Analyst Programmer (m/w/d)

Kuehne+Nagel
Milton Keynes
10 months ago
Applications closed

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Analyst Programmer (m/w/d)

Milton Keynes, Buckinghamshire, United Kingdom | Finance & Controlling | Vollzeit | SGI2155216

Are you looking for a new challenge? You will have the chance to explore state-of-the-art technologies in fintech. It is also an excellent opportunity to work with different people around the globe.

Your Role In the role of Analyst Programmer, you will design and develop components of the financial systems Acon which is running over 100 countries worldwide. You will also need to ensure the quality and performance of the deliverable products are up to a high standard. Your Responsibilities

  • Write quality software program code in Rich Client, Web, and Mobile platforms with knowledge in Java and other technologies.
  • Analyze and resolve technical issues caused by program, system, or database level.
  • Conduct testing to ensure a high quality of deliverables.
  • Provide timely program fixes for urgent issues happened in production in order to ensure seamless financial IT service.
  • Arrange software package for global deployment.
  • Conduct peer code review to ensure software quality.
  • Create and maintain technical documentation and diagram of system design, system architecture, and interfaces/integrations.
  • Conduct Proof of Concept when introducing new software technologies.

Your Skills and Experiences

  • Bachelor's/ master’s degree in computer science, engineering, IT, or equivalent field.
  • Experience in working with a global/diverse team.
  • Must have hands-on experience in Java and SQL.
  • Experience in Oracle, Hibernate, Spring, MongoDB, Quarkus, or React will be an advantage but not a must.
  • Preferably also know Mobile Programming, Cloud computing, AI and Machine Learning, Accounting and Financial knowledge.
  • Must be a team player with good communication and interpersonal skills.
  • Fluent in English.

#LI-AD1

Good Reasons to Join Your work will have a direct influence on the future of logistics and IT. Your colleagues are experts who shape the IT industry in UK and worldwide. We want you to feel comfortable in your working surroundings. Therefore, we are offering you flexible working hours and mobile working arrangements. We value teamwork, continuous learning, and diversity. Kuehne + Nagel is offering you a custom-made career – through individual planning and supervisors who support and advise you in every way. You get supported by a lot of work-life balance offerings and supplementary health insurance.

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