Collaboration Technical Architect

NTT DATA
London
3 months ago
Applications closed

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Job Description

Make an impact with NTT DATA
Join a company that is pushing the boundaries of what is possible. We are renowned for our technical excellence and leading innovations, and for making a difference to our clients and society. Our workplace embraces diversity and inclusion – it’s a place where you can grow, belong and thrive.

Your day at NTT DATA

The Collaboration Technical Architect is a seasoned subject matter expert, responsible for playing a key role in designing and may be required to implement collaborative solutions that foster effective communication, information sharing, and teamwork as part of the pre-sales function.

This role works closely with business users, IT teams, and executive management to understand business requirements, translate them into technical designs, ready for implementation as collaboration platforms and tools.

What you'll be doing

Key Responsibilities:

Designs and architects collaborative solutions that align with business objectives, taking into consideration scalability, security, and performance requirements. Collaborates with stakeholders to gather business requirements, understands their collaboration needs, and proposes appropriate technical solutions. Assesses and recommends collaboration platforms and tools that best fit the organization's requirements and objectives. Develops and maintains technical documentation, including solution architecture diagrams, design specifications, and implementation plans. Analyzes, develops and recommends long-term strategic plans to ensure collaboration tools meets current and future requirements. Viewed as a trusted technical advisor to the client and provide technical guidance to development teams during the implementation of collaborative solutions. Provides pre-sales technical support and expertise in analyzing client requirements, in conjunction with the client’s current collaboration capabilities. Ensures technical solutions will accomplish the client's objectives. Works with internal stakeholders to produce a technical specification for the custom development and systems integration requirements for the solution Develops or produces the technical design document to match the solution design specifications. Working with the relevant internal stakeholders, participate or lead in scope of work determination, product pricing and RFP/RFI responses. Assists with the determination of outsourcing, product pricing and collaborates with others to develop an implementation solution. Integrates collaboration platforms with existing enterprise systems, ensuring seamless data exchange and interoperability. Responsible for influencing and guiding members of the Sales team and to ensure that they are equipped to close deals and maintain visibility of forecasting and sales pipeline in order to influence potential deals. Manages client proof of concept (POC) initiatives, which will require the involvement of the appropriate resources, and setup and delivery of the POC. Ensures compliance with data privacy regulations, industry standards, and organisational security policies in the design and implementation of collaboration solutions. On all assigned engagements, owns the proposed solution and transitions the build / implementation to the delivery team. Specifically relating to opportunity pursuit this role will evaluate each opportunity for alignment with organizational capabilities and business policy, prepare the executive summary that outlines all of the information gathered from the client in regard to their needs, as understood, document the proposed technology solution, document the statement of work along with all labor requirements, work with the relevant internal stakeholders to prepare the pricing format that will be supplied to the customer, perform the actual solution design and prepare a parts list outlining equipment to be provided, develop and manage a proof-of-concept as such may be required, engage all technical resources required for an accurate solution design, prepare a network diagram outlining the proposed solution, document all deliverables and what constitutes a successful completion, review the final parts list as supplied and submit all information to the applicable bid team for final assembly, verify the proposal’s accuracy and sign off on the final documents to be presented to the client, assist during the final presentation to the client as appropriate.


Knowledge and Attributes:

Seasoned client engagement skills coupled with good technical consulting skills. Understanding of the vendor’s products business and technology positioning. In-depth knowledge and expertise in collaboration platforms such as Microsoft SharePoint, Microsoft Teams, Cisco Webex, Google Workspace, or similar tools. Ability to collaborate and communicate effectively with team members, contributing to their success. Broad product knowledge integrated with technology understanding. Understanding network protocols, topologies and security. Seasoned understanding of system and software architecture principles, design patterns, and best practices. Strong troubleshooting and problem-solving skills to identify and resolve technical issues. Familiarity with security best practices, data privacy regulations, and compliance requirements. Understanding of how collaboration platforms integrate with other enterprise systems (such as Active Directory, ERP systems, CRM systems, etc.) is important. Knowledge of APIs, web services, and data exchange protocols will enable seamless integration between collaboration tools and existing infrastructure. Understanding user access controls, encryption, data loss prevention, and other security measures is crucial. Basic understanding of key vendor subscription models such as Cisco EA 3.0.


Academic Qualifications and Certifications:

Bachelor's degree in information technology, computer science or information systems or a related field. Certification and working knowledge of Enterprise Architecture methodologies (for example, TOGAF, Zachman, SOA, ITIL, COBIT, etc.). Vendor product, sales and technology certifications. Software and programming languages, for example, C++. SAFe Scaled Agile certification advantageous.


Required Experience:

Seasoned professional technical experience within a large scale (preferably multi-national) technology services environment. Seasoned experience as a Collaboration Technical Architect or a similar role, designing enterprise-level network solutions. Seasoned experience in a professional technical role. Experience with integration and interoperability between collaboration platforms and other enterprise systems. Experience in project management methodologies advantageous.

Workplace type:

Hybrid Working

About NTT DATA
NTT DATA is a $30+ billion trusted global innovator of business and technology services. We serve 75% of the Fortune Global 100 and are committed to helping clients innovate, optimize and transform for long-term success. We invest over $3.6 billion each year in R&D to help organizations and society move confidently and sustainably into the digital future. As a Global Top Employer, we have diverse experts in more than 50 countries and a robust partner ecosystem of established and start-up companies. Our services include business and technology consulting, data and artificial intelligence, industry solutions, as well as the development, implementation and management of applications, infrastructure, and connectivity. We are also one of the leading providers of digital and AI infrastructure in the world. NTT DATA is part of NTT Group and headquartered in Tokyo.

Equal Opportunity Employer
NTT DATA is proud to be an Equal Opportunity Employer with a global culture that embraces diversity. We are committed to providing an environment free of unfair discrimination and harassment. We do not discriminate based on age, race, colour, gender, sexual orientation, religion, nationality, disability, pregnancy, marital status, veteran status, or any other protected category. Join our growing global team and accelerate your career with us. Apply today.

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