology, data architecture, modeling, and system architecture best practices. Oversee critical steps in the Software Development Life Cycle, ensuring adherence to enterprise-wide development and architecture standards. Drive technology and standards for version control across components, ensuring alignment with information, technology, infrastructure, business, and security architectures. Define integration strategies for projects and collaborate with project teams to gather requirements for seamless integration into the Enterprise Architecture. Oversee the development and support of batch and back-end processes related to the application portfolio. Assist with incident response, troubleshooting, root cause analysis, and problem resolution. Architectural Design: Lead the design and development of software architecture solutions that align with business goals and scalability requirements. design patterns, Cloud design patterns, sound understanding of SOLID principles, Should have hands on experience on document db either COSMOS/Mongo. Technology Stack: Utilize your proficiency in .NET Core, C#, Web API, Azure, Integration Services, and other relevant technologies to architect robust and high-performance systems. Azure Cloud Services: Leverage your expertise in Azure PaaS services, including Kubernetes, Docker, Data Factory, Data Lake, Storage Account, Application Insights, Azure Monitoring, and Log Analytics to build and maintain cloud-native applications. Integration: Collaborate with teams to ensure seamless integration of various components and services within the ecosystem. Best Practices: Define and promote coding standards, best practices, and guidelines across the development teams. Scalability and Performance: Evaluate and optimize system performance, scalability, and reliability, ensuring efficient resource utilization. Documentation: Create and maintain comprehensive architecture documentation for reference and future enhancements. Mentorship: Provide guidance and mentorship to development teams to foster a culture of technical excellence. Security: Ensure that architectural solutions meet the highest security standards, identifying potential vulnerabilities and mitigating risks. Problem Solving: Collaborate with stakeholders to identify technical challenges and provide innovative solutions.

The person should have :

Proven experience as an Integration Architect or similar role. Strong background in requirement analysis and integration architecture for global API platforms. Expertise in designing and implementing scripts, programs, databases, and software components. Experience with commercial and open-source integration platforms. In-depth understanding of data analytics, product creation, and technology stack development. Knowledge of integration best practices and familiarity with enterprise architecture standards. Proficiency in driving technology and standards for version control. Excellent communication and collaboration skills.

Ability to workeffectively with cross-functional teams and external stakeholders.

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