Senior Network Product Analyst

Visa
London
1 year ago
Applications closed

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What’s it all about? This is a Business and Product analysis role focusing on designing the “Send to Wallet” Network solution capabilities and services, supporting and completing key service integration activities, gathering, and interpreting business requirements, and identifying and building improvements to our Payments Network Product platform, as well as supporting Product and Delivery teams. The Visa Payments Network Product team key activities are related to integration and delivery of Partner implementations (onboarding, enhancements, remediation) and new Product features development, to achieve global reach and global settlement for Wallet cross border transactions and best in class Payment capabilities for our clients. What we may expect of you, day to day. Be a key voice in shaping and maintaining best practices for our Payments Network, including payload design, logical data modelling, implementation, metadata, and testing guidelines. Business analysis for development of robust data models downstream of backend services, to support Network Partner onboarding, internal reporting, machine learning, large language models, as well as Payment metadata and Validation use cases. Lead best practice analysis of payment message specifications, rules, payment data mapping, behaviours and capabilities across multiple payment schemes and financial institutions, onto the Network Platform, contributing to the design and scalability of API services and that measure the performance of our Network product suite. Collaboratively set standards and work with data across Visa, fostering knowledge sharing and continuously improving data practices Gather and refine requirements for Payment Network partner integrations based on specific network partner considerations and client demand by creating, and leveraging templates to standardise the Network Platform, including Partner Network UI/UX Platform (activities outlined in the Payments Network Product handbook). Conduct user research to gather insights on user behaviour and preferences in relation to Payments Network frontend platform usability and user experience. Support the standardisation of non-card (Account and Wallet) Payment Network across multiple markets and countries. Enhance Network Platform to sustain standardised API services, including connectivity, validations, field mapping, and new Network Product components where relevant. Scope, build and lead through others the re-architecture of Payments Network domain across Product and Operations (including data about Partners, payment schemes and mobile wallets we are connected to, data about demands and preferences of our customers from the Payments Network) Attend workshops with Network Partners, Operations, Technology, and other relevant Stakeholders within the payments product chain to discuss and resolve any gaps or issues identified within the analysis to minimise deviations in the specifications. Present complex and critical network feature demos to relevant stakeholders. Participate in Agile / Scaled Agile ceremonies such as sprint planning, daily stand-ups, sprint demos. Support product owners with backlog grooming and refinement. This is a hybrid position. Hybrid employees can alternate time between both remote and office. Employees in hybrid roles are expected to work from the office 2-3 set days a week (determined by leadership/site), with a general guidepost of being in the office 50% or more of the time based on business needs.

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