Information Architect, Vice President

Citigroup Inc.
London
1 week ago
Applications closed

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Within Citi Enterprise Data Office we are seeking an experienced Information Architect with strong hands-on experience of using modelling languages such as UML and ER to create Conceptual, Logical and Physical Data Models across Banking & Finance and supporting Business Domains. The candidate must have experience of developing large scale data models that fit multiple lines of business. The work will involve partnering with stakeholders to design strategic logical data models to support data governance and lineage across state-of-the-art solutions using micro services and integration with many applications/services.

Introduction

Citi's Institutional Clients Group (ICG) comprises diverse, talented professionals located in more than 100 countries, jurisdictions, and territories globally. ICG Operations and Technology develops innovative solutions and provides exceptional service to our clients in full partnership with our product teams. ICG O&T features a diverse, inclusive team of professionals in approximately 90 countries around the globe. The Institutional Operations group is responsible for the management and execution of transactions for Markets, Credit Risk, Security Services, Information Services, Private Bank, Treasury and Trade Solutions, and Operation Controls and reporting.

Responsibilities:

  • Work with stakeholders within a business domain to understand and identify key data concepts and their relationships and information needs.
  • Develop comprehensive conceptual and logical models and metadata solutions using UML and MagicDraw.
  • Document how the models are applied using Specification-By-Example for the various model use-cases.
  • Design and maintain the blueprint of information architecture, data integrations, and controls aligned to the business strategy.
  • Partner with Product and Technology teams to understand requirements and relate the models to physical data models and interfaces.
  • Unify data concepts across disparate front office, credit risk, servicing, and reporting functions.
  • Define, model, and rationalize target state solutions, socialize with key stakeholders, and conduct walkthroughs.
  • Incorporate data standards and implement governance model.
  • Develop data flows, ownership matrices, mapping, and data lineage.
  • Assist in the implementation of the physical data model, contributing to the system and operational design.

Qualifications:

  • Hands-on experience in Domain Data Modeling and Information Architecture.
  • Extensive experience in UML/relational/hierarchical and business data analysis.
  • Experience of Object-Oriented design is a big plus.
  • Deep understanding of information and data architecture, with experience of business data and problem-solving solutions on an enterprise level.
  • Hands-on modeling expertise using MagicDraw (preferred), Erwin or Enterprise Architect and metadata management tools and experience of forward-engineering code artifacts from models.
  • Financial industry knowledge in Capital Markets/Banking is a plus.
  • Knowledge of Data Management methodologies involving architecture, modeling, storage, security.
  • Prior experience in data integration, interoperability, and data quality solutions.
  • Analytical and problem solver, excellent verbal, written, and presentation skills.

Education:

  • Bachelor’s degree/University degree or equivalent experience.
  • Certification in Data Architecture / Modeling is a plus.

This job description provides a high-level review of the types of work performed. Other job-related duties may be assigned as required.

Job Family Group:Technology

Job Family:Data Architecture

Time Type:Full time

Citi is an equal opportunity and affirmative action employer. Qualified applicants will receive consideration without regard to their race, color, religion, sex, sexual orientation, gender identity, national origin, disability, or status as a protected veteran.

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