Apps Development Group Manager - SVP

Citigroup Inc.
London
1 month ago
Applications closed

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Project description:

Apply fast, check the full description by scrolling below to find out the full requirements for this role.Unity is the global authority for business transactions across Citi, covering transactions across all asset classes in capital markets, commercial payments, account management and more. At its core Unity provides a unique reference that keeps with a transaction for its entire lifetime thereby allowing full traceability from front office to back office providing great business benefit.A Development manager position is responsible for accomplishing results through leading/mentoring the team, and if necessary, assist in hands on development/bug fixes of our Java application. The overall objective of this role is to drive applications development through programming activities.ResponsibilitiesTeam development. Mentoring team members to develop their full potential.Develop, own, improve processes within the team.Ensure the latest Citi technology standards are adhered to within the team.Work with product manager to set priorities.Participate in design sessions with the development team, both employees and vendors located across multiple locations.Evaluate and adopt new development tools, libraries, and approaches to improve delivery quality.Perform peer code review of project codebase changes.Communicate with stakeholders to help shape requirements and design decisions.Ensure that best practices and standards are followed as part of the application development life cycle.Participation in SDLC, Agile SCRUM.Analyze existing software systems and propose solutions to improve overall design, architecture, and efficiency.Ensure applications meet performance and scalability requirements.Stay up to date with the latest technologies and industry trends.Mandatory SkillsExperience as Development manager. Managing teams across multiple time zones, with multiple skill sets.Experience as Java software developer. This will be tested at interview.Messaging Systems experience (Kafka, Nats, Solace, TiBCo, RabbitMQ etc.).Experience working with SQL and databases such as Oracle, SQL Server, Hadoop etc.Agile SCRUM.Experience with Java Multithreading/Concurrency, Web Services (SOAP/REST), DB2 Database, JMS, MQ, NDM, SFTP.Acquainted with industry best practices and standards, software development tools and techniques.Experience in developing distributed systems.Experience in the use of Containers (Docker, Kubernetes).Nice to have skillsExperience in Low Latency Software Development.Experience in C++.Experience in C#.Experience in SBE.Ability to work with distributed teams across multiple time zones.Education:Bachelor's degree in Computer Science, Engineering, Information Technology or similar discipline.Job Family Group:

TechnologyJob Family:

Applications DevelopmentTime Type:

Full time

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