Junior Account Ref Data Analyst

Citigroup Inc.
Belfast
4 days ago
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Role Overview

The Reference Data Services Analyst is a trainee professional role. Requires a good knowledge of the range of processes, procedures and systems to be used in carrying out assigned tasks and a basic understanding of the underlying concepts and principles upon which the job is based. Good understanding of how the team interacts with others in accomplishing the objectives of the area. Makes evaluative judgements based on the analysis of factual information. They are expected to resolve problems by identifying and selecting solutions through the application of acquired technical experience and will be guided by precedents. Must be able to exchange information in a concise and logical way as well as be sensitive to audience diversity. Limited but direct impact on the business through the quality of the tasks/services provided. Impact of the job holder is restricted to own job.


What you’ll do

  • Remediates data in the Clients and Security Coding systems
  • Performs trend analysis and identifying root causes Implementing or suggesting solutions based on the root cause analysis
  • Liaises with other teams globally to ensure data quality is remediated
  • Provides a high level of customer service to our internal stakeholders
  • Owns ad-hoc projects from inception through to completion
  • Provides tangible metrics to Management
  • Appropriately assess risk when business decisions are made, demonstrating particular consideration for the firm’s reputation and safeguarding Citigroup, its clients and assets, by driving compliance with applicable laws, rules and regulations, adhering to Policy, applying sound ethical judgment regarding personal behavior, conduct and business practices, and escalating, managing and reporting control issues with transparency.

What we need from you

  • Managing various data remediation work streams Projects Knowledge
  • Experience of maintaining client static data within a capital markets environment
  • Takes ownership of allocated work and is accountable
  • Able to identify, trouble shoot issues and ultimately escalation
  • Financial services related qualifications
  • Strong communication skills are essential, enabling effective collaboration and clear articulation of complex data concepts. Coupled with this, we require excellent critical thinking abilities to navigate and resolve data challenges.
  • A fundamental understanding of reference data principles, including data stewardship, data quality management, and metadata concepts. This role will involve ensuring the accuracy, consistency, and completeness of various data sets that underpin our operations.
  • Proficiency in Microsoft Excel is needed for data analysis, manipulation, and reporting. Experience with data querying tools (e.g., SQL) and a basic understanding of data integration processes would be highly advantageous for working with our reference data systems.
  • The ability to identify, analyze, and troubleshoot data discrepancies and anomalies, driving them to resolution.
  • Previous experience in the banking or financial services industry is a significant plus, offering valuable context for the types of reference data we manage.

What we can offer you

We work hard to have a positive financial and social impact on the communities we serve. In turn, we put our employees first and provide the best-in-class benefits they need to be well, live well and save well.


By joining Citi Belfast, you will not only be part of a business casual workplace with a hybrid working model (up to 2 days working at home per week), but also receive a competitive base salary (which is annually reviewed), and enjoy a whole host of additional benefits such as:



  • Generous holiday allowance starting at 27 days plus bank holidays; increasing with tenure
  • A discretionary annual performance related bonus
  • Private medical insurance packages to suit your personal circumstances
  • Employee Assistance Program
  • Pension Plan
  • Paid Parental Leave
  • Special discounts for employees, family, and friends
  • Access to an array of learning and development resources

Sounds like Citi has everything you need? Then apply to discover the true extent of your capabilities.


Closing date 25 December


Citi is an equal opportunity employer, and qualified candidates will receive consideration without regard to their race, color, religion, sex, sexual orientation, gender identity, national origin, disability, status as a protected veteran, or any other characteristic protected by law.


If you are a person with a disability and need a reasonable accommodation to use our search tools and/or apply for a career opportunity, review Accessibility at Citi.


View Citi’s EEO Policy Statement and the Know Your Rights poster.


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