Data Architecture Lead, Vice President

Citigroup Inc.
London
1 day ago
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The Data Architecture Lead Analyst is a senior level technical position responsible for establishing and implementing new or revised backend application systems designs, and programs in coordination with the Technology team. The overall objective of this role is to lead applications systems designs and programming activities.



  • Develop, design, test and implement complex database programs using Python, Stored Procedure and leveraging tools such as Oracle, Snowflake, and Starburst.
  • Ability to handle complex large applications technically.
  • Strong understanding and practical experience of software engineering principles, such as Continuous Integration & Test-Driven Development.
  • Ability to coach and mentor the team members.
  • Strong analytical and problem-solving abilities.
  • Strong communication, and interpersonal skills; Solid data collection, analysis, and reporting skills; basic project / program management skills.
  • Willingness to be hands-on to complete necessary tasks.
  • Willingness to handle multiple applications.
  • Ability to work with others in a virtual team.
  • Work on the SQL performance improvement by identifying the old queries and applying or turning the queries.
  • Willingness to be hands-on to complete necessary tasks.
  • Willingness to handle multiple applications.
  • Ability to work with others in a virtual team.
  • Work on the SQL performance improvement by identifying the old queries and applying or turning the queries., Proven experience in Data Architecture and building solutions
  • Experience in Data modelling, PL/SQL performance tuning.
  • Experience in managing and implementing successful projects.
  • Working knowledge of consulting/project management techniques/methods
  • Ability to work under pressure and manage deadlines or unexpected changes in expectations or requirements.
  • Citi E3, E4 or Equivalent certification is preferred.

Education

  • Bachelor's degree/University degree or equivalent experience
  • Master's degree preferred

Career at Citi

Working at Citi is far more than just a job. A career with us means joining a team of more than 230,000 dedicated people from around the globe. At Citi, you'll have the opportunity to grow your career, give back to your community and make a real impact.


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