Senior Java Developer

Vistex
London
1 year ago
Applications closed

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Vistex seeks to appoint an experiencedSenior Java Developer to join its iMaestro team, supporting world-class software and providing our clients with exemplary service. Your focus is to deliver customizable solutions and support to the Counterpoint Suite iMaestro client base – delivering client requirements for the iMaestro project.
You will work as a technical SME in multiple, simultaneous, complex projects providing issue identification, resolution and tracking, status reporting, and consulting throughout the project life cycle. This role reports to the Head of the iMaestro team.

Responsibilities

Develop and support iMaestro, the leading rights and royalty management software Create and maintain features for the existing iMaestro application Produce specifications, effort estimations and technical documentation Define development tasks and split them within the team Engage with customers to provide support and gather and validate requirements Support the wider team and other development activities Define, plan, develop and implement robust processing and reporting solutions for clients Gather and document client requirements; produce clear, concise functional specifications, data flows and test specifications Manage delivery of small-scale projects and manage own workload and delivery targets Administration, troubleshooting, support, and maintenance of existing client solutions Recommend/implement improvements to the integration and reporting toolkit and associated processes Actively test and participate in quality assurance activities; use case management tools to document product issues and resolutions Develop system, support and training documentation for use internally and with clients/end-users Perform on-site and web-based training covering all aspects of the solution (i.e. installation, implementation, integration. Provide direct client technical service and support for software products and services via phone, email, desktop conference and on-site engagement

 We offer

An exciting job in the rapidly growing Big Data environment Pleasant working atmosphere with an open corporate culture Comprehensive training and development opportunities in a global company A regional team with flat hierarchy levels Team events Hybrid / flexible working model

 About us: The Vistex platform helps businesses finally get control of all their different promotions, rebates, SPAs, discounts, and other incentives. With so many programs across so many partner relationships, it can be impossible to see where all the money is going, let alone how much difference it’s actually making to revenue. With Vistex, business leaders can see the numbers, see what really works, and see what to do next – so they can make sure every dollar they spend really is driving more growth, not just more costs. It’s why global enterprises ranging from Coca-Cola to Sony to Grainger rely on Vistex every day. Vistex | Now it all adds up. ™

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